RESEARCH

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Blood Res (2024) 59:9

Published online March 4, 2024

https://doi.org/10.1007/s44313-024-00007-9

© The Korean Society of Hematology

Impact of CYP1A1 variants on the risk of acute lymphoblastic leukemia: evidence from an updated meta-analysis

Imen Frikha1,2, Rim Frikha1,3*, Moez Medhaffer1,2, Hanen Charfi1,2, Fatma Turki1,3 and Moez Elloumi1,2

1Faculty of Medicine of Sfax, University of Sfax, Sfax, Tunisia
2Department of Hematology, Hedi Chaker Hospital, Sfax, Tunisia
3Department of Medical Genetics, Hedi Chaker Hospital, Sfax, Tunisia

Correspondence to : *Rim Frikha
frikha_rim@yahoo.fr

Received: August 9, 2023; Accepted: January 24, 2024

Objective Our study aimed to investigate the association between cytochrome P450 1A1 (CYP1A1) polymorphisms (T3801C and A2455G) and acute lymphoblastic leukemia (ALL) risk, considering genetic models and ethnicity.
Materials and methods PubMed, Embase, Web of Knowledge, Scopus, and the Cochrane electronic databases were searched using combinations of keywords related to CYP1A1 polymorphisms and the risk of ALL. Studies retrieved from the database searches underwent screening based on strict inclusion and exclusion criteria.
Results In total, 2822 cases and 4252 controls, as well as 1636 cases and 2674 controls of the C3801T and A2455G variants of CYP1A1, respectively, were included in this meta-analysis. The T3801C polymorphism of CYP1A1 significantly increases the risk of ALL, particularly those observed in Asian and Hispanic populations, independent of age. Similarly, the A2455G polymorphism of CYP1A1 plays a significant role in the susceptibility to ALL in all genetic models, except the heterozygous form. This association was observed mainly in mixed populations and in both children and adults (except in the heterozygous model).
Conclusion Our comprehensive analysis indicates that the T3801 and A2455G polymorphisms of CYP1A1 may increase the risk of ALL depending on ethnicity. Therefore, both variants should be considered promising biomarkers for ALL risk. Further large-scale investigations are necessary to assess other factors, such as gene-gene or gene-environment interactions.

Keywords Cytochrome, Acute lymphoblastic leukemia, Risk, Meta-analysis

Acute lymphoblastic leukemia (ALL) stands as the most common pediatric cancer, constituting approximately 30% of all childhood cancer cases. However, it also affects individuals of all ages. The malignant transformation and uncontrolled proliferation of abnormally differentiated, long-lived hematopoietic progenitor cells lead to a significant presence of circulating blasts and malignant cells, ultimately replacing normal marrow [1]. The causes of ALL remain unknown and likely involve interactions among the environment, hematopoietic development, and low-penetrance susceptibility loci [2]. This complexity arises from the intricate interplay between genetic predispositions and environmental factors [3]. Environmental chemicals necessitate metabolic activation by phase I xenobiotic-metabolizing enzymes, such as cytochrome P450, for conversion into carcinogens [4]. Polymorphisms in genes encoding xenobiotic-metabolizing enzymes can modify the expression or activity of these enzymes, thereby influencing the risk of exposure-related cancers [57]. Additionally, the association with cancer risk may be age-dependent due to distinct developmental patterns exhibited by many xenobioticmetabolizing enzymes, such as cytochrome P450 1A1 (CYP1A1) [8].

The gene for CYP1A1, which encodes a significant cytochrome P450 enzyme, harbors two crucial singlenucleotide polymorphisms: CYP1A1*2A (rs4646903) and CYP1A12C (rs1048943) [6]. CYP1A12A involves the substitution of T with C in the 3′ untranslated regions, also known as T3801C, m1, or rs4646903. This single nucleotide polymorphism (SNP) is localized on chromosome 15q22 [9]. CYP1A1*2C results from an A-to-G transition, leading to an isoleucine/valine substitution in exon 7, also referred to as A2455G, m2 allele, or rs1048943 [10]. Numerous studies have investigated the relationship between CYP1A1 polymorphisms and leukemia risk, but the results have been inconsistent [1114]. Therefore, we conducted a meta-analysis of all eligible studies, including ALL in both adults and children, to clarify the associations of CYP1A1 polymorphisms (T3801C and A2455G) with leukemia risk based on genetic models and ethnicity.

Literature search

A comprehensive search was conducted to investigate the association between CYP1A1 polymorphisms and the risk of ALL published before February 2020, utilizing the PubMed electronic database. The following combined MeSH terms were employed: “CYP1A1,” “polymorphisms,” and “Acute lymphoblastic leukemia” OR “Acute lymphocytic leukemia.” The search was conducted without any language restrictions. Additionally, the reference lists of identified articles were manually searched for additional relevant publications. Studies were included in the current meta-analysis if they assessed the association between two CYP1A1 polymorphisms (T3801C and A2455G) and ALL.

Study selection

Publications were eligible for the meta-analysis if they met the following inclusion criteria: (1) case–control studies; (2) studies determining the distribution of CYP1A1 variants (2A (T > C) rs4646903 and CYP1A12B/2C (A2455G) rs1048943) in patients and controls, evaluating polymorphisms and their association with susceptibility to ALL; and (3) sufficient genotype frequency data available for both case and control groups.

The major exclusion criteria were as follows: (1) patients with other leukemias (such as AML, and CML); and (2) data duplicated from previous publications.

Data extraction

To minimize bias in the selected studies, two observers independently extracted information from each study and resolved all disagreements through discussion. The following information was extracted from each study: (1) the first author, (2) year of publication, (3) country of the study population, (4) ethnicity, (5) CYP1A1 gene variants, and (6) age. Additionally, we checked the distribution of genotypes in controls using Hardy–Weinberg equilibrium (HWE).

Statistical analysis

Meta-analysis was conducted using the Metagenyo software [15]. It is an easy-to-use web application that implements a comprehensive meta-analysis workflow for Genetic Association Studies (GAS). Various genetic comparison models were employed to assess the association between CYP1A1 polymorphisms and the risk of ALL, including allele contrast, recessive, dominant, homozygous, and heterozygous models. The genotype distribution was assessed for HWE to check the study quality; p (HWE) < 0.05 showed statistical significant [15]. Odds ratios (OR) and 95% confidence intervals (CI) were calculated using the genotype distribution data. These association test results assessed the strength of the association between CYP1A1 polymorphisms (T3801C and A2455G) and the risk of ALL.

Heterogeneity among studies was evaluated using Cochran’s Q-statistic (p < 0.05) and the I2 test, representing the percentage of total variation across studies ranging from 0 to 100%. I2 ≤ 25%, 25% < I2 < 50%, and I2 > 50% were interpreted as low, moderate, and a high degree of heterogeneity, respectively [16]. A random-effects model was applied if there was significant heterogeneity (p < 0.05, I2 > 50%); otherwise, a fixed-effects model was employed [17].

A funnel plot and graphical tests were used to assess publication bias. Therefore, the asymmetry of the funnel plot suggests possible publication bias. Egger’s test was used; p < 0,05 is considered a potential statistical publication bias [16]. Forest plots were provided by meta-analysis to estimate the global results of all studies. Egger’s test and funnel plots were used to identify statistically significant publication bias (p < 0.05) [16]. Sensitivity analyses were conducted to examine whether the individual study influenced the pooled results.

Search published reports

A flowchart illustrating the study selection process is presented in Fig. 1. Articles were identified using various combinations of keywords listed in the Methods section, focusing on the relationship between CYP1A1 SNPs and the risk of ALL. Seven of these articles were reviews or meta-analyses. Consequently, only 25 studies were included in this meta-analysis.


Study characteristics

The characteristics of the 25 articles included in the meta-analysis are outlined in Table 1. These studies were conducted in diverse populations with varying ethnicities, including Asian, African, Caucasian, Hispanic, and mixed-ethnic groups.

Table 1 Characteristics of included studies

First authorYear of publicationEthnicity (Country)Polymorphism StudyAge groupNumber
CasesControls
Krajinovic [18]1999Caucasian (Canada)T3801C, A2455GChild517893
Gao [19]2003Asian (China)T3801C, A2455GChild156225
Balta [20]2003Mixed (Turky)T3801CChild105145
Joseph [21]2004Asian (India)T3801C, A2455GChild236236
Canalle [22]2004Mixed (Brazil)T3801CChild113221
Gallegos-Arreole [23]2004Mixed (Mexican)A2455GAdult136136
Selvin [24]2004Mixed (California)A2455GChild175175
Clavel [25]2005Mixed (France)T3801CChild190105
Liu QX [26]2005Asian (China)T3801CAdult112179
Pakakasama [27]2005Asian (Thailand)T3801CChild91320
Aydin-Sayitoglu [28]2006Caucasian (Turky)T3801CAdult36140
Aydin-Sayitoglu [28]2006Caucasian (Turky)T3801CChild119140
Bolufer [13]2007Caucasian (Spain)T3801CMixt92403
Gallegos-Arreola [29]2008Hispanic (Mexican)T3801CAdult210228
Chen [30]2008Asian (China)T3801CMixt120204
Lee [31]2009Asian (Korea)T3801C, A2455GChild207321
Yamaguti [14]2010Caucasian (Brazil)T3801C, A2455GMixt198198
Swinney [32]2011Hispanic (USA)T3801C, A2455GChild302814
Swinney [32]2011Caucasian (USA)A2455GChild171437
Swinney [32]2011Caucasian (USA)A2455GChild71204
Suneetha [33]2011Asian (India)T3801CChild91150
Razmkhah [34]2011Mixed (Iran)A2455GChild8594
Bonaventure [35]2012Caucasian (France)T3801CChild430548
Agha [36]2013African (Egypt)T3801C, A2455GChild558600
Ouerhani [37]2013African (Tunisia)T3801CMixt100106
Nida [11]2017Asian (India)T3801CChild200200


Variants allele frequency

The allele frequencies of each variant of the CYP1A1 genotypes in the case and control groups are summarized in Tables 2, 3, 4 and 5. For the CYP1A1 T3801C polymorphism, 2822 patients and 4252 controls were enrolled in these studies. In the case group, the C allele frequencies ranged from 6 to 57% (mean = 20.6%; 95% CI [18.3–32.8]). The frequencies of the C allele varied by ethnicity: (22–51%), (7–21%), (11–20%), (21–60%), and (6–11%) in Asian, Caucasian, mixed, Hispanic, and African populations, respectively. In the control group of the T3801C polymorphism, T allele frequencies ranged from 15.4% to 27% (mean = 25%) (p = 0.3).

