Literature DB >> 28352190

SDF1-3'A polymorphism is associated with increased risk of hematological malignancy: a meta-analysis.

Xiaowen Zhang1, Yang Fan1, Zhijie Li1.   

Abstract

CXCL12 (also named SDF1), a member of the chemokine family, has been demonstrated to play an important role in the progression of multiple types of hematological malignancy. Several recent studies have shown that SDF1-3'A polymorphism (rs1801157) is associated with susceptibility to hematological malignancy, but published studies' results are disputed. Therefore, we performed a meta-analysis to evaluate the relationship between SDF1-3'A polymorphism and the risk of hematological malignancy based on the existing literature. We carried out a comprehensive literature search using the Web of Science, PubMed, Cochrane Library, Chinese Wan Fang, and Chinese National Knowledge Infrastructure databases. And the raw data were extracted and calculated in standard steps of meta-analysis. Overall, nine qualified studies containing 1,576 cases and 1,674 controls were included in the ultimate meta-analysis. The pooled results displayed that AA genotype significantly increased the risk of hematological malignancy. The result of subgroup analysis further indicated that SDF1-3'A polymorphism was significantly associated with increased risk of chronic myeloid leukemia, Hodgkin's lymphoma and multiple myeloma, but was not associated with increased risk of acute myeloid leukemia and non-Hodgkin's lymphoma. In addition, SDF1-3'A polymorphism was associated with increased risk of hematological malignancy in Africans and Asians, but not in Caucasians. In conclusion, our meta-analysis firstly demonstrated that SDF1-3'A polymorphism may be associated with increased risk of hematological malignancy, especially for chronic myeloid leukemia, Hodgkin's lymphoma, multiple myeloma and the non-Caucasian population. Nevertheless, these conclusions should be reconfirmed by more evidence from large sample sized studies.

Entities:  

Keywords:  SDF1; hematological malignancy; meta-analysis; polymorphism

Year:  2017        PMID: 28352190      PMCID: PMC5359121          DOI: 10.2147/OTT.S130086

Source DB:  PubMed          Journal:  Onco Targets Ther        ISSN: 1178-6930            Impact factor:   4.147


Introduction

Cancer is considered as a major public health problem and one of the leading causes of death worldwide.1 Hematological malignancies, including leukemia, lymphoma, and other types,2 are in the top 10 causes of cancer death.3 According to the report from the American Cancer Society, leukemia accounted for an estimated 265,500 deaths and non-Hodgkin’s lymphoma (NHL) accounted for an estimated 199,700 deaths worldwide in 2012, respectively.3 It is widely accepted that genetic variants, environmental factors, and the interaction of genetic and environmental factors are responsible for the occurrence and progression of hematological malignancy.4,5 Chemokines, a family of small cytokines, usually act as chemoattractants to manage the migration of leukocytes in the respective anatomical locations in inflammatory and homeostatic processes.6,7 Chemokine CXCL12, also named SDF-1, is a member of chemokine family and functions as the ligand for the chemokine CXCR4 to regulate the process of embryogenesis,8 immune surveillance,9 inflammation response,10 neutrophil homeostasis,11 and tumor growth and metastasis.12 Moreover, several recent studies have shown that CXCL12/CXCR4 axis can play an important role in the progression of acute myeloid leukemia (AML),13,14 acute lymphoblastic leukemia (ALL), and chronic lymphocytic leukemia (CLL).14,15 Of note, the level of SDF1 in peripheral plasma and the expression of CXCR4 in bone marrow cells of acute leukemia (AML and ALL) group are significantly higher than that of healthy control group.16 Furthermore, function experiment in vitro indicates that elevated SDF1 is associated with increased malignant potential of AML and CLL cells.13,15 In addition to leukemia, SDF1/CXCR4 axis also participates in regulating the tumor’s biological behavior of NHL and multiple myeloma (MM) cells.17,18 For instance, the expression of CXCR4 and SDF1 in NHL cells is higher than normal cells and SDF1 could promote metastasis of NHL cells.17 Similarly, SDF1 could facilitate MM cell adhesion to endothelial cells and induce MM cells’ migration.18 A single nucleotide polymorphism (SNP) (SDF1-3′A or rs1801157) containing a G to A transition at position 801 is the common polymorphism in the 3-untranslated region (3′-UTR) of SDF1 gene. Although SDF1-3′A polymorphism has already been demonstrated to possibly increase the expression of SDF1,19 whether SDF1-3′A polymorphism is associated with the risk of hematological malignancy is still controversial in the literature.20,21 Therefore, we carried out a meta-analysis to assess whether SDF1-3′A polymorphism is related to the risk of hematological malignancy.

