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首页> 外文期刊>Journal of human genetics >Two-stage designs to identify the effects of SNP combinations on complex diseases.
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Two-stage designs to identify the effects of SNP combinations on complex diseases.

机译:分两阶段进行设计,以确定SNP组合对复杂疾病的影响。

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摘要

The genetic basis of complex diseases is expected to be highly heterogeneous, with many disease genes, where each gene by itself has only a small effect. Based on the nonlinear contributions of disease genes across the genome to complex diseases, we introduce the concept of single nucleotide polymorphism (SNP) synergistic blocks. A two-stage approach is applied to detect the genetic association of synergistic blocks with a disease. In the first stage, synergistic blocks associated with a complex disease are identified by clustering SNP patterns and choosing blocks within a cluster that minimize a diversity criterion. In the second stage, a logistic regression model is given for a synergistic block. Using simulated case-control data, we demonstrate that our method has reasonable power to identify gene-gene interactions. To further evaluate the performance of our method, we apply our method to 17 loci of four candidate genes for paranoid schizophrenia in a Chinese population. Five synergistic blocks are found to be associated with schizophrenia, three of which are negatively associated (odds ratio, OR < 0.3, P < 0.05), while the others are positively associated (OR > 2.0, P < 0.05). The mathematical models of these five synergistic blocks are presented. The results suggest that there may be interactive effects for schizophrenia among variants of the genes neuregulin 1 (NRG1, 8p22-p11), G72 (13q34), the regulator of G-protein signaling-4 (RGS4, 1q21-q22) and frizzled 3 (FZD3, 8p21). Using synergistic blocks, we can reduce the dimensionality in a multi-locus association analysis, and evaluate the sizes of interactive effects among multiple disease genes on complex phenotypes.
机译:复杂疾病的遗传基础被认为是高度异质的,具有许多疾病基因,其中每个基因本身仅具有很小的作用。基于整个基因组中疾病基因对复杂疾病的非线性贡献,我们介绍了单核苷酸多态性(SNP)协同模块的概念。应用了两阶段方法来检测协同块与疾病的遗传关联。在第一阶段,通过对SNP模式进行聚类并在聚类内选择使多样性标准最小的块来识别与复杂疾病相关的协同功能。在第二阶段,为协同模块提供逻辑回归模型。使用模拟的病例对照数据,我们证明了我们的方法具有识别基因-基因相互作用的合理能力。为了进一步评估本方法的性能,我们将本方法应用于中国人群中偏执型精神分裂症的四个候选基因的17个基因座。发现五个协同块与精神分裂症相关,其中三个呈负相关(比值比,OR <0.3,P <0.05),而其他呈正相关(OR> 2.0,P <0.05)。介绍了这五个协同模块的数学模型。结果表明,精神分裂症可能在神经调节蛋白1(NRG1,8p22-p11),G72(13q34),G蛋白信号调节子4(RGS4,1q21-q22)和卷曲的3的变体之间产生交互作用。 (FZD3,8p21)。使用协同模块,我们可以减少多基因座关联分析的维数,并评估多种疾病基因对复杂表型的相互作用的大小。

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