Table 2 Results of meta-analysis for the CYP1A1 gene T3801C polymorphisms in ALL according to the ethnicity

ModelEthnicityNumber of studiesTest of associationTest of heterogeneityPublication bias
OR95% CIp-valModelp-valI2p-val (Egger’s test)
Allelecontrast
(C vs. T)
Overall211,31[1.08; 1.58]0,00*Random0,00*75,46%0,21
Asian81,36[1.07; 1.71]0,00*Random0,00*64,87%0,07
African21,48[0.92; 2.37]0,10Fixed0,1649,35%NA
Caucasian61,10[0.91; 1.33]0,31Fixed0,1438,9%0,47
Hispanic22,22[0.91; 5.43]0,07Random0,00*91,94%NA
Mixed31,05[0.80; 1.38]0,68Fixed0,660%0,13
Recessive model
(CC vs. CT+TT)
Overall211,36[0.86; 2.16]0,18Random0,00*72,21%0,68
Asian81,01[0.78; 1.31]0,92Fixed0,1633,11%0,07
African22,21[0.47; 10.44]0,31Fixed0,500%NA
Caucasian60,63[0.30; 1.33]0,23Fixed0,940%0,51
Hispanic24,91[1.61; 14.93]0,00*Random0,01*82,35%NA
Mixed31,44[0.18; 11.56]0,72Random0,0566,3%0,77
Dominant model
(CC+CT vs. TT)
Overall211,40[1.17; 1.68]0,00*Random0,00*56,88%0,56
Asian81,67[1.30; 2.15]6,14E-05*Random0,0942,96%0,44
African21,43[0.86; 2.37]0,16Fixed0,1841,92%NA
Caucasian61,17[0.95; 1.44]0,12Fixed0,1045,29%0,66
Hispanic21,80[0.71; 4.59]0,21Random0,01*84,68%NA
Mixed31,02[0.75; 1.39]0,85Fixed0,630%0,59
Homozygous
(CC vs.TT)
Overall211,59[0.99; 2.53]0,05Random0,00*68,49%0,47
Asian81,41[0.92; 2.15]0,10Random0,0647,23%0,11
African22,27[0.48; 10.72]0,29Fixed0,470%NA
Caucasian60,67[0.32; 1.41]0,29Fixed0,960%0,42
Hispanic25,02[1.26; 20.00]0,02*Random0,00*86,21%NA
Mixed31,46[0.19; 10.86]0,70Random0,0663,5%0,77
Heterozygous
(CT vs. TT)
Overall211,38[1.17; 1.64]0,00*Random0,01*44,66%0,55
Asian81,83[1.48; 2.25]1,16E-08*Fixed0,2917,31%0,25
African21,34[0.79; 2.27]0,26Fixed0,2327,98%NA
Caucasian61,22[0.89; 1.68]0,20Random0,0947,18%0,83
Hispanic21,18[0.81; 1.71]0,37Fixed0,1843,82%NA
Mixed31[0.73; 1.37]0,99Fixed0,3405,98%0,93

NA Not available, OR Odds ratio

*significance (p < 0.05)


Table 3 Results of meta-analysis for the CYP1A1 gene T3801C polymorphisms in ALL according to the Age

ModelAgeNumber of studiesTest of associationTest of heterogeneityPublication bias
OR95% CIp-valModelp-valI2p-val (Egger’s test)
Allelecontrast
(C vsT)
Overall211,31[1.08; 1.58]0,00*Random0,00*75,46%0,21
Child141,27[1.08; 1.49]0,00*Random0,02*48,67%0,20
Mixt41,14[0.76; 1.72]0,51Random0,0560,27%0,95
Adult31,57[0.67; 3.68]0,29Random0,00*92,11%0,50
Recessive model
(CC vs CT+TT)
Overall211,36[0.86; 2.16]0,18Random0,00*72,21%0,68
Child141,26[0.81; 1.96]0,29Random0,03*46,09%0,57
Mixt41,03[0.63; 1.69]0,88Fixed0,5100,93
Adult31,88[0.28; 12.56]0,51Random0,00*93,74%0,85
Dominant model
(CC+CT vs TT)
Overall211,40[1.17; 1.68]0,00*Random0,00*56,88%0,56
Child141,35[1.12; 1.62]0,00*Random0,0640,07%0,36
Mixt41,25[0.76; 2.05]0,37Random0,0561,45%0,99
Adult31,85[1.00; 3.41]0,04Random0,03*71,08%0,00
Homozygous
(CC vs TT)
Overall211,59[0.99; 2.53]0,05Random0,00*68,49%0,47
Child141,41[0.90; 2.20]0,12Random0,04*42,59%0,51
Mixt41,31[0.75; 2.28]0,33Fixed0,4400,91
Adult32,56[0.48; 13.57]0,26Random0,00*89,84%0,72
Heterozygous
(CT vs TT)
Overall211,38[1.17; 1.64]0,00*Random0,01*44,66%0,55
Child141,38[1.12; 1.69]0,00*Random0,03*45,18%0,28
Mixt41,27[0.78; 2.07]0,32Random0,0757,24%0,97
Adult31,59[1.14; 2.21]0,00*Fixed0,1154,17%0,74

NA Not available, OR Odds ratio

*significance (p < 0.05)


Table 4 Results of meta-analysis for the CYP1A1 gene A2455G polymorphisms and ALL risk according to the ethnicity

ModelEthnicityNumber of studiesTest of associationTest of HeterogeneityPublication bias
OR95% CIp-valModelp-valI2p-val (Egger’s test)
Allelecontrast
(G vs. A)
Overall121,25[1.09; 1.42]0,00*Fixed0,1430,92%0,76
Caucasian51,21[0.95; 1.54]0,11Fixed0,810,00%0,39
Asian31,36[0.80; 2.31]0,25Random0,01*76,95%0,11
Mixed41,26[1.03; 1.53]0,02*Fixed0,1346,28%0,69
Recessive model
(GG vs GA+AA)
Overall111,94[1.39; 2.71]0,00*Fixed0,790,00%0,58
Caucasian52,03[1.08; 3.83]0,02*Fixed0,780,00%0,76
Asian31,51[0.81; 2.78]0,18Fixed0,3210,13%0,45
Mixed32,25[1.35; 3.73]0,00*Fixed0,520,00%0,46
Dominant model
(GG+GA vs AA)
Overall121,19[1.01; 1.39]0,03Fixed0,1925,08%0,77
Caucasian51,13[0.85; 1.50]0,37Fixed0,720,00%0,54
Asian31,39[0.75; 2.58]0,28Random0,02*71,87%0,46
Mixed41,15[0.91; 1.46]0,23Fixed0,1838,39%0,94
Homozygous
(GG vs AA)
Overall112,02[1.43; 2.85]0,00*Fixed0,690,00%0,65
Caucasian51,92[0.99; 3.70]0,05Fixed0,860,00%0,94
Asian31,67[0.88; 3.17]0,11Fixed0,2233,47%0,46
Mixed32,37[1.41; 3.97]0,00*Fixed0,3211,46%0,60
Heterozygous
(GA vs AA)
Overall121,09[0.92; 1.29]0,3Fixed0,3113,5%0,54
Caucasian51,05[0.78; 1.42]0,72Fixed0,510,00%0,64
Asian31,31[0.75; 2.27]0,33Random0,0761,24%0,35
Mixed41,03[0.80; 1.32]0,79Fixed0,3311,26%0,77

NA Not available, OR Odds ratio

*significance (p < 0.05)


Table 5 Results of meta-analysis for the CYP1A1 gene A2455G polymorphisms and ALL risk according to the age

ModelAgeNumber of studiesTest of associationTest of heterogeneityPublication bias
OR95% CIp-valModelp-valI2p-val (Egger’s test)
Allelecontrast
(G vs A)
Overall121,25[1.09; 1.42]0,00*Fixed0,1430,920,76
Child101,18[1.02; 1.37]0,02*Fixed0,2124,870,93
Adult11,75[1.22; 2.51]0,00*FixedNANANA
Mixt11,25[0.76; 2.06]0,37FixedNANANA
Recessive model
(GG vs GA+AA)
Overall111,94[1.39; 2.71]0,00*Fixed0,7900,58
Child91,84[1.27; 2.67]0,00*Fixed0,8200,90
Adult13,08[1.32; 7.20]0,00*FixedNANANA
Mixt11[0.19; 5.07]1FixedNAANA
Dominant model
(GG+GA vs AA)
Overall121,19[1.01; 1.39]0,03*Fixed0,1925,080,77
Child101,11[0.93; 1.32]0,23Fixed0,2817,40,65
Adult11,82[1.12; 2.97]0,01*FixedNANANA
Mixt11,36[0.75; 2.43]0,30FixedNANANA
Homozygous
(GG vs AA)
Overall112,02[1.43; 2.85]0,00*Fixed0,6900,65
Child91,85[1.26; 2.71]0,00*Fixed0,8000,97
Adult13,87[1.59; 9.41]0,00*FixedNANANA
Mixt11,11[0.21; 5.74]0,89FixedNANANA
Heterozygous
(GA vs AA)
Overall121,09[0.92; 1.29]0,30Fixed0,3113,50,54
Child101,01[0.84; 1.22]0,84Fixed0,377,550,42
Adult11,55[0.93; 2.57]0,09FixedNANANA
Mixt11,38[0.76; 2.52]0,28FixedNANANA

NA Not available, OR Odds ratio

*significance (p < 0.05)



Similarly, for the CYP1A1 A2455G polymorphism, 1636 cases and 2674 controls were included in these studies. In the case group, G allele frequencies varied from 4 to 41% (mean = 16.3%; 95% CI [10.1–23]). In the Caucasian population, the frequency of the G allele ranged from 4 to 36%, from 23 to 41% in Asian populations, and from 8 to 40% in mixed populations. In the control group, the frequency of the G allele varied from 10.1% to 23% (mean = 16%) (p = 0.5).

Meta‑analysis results

The results of the meta-analysis of association studies are summarized in Tables 2 and 4. By examining the heterogeneity test results, we considered both fixed and random effects models, depending on the p-value and I2 metrics. The latter was selected for subsequent analyses.

T3801C variant of CYP1A1 and risk of ALL

The results of the meta-analysis of T3801C are summarized in Table 2(A, B) and Fig. 3. Overall, the variant T3801C predicts a significant association with ALL risk, mainly in allele contrast [C vs T] (OR = 1.31, 95% CI [1.08;1.58], p = 0.01; Fig. 2A), dominant [CC + CT vs TT] (OR = 1.40, 95% CI [1.17;1.68], p = 0.00; Fig. 2C), homozygous [CC vs TT] (OR = 1.59, 95% CI [0.99;2.35], p = 0.05; Fig. 2D), and heterozygous models [CT vs TT] (OR = 1.38, 95% CI [1.17;1.64], p = 0.00; Fig. 2E), except for the recessive model [CC vs CT + TT] (OR = 1.36, 95% CI [0.86;2.16], p = 0.18; Fig. 2A).


According to ethnicity, the increased risk of ALL (OR > 1) was significant (p < 0.05), mainly in Asian populations for allele contrast, dominant, and heterozygous models, and in Hispanic populations for the homozygous model. However, susceptibility to ALL was not significant (p > 0.05) for other ethnicities (African and mixed). A decreased risk of ALL was observed in the Caucasian population in the recessive (OR = 0.63; 95% CI [0.30, 1.33]; p = 0.23) and homozygous models (OR = 0.67; 95% CI [0.32, 1.41]; p = 0.29). However, no risk of ALL (OR ~ 1) was observed in the Asian population in the recessive model (OR = 1.01; 95% CI [0.78, 1.31]; p = 0.92) or in the mixed population in the heterozygous model (OR = 1; 95% CI [0.73, 1.37]; p = 0.99).

Moreover, the T3801C polymorphism increased the risk of ALL, independent of age (OR > 1). As indicated by genetic models, this association was significant in children for allele contrast [C vs T] (OR = 1.27; 95% CI [1.08; 1.49]; p = 0.00), dominant [CC + CT vs TT] (OR = 1.35; 95% CI [1.12; 1.62]; p = 0.00), and heterozygous models [CT vs TT] (OR = 1.38; 95% CI [1.12; 1.69]; p = 0.00) and in the adult population for dominant [CC + CT vs TT] (OR = 1.85; 95% CI [1.00; 3.41]; p = 0.04) and heterozygous models [CT vs TT] (OR = 1.59; 95% CI [1.14; 2.21]; p = 0.00).

A2455G variant of CYP1A1 and risk of ALL

The results of the meta-analysis for A2455G are summarized in Table 4(A, B) and Fig. 3. Overall, the A2455G variant predicts a significantly increased risk of ALL, mainly in the allele contrast [G vs A] (OR = 1.25, 95% CI [1.09;1.42], p = 0.00; Fig. 3A), recessive [GG vs GA + AA] (OR = 1.94, 95% CI [1.39;2.71], p = 0.00; Fig. 3B), dominant [GG + GA vs AA] (OR = 1.19, 95% CI [1.01;1.39], p = 0.03; Fig. 3C), and homozygous [GG vs AA] (OR = 2.02, 95% CI [1.43;2.85], p = 0.00; Fig. 3D), except for the heterozygous model [GA vs AA] (OR = 1.09, 95% CI [0.92;1.29], p = 0.3; Fig. 3E). Regarding ethnicity, the increased risk of ALL (OR > 1) was significant mainly in mixed populations for all genetic model alleles, except for the heterozygous (OR = 1.03; 95% CI [0.830;1.32]; p = 0.79) and dominant models (OR = 1.15; 95% CI [0.91;1.46]; p = 0.23). However, no risk of ALL (OR ~ 1) was observed in Caucasian and mixed populations in the heterozygous model (OR = 1.05; 95% CI [0.78;1.42]; p = 0.72) and (OR = 1.03; 95% CI [0.830;1.32]; p = 0.79), respectively.