Methods

Search strategy

A systematic literature search was performed in several electronic databases including Web of Science, PubMed, Cochrane Library, Chinese Wan Fang, and Chinese National Knowledge Infrastructure databases until October 1, 2016 using the search formula that combined “genetic polymorphism” or “single nucleotide polymorphism” or “SNP” or “gene mutation” or “genetic variants” and “stromal cell-derived factor-1” or “SDF1” or “CXCL12” or “chemokine ligand 12” or “rs1801157”, together with “leukemia” or “lymphoma” or “myeloma” or “hematological malignancy” or “hematological cancer” to include all relevant studies. Manual searching was supplemented with browsing references of the retrieved articles. Based on the eligibility criteria, all articles were thoroughly examined from the title, including the entire text to determine if they could be selected for the ultimate analysis. If the opinions of two reviewers were not in agreement, the rest of the authors participated in evaluating whether an individual study should be included or not.

Eligibility criteria

The three major inclusion criteria required at least: i) concerning the relationship between the SDF1 gene polymorphism and hematological malignancy; ii) case-control or cohort studies; and iii) the articles should provide the frequencies of allele and genotype or the data in the articles can be used to calculate the frequencies of allele and genotype in both cases and controls. Articles were eliminated based on the following: i) containing duplicated data or ii) reviews, case reports, or meta-analysis. All of the control subjects were recruited from a healthy population without diagnosis of cancer and HIV infection as cancer and HIV infection have been demonstrated to dramatically influence the genotype frequencies of SDF1-3′A polymorphism in humans.

Data extraction

Data concerning author’s name, year of publication, patient characteristics, number of participants in the case and control groups, genotyping method, study type, P-value of the Hardy–Weinberg equilibrium (HWE) test, odds ratio (OR) and 95% confidence intervals (CIs) for the risk of hematological malignancy were collected from included articles by two authors independently. The quality of included studies was evaluated with the Newcastle–Ottawa Scale (NOS) as previously described.22

Statistical analysis

Firstly, the chi-squared goodness-of-fit test was used to examine whether the genotype distributions of the SDF1-3′A polymorphism in the controls were in accordance with HWE. The strength of the relationship between the SDF1-3′A polymorphism and hematological malignancy was estimated by ORs with their corresponding 95% CIs. The Cochran’s Q statistic and I-squared (I2) metric was used to test between-study heterogeneity. Heterogeneity was considered significant when P<0.10 or I 2>50%. With heterogeneity existing, the random-effects model was performed to calculate the pooled OR of each eligible study; otherwise, the fixed-effect model was used. Generally speaking, the pooled ORs with 95% CIs were calculated respectively under allele model, homozygote model, heterozygote model, dominant model, and recessive model. Subgroup analyses were further carried out based on ethnicity and type of hematological malignancy, and pooled analysis was performed only when at least 2 independent case-control studies were included. The funnel plots and Egger’s linear regression test were used to analyze the publication bias. Publication bias was considered to exist when P<0.05. Sensitivity analysis was conducted by omitting one study at a time to examine its effect on the entire OR value, which was usually used to assess the stability of meta-analysis. Overall statistical analyses were performed using the STATA 11.0 program (StataCorp LLC, College Station, TX, USA).

Ethics

Our meta-analysis was approved by the ethical committee of China Medical University.

Results

Characteristics of the included studies

Overall, 75 potentially qualifying articles were originally confirmed in the literature search. With strict screening based on eligibility criteria, 66 articles were eliminated. To be specific, 15 articles were duplicates; 4 articles were not case-control studies; 7 articles were not associated with hematological malignancy; 5 articles were review articles; 28 articles were not associated with SDF1 gene polymorphism; 4 articles did not concern rs1801157; 2 articles lacked healthy control group; and 1 article did not provide sufficient data for gene frequency. 9 articles that were strictly in agreement with the eligibility criteria were ultimately included in this meta-analysis (Figure 1).20,21,23–29
Figure 1

Flow diagram of the study selection process.

Abbreviation: CNKI, Chinese National Knowledge Infrastructure.

