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[过氧化物酶体增殖物激活受体基因-基因相互作用与原发性高血压的关系]

[Effects related to gene-gene interactions of peroxisome proliferator-activated receptor on essential hypertension].

作者信息

Yu Hao, Chen Qiu, Yang Jie, Hu Xiao-shu, Zhou Zheng-yuan, Guo Zhi-rong, Wu Ming

机构信息

Department of Non-communicable Chronic Disease Control, Jiangsu Provincial Center for Disease Control and Prevention, Nanjing 210009, China.

出版信息

Zhonghua Liu Xing Bing Xue Za Zhi. 2013 Apr;34(4):326-30.

Abstract

OBJECTIVE

To explore the impact of the gene-gene interaction among the single nucleotide polymorphisms (SNPs) of peroxisome proliferator-activated receptor α/δ/γ on essential hypertension (EH).

METHODS

Participants were recruited based on the previous work of the PMMJS (Prevention of Multiple Metabolic Disorders and Metabolic Syndrome in Jiangsu Province) cohort study in Jiangsu province of China. A total number of 820 subjects were randomly selected from the cohort and received gene polymorphism detection covered ten SNPs:PPARα/δ/γ (PPARα: rs135539, rs1800206 and rs4253778; PPARδ: rs2016520 and rs9794; PPARγ: rs10865710, rs1805192, rs4684847, rs709158 and rs3856806). Generalized Multifactor Dimensionality Reduction (GMDR) model was used to evaluate the association between gene-gene interaction among the ten SNPs and EH.

RESULTS

After adjusting factors as gender, age, BMI, FPG, TG, HDL-C, high fat diet, low fiber diet and physical activity, results from the GMDR analysis showed that the best qualitative trait models were 7/9-dimensional model (EH: cross-validation consistency were 9/10 and 10/10, prediction accuracy were 0.5862 and 0.5885), 5/9-dimensional model (SBP:cross-validation consistency were 10/10 and 8/10, prediction accuracy were 0.6055 and 0.6011), and 8/9-dimensional model (DBP: cross-validation consistency both were 10/10, prediction accuracy were 0.5926 and 0.5972), while the best quantitative trait models were 4/5-dimensional model (SBP: cross-validation consistency were 10/10 and 8/10, prediction accuracy were 0.6111 and 0.6072), and 5-dimensional model (DBP: cross-validation consistency were 9/10, prediction accuracy were 0.5753).

CONCLUSION

Interactions among ten SNPs of PPARs seemed to have existed and with significant impact on the levels of blood pressure.

摘要

目的

探讨过氧化物酶体增殖物激活受体α/δ/γ单核苷酸多态性(SNP)之间的基因-基因相互作用对原发性高血压(EH)的影响。

方法

根据中国江苏省PMMJS(江苏省多种代谢紊乱及代谢综合征预防研究)队列研究的前期工作招募参与者。从该队列中随机选取820名受试者,进行涵盖10个SNP的基因多态性检测:PPARα/δ/γ(PPARα:rs135539、rs1800206和rs4253778;PPARδ:rs2016520和rs9794;PPARγ:rs10865710、rs1805192、rs4684847、rs709158和rs3856806)。采用广义多因素降维(GMDR)模型评估这10个SNP之间的基因-基因相互作用与EH的关联。

结果

在调整性别、年龄、BMI、空腹血糖、甘油三酯、高密度脂蛋白胆固醇、高脂饮食、低纤维饮食和身体活动等因素后,GMDR分析结果显示,最佳定性性状模型为7/9维模型(EH:交叉验证一致性分别为9/10和10/10,预测准确率分别为0.5862和0.5885)、5/9维模型(收缩压:交叉验证一致性分别为10/10和8/10,预测准确率分别为0.6055和0.6011)以及8/9维模型(舒张压:交叉验证一致性均为10/10,预测准确率分别为0.5926和0.5972);而最佳定量性状模型为4/5维模型(收缩压:交叉验证一致性分别为10/10和8/10,预测准确率分别为0.6111和0.6072)以及5维模型(舒张压:交叉验证一致性为9/10,预测准确率为0.5753)。

结论

PPARs的10个SNP之间似乎存在相互作用,并对血压水平有显著影响。

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