In addition, the A2455G polymorphism increased the risk of ALL independent of age (OR > 1). According to genetic models, this association was significant in both children and adults for allele contrast [G vs A], with respective values of (OR = 1.18 and 1.75; 95% CI [1.02; 1.37], p = 0.02 and 95% CI [1.22; 2.51], p = 0.00), recessive [GG vs GA + AA], with respective values of (OR = 1.84 and 3.08; 95% CI [1.27; 2.67]; p = 0.00 and 95% CI [1.32; 7.20], p = 0.00), and homozygous model, with respective values of (OR = 1.85 and 3.87; 95% CI [1.26; 2.71]; p = 0.00 and 95% CI [1.59; 9.41], p = 0.00). The significant association was observed only in the adult model for the dominant model (OR = 1.8, 95% CI [1.12; 2.97]; p = 0.01).

Sensitivity analysis

We conducted a sensitivity analysis to evaluate the stability of the pooled results (Figs. S1 and S2). The ORs remained largely unchanged even when each individual study was excluded. This indicates that the results obtained from the meta-analysis models employed in this study are robust. Sensitivity plots for the T3801C and A2455G polymorphisms in all models are presented in Figs. S1(A-E) and S2(A-E), respectively. Studies not in HWE were excluded, as no significant changes were observed in the combined ORs.

Publication bias

To assess publication bias, we utilized funnel plots (Figs. S3 and S4). According to the Egger’s test, the funnel plots for correlations between the T3801C and A2455G polymorphisms and the risk of ALL were symmetric, suggesting an absence of significant publication bias, except for a symmetric shape in the funnel plots. The Egger test further confirmed the absence of publication bias (all p > 0.05) for T3801C (Fig. S3) and A2455G (Fig. S4). However, the T3801C variant exhibited publication bias only in the adult population under the dominant model (CC + CT vs. TT).

In this meta-analysis, we investigated the association between CYP1A1 polymorphisms and ALL patients. This study is one of the largest across various ethnicities, age groups, and genetic models when compared to previous meta-analyses [12, 38]. Our meta-analysis included 2822 cases (4252 controls) for the C3801T variant and 1636 cases (2674 controls) for the A2455G variant of CYP1A1, respectively. Globally, the results of the present meta-analysis revealed that the genotypic frequencies of CYP1A1 differed between cases and controls, although the difference was not statistically significant (p > 0.05). Interestingly, the highest frequency was recorded for the T3801C variant (20.6% and 25% in cases and controls, respectively). The A2455G variant was observed in 16.3% of cases and 19.5% of controls. Moreover, the frequency varied across ethnicities, reflecting the worldwide distribution of CYP1A1 variants based on ethnicity and age [12].

Our comprehensive analysis, derived from studies to date, highlights the impact of CYP1A1 polymorphisms on the risk of ALL, stratified by genetic models, ethnicity, and age. Overall, these variants predict an increased risk of ALL in Asian and Hispanic populations, independent of age. The T3801C polymorphism of CYP1A1 significantly increases the risk of ALL, particularly in Asian and Hispanic populations, irrespective of age. Similarly, the A2455G polymorphism of CYP1A1 plays a significant role in the susceptibility to ALL in all genetic models, excluding the heterozygous form. This association was predominantly observed in a mixed population of children and adults, except for the heterozygous model. These findings diverge from those reported in a previous meta-analysis by Lu et al. [12].

Nevertheless, numerous studies have indicated an association between CYP1A1 polymorphisms and ALL, yielding inconclusive results [1114]. The disparity in these outcomes underscores the potential impact of ethnic differences in genetic background and environmental factors related to CYP1A1 polymorphisms and the risk of ALL. The confluence of heightened genetic susceptibility and increased environmental exposure in vulnerable populations may uniquely elevate the susceptibility to malignancy in Hispanic and Asian populations. However, investigating potential single nucleotide polymorphism–single nucleotide polymorphism interactions between CYP1A1 and other genes across different ethnic groups could provide insights into this issue.

The polymorphism of CYP1A1 has been reported to alter susceptibility to various types of cancers, including lung, head, neck, bladder, and breast cancer [3941]. This discovery prompted us to explore the association between ALL and CYP1A1 polymorphisms. In this updated meta-analysis, we present evidence suggesting that both common variants of CYP1A1 may serve as biomarkers for ALL susceptibility. However, there are some limitations to our study. Firstly, the relatively small sample size resulted in a lack of consistently robust statistical power. Secondly, interstudy heterogeneity persists in this meta-analysis, although we minimized the likelihood through a comprehensive literature search using stringent inclusion and exclusion criteria. Finally, other factors, such as gene-gene and gene-environment interactions, should be considered. Therefore, further rigorous analyses with larger sample sizes are necessary to validate the findings of this meta-analysis.

Our comprehensive analysis of studies to date indicates that CYP1A1 variants play a role in the risk of ALL. Interestingly, both variants of CYP1A1 (T3801 and A2455G) significantly increase the risk of ALL, depending on ethnicity. Consequently, both variants should be considered promising biomarkers for ALL risk. However, while this meta-analysis is one of the largest studies across ethnicity, age, and genetic models, further large-scale investigations are necessary to assess other factors, such as gene-gene or gene-environment interactions.

The online version contains supplementary material available at https://doi.org/10.1007/s44313-024-00007-9.

Additional file 1: Figure S1. Sensitivity plot of the T3801C polymorphism under different models. A: allele contrst model, B: recessive model, C: dominant model, D: homozygous model, E: heterozygous model. Figure S2. Sensitivity plot of the A2455G polymorphism under different models. A: Allele contrast model, B: recessive model, C: dominant model, D: homozygous model, E: heterozygous model. Figure S3. Funnel plots for different models of T3801C polymorphism. A: Allele contrast model; B: Recessive model; C: Dominant model; D: Homozygous model; E: Heterozygous model. Figure S4. Funnel plots for different models of A2455G polymorphism. A: Allele contrast model; B: Recessive model; C: Dominant model; D: Homozygous model; E: Heterozygous model.