Table 1 summarized the characteristics of each of the included studies. To be specific, our meta-analysis in total included 9 independent case-control studies ranging from 2006 to 2016. Six of these studies were conducted in Caucasians. NOS score of each study was no less than 7 points. The genotype distribution in the controls was in accordance with HWE.
Table 1

Main characteristics of studies included in the meta-analysis

StudiesCountryEthnicityNumber (case/control)Age, years (case)Male % (case)Study typeTumor typeGenotype methodNOS scoreHWE test (control)
de Lourdes Perim et al23BrazilCaucasian54/587.3153.7Case-control studyALLPCR-RFLP8Yes
Ben Nasr et al24TunisiaAfrican246/1654155.3Case-control studyMM/NHL/HL/AMLPCR-RFLP7Yes
Bracci et al25AmericaCaucasian255/5116066Case-control studyNHLPCR-RFLP9Yes
Pemberton et al20UKCaucasian323/10868NACase-control studyMM/CLLPCR-RFLP8Yes
de Oliveira et al26BrazilCaucasian25/60NA56Case-control studyCMLPCR-RFLP8Yes
El-Ghany et al28EgyptCaucasian48/50NANACase-control studyAML/CMLPCR-RFLP8Yes
Zheng et al29ChinaAsian466/4604846.4Case-control studyAMLPCR-RFLP9Yes
Mazur et al27PolandCaucasian53/7558.542.6Case-control studyMMPCR-RFLP8Yes
de Oliveira et al21BrazilNA106/187NANACase-control studyHL/NHLPCR-RFLP8Yes

Abbreviations: HWE, Hardy–Weinberg equilibrium; ALL, acute lymphoblastic leukemia; CLL, chronic lymphocytic leukemia; AML, acute myeloid leukemia; CML, chronic myeloid leukemia; HL, Hodgkin’s lymphoma; NHL, non-Hodgkin’s lymphoma; MM, multiple myeloma; NA, not available; NOS, Newcastle–Ottawa Scale; PCR-RFLP, polymerase chain reaction-restriction fragment length polymorphism.

Quantitative data synthesis

Data of 3,250 subjects (1,576 cases and 1,674 healthy controls) were pooled in the meta-analysis. The results showed that a significant association between the SDF1-3′A polymorphism and the risk of hematological malignancy was found in the homozygote model (AA vs GG: OR =1.442, 95% CI =1.019–2.039, P=0.039) (Figure 2). However, no significant association between SDF1-3′A polymorphism and the risk of hematological malignancy was shown in the allele model, dominant model, heterozygote model and recessive model (Table 2).
Figure 2

Forest plot of SDF1-3′A polymorphism and the risk of hematological malignancy under a homozygote genetic model (AA vs GG).

Abbreviations: OR, odds ratio; CI, confidence interval.

Table 2

Main results of the meta–analysis of the pooled OR

VariableCases/controls (n)OR (95% CI) P-value
Allele (A vs G)Heterozygote (AG vs GG)Homozygote (AA vs GG)Dominant (AA/AG vs GG)Recessive (AA vs AG/GG)
All subjects1,576/1,6741.234 (0.946–1.610)1.442 (1.019–2.039)1.263 (0.966–1.652)1.319 (0.987–1.764)1.339 (0.950–1.887)
0.1210.039a,*0.0880.0620.096a
Ethnicity
 Caucasian758/8441.210 (0.827–1.771)1.529 (0.778–3.007)1.187 (0.859–1.640)1.256 (0.880–1.793)1.404 (0.695–2.838)
0.3270.218a0.2990.2100.344a
 African246/1651.867 (1.368–2.548)5.172 (1.895–14.122)1.980 (1.311–2.992)2.193 (1.466–3.281)3.620 (1.357–9.660)
0.0000.000a0.0010.0000.010a
 Asian466/4600.291 (0.745–1.140)0.940 (0.564–1.566)0.876 (0.664–1.156)0.887 (0.682–1.152)0.986 (0.598–1.627)
0.4510.000a0.0880.3680.956a
Tumor type
 ALL54/582.264 (1.097–4.665)4.182 (0.416–42.000)2.281 (0.953–5.462)2.439 (1.055–5.642)3.353 (0.338–33.259)
0.029*0.2240.0640.037*0.301
 CLL126/1080.608 (0.395–0.938)0.496 (0.031–8.060)0.762 (0.469–1.238)0.762 (0.469–1.238)0.548 (0.034–8.852)
0.025*0.6220.2720.2720.672
 AML35/1100.965 (0.791–1.176)0.988 (0.604–1.618)0.933 (0.722–1.206)0.941 (0.738–1.201)1.026 (0.633–1.663)
0.721a0.963a0.595a0.626a0.918a
 CML35/1102.303 (0.839–2.084)5.832 (1.355–25.098)2.631 (1.138–6.084)2.910 (1.304–6.496)3.866 (0.966–15.477)
0.229a0.018a,*0.024a,*0.009a,*0.056a
 NHL499/6751.263 (1.271–1.682)1.057 (0.525–2.125)1.525 (0.983–2.366)1.477 (0.961–2.272)0.903 (0.452–1.804)
0.164a0.877a0.0600.0750.772a
 HL94/3521.508 (1.050–2.166)3.798 (1.628–8.858)1.086 (0.658–1.792)1.331 (0.836–2.119)3.703 (1.619–8.467)
0.026*0.002a,*0.7470.2280.002a,*
 MM265/3481.204 (0.531–2.728)6.107 (2.224–16.771)1.344 (0.564–3.202)1.432 (0.567–3.612)4.038 (1.550–10.523)
0.6570.000a,*0.5040.4470.004a,*

