Oncotarget

Research Papers:

Gene- gene interaction between PPARG and CYP1A1 gene on coronary artery disease in the Chinese Han population

Xiaojiang Zhang, Shuzheng Lv _, Chengjun Guo, Conghong Shi, Yunpeng Chi, Lin Zhao, Guozhong Wang and Zhisheng Wang

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Oncotarget. 2017; 8:34398-34404. https://doi.org/10.18632/oncotarget.16186

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Abstract

Xiaojiang Zhang1,*, Shuzheng Lv1, Chengjun Guo1, Conghong Shi2,*, Yunpeng Chi1, Lin Zhao1, Guozhong Wang1, Zhisheng Wang1

1Department of Cardiology, Beijing Anzhen Hospital, Capital University of Medical Sciences, Beijing 100029, China

2Baotou Fourth Hospital, Baotou, Inner Mongolia, 014030, China

*These authors contributed equally to this work

Correspondence to:

Shuzheng Lv, email: [email protected]

Keywords: PPARG, CYP1A1, coronary artery disease, SNP, interaction

Received: February 17, 2017     Accepted: March 06, 2017     Published: March 14, 2017

ABSTRACT

Aims: To observe the influence of the peroxisome proliferator-activator receptor-G (PPAR-G) gene and cytochrome P4501A1 (CYP1A1) single-nucleotide polymorphisms (SNPs), and interactions among several SNPs on coronary artery disease (CAD) risk.

Methods: A total of 1106 participants (including 583 males and 523 females) including 550 CAD patients and 556 control subjects were recruited in this study, and the mean age for these participants was 55.5 ± 11.8 years old. Logistic regression was used to observe association of SNP within PPARG and CYP1A1 with CAD risk and GMDR model was used to screen the best interaction combinations.

Results: CAD susceptibility was higher in those with homozygous mutant of rs10865710, rs1805192 and rs4646903 than those with wild-type homozygotes, OR (95%CI) were 1.47 (1.15–1.92), 1.69 (1.27–2.09) and 1.72 (1.35–2.32), respectively. We also found a significant two-locus model involving rs1805192 and rs4646903 (p = 0.0107), and the cross-validation consistency of this locus model was 10 of 10, the testing accuracy of this model is 62.17%. Logistic regression shown that CAD risk was the highest in those with rs1805192- Pro/Ala or Ala/Ala and rs4646903- AG+GG genotype, and was lowest in those with rs1805192- Pro/ Pro and rs4646903- AA genotype, OR(95%CI) = 3.56 (1.91–5.42).

Conclusions: Polymorphism in rs10865710, rs1805192 and rs4646903 and interaction between rs1805192 and rs4646903 were related with increased CAD susceptibility.


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