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  1. Terwilliger T, Abdul-Hay M. Acute lymphoblastic leukemia: a comprehensive review and 2017 update. Blood Cancer J. 2017;7:e577.
    Pubmed KoreaMed CrossRef
  2. Chokkalingam AP, Buffler PA. Genetic susceptibility to childhood leukaemia. Radiat Prot Dosim. 2008;132:119-29.
    Pubmed KoreaMed CrossRef
  3. Severson RK, Ross JA. The causes of acute leukemia. Curr Opin Oncol. 1999;11:20-4.
    Pubmed CrossRef
  4. Rendic S, Guengerich FP. Contributions of human enzymes in carcinogen metabolism. Chem Res Toxicol. 2012;25:1316-83.
    Pubmed KoreaMed CrossRef
  5. Samuel W, Lovell J, Christine C, Kathi H, editors. Cancer and the Environment: Gene-Environment Interactions. Washington, D.C.: National Academies Press; 2002. https://doi.org/10.17226/10464.
    CrossRef
  6. Guengerich FP, Shimada T. Oxidation of toxic and carcinogenic chemicals by human cytochrome P-450 enzymes. Chem Res Toxicol. 1991;4:391-407.
    Pubmed CrossRef
  7. Whyatt RM, Bell DA, Jedrychowski W, et al. Polycyclic aromatic hydrocarbon-DNA adducts in human placenta and modulation by CYP1A1 induction and genotype. Carcinogenesis. 1998;19:1389-92.
    Pubmed CrossRef
  8. Pegram RA, Diliberto JJ, Moore TC, Gao P, Birnbaum LS. 2,3,7,8-tetrachlorodibenzo-p-dioxin (TCDD) distribution and cytochrome P4501A induction in young adult and senescent male mice. Toxicol Lett. 1995;76:119-26.
    Pubmed CrossRef
  9. Crofts F, Cosma GN, Currie D, Taioli E, Toniolo P, Garte SJ. A novel CYP1A1 gene polymorphism in African-Americans. Carcinogenesis. 1993;14:1729-31.
    Pubmed CrossRef
  10. Kawajiri K, Nakachi K, Imai K, Yoshii A, Shinoda N, Watanabe J. Identification of genetically high risk individuals to lung cancer by DNA polymorphisms of the cytochrome P450IA1 gene. FEBS Lett. 1990;263:131-3.
    Pubmed CrossRef
  11. Nida S, Javid B, Akbar M, Idrees S, Adil W, Ahmad GB. Gene variants of CYP1A1 and CYP2D6 and the risk of childhood acute lymphoblastic leukaemia; outcome of a case control study from Kashmir. India Mol Biol Res Commun. 2017;6:77-84.
  12. Lu J, Zhao Q, Zhai YJ, et al. Genetic polymorphisms of CYP1A1 and risk of leukemia: a meta-analysis. Onco Targets Ther. 2015;8:2883-902.
    Pubmed KoreaMed CrossRef
  13. Bolufer P, Collado M, Barragán E, et al. The potential effect of gender in combination with common genetic polymorphisms of drug-metabolizing enzymes on the risk of developing acute leukemia. Haematologica. 2007;92:308-14.
    Pubmed CrossRef
  14. Yamaguti GG, Lourenço GJ, Silveira VS, Tone LG, Lopes LF, Lima CSP. Increased risk for acute lymphoblastic leukemia in children with cytochrome P450A1(CYP1A1)- and NAD(P)H:quinone oxidoreductase 1 (NQO1)-inherited gene variants. Acta Haematol. 2010;124:182-4.
    Pubmed CrossRef
  15. Martorell-Marugan J, Toro-Dominguez D, Alarcon-Riquelme ME, Carmona-Saez P. MetaGenyo: a web tool for meta-analysis of genetic association studies. BMC Bioinformatics. 2017;18:563.
    Pubmed KoreaMed CrossRef
  16. Egger M, Davey Smith GD, Schneider M, Minder C. Bias in meta-analysis detected by a simple, graphical test. BMJ. 1997;315:629-34.
    Pubmed KoreaMed CrossRef
  17. Gurion R, Gafter-Gvili A, Vidal L, et al. Has the time for first-line treatment with second generation tyrosine kinase inhibitors in patients with chronic myelogenous leukemia already come? Systematic review and meta-analysis. Haematologica. 2013;98:95-102.
    Pubmed KoreaMed CrossRef
  18. Krajinovic M, Labuda D, Richer C, Karimi S, Sinnett D. Susceptibility to childhood acute lymphoblastic leukemia: influence of CYP1A1, CYP2D6, GSTM1, and GSTT1 genetic polymorphisms. Blood. 1999;93:1496-501.
    Pubmed CrossRef
  19. Gao J, Huang Y, Liang J, Fang X. Relationship between genetic polymorphisms of CYP1A1 and ALL. Chin J Birth Health Hered. 2003;11:21-4.
  20. Balta G, Yuksek N, Ozyurek E, et al. Characterization of MTHFR, GSTM1, GSTT1, GSTP1, and CYP1A1 genotypes in childhood acute leukemia. Am J Hematol. 2003;73:154-60.
    Pubmed CrossRef
  21. Joseph T, Kusumakumary P, Chacko P, Abraham A, Radhakrishna PM. Genetic polymorphism ofCYP1A1, CYP2D6, GSTM1 andGSTT1 and susceptibility to acute lymphoblastic leukaemia in Indian children. Pediatr Blood Cancer. 2004;43:560-7.
    Pubmed CrossRef
  22. Canalle R, Burim RV, Tone LG, Takahashi CS. Genetic polymorphisms and susceptibility to childhood acute lymphoblastic leukemia. Environ Mol Mutagen. 2004;43:100-9.
    Pubmed CrossRef
  23. Gallegos-Arreola MP, González-García JR, Figuera LE, Puebla-Pérez AM, Delgado-Lamas JL, Zúñiga-González GM. Distribution of CYP1A1*2A polymorphism in adult patients with acute lymphoblastic leukemia in a Mexican population. Blood Cells Mol Dis. 2008;41:91-4.
    Pubmed CrossRef
  24. Selvin S. Cytochrome P450 1A1 polymorphism and childhood leukemia: an analysis of matched pairs case-control genotype data. Cancer Epidemiol Biomarkers Prev. 2004;13:1371-4.
    Pubmed CrossRef
  25. Clavel J, Bellec S, Rebouissou S, et al. Childhood leukaemia, polymorphisms of metabolism enzyme genes, and interactions with maternal tobacco, coffee and alcohol consumption during pregnancy. Eur J Cancer Prev. 2005;14:531-40.
    Pubmed CrossRef
  26. Liu QX, Chen HC, Liu XF, Cao YF, Zhang J, Liu J. Study on the relationship between polymorphisms of Cyp1A1, GSTM1, GSTT1 genes and the susceptibility to acute leukemia in the general population of Hunan Province. Zhonghua Liu Xing Bing Xue Za Zhi. 2005;26:975-9.
  27. Pakakasama S, Mukda E, Sasanakul W, et al. Polymorphisms of drugmetabolizing enzymes and risk of childhood acute lymphoblastic leukemia. Am J Hematol. 2005;79:202-5.
    Pubmed CrossRef
  28. Aydin-Sayitoglu M, Hatirnaz O, Erensoy N, Ozbek U. Role of CYP2D6, CYP1A1, CYP2E1, GSTT1, and GSTM1 genes in the susceptibility to acute leukemias. Am J Hematol. 2006;81:162-70.
    Pubmed CrossRef
  29. Gallegos-Arreola MP, Batista-González CM, Delgado-Lamas JL, et al. Cytochrome P4501A1 polymorphism is associated with susceptibility to acute lymphoblastic leukemia in adult Mexican patients. Blood Cells Mol Dis. 2004;33:326-9.
    Pubmed CrossRef
  30. Chen HC, Hu WX, Liu QX, et al. Genetic polymorphisms of metabolic enzymes CYP1A1, CYP2D6, GSTM1 and GSTT1 and leukemia susceptibility. Eur J Cancer Prev. 2008;17:251-8.
    Pubmed CrossRef
  31. Lee KM, Ward MH, Han S, et al. Paternal smoking, genetic polymorphisms in CYP1A1 and childhood leukemia risk. Leuk Res. 2009;33:250-8.
    Pubmed KoreaMed CrossRef
  32. Swinney RM, Beuten J, Collier AB 3rd, et al. Polymorphisms in CYP1A1 and ethnic-specific susceptibility to acute lymphoblastic leukemia in children. Cancer Epidemiol Biomarkers Prev. 2011;20:1537-42.
    Pubmed CrossRef
  33. Sinnett D, Krajinovic M, Labuda D. Genetic susceptibility to childhood acute lymphoblastic leukemia. Leuk Lymphoma. 2000;38:447-62.
    Pubmed CrossRef
  34. Razmkhah F, Pazhakh V, Zaker F, Atashrazm F, Sheikhi M. Frequency of CYP1A1*2C polymorphism in patients with leukemia in the Iranian population. Lab Med. 2011;42:220-3.
    CrossRef
  35. Bonaventure A, Goujon-Bellec S, Rudant J, et al. Maternal smoking during pregnancy, genetic polymorphisms of metabolic enzymes, and childhood acute leukemia: the ESCALE Study (SFCE). Cancer Causes Control. 2012;23:329-45.
    Pubmed CrossRef
  36. Agha A, Shabaan H, Abdel-Gawad E, El-Ghannam D. Polymorphism of CYP1A1 gene and susceptibility to childhood acute lymphoblastic leukemia in Egypt. Leuk Lymphoma. 2014;55:618-23.
    Pubmed CrossRef
  37. Ouerhani S, Cherif N, Bahri I, Safra I, Menif S, Abbes S. Genetic polymorphisms of NQO1, CYP1A1 and TPMT and susceptibility to acute lymphoblastic leukemia in a Tunisian population. Mol Biol Rep. 2013;40:1307-14.
    Pubmed CrossRef
  38. Han F, Tan Y, Cui W, Dong L, Li W. Novel insights into etiologies of leukemia: a HuGE review and meta-analysis of CYP1A1 polymorphisms and leukemia risk. Am J Epidemiol. 2013;178:493-507.
    Pubmed CrossRef
  39. Hamachi T, Tajima O, Uezono K, et al. CYP1A1, GSTM1, GSTT1 and NQO1 polymorphisms and colorectal adenomas in Japanese men. World J Gastroenterol. 2013;19:4023-30.
    Pubmed KoreaMed CrossRef
  40. Yao L, Yu X, Yu L. Lack of significant association between CYP1A1 T3801C polymorphism and breast cancer risk: a meta-analysis involving 25,087 subjects. Breast Cancer Res Treat. 2010;122:503-7.
    Pubmed CrossRef
  41. He XF, Wei W, Liu ZZ, et al. Association between the CYP1A1 T3801C polymorphism and risk of cancer: evidence from 268 case-control studies. Gene. 2014;534:324-44.
    Pubmed CrossRef

Article

RESEARCH

Blood Res 2024; 59():

Published online March 4, 2024 https://doi.org/10.1007/s44313-024-00007-9

Copyright © The Korean Society of Hematology.

Impact of CYP1A1 variants on the risk of acute lymphoblastic leukemia: evidence from an updated meta-analysis

Imen Frikha1,2, Rim Frikha1,3*, Moez Medhaffer1,2, Hanen Charfi1,2, Fatma Turki1,3 and Moez Elloumi1,2

1Faculty of Medicine of Sfax, University of Sfax, Sfax, Tunisia
2Department of Hematology, Hedi Chaker Hospital, Sfax, Tunisia
3Department of Medical Genetics, Hedi Chaker Hospital, Sfax, Tunisia

Correspondence to:*Rim Frikha
frikha_rim@yahoo.fr

Received: August 9, 2023; Accepted: January 24, 2024

Abstract

Objective Our study aimed to investigate the association between cytochrome P450 1A1 (CYP1A1) polymorphisms (T3801C and A2455G) and acute lymphoblastic leukemia (ALL) risk, considering genetic models and ethnicity.
Materials and methods PubMed, Embase, Web of Knowledge, Scopus, and the Cochrane electronic databases were searched using combinations of keywords related to CYP1A1 polymorphisms and the risk of ALL. Studies retrieved from the database searches underwent screening based on strict inclusion and exclusion criteria.
Results In total, 2822 cases and 4252 controls, as well as 1636 cases and 2674 controls of the C3801T and A2455G variants of CYP1A1, respectively, were included in this meta-analysis. The T3801C polymorphism of CYP1A1 significantly increases the risk of ALL, particularly those observed in Asian and Hispanic populations, independent of age. Similarly, the A2455G polymorphism of CYP1A1 plays a significant role in the susceptibility to ALL in all genetic models, except the heterozygous form. This association was observed mainly in mixed populations and in both children and adults (except in the heterozygous model).
Conclusion Our comprehensive analysis indicates that the T3801 and A2455G polymorphisms of CYP1A1 may increase the risk of ALL depending on ethnicity. Therefore, both variants should be considered promising biomarkers for ALL risk. Further large-scale investigations are necessary to assess other factors, such as gene-gene or gene-environment interactions.

Keywords: Cytochrome, Acute lymphoblastic leukemia, Risk, Meta-analysis

Introduction

Acute lymphoblastic leukemia (ALL) stands as the most common pediatric cancer, constituting approximately 30% of all childhood cancer cases. However, it also affects individuals of all ages. The malignant transformation and uncontrolled proliferation of abnormally differentiated, long-lived hematopoietic progenitor cells lead to a significant presence of circulating blasts and malignant cells, ultimately replacing normal marrow [1]. The causes of ALL remain unknown and likely involve interactions among the environment, hematopoietic development, and low-penetrance susceptibility loci [2]. This complexity arises from the intricate interplay between genetic predispositions and environmental factors [3]. Environmental chemicals necessitate metabolic activation by phase I xenobiotic-metabolizing enzymes, such as cytochrome P450, for conversion into carcinogens [4]. Polymorphisms in genes encoding xenobiotic-metabolizing enzymes can modify the expression or activity of these enzymes, thereby influencing the risk of exposure-related cancers [57]. Additionally, the association with cancer risk may be age-dependent due to distinct developmental patterns exhibited by many xenobioticmetabolizing enzymes, such as cytochrome P450 1A1 (CYP1A1) [8].

The gene for CYP1A1, which encodes a significant cytochrome P450 enzyme, harbors two crucial singlenucleotide polymorphisms: CYP1A1*2A (rs4646903) and CYP1A12C (rs1048943) [6]. CYP1A12A involves the substitution of T with C in the 3′ untranslated regions, also known as T3801C, m1, or rs4646903. This single nucleotide polymorphism (SNP) is localized on chromosome 15q22 [9]. CYP1A1*2C results from an A-to-G transition, leading to an isoleucine/valine substitution in exon 7, also referred to as A2455G, m2 allele, or rs1048943 [10]. Numerous studies have investigated the relationship between CYP1A1 polymorphisms and leukemia risk, but the results have been inconsistent [1114]. Therefore, we conducted a meta-analysis of all eligible studies, including ALL in both adults and children, to clarify the associations of CYP1A1 polymorphisms (T3801C and A2455G) with leukemia risk based on genetic models and ethnicity.

Materials and methods

Literature search

A comprehensive search was conducted to investigate the association between CYP1A1 polymorphisms and the risk of ALL published before February 2020, utilizing the PubMed electronic database. The following combined MeSH terms were employed: “CYP1A1,” “polymorphisms,” and “Acute lymphoblastic leukemia” OR “Acute lymphocytic leukemia.” The search was conducted without any language restrictions. Additionally, the reference lists of identified articles were manually searched for additional relevant publications. Studies were included in the current meta-analysis if they assessed the association between two CYP1A1 polymorphisms (T3801C and A2455G) and ALL.

Study selection

Publications were eligible for the meta-analysis if they met the following inclusion criteria: (1) case–control studies; (2) studies determining the distribution of CYP1A1 variants (2A (T > C) rs4646903 and CYP1A12B/2C (A2455G) rs1048943) in patients and controls, evaluating polymorphisms and their association with susceptibility to ALL; and (3) sufficient genotype frequency data available for both case and control groups.

The major exclusion criteria were as follows: (1) patients with other leukemias (such as AML, and CML); and (2) data duplicated from previous publications.

Data extraction

To minimize bias in the selected studies, two observers independently extracted information from each study and resolved all disagreements through discussion. The following information was extracted from each study: (1) the first author, (2) year of publication, (3) country of the study population, (4) ethnicity, (5) CYP1A1 gene variants, and (6) age. Additionally, we checked the distribution of genotypes in controls using Hardy–Weinberg equilibrium (HWE).

Statistical analysis

Meta-analysis was conducted using the Metagenyo software [15]. It is an easy-to-use web application that implements a comprehensive meta-analysis workflow for Genetic Association Studies (GAS). Various genetic comparison models were employed to assess the association between CYP1A1 polymorphisms and the risk of ALL, including allele contrast, recessive, dominant, homozygous, and heterozygous models. The genotype distribution was assessed for HWE to check the study quality; p (HWE) < 0.05 showed statistical significant [15]. Odds ratios (OR) and 95% confidence intervals (CI) were calculated using the genotype distribution data. These association test results assessed the strength of the association between CYP1A1 polymorphisms (T3801C and A2455G) and the risk of ALL.