Notes:

A fixed effects model was used when the P-value for Cochran’s Q test for heterogeneity was more than 0.1. Otherwise, a random effects model was used.

P<0.05.

Abbreviations: ALL, acute lymphoblastic leukemia; CLL, chronic lymphocytic leukemia; AML, acute myeloid leukemia; CML, chronic myeloid leukemia; HL, Hodgkin’s lymphoma; NHL, non–Hodgkin’s lymphoma; MM, multiple myeloma; OR, odds ratio; CI, confidence interval.

Subgroup analysis

The result of subgroup analysis by ethnicity showed that no significant relationship existed between the SDF1-3′A polymorphism and the risk of hematological malignancy in Caucasians, and the data cannot be calculated in Africans and Asians due to only one available study (Figure 3). In the subgroup analysis by type of hematological malignancy, the results showed that a significantly increased risk was displayed in the chronic myeloid leukemia (CML) subgroup in the homozygote model (AA vs GG: OR =5.83, 95% CI =1.35–25.10, P=0.018) (Table 2), heterozygote model (AG vs GG: OR =2.631, 95% CI =1.138–6.084 P=0.024) and dominant model (AA/AG vs GG: OR =2.910, 95% CI =1.304–6.496, P=0.009) (Table 2). In addition, a significantly increased risk was also shown in Hodgkin’s lymphoma (HL) subgroup in the homozygote model (AA vs GG: OR =3.80, 95% CI =1.63–8.86 [Figure 4], P=0.002) (Table 2), allele model (A vs G: OR =1.508, 95% CI =1.050–2.166, P=0.026) and recessive model (AA vs AG/GG: OR =3.703, 95% CI =1.619–8.467, P=0.002) (Table 2). Meanwhile, a significantly increased risk was shown in MM subgroup in the homozygote model (AA vs GG: OR =6.11, 95% CI =2.22–16.77 [Figure 4], P<0.001 [Table 2]) (Figure 4) and recessive model (AA vs AG/GG: OR =4.038, 95% CI =1.550–10.523, P=0.004) (Table 2). However, there was no significant statistical association between the SDF1-3′A polymorphism and the risk of hematological malignancy in the AML and NHL subgroup (Table 2).
Figure 3

Subgroup analysis of the association between SDF1-3′A polymorphism and the risk of hematological malignancy in different ethnicities under a homozygote genetic model (AA vs GG).

Abbreviations: OR, odds ratio; CI, confidence interval; NA, not available.

Figure 4

Subgroup analysis of the association between SDF1-3′A polymorphism and the risk of different types of hematological malignancy under a homozygote genetic model (AA vs GG).

Abbreviations: ALL, acute lymphoblastic leukemia; CLL, chronic lymphocytic leukemia; AML, acute myeloid leukemia; CML, chronic myeloid leukemia; HL, Hodgkin’s lymphoma; NHL, non-Hodgkin’s lymphoma; MM, multiple myeloma; OR, odds ratio; CI, confidence interval.

