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Reconstructability Analysis as a Tool for Identifying Gene-Gene Interactions in Studies of Human Diseases

机译:可重构性分析作为人类疾病研究中识别基因与基因相互作用的工具

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摘要

There are a number of common human diseases for which the genetic component may include an epistatic interaction of multiple genes. Detecting these interactions with standard statistical tools is difficult because there may be an interaction effect, but minimal or no main effect. Reconstructability analysis (RA) uses Shannon’s information theory to detect relationships between variables in categorical datasets. We applied RA to simulated data for five different models of gene-gene interaction, and find that even with heritability levels as low as 0.008, and with the inclusion of 50 non-associated genes in the dataset, we can identify the interacting gene pairs with an accuracy of ≥80%. We applied RA to a real dataset of type 2 non-insulin-dependent diabetes (NIDDM) cases and controls, and closely approximated the results of more conventional single SNP disease association studies. In addition, we replicated prior evidence for epistatic interactions between SNPs on chromosomes 2 and 15.
机译:对于许多常见的人类疾病,其遗传成分可能包括多个基因的上位性相互作用。用标准统计工具检测这些交互是困难的,因为可能会有交互作用,但是没有或没有主要作用。可重构性分析(RA)使用Shannon的信息论来检测分类数据集中变量之间的关系。我们将RA应用于5种不同的基因-基因相互作用模型的模拟数据,发现即使遗传率水平低至0.008,并且在数据集中包含50个非关联基因,我们也可以通过精度≥80%。我们将RA应用于2型非胰岛素依赖型糖尿病(NIDDM)病例和对照的真实数据集,并非常接近更常规的单个SNP疾病关联研究的结果。此外,我们复制了2号和15号染色体上SNP之间上位相互作用的先前证据。

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