Heterogeneity among studies was evaluated using Cochran’s Q-statistic (p < 0.05) and the I2 test, representing the percentage of total variation across studies ranging from 0 to 100%. I2 ≤ 25%, 25% < I2 < 50%, and I2 > 50% were interpreted as low, moderate, and a high degree of heterogeneity, respectively [16]. A random-effects model was applied if there was significant heterogeneity (p < 0.05, I2 > 50%); otherwise, a fixed-effects model was employed [17].

A funnel plot and graphical tests were used to assess publication bias. Therefore, the asymmetry of the funnel plot suggests possible publication bias. Egger’s test was used; p < 0,05 is considered a potential statistical publication bias [16]. Forest plots were provided by meta-analysis to estimate the global results of all studies. Egger’s test and funnel plots were used to identify statistically significant publication bias (p < 0.05) [16]. Sensitivity analyses were conducted to examine whether the individual study influenced the pooled results.

Results

Search published reports

A flowchart illustrating the study selection process is presented in Fig. 1. Articles were identified using various combinations of keywords listed in the Methods section, focusing on the relationship between CYP1A1 SNPs and the risk of ALL. Seven of these articles were reviews or meta-analyses. Consequently, only 25 studies were included in this meta-analysis.

Figure 1. Flow diagram for article identification and exclusion

Study characteristics

The characteristics of the 25 articles included in the meta-analysis are outlined in Table 1. These studies were conducted in diverse populations with varying ethnicities, including Asian, African, Caucasian, Hispanic, and mixed-ethnic groups.

Table 1 . Characteristics of included studies.

First authorYear of publicationEthnicity (Country)Polymorphism StudyAge groupNumber
CasesControls
Krajinovic [18]1999Caucasian (Canada)T3801C, A2455GChild517893
Gao [19]2003Asian (China)T3801C, A2455GChild156225
Balta [20]2003Mixed (Turky)T3801CChild105145
Joseph [21]2004Asian (India)T3801C, A2455GChild236236
Canalle [22]2004Mixed (Brazil)T3801CChild113221
Gallegos-Arreole [23]2004Mixed (Mexican)A2455GAdult136136
Selvin [24]2004Mixed (California)A2455GChild175175
Clavel [25]2005Mixed (France)T3801CChild190105
Liu QX [26]2005Asian (China)T3801CAdult112179
Pakakasama [27]2005Asian (Thailand)T3801CChild91320
Aydin-Sayitoglu [28]2006Caucasian (Turky)T3801CAdult36140
Aydin-Sayitoglu [28]2006Caucasian (Turky)T3801CChild119140
Bolufer [13]2007Caucasian (Spain)T3801CMixt92403
Gallegos-Arreola [29]2008Hispanic (Mexican)T3801CAdult210228
Chen [30]2008Asian (China)T3801CMixt120204
Lee [31]2009Asian (Korea)T3801C, A2455GChild207321
Yamaguti [14]2010Caucasian (Brazil)T3801C, A2455GMixt198198
Swinney [32]2011Hispanic (USA)T3801C, A2455GChild302814
Swinney [32]2011Caucasian (USA)A2455GChild171437
Swinney [32]2011Caucasian (USA)A2455GChild71204
Suneetha [33]2011Asian (India)T3801CChild91150
Razmkhah [34]2011Mixed (Iran)A2455GChild8594
Bonaventure [35]2012Caucasian (France)T3801CChild430548
Agha [36]2013African (Egypt)T3801C, A2455GChild558600
Ouerhani [37]2013African (Tunisia)T3801CMixt100106
Nida [11]2017Asian (India)T3801CChild200200


Variants allele frequency

The allele frequencies of each variant of the CYP1A1 genotypes in the case and control groups are summarized in Tables 2, 3, 4 and 5. For the CYP1A1 T3801C polymorphism, 2822 patients and 4252 controls were enrolled in these studies. In the case group, the C allele frequencies ranged from 6 to 57% (mean = 20.6%; 95% CI [18.3–32.8]). The frequencies of the C allele varied by ethnicity: (22–51%), (7–21%), (11–20%), (21–60%), and (6–11%) in Asian, Caucasian, mixed, Hispanic, and African populations, respectively. In the control group of the T3801C polymorphism, T allele frequencies ranged from 15.4% to 27% (mean = 25%) (p = 0.3).

Table 2 . Results of meta-analysis for the CYP1A1 gene T3801C polymorphisms in ALL according to the ethnicity.

ModelEthnicityNumber of studiesTest of associationTest of heterogeneityPublication bias
OR95% CIp-valModelp-valI2p-val (Egger’s test)
Allelecontrast
(C vs. T)
Overall211,31[1.08; 1.58]0,00*Random0,00*75,46%0,21
Asian81,36[1.07; 1.71]0,00*Random0,00*64,87%0,07
African21,48[0.92; 2.37]0,10Fixed0,1649,35%NA
Caucasian61,10[0.91; 1.33]0,31Fixed0,1438,9%0,47
Hispanic22,22[0.91; 5.43]0,07Random0,00*91,94%NA
Mixed31,05[0.80; 1.38]0,68Fixed0,660%0,13
Recessive model
(CC vs. CT+TT)
Overall211,36[0.86; 2.16]0,18Random0,00*72,21%0,68
Asian81,01[0.78; 1.31]0,92Fixed0,1633,11%0,07
African22,21[0.47; 10.44]0,31Fixed0,500%NA
Caucasian60,63[0.30; 1.33]0,23Fixed0,940%0,51
Hispanic24,91[1.61; 14.93]0,00*Random0,01*82,35%NA
Mixed31,44[0.18; 11.56]0,72Random0,0566,3%0,77
Dominant model
(CC+CT vs. TT)
Overall211,40[1.17; 1.68]0,00*Random0,00*56,88%0,56
Asian81,67[1.30; 2.15]6,14E-05*Random0,0942,96%0,44
African21,43[0.86; 2.37]0,16Fixed0,1841,92%NA
Caucasian61,17[0.95; 1.44]0,12Fixed0,1045,29%0,66
Hispanic21,80[0.71; 4.59]0,21Random0,01*84,68%NA
Mixed31,02[0.75; 1.39]0,85Fixed0,630%0,59
Homozygous
(CC vs.TT)
Overall211,59[0.99; 2.53]0,05Random0,00*68,49%0,47
Asian81,41[0.92; 2.15]0,10Random0,0647,23%0,11
African22,27[0.48; 10.72]0,29Fixed0,470%NA
Caucasian60,67[0.32; 1.41]0,29Fixed0,960%0,42
Hispanic25,02[1.26; 20.00]0,02*Random0,00*86,21%NA
Mixed31,46[0.19; 10.86]0,70Random0,0663,5%0,77
Heterozygous
(CT vs. TT)
Overall211,38[1.17; 1.64]0,00*Random0,01*44,66%0,55
Asian81,83[1.48; 2.25]1,16E-08*Fixed0,2917,31%0,25
African21,34[0.79; 2.27]0,26Fixed0,2327,98%NA
Caucasian61,22[0.89; 1.68]0,20Random0,0947,18%0,83
Hispanic21,18[0.81; 1.71]0,37Fixed0,1843,82%NA
Mixed31[0.73; 1.37]0,99Fixed0,3405,98%0,93

NA Not available, OR Odds ratio.

*significance (p < 0.05).


Table 3 . Results of meta-analysis for the CYP1A1 gene T3801C polymorphisms in ALL according to the Age.

ModelAgeNumber of studiesTest of associationTest of heterogeneityPublication bias
OR95% CIp-valModelp-valI2p-val (Egger’s test)
Allelecontrast
(C vsT)
Overall211,31[1.08; 1.58]0,00*Random0,00*75,46%0,21
Child141,27[1.08; 1.49]0,00*Random0,02*48,67%0,20
Mixt41,14[0.76; 1.72]0,51Random0,0560,27%0,95
Adult31,57[0.67; 3.68]0,29Random0,00*92,11%0,50
Recessive model
(CC vs CT+TT)
Overall211,36[0.86; 2.16]0,18Random0,00*72,21%0,68
Child141,26[0.81; 1.96]0,29Random0,03*46,09%0,57
Mixt41,03[0.63; 1.69]0,88Fixed0,5100,93
Adult31,88[0.28; 12.56]0,51Random0,00*93,74%0,85
Dominant model
(CC+CT vs TT)
Overall211,40[1.17; 1.68]0,00*Random0,00*56,88%0,56
Child141,35[1.12; 1.62]0,00*Random0,0640,07%0,36
Mixt41,25[0.76; 2.05]0,37Random0,0561,45%0,99
Adult31,85[1.00; 3.41]0,04Random0,03*71,08%0,00
Homozygous
(CC vs TT)
Overall211,59[0.99; 2.53]0,05Random0,00*68,49%0,47
Child141,41[0.90; 2.20]0,12Random0,04*42,59%0,51
Mixt41,31[0.75; 2.28]0,33Fixed0,4400,91
Adult32,56[0.48; 13.57]0,26Random0,00*89,84%0,72
Heterozygous
(CT vs TT)
Overall211,38[1.17; 1.64]0,00*Random0,01*44,66%0,55
Child141,38[1.12; 1.69]0,00*Random0,03*45,18%0,28
Mixt41,27[0.78; 2.07]0,32Random0,0757,24%0,97
Adult31,59[1.14; 2.21]0,00*Fixed0,1154,17%0,74

NA Not available, OR Odds ratio.

*significance (p < 0.05).


Table 4 . Results of meta-analysis for the CYP1A1 gene A2455G polymorphisms and ALL risk according to the ethnicity.

ModelEthnicityNumber of studiesTest of associationTest of HeterogeneityPublication bias
OR95% CIp-valModelp-valI2p-val (Egger’s test)
Allelecontrast
(G vs. A)
Overall121,25[1.09; 1.42]0,00*Fixed0,1430,92%0,76
Caucasian51,21[0.95; 1.54]0,11Fixed0,810,00%0,39
Asian31,36[0.80; 2.31]0,25Random0,01*76,95%0,11
Mixed41,26[1.03; 1.53]0,02*Fixed0,1346,28%0,69
Recessive model
(GG vs GA+AA)
Overall111,94[1.39; 2.71]0,00*Fixed0,790,00%0,58
Caucasian52,03[1.08; 3.83]0,02*Fixed0,780,00%0,76
Asian31,51[0.81; 2.78]0,18Fixed0,3210,13%0,45
Mixed32,25[1.35; 3.73]0,00*Fixed0,520,00%0,46
Dominant model
(GG+GA vs AA)
Overall121,19[1.01; 1.39]0,03Fixed0,1925,08%0,77
Caucasian51,13[0.85; 1.50]0,37Fixed0,720,00%0,54
Asian31,39[0.75; 2.58]0,28Random0,02*71,87%0,46
Mixed41,15[0.91; 1.46]0,23Fixed0,1838,39%0,94
Homozygous
(GG vs AA)
Overall112,02[1.43; 2.85]0,00*Fixed0,690,00%0,65
Caucasian51,92[0.99; 3.70]0,05Fixed0,860,00%0,94
Asian31,67[0.88; 3.17]0,11Fixed0,2233,47%0,46
Mixed32,37[1.41; 3.97]0,00*Fixed0,3211,46%0,60
Heterozygous
(GA vs AA)
Overall121,09[0.92; 1.29]0,3Fixed0,3113,5%0,54
Caucasian51,05[0.78; 1.42]0,72Fixed0,510,00%0,64
Asian31,31[0.75; 2.27]0,33Random0,0761,24%0,35
Mixed41,03[0.80; 1.32]0,79Fixed0,3311,26%0,77

NA Not available, OR Odds ratio.