Sensitivity analysis and publication bias

The result of sensitivity analysis revealed that the pooled OR was not considerably affected by omitting any individual study, which confirmed that our result was robust (Figure 5). The funnel plot was symmetrical by visual inspection based on dominant genetic model data (Figure 6). Egger’s test suggested no publication bias for all genetic models (P=0.196, 95% CI: −1.830946, 7.424647 for allele model, P=0.329, 95% CI: −2.535315, 6.585456 for homozygote model, P=0.116, 95% CI: −0.8942766, 6.540984 for heterozygote model, P=0.116, 95% CI: −1.072597, 7.767599 for dominant model, P=0.314, 95% CI: −1.601126, 4.317495 for recessive model, respectively).
Figure 5

Sensitivity analysis of the relationships of SDF1-3′A polymorphism with the risk of hematological malignancy.

Abbreviation: CI, confidence interval.

Figure 6

Funnel plot of SDF1-3′A polymorphism and the risk of hematological malignancy under a homozygote genetic model (AA vs GG).

Abbreviations: SE, standard error; OR, odds ratio.

Discussion

The SDF1 gene is located on chromosome 10q11.1.30 SDF1 protein has been demonstrated to be associated with increased risk of various kinds of cancers, including breast cancer,31 lung cancer,32 bladder cancer,33 and acute leukemia.16 SDF1-3′A polymorphism is identified as a G to A mutation at position 801 in the 3′-UTR region in SDF1 β transcriptional splice variant and SDF1-3′A polymorphism has been confirmed to be associated with increased risk of multiple types of cancer,34–37 probably because it could increase the expression of SDF1 protein.19 Although a previous genome-wide association study (GWAS) has shown that some SNPs in SDF1 gene, such as rs2857653 and rs2297630, were associated with increased risk of CLL, SDF1-3′A polymorphism (rs1801157) was still not included in this study.38 Moreover, we also found that rs1801157 was not reported by other GWASs concerning hematological malignancy after searching all known GWAS databases, such as GWAS Central. The reason may be that GWAS cannot identify all of the SNPs involved in a single action.39 Up to now, the reports concerning the relationship between SDF1-3′A polymorphism and the risk of hematological malignancy have all mostly been based on the small-scale case-control studies.20,21,23–29 Furthermore, the results from these studies are still somewhat controversial.21,24 Therefore, we conducted a meta-analysis to combine the results of published case-control studies to further explain their controversy. Although several meta-analyses have been performed to evaluate the relationship between SDF1-3′A polymorphism and the risk of cancer previously,40–43 as far as we know, this meta-analysis was the first to pool published studies to estimate the relationship between the SDF1-3′A polymorphism and the risk of hematological malignancy. The result suggested that for all types of hematological cancer, SDF1-3′A polymorphism, especially AA genotype, was associated with increased risk of hematological cancer, which is consistent with findings in some types of solid tumors, such as breast cancer and lung cancer.40 However, SDF1-3′A polymorphism was not associated with the risk of hematological cancer in the Caucasian subgroup. This result is not consistent with the results of other meta-analyses41,42 and the distinction may be attributed to the difference in tumor type. In addition, subgroup analysis by hematological cancer type also found that AA genotype only increased the incidence of some types of hematological cancer, but did not influence all types of hematological cancer. More specifically, our study found that AA genotype was associated with increased risk of HL and MM, which is consistent with previous findings.24,27 For AML, SDF1-3′A polymorphism was not associated with increased risk of AML, which was in agreement with Zheng et al’s finding.29 For CML, we found that SDF1-3′A polymorphism was connected with increased risk of CML, which was similar to de Oliveira et al’s finding.26 For NHL, no association between SDF1-3′A polymorphism and the risk of NHL was found, and the result was not in agreement with a previous study in an HIV-infected population.42 The reason, we speculated, may be that HIV-infection significantly altered the frequency of genotypes (AA, AG, and GG) in the population.44,45 Like other meta-analyses, several shortcomings exist in this study. Firstly, only a total of 3,250 subjects (1,576 cases and 1,674 healthy controls) were involved in this meta-analysis and there is not enough strength to estimate the association between the SDF1-3′A polymorphism and the risk of hematological cancer due to relatively small sample size. Therefore, the strength of this meta-analysis should be further demonstrated by more large scale case-control studies. Secondly, most studies included in this meta-analysis were conducted in Caucasians, and the data from Africans and Asians are less. More importantly, the frequency of SDF1-3′A polymorphism ranges widely across different ethnic groups,46 therefore, more studies should be performed in Africans and Asians to confirm the result of this meta-analysis. Finally, besides genetic polymorphism, the environmental factors or the interaction of genetic and environmental factors also influenced the results. However, we cannot assess their effect on the pooled results because information related to environmental factors was not available in the literature. Therefore, this is another limitation of this study that we must acknowledge.

