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Title: Genetic polymorphisms of angiotensinogen and essential hypertension in a Tibetan population. Author: Niu W, Qi Y, Cen W, Cui C, Zhuoma C, Cai D, Zhou W, Qiu C. Journal: Hypertens Res; 2007 Nov; 30(11):1129-37. PubMed ID: 18250562. Abstract: The human angiotensinogen gene (AGT) is a promising candidate for an essential hypertension-susceptibility gene. We aimed to explore the single-locus, haplotype and epistasis patterns of three polymorphisms of AGT (A-20C, A-6G and M235T) and their relation to the risk of essential hypertension in a Tibetan population. The three polymorphisms were genotyped in 333 essential hypertension patients and 235 healthy controls on the basis of a door-to-door cross-sectional study. Genotyping was performed using polymerase chain reaction (PCR)-restriction fragment length polymerase (RFLP) and direct sequencing techniques. The data were analyzed using the EH/EH+ program and the multifactor dimensionality reduction (MDR) method. Our single-locus analysis revealed that except for a marginal, significant association of A-20C allele distribution, no significant association between genotype and allele distributions of the A-20C, A-6G, or M235T polymorphism of AGT and essential hypertension was found. In haplotype analysis, we found that the H(1) haplotype may be the risk-conferring factor for hypertension, even after the Bonferroni correction. In epistasis analysis, we selected the final best model, which included the A-20C and A-6G polymorphisms with a strong synergistic effect. This model had a maximum testing accuracy of 0.564 and a maximum cross validation consistency of 10 out of 10 (p=0.001). The present study thus provides evidence of a strong synergistic effect of the A-20C and A-6G polymorphisms of AGT, which were not found to be associated with essential hypertension in the single-locus analysis. Moreover, we have proposed a promising data-mining analytical method using the open-source MDR software package for detecting and characterizing gene-gene interactions.[Abstract] [Full Text] [Related] [New Search]