*significance (p < 0.05).


Table 5 . Results of meta-analysis for the CYP1A1 gene A2455G polymorphisms and ALL risk according to the age.

ModelAgeNumber of studiesTest of associationTest of heterogeneityPublication bias
OR95% CIp-valModelp-valI2p-val (Egger’s test)
Allelecontrast
(G vs A)
Overall121,25[1.09; 1.42]0,00*Fixed0,1430,920,76
Child101,18[1.02; 1.37]0,02*Fixed0,2124,870,93
Adult11,75[1.22; 2.51]0,00*FixedNANANA
Mixt11,25[0.76; 2.06]0,37FixedNANANA
Recessive model
(GG vs GA+AA)
Overall111,94[1.39; 2.71]0,00*Fixed0,7900,58
Child91,84[1.27; 2.67]0,00*Fixed0,8200,90
Adult13,08[1.32; 7.20]0,00*FixedNANANA
Mixt11[0.19; 5.07]1FixedNAANA
Dominant model
(GG+GA vs AA)
Overall121,19[1.01; 1.39]0,03*Fixed0,1925,080,77
Child101,11[0.93; 1.32]0,23Fixed0,2817,40,65
Adult11,82[1.12; 2.97]0,01*FixedNANANA
Mixt11,36[0.75; 2.43]0,30FixedNANANA
Homozygous
(GG vs AA)
Overall112,02[1.43; 2.85]0,00*Fixed0,6900,65
Child91,85[1.26; 2.71]0,00*Fixed0,8000,97
Adult13,87[1.59; 9.41]0,00*FixedNANANA
Mixt11,11[0.21; 5.74]0,89FixedNANANA
Heterozygous
(GA vs AA)
Overall121,09[0.92; 1.29]0,30Fixed0,3113,50,54
Child101,01[0.84; 1.22]0,84Fixed0,377,550,42
Adult11,55[0.93; 2.57]0,09FixedNANANA
Mixt11,38[0.76; 2.52]0,28FixedNANANA

NA Not available, OR Odds ratio.

*significance (p < 0.05).



Similarly, for the CYP1A1 A2455G polymorphism, 1636 cases and 2674 controls were included in these studies. In the case group, G allele frequencies varied from 4 to 41% (mean = 16.3%; 95% CI [10.1–23]). In the Caucasian population, the frequency of the G allele ranged from 4 to 36%, from 23 to 41% in Asian populations, and from 8 to 40% in mixed populations. In the control group, the frequency of the G allele varied from 10.1% to 23% (mean = 16%) (p = 0.5).

Meta‑analysis results

The results of the meta-analysis of association studies are summarized in Tables 2 and 4. By examining the heterogeneity test results, we considered both fixed and random effects models, depending on the p-value and I2 metrics. The latter was selected for subsequent analyses.

T3801C variant of CYP1A1 and risk of ALL

The results of the meta-analysis of T3801C are summarized in Table 2(A, B) and Fig. 3. Overall, the variant T3801C predicts a significant association with ALL risk, mainly in allele contrast [C vs T] (OR = 1.31, 95% CI [1.08;1.58], p = 0.01; Fig. 2A), dominant [CC + CT vs TT] (OR = 1.40, 95% CI [1.17;1.68], p = 0.00; Fig. 2C), homozygous [CC vs TT] (OR = 1.59, 95% CI [0.99;2.35], p = 0.05; Fig. 2D), and heterozygous models [CT vs TT] (OR = 1.38, 95% CI [1.17;1.64], p = 0.00; Fig. 2E), except for the recessive model [CC vs CT + TT] (OR = 1.36, 95% CI [0.86;2.16], p = 0.18; Fig. 2A).

Figure 2. Forest plot of C3801T Polymorphism and ALL Risk under Different Models (A-E)
Figure 3. Forest plot of A2455G Polymorphism and ALL Risk under Different Models (A-E)

According to ethnicity, the increased risk of ALL (OR > 1) was significant (p < 0.05), mainly in Asian populations for allele contrast, dominant, and heterozygous models, and in Hispanic populations for the homozygous model. However, susceptibility to ALL was not significant (p > 0.05) for other ethnicities (African and mixed). A decreased risk of ALL was observed in the Caucasian population in the recessive (OR = 0.63; 95% CI [0.30, 1.33]; p = 0.23) and homozygous models (OR = 0.67; 95% CI [0.32, 1.41]; p = 0.29). However, no risk of ALL (OR ~ 1) was observed in the Asian population in the recessive model (OR = 1.01; 95% CI [0.78, 1.31]; p = 0.92) or in the mixed population in the heterozygous model (OR = 1; 95% CI [0.73, 1.37]; p = 0.99).

Moreover, the T3801C polymorphism increased the risk of ALL, independent of age (OR > 1). As indicated by genetic models, this association was significant in children for allele contrast [C vs T] (OR = 1.27; 95% CI [1.08; 1.49]; p = 0.00), dominant [CC + CT vs TT] (OR = 1.35; 95% CI [1.12; 1.62]; p = 0.00), and heterozygous models [CT vs TT] (OR = 1.38; 95% CI [1.12; 1.69]; p = 0.00) and in the adult population for dominant [CC + CT vs TT] (OR = 1.85; 95% CI [1.00; 3.41]; p = 0.04) and heterozygous models [CT vs TT] (OR = 1.59; 95% CI [1.14; 2.21]; p = 0.00).

A2455G variant of CYP1A1 and risk of ALL

The results of the meta-analysis for A2455G are summarized in Table 4(A, B) and Fig. 3. Overall, the A2455G variant predicts a significantly increased risk of ALL, mainly in the allele contrast [G vs A] (OR = 1.25, 95% CI [1.09;1.42], p = 0.00; Fig. 3A), recessive [GG vs GA + AA] (OR = 1.94, 95% CI [1.39;2.71], p = 0.00; Fig. 3B), dominant [GG + GA vs AA] (OR = 1.19, 95% CI [1.01;1.39], p = 0.03; Fig. 3C), and homozygous [GG vs AA] (OR = 2.02, 95% CI [1.43;2.85], p = 0.00; Fig. 3D), except for the heterozygous model [GA vs AA] (OR = 1.09, 95% CI [0.92;1.29], p = 0.3; Fig. 3E). Regarding ethnicity, the increased risk of ALL (OR > 1) was significant mainly in mixed populations for all genetic model alleles, except for the heterozygous (OR = 1.03; 95% CI [0.830;1.32]; p = 0.79) and dominant models (OR = 1.15; 95% CI [0.91;1.46]; p = 0.23). However, no risk of ALL (OR ~ 1) was observed in Caucasian and mixed populations in the heterozygous model (OR = 1.05; 95% CI [0.78;1.42]; p = 0.72) and (OR = 1.03; 95% CI [0.830;1.32]; p = 0.79), respectively.

In addition, the A2455G polymorphism increased the risk of ALL independent of age (OR > 1). According to genetic models, this association was significant in both children and adults for allele contrast [G vs A], with respective values of (OR = 1.18 and 1.75; 95% CI [1.02; 1.37], p = 0.02 and 95% CI [1.22; 2.51], p = 0.00), recessive [GG vs GA + AA], with respective values of (OR = 1.84 and 3.08; 95% CI [1.27; 2.67]; p = 0.00 and 95% CI [1.32; 7.20], p = 0.00), and homozygous model, with respective values of (OR = 1.85 and 3.87; 95% CI [1.26; 2.71]; p = 0.00 and 95% CI [1.59; 9.41], p = 0.00). The significant association was observed only in the adult model for the dominant model (OR = 1.8, 95% CI [1.12; 2.97]; p = 0.01).

Sensitivity analysis

We conducted a sensitivity analysis to evaluate the stability of the pooled results (Figs. S1 and S2). The ORs remained largely unchanged even when each individual study was excluded. This indicates that the results obtained from the meta-analysis models employed in this study are robust. Sensitivity plots for the T3801C and A2455G polymorphisms in all models are presented in Figs. S1(A-E) and S2(A-E), respectively. Studies not in HWE were excluded, as no significant changes were observed in the combined ORs.

Publication bias

To assess publication bias, we utilized funnel plots (Figs. S3 and S4). According to the Egger’s test, the funnel plots for correlations between the T3801C and A2455G polymorphisms and the risk of ALL were symmetric, suggesting an absence of significant publication bias, except for a symmetric shape in the funnel plots. The Egger test further confirmed the absence of publication bias (all p > 0.05) for T3801C (Fig. S3) and A2455G (Fig. S4). However, the T3801C variant exhibited publication bias only in the adult population under the dominant model (CC + CT vs. TT).

Discussion

In this meta-analysis, we investigated the association between CYP1A1 polymorphisms and ALL patients. This study is one of the largest across various ethnicities, age groups, and genetic models when compared to previous meta-analyses [12, 38]. Our meta-analysis included 2822 cases (4252 controls) for the C3801T variant and 1636 cases (2674 controls) for the A2455G variant of CYP1A1, respectively. Globally, the results of the present meta-analysis revealed that the genotypic frequencies of CYP1A1 differed between cases and controls, although the difference was not statistically significant (p > 0.05). Interestingly, the highest frequency was recorded for the T3801C variant (20.6% and 25% in cases and controls, respectively). The A2455G variant was observed in 16.3% of cases and 19.5% of controls. Moreover, the frequency varied across ethnicities, reflecting the worldwide distribution of CYP1A1 variants based on ethnicity and age [12].

Our comprehensive analysis, derived from studies to date, highlights the impact of CYP1A1 polymorphisms on the risk of ALL, stratified by genetic models, ethnicity, and age. Overall, these variants predict an increased risk of ALL in Asian and Hispanic populations, independent of age. The T3801C polymorphism of CYP1A1 significantly increases the risk of ALL, particularly in Asian and Hispanic populations, irrespective of age. Similarly, the A2455G polymorphism of CYP1A1 plays a significant role in the susceptibility to ALL in all genetic models, excluding the heterozygous form. This association was predominantly observed in a mixed population of children and adults, except for the heterozygous model. These findings diverge from those reported in a previous meta-analysis by Lu et al. [12].

Nevertheless, numerous studies have indicated an association between CYP1A1 polymorphisms and ALL, yielding inconclusive results [1114]. The disparity in these outcomes underscores the potential impact of ethnic differences in genetic background and environmental factors related to CYP1A1 polymorphisms and the risk of ALL. The confluence of heightened genetic susceptibility and increased environmental exposure in vulnerable populations may uniquely elevate the susceptibility to malignancy in Hispanic and Asian populations. However, investigating potential single nucleotide polymorphism–single nucleotide polymorphism interactions between CYP1A1 and other genes across different ethnic groups could provide insights into this issue.

The polymorphism of CYP1A1 has been reported to alter susceptibility to various types of cancers, including lung, head, neck, bladder, and breast cancer [3941]. This discovery prompted us to explore the association between ALL and CYP1A1 polymorphisms. In this updated meta-analysis, we present evidence suggesting that both common variants of CYP1A1 may serve as biomarkers for ALL susceptibility. However, there are some limitations to our study. Firstly, the relatively small sample size resulted in a lack of consistently robust statistical power. Secondly, interstudy heterogeneity persists in this meta-analysis, although we minimized the likelihood through a comprehensive literature search using stringent inclusion and exclusion criteria. Finally, other factors, such as gene-gene and gene-environment interactions, should be considered. Therefore, further rigorous analyses with larger sample sizes are necessary to validate the findings of this meta-analysis.

Conclusion

Our comprehensive analysis of studies to date indicates that CYP1A1 variants play a role in the risk of ALL. Interestingly, both variants of CYP1A1 (T3801 and A2455G) significantly increase the risk of ALL, depending on ethnicity. Consequently, both variants should be considered promising biomarkers for ALL risk. However, while this meta-analysis is one of the largest studies across ethnicity, age, and genetic models, further large-scale investigations are necessary to assess other factors, such as gene-gene or gene-environment interactions.