Conclusion

In conclusion, our meta-analysis demonstrates that SDF1-3′A polymorphism may be associated with increased risk of hematological malignancy, especially for CML, HL, MM, and the non-Caucasian population. These conclusions should be reconfirmed by more evidence from large sample sized studies.
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1.  [Level of SDF-1/CXCR4 in children with acute leukemia and its significance].

Authors:  Quan Wen; Ri-Ling Chen; Kang-Rong Cai; Yong-Wen Lin
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Review 2.  Chemokines and chemokine receptors: their manifold roles in homeostasis and disease.

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Review 4.  Chemokine signaling in development and disease.

Authors:  John Wang; Holger Knaut
Journal:  Development       Date:  2014-11       Impact factor: 6.868

5.  Clinicopathological and therapeutic significance of CXCL12 expression in lung cancer.

Authors:  H Imai; N Sunaga; Y Shimizu; S Kakegawa; K Shimizu; T Sano; T Ishizuka; T Oyama; R Saito; J D Minna; M Mori
Journal:  Int J Immunopathol Pharmacol       Date:  2010 Jan-Mar       Impact factor: 3.219

6.  The CXCL12 G801A polymorphism and cancer risk: evidence from 17 case-control studies.

Authors:  Hua Gong; Mingyue Tan; Yong Wang; Bing Shen; Zhihong Liu; Fang Zhang; Yong Liu; Jianxin Qiu; Erdun Bao; Yu Fan
Journal:  Gene       Date:  2012-08-23       Impact factor: 3.688

7.  Analysis of the stromal cell-derived factor 1-3'A gene polymorphism in pancreatic cancer.

Authors:  George E Theodoropoulos; George S Panoussopoulos; Nikolaos V Michalopoulos; Constantinos P Zambirinis; Stiliani Taka; Paraskevas Stamopoulos; Maria Gazouli; G Zografos
Journal:  Mol Med Rep       Date:  2010 Jul-Aug       Impact factor: 2.952

8.  The CXCL12-3'A allele plays a favourable role in patients with multiple myeloma.

Authors:  Grzegorz Mazur; Katarzyna Gębura; Anna Gieryng; Aleksandra Butrym; Tomasz Wróbel; Katarzyna Bogunia-Kubik
Journal:  Cytokine       Date:  2013-05-24       Impact factor: 3.861

9.  CXCL12 rs1801157 polymorphism in patients with breast cancer, Hodgkin's lymphoma, and non-Hodgkin's lymphoma.

Authors:  Karen Brajão de Oliveira; Julie Massayo Maeda Oda; Julio Cesar Voltarelli; Thiago Franco Nasser; Mario Augusto Ono; Thiago Cezar Fujita; Tiemi Matsuo; Maria Angelica Ehara Watanabe
Journal:  J Clin Lab Anal       Date:  2009       Impact factor: 2.352

10.  Chemokine polymorphisms and lymphoma: a pooled analysis.

Authors:  Paige M Bracci; Christine F Skibola; Lucia Conde; Eran Halperin; Tracy Lightfoot; Alex Smith; Randi A Paynter; Danica R Skibola; Luz Agana; Eve Roman; Eleanor Kane; John K Wiencke
Journal:  Leuk Lymphoma       Date:  2010-03
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  3 in total

1.  Association of SDF-1 Gene Polymorphism with Increased Risk of Acute Myeloid Leukemia Patients.

Authors:  Doaa Abd Allah M Aladle; Mayada A Ghannam; Shaimaa El-Ashwah; F E I Ghobrial; Metwaly Ibrahim Mortada
Journal:  Asian Pac J Cancer Prev       Date:  2021-04-01

2.  The CXCL12 rs1801157 polymorphism and risk of colorectal cancer: a meta-analysis.

Authors:  Ke Xu; Hong Dai; Shaolong Wang; Jie Zhang; Tao Liu
Journal:  Onco Targets Ther       Date:  2018-05-01       Impact factor: 4.147

3.  Relationship between rs1801157 polymorphism in stromal cell-derived factor gene and systemic lupus erythematosus risk.

Authors:  Can Qian; Qinghua Zou; Yong Wang
Journal:  Oncotarget       Date:  2017-08-01
  3 in total

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