Supplementary Information

The online version contains supplementary material available at https://doi.org/10.1007/s44313-024-00007-9.

Additional file 1: Figure S1. Sensitivity plot of the T3801C polymorphism under different models. A: allele contrst model, B: recessive model, C: dominant model, D: homozygous model, E: heterozygous model. Figure S2. Sensitivity plot of the A2455G polymorphism under different models. A: Allele contrast model, B: recessive model, C: dominant model, D: homozygous model, E: heterozygous model. Figure S3. Funnel plots for different models of T3801C polymorphism. A: Allele contrast model; B: Recessive model; C: Dominant model; D: Homozygous model; E: Heterozygous model. Figure S4. Funnel plots for different models of A2455G polymorphism. A: Allele contrast model; B: Recessive model; C: Dominant model; D: Homozygous model; E: Heterozygous model.

Acknowledgements

None.

Authors’ contributions

All authors contribute to the study and paper preparation.

Funding

None.

Publisher’s Note

Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.

Declarations

Ethics approval and consent to participate

Not applicable.

Competing interests

None.

Fig 1.

Figure 1.Flow diagram for article identification and exclusion

Fig 2.

Figure 2.Forest plot of C3801T Polymorphism and ALL Risk under Different Models (A-E)

Fig 3.

Figure 3.Forest plot of A2455G Polymorphism and ALL Risk under Different Models (A-E)

Table 1 . Characteristics of included studies.

First authorYear of publicationEthnicity (Country)Polymorphism StudyAge groupNumber
CasesControls
Krajinovic [18]1999Caucasian (Canada)T3801C, A2455GChild517893
Gao [19]2003Asian (China)T3801C, A2455GChild156225
Balta [20]2003Mixed (Turky)T3801CChild105145
Joseph [21]2004Asian (India)T3801C, A2455GChild236236
Canalle [22]2004Mixed (Brazil)T3801CChild113221
Gallegos-Arreole [23]2004Mixed (Mexican)A2455GAdult136136
Selvin [24]2004Mixed (California)A2455GChild175175
Clavel [25]2005Mixed (France)T3801CChild190105
Liu QX [26]2005Asian (China)T3801CAdult112179
Pakakasama [27]2005Asian (Thailand)T3801CChild91320
Aydin-Sayitoglu [28]2006Caucasian (Turky)T3801CAdult36140
Aydin-Sayitoglu [28]2006Caucasian (Turky)T3801CChild119140
Bolufer [13]2007Caucasian (Spain)T3801CMixt92403
Gallegos-Arreola [29]2008Hispanic (Mexican)T3801CAdult210228
Chen [30]2008Asian (China)T3801CMixt120204
Lee [31]2009Asian (Korea)T3801C, A2455GChild207321
Yamaguti [14]2010Caucasian (Brazil)T3801C, A2455GMixt198198
Swinney [32]2011Hispanic (USA)T3801C, A2455GChild302814
Swinney [32]2011Caucasian (USA)A2455GChild171437
Swinney [32]2011Caucasian (USA)A2455GChild71204
Suneetha [33]2011Asian (India)T3801CChild91150
Razmkhah [34]2011Mixed (Iran)A2455GChild8594
Bonaventure [35]2012Caucasian (France)T3801CChild430548
Agha [36]2013African (Egypt)T3801C, A2455GChild558600
Ouerhani [37]2013African (Tunisia)T3801CMixt100106
Nida [11]2017Asian (India)T3801CChild200200

Table 2 . Results of meta-analysis for the CYP1A1 gene T3801C polymorphisms in ALL according to the ethnicity.

ModelEthnicityNumber of studiesTest of associationTest of heterogeneityPublication bias
OR95% CIp-valModelp-valI2p-val (Egger’s test)
Allelecontrast
(C vs. T)
Overall211,31[1.08; 1.58]0,00*Random0,00*75,46%0,21
Asian81,36[1.07; 1.71]0,00*Random0,00*64,87%0,07
African21,48[0.92; 2.37]0,10Fixed0,1649,35%NA
Caucasian61,10[0.91; 1.33]0,31Fixed0,1438,9%0,47
Hispanic22,22[0.91; 5.43]0,07Random0,00*91,94%NA
Mixed31,05[0.80; 1.38]0,68Fixed0,660%0,13
Recessive model
(CC vs. CT+TT)
Overall211,36[0.86; 2.16]0,18Random0,00*72,21%0,68
Asian81,01[0.78; 1.31]0,92Fixed0,1633,11%0,07
African22,21[0.47; 10.44]0,31Fixed0,500%NA
Caucasian60,63[0.30; 1.33]0,23Fixed0,940%0,51
Hispanic24,91[1.61; 14.93]0,00*Random0,01*82,35%NA
Mixed31,44[0.18; 11.56]0,72Random0,0566,3%0,77
Dominant model
(CC+CT vs. TT)
Overall211,40[1.17; 1.68]0,00*Random0,00*56,88%0,56
Asian81,67[1.30; 2.15]6,14E-05*Random0,0942,96%0,44
African21,43[0.86; 2.37]0,16Fixed0,1841,92%NA
Caucasian61,17[0.95; 1.44]0,12Fixed0,1045,29%0,66
Hispanic21,80[0.71; 4.59]0,21Random0,01*84,68%NA
Mixed31,02[0.75; 1.39]0,85Fixed0,630%0,59
Homozygous
(CC vs.TT)
Overall211,59[0.99; 2.53]0,05Random0,00*68,49%0,47
Asian81,41[0.92; 2.15]0,10Random0,0647,23%0,11
African22,27[0.48; 10.72]0,29Fixed0,470%NA
Caucasian60,67[0.32; 1.41]0,29Fixed0,960%0,42
Hispanic25,02[1.26; 20.00]0,02*Random0,00*86,21%NA
Mixed31,46[0.19; 10.86]0,70Random0,0663,5%0,77
Heterozygous
(CT vs. TT)
Overall211,38[1.17; 1.64]0,00*Random0,01*44,66%0,55
Asian81,83[1.48; 2.25]1,16E-08*Fixed0,2917,31%0,25
African21,34[0.79; 2.27]0,26Fixed0,2327,98%NA
Caucasian61,22[0.89; 1.68]0,20Random0,0947,18%0,83
Hispanic21,18[0.81; 1.71]0,37Fixed0,1843,82%NA
Mixed31[0.73; 1.37]0,99Fixed0,3405,98%0,93

NA Not available, OR Odds ratio.

*significance (p < 0.05).


Table 3 . Results of meta-analysis for the CYP1A1 gene T3801C polymorphisms in ALL according to the Age.

ModelAgeNumber of studiesTest of associationTest of heterogeneityPublication bias
OR95% CIp-valModelp-valI2p-val (Egger’s test)
Allelecontrast
(C vsT)
Overall211,31[1.08; 1.58]0,00*Random0,00*75,46%0,21
Child141,27[1.08; 1.49]0,00*Random0,02*48,67%0,20
Mixt41,14[0.76; 1.72]0,51Random0,0560,27%0,95
Adult31,57[0.67; 3.68]0,29Random0,00*92,11%0,50
Recessive model
(CC vs CT+TT)
Overall211,36[0.86; 2.16]0,18Random0,00*72,21%0,68
Child141,26[0.81; 1.96]0,29Random0,03*46,09%0,57
Mixt41,03[0.63; 1.69]0,88Fixed0,5100,93
Adult31,88[0.28; 12.56]0,51Random0,00*93,74%0,85
Dominant model
(CC+CT vs TT)
Overall211,40[1.17; 1.68]0,00*Random0,00*56,88%0,56
Child141,35[1.12; 1.62]0,00*Random0,0640,07%0,36
Mixt41,25[0.76; 2.05]0,37Random0,0561,45%0,99
Adult31,85[1.00; 3.41]0,04Random0,03*71,08%0,00
Homozygous
(CC vs TT)
Overall211,59[0.99; 2.53]0,05Random0,00*68,49%0,47
Child141,41[0.90; 2.20]0,12Random0,04*42,59%0,51
Mixt41,31[0.75; 2.28]0,33Fixed0,4400,91
Adult32,56[0.48; 13.57]0,26Random0,00*89,84%0,72
Heterozygous
(CT vs TT)
Overall211,38[1.17; 1.64]0,00*Random0,01*44,66%0,55
Child141,38[1.12; 1.69]0,00*Random0,03*45,18%0,28
Mixt41,27[0.78; 2.07]0,32Random0,0757,24%0,97
Adult31,59[1.14; 2.21]0,00*Fixed0,1154,17%0,74

NA Not available, OR Odds ratio.

*significance (p < 0.05).


Table 4 . Results of meta-analysis for the CYP1A1 gene A2455G polymorphisms and ALL risk according to the ethnicity.

ModelEthnicityNumber of studiesTest of associationTest of HeterogeneityPublication bias
OR95% CIp-valModelp-valI2p-val (Egger’s test)
Allelecontrast
(G vs. A)
Overall121,25[1.09; 1.42]0,00*Fixed0,1430,92%0,76
Caucasian51,21[0.95; 1.54]0,11Fixed0,810,00%0,39
Asian31,36[0.80; 2.31]0,25Random0,01*76,95%0,11
Mixed41,26[1.03; 1.53]0,02*Fixed0,1346,28%0,69
Recessive model
(GG vs GA+AA)
Overall111,94[1.39; 2.71]0,00*Fixed0,790,00%0,58
Caucasian52,03[1.08; 3.83]0,02*Fixed0,780,00%0,76
Asian31,51[0.81; 2.78]0,18Fixed0,3210,13%0,45
Mixed32,25[1.35; 3.73]0,00*Fixed0,520,00%0,46
Dominant model
(GG+GA vs AA)
Overall121,19[1.01; 1.39]0,03Fixed0,1925,08%0,77
Caucasian51,13[0.85; 1.50]0,37Fixed0,720,00%0,54
Asian31,39[0.75; 2.58]0,28Random0,02*71,87%0,46
Mixed41,15[0.91; 1.46]0,23Fixed0,1838,39%0,94
Homozygous
(GG vs AA)
Overall112,02[1.43; 2.85]0,00*Fixed0,690,00%0,65
Caucasian51,92[0.99; 3.70]0,05Fixed0,860,00%0,94
Asian31,67[0.88; 3.17]0,11Fixed0,2233,47%0,46
Mixed32,37[1.41; 3.97]0,00*Fixed0,3211,46%0,60
Heterozygous
(GA vs AA)
Overall121,09[0.92; 1.29]0,3Fixed0,3113,5%0,54
Caucasian51,05[0.78; 1.42]0,72Fixed0,510,00%0,64
Asian31,31[0.75; 2.27]0,33Random0,0761,24%0,35
Mixed41,03[0.80; 1.32]0,79Fixed0,3311,26%0,77

NA Not available, OR Odds ratio.

*significance (p < 0.05).


Table 5 . Results of meta-analysis for the CYP1A1 gene A2455G polymorphisms and ALL risk according to the age.

ModelAgeNumber of studiesTest of associationTest of heterogeneityPublication bias
OR95% CIp-valModelp-valI2p-val (Egger’s test)
Allelecontrast
(G vs A)
Overall121,25[1.09; 1.42]0,00*Fixed0,1430,920,76
Child101,18[1.02; 1.37]0,02*Fixed0,2124,870,93
Adult11,75[1.22; 2.51]0,00*FixedNANANA
Mixt11,25[0.76; 2.06]0,37FixedNANANA
Recessive model
(GG vs GA+AA)
Overall111,94[1.39; 2.71]0,00*Fixed0,7900,58
Child91,84[1.27; 2.67]0,00*Fixed0,8200,90
Adult13,08[1.32; 7.20]0,00*FixedNANANA
Mixt11[0.19; 5.07]1FixedNAANA
Dominant model
(GG+GA vs AA)
Overall121,19[1.01; 1.39]0,03*Fixed0,1925,080,77
Child101,11[0.93; 1.32]0,23Fixed0,2817,40,65
Adult11,82[1.12; 2.97]0,01*FixedNANANA
Mixt11,36[0.75; 2.43]0,30FixedNANANA
Homozygous
(GG vs AA)
Overall112,02[1.43; 2.85]0,00*Fixed0,6900,65
Child91,85[1.26; 2.71]0,00*Fixed0,8000,97
Adult13,87[1.59; 9.41]0,00*FixedNANANA
Mixt11,11[0.21; 5.74]0,89FixedNANANA
Heterozygous
(GA vs AA)
Overall121,09[0.92; 1.29]0,30Fixed0,3113,50,54
Child101,01[0.84; 1.22]0,84Fixed0,377,550,42
Adult11,55[0.93; 2.57]0,09FixedNANANA
Mixt11,38[0.76; 2.52]0,28FixedNANANA

NA Not available, OR Odds ratio.

*significance (p < 0.05).


References

  1. Terwilliger T, Abdul-Hay M. Acute lymphoblastic leukemia: a comprehensive review and 2017 update. Blood Cancer J. 2017;7:e577.
    Pubmed KoreaMed CrossRef
  2. Chokkalingam AP, Buffler PA. Genetic susceptibility to childhood leukaemia. Radiat Prot Dosim. 2008;132:119-29.
    Pubmed KoreaMed CrossRef
  3. Severson RK, Ross JA. The causes of acute leukemia. Curr Opin Oncol. 1999;11:20-4.
    Pubmed CrossRef
  4. Rendic S, Guengerich FP. Contributions of human enzymes in carcinogen metabolism. Chem Res Toxicol. 2012;25:1316-83.
    Pubmed KoreaMed CrossRef
  5. Samuel W, Lovell J, Christine C, Kathi H, editors. Cancer and the Environment: Gene-Environment Interactions. Washington, D.C.: National Academies Press; 2002. https://doi.org/10.17226/10464.
    CrossRef
  6. Guengerich FP, Shimada T. Oxidation of toxic and carcinogenic chemicals by human cytochrome P-450 enzymes. Chem Res Toxicol. 1991;4:391-407.
    Pubmed CrossRef
  7. Whyatt RM, Bell DA, Jedrychowski W, et al. Polycyclic aromatic hydrocarbon-DNA adducts in human placenta and modulation by CYP1A1 induction and genotype. Carcinogenesis. 1998;19:1389-92.
    Pubmed CrossRef
  8. Pegram RA, Diliberto JJ, Moore TC, Gao P, Birnbaum LS. 2,3,7,8-tetrachlorodibenzo-p-dioxin (TCDD) distribution and cytochrome P4501A induction in young adult and senescent male mice. Toxicol Lett. 1995;76:119-26.
    Pubmed CrossRef
  9. Crofts F, Cosma GN, Currie D, Taioli E, Toniolo P, Garte SJ. A novel CYP1A1 gene polymorphism in African-Americans. Carcinogenesis. 1993;14:1729-31.
    Pubmed CrossRef
  10. Kawajiri K, Nakachi K, Imai K, Yoshii A, Shinoda N, Watanabe J. Identification of genetically high risk individuals to lung cancer by DNA polymorphisms of the cytochrome P450IA1 gene. FEBS Lett. 1990;263:131-3.
    Pubmed CrossRef
  11. Nida S, Javid B, Akbar M, Idrees S, Adil W, Ahmad GB. Gene variants of CYP1A1 and CYP2D6 and the risk of childhood acute lymphoblastic leukaemia; outcome of a case control study from Kashmir. India Mol Biol Res Commun. 2017;6:77-84.
  12. Lu J, Zhao Q, Zhai YJ, et al. Genetic polymorphisms of CYP1A1 and risk of leukemia: a meta-analysis. Onco Targets Ther. 2015;8:2883-902.
    Pubmed KoreaMed CrossRef
  13. Bolufer P, Collado M, Barragán E, et al. The potential effect of gender in combination with common genetic polymorphisms of drug-metabolizing enzymes on the risk of developing acute leukemia. Haematologica. 2007;92:308-14.
    Pubmed CrossRef
  14. Yamaguti GG, Lourenço GJ, Silveira VS, Tone LG, Lopes LF, Lima CSP. Increased risk for acute lymphoblastic leukemia in children with cytochrome P450A1(CYP1A1)- and NAD(P)H:quinone oxidoreductase 1 (NQO1)-inherited gene variants. Acta Haematol. 2010;124:182-4.
    Pubmed CrossRef
  15. Martorell-Marugan J, Toro-Dominguez D, Alarcon-Riquelme ME, Carmona-Saez P. MetaGenyo: a web tool for meta-analysis of genetic association studies. BMC Bioinformatics. 2017;18:563.
    Pubmed KoreaMed CrossRef
  16. Egger M, Davey Smith GD, Schneider M, Minder C. Bias in meta-analysis detected by a simple, graphical test. BMJ. 1997;315:629-34.
    Pubmed KoreaMed CrossRef
  17. Gurion R, Gafter-Gvili A, Vidal L, et al. Has the time for first-line treatment with second generation tyrosine kinase inhibitors in patients with chronic myelogenous leukemia already come? Systematic review and meta-analysis. Haematologica. 2013;98:95-102.
    Pubmed KoreaMed CrossRef
  18. Krajinovic M, Labuda D, Richer C, Karimi S, Sinnett D. Susceptibility to childhood acute lymphoblastic leukemia: influence of CYP1A1, CYP2D6, GSTM1, and GSTT1 genetic polymorphisms. Blood. 1999;93:1496-501.
    Pubmed CrossRef
  19. Gao J, Huang Y, Liang J, Fang X. Relationship between genetic polymorphisms of CYP1A1 and ALL. Chin J Birth Health Hered. 2003;11:21-4.
  20. Balta G, Yuksek N, Ozyurek E, et al. Characterization of MTHFR, GSTM1, GSTT1, GSTP1, and CYP1A1 genotypes in childhood acute leukemia. Am J Hematol. 2003;73:154-60.
    Pubmed CrossRef
  21. Joseph T, Kusumakumary P, Chacko P, Abraham A, Radhakrishna PM. Genetic polymorphism ofCYP1A1, CYP2D6, GSTM1 andGSTT1 and susceptibility to acute lymphoblastic leukaemia in Indian children. Pediatr Blood Cancer. 2004;43:560-7.
    Pubmed CrossRef
  22. Canalle R, Burim RV, Tone LG, Takahashi CS. Genetic polymorphisms and susceptibility to childhood acute lymphoblastic leukemia. Environ Mol Mutagen. 2004;43:100-9.
    Pubmed CrossRef
  23. Gallegos-Arreola MP, González-García JR, Figuera LE, Puebla-Pérez AM, Delgado-Lamas JL, Zúñiga-González GM. Distribution of CYP1A1*2A polymorphism in adult patients with acute lymphoblastic leukemia in a Mexican population. Blood Cells Mol Dis. 2008;41:91-4.
    Pubmed CrossRef
  24. Selvin S. Cytochrome P450 1A1 polymorphism and childhood leukemia: an analysis of matched pairs case-control genotype data. Cancer Epidemiol Biomarkers Prev. 2004;13:1371-4.
    Pubmed CrossRef
  25. Clavel J, Bellec S, Rebouissou S, et al. Childhood leukaemia, polymorphisms of metabolism enzyme genes, and interactions with maternal tobacco, coffee and alcohol consumption during pregnancy. Eur J Cancer Prev. 2005;14:531-40.
    Pubmed CrossRef
  26. Liu QX, Chen HC, Liu XF, Cao YF, Zhang J, Liu J. Study on the relationship between polymorphisms of Cyp1A1, GSTM1, GSTT1 genes and the susceptibility to acute leukemia in the general population of Hunan Province. Zhonghua Liu Xing Bing Xue Za Zhi. 2005;26:975-9.
  27. Pakakasama S, Mukda E, Sasanakul W, et al. Polymorphisms of drugmetabolizing enzymes and risk of childhood acute lymphoblastic leukemia. Am J Hematol. 2005;79:202-5.
    Pubmed CrossRef
  28. Aydin-Sayitoglu M, Hatirnaz O, Erensoy N, Ozbek U. Role of CYP2D6, CYP1A1, CYP2E1, GSTT1, and GSTM1 genes in the susceptibility to acute leukemias. Am J Hematol. 2006;81:162-70.
    Pubmed CrossRef
  29. Gallegos-Arreola MP, Batista-González CM, Delgado-Lamas JL, et al. Cytochrome P4501A1 polymorphism is associated with susceptibility to acute lymphoblastic leukemia in adult Mexican patients. Blood Cells Mol Dis. 2004;33:326-9.
    Pubmed CrossRef
  30. Chen HC, Hu WX, Liu QX, et al. Genetic polymorphisms of metabolic enzymes CYP1A1, CYP2D6, GSTM1 and GSTT1 and leukemia susceptibility. Eur J Cancer Prev. 2008;17:251-8.
    Pubmed CrossRef
  31. Lee KM, Ward MH, Han S, et al. Paternal smoking, genetic polymorphisms in CYP1A1 and childhood leukemia risk. Leuk Res. 2009;33:250-8.
    Pubmed KoreaMed CrossRef
  32. Swinney RM, Beuten J, Collier AB 3rd, et al. Polymorphisms in CYP1A1 and ethnic-specific susceptibility to acute lymphoblastic leukemia in children. Cancer Epidemiol Biomarkers Prev. 2011;20:1537-42.
    Pubmed CrossRef
  33. Sinnett D, Krajinovic M, Labuda D. Genetic susceptibility to childhood acute lymphoblastic leukemia. Leuk Lymphoma. 2000;38:447-62.
    Pubmed CrossRef
  34. Razmkhah F, Pazhakh V, Zaker F, Atashrazm F, Sheikhi M. Frequency of CYP1A1*2C polymorphism in patients with leukemia in the Iranian population. Lab Med. 2011;42:220-3.
    CrossRef
  35. Bonaventure A, Goujon-Bellec S, Rudant J, et al. Maternal smoking during pregnancy, genetic polymorphisms of metabolic enzymes, and childhood acute leukemia: the ESCALE Study (SFCE). Cancer Causes Control. 2012;23:329-45.
    Pubmed CrossRef
  36. Agha A, Shabaan H, Abdel-Gawad E, El-Ghannam D. Polymorphism of CYP1A1 gene and susceptibility to childhood acute lymphoblastic leukemia in Egypt. Leuk Lymphoma. 2014;55:618-23.
    Pubmed CrossRef
  37. Ouerhani S, Cherif N, Bahri I, Safra I, Menif S, Abbes S. Genetic polymorphisms of NQO1, CYP1A1 and TPMT and susceptibility to acute lymphoblastic leukemia in a Tunisian population. Mol Biol Rep. 2013;40:1307-14.
    Pubmed CrossRef
  38. Han F, Tan Y, Cui W, Dong L, Li W. Novel insights into etiologies of leukemia: a HuGE review and meta-analysis of CYP1A1 polymorphisms and leukemia risk. Am J Epidemiol. 2013;178:493-507.
    Pubmed CrossRef
  39. Hamachi T, Tajima O, Uezono K, et al. CYP1A1, GSTM1, GSTT1 and NQO1 polymorphisms and colorectal adenomas in Japanese men. World J Gastroenterol. 2013;19:4023-30.
    Pubmed KoreaMed CrossRef
  40. Yao L, Yu X, Yu L. Lack of significant association between CYP1A1 T3801C polymorphism and breast cancer risk: a meta-analysis involving 25,087 subjects. Breast Cancer Res Treat. 2010;122:503-7.
    Pubmed CrossRef
  41. He XF, Wei W, Liu ZZ, et al. Association between the CYP1A1 T3801C polymorphism and risk of cancer: evidence from 268 case-control studies. Gene. 2014;534:324-44.
    Pubmed CrossRef
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