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Genome-wide gene-gene interaction analysis for next-generation sequencing

机译:全基因组全基因-基因相互作用分析,用于下一代测序

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The critical barrier in interaction analysis for next-generation sequencing (NGS) data is that the traditional pairwise interaction analysis that is suitable for common variants is difficult to apply to rare variants because of their prohibitive computational time, large number of tests and low power. The great challenges for successful detection of interactions with NGS data are (1) the demands in the paradigm of changes in interaction analysis; (2) severe multiple testing; and (3) heavy computations. To meet these challenges, we shift the paradigm of interaction analysis between two SNPs to interaction analysis between two genomic regions. In other words, we take a gene as a unit of analysis and use functional data analysis techniques as dimensional reduction tools to develop a novel statistic to collectively test interaction between all possible pairs of SNPs within two genome regions. By intensive simulations, we demonstrate that the functional logistic regression for interaction analysis has the correct type 1 error rates and higher power to detect interaction than the currently used methods. The proposed method was applied to a coronary artery disease dataset from the Wellcome Trust Case Control Consortium (WTCCC) study and the Framingham Heart Study (FHS) dataset, and the early-onset myocardial infarction (EOMI) exome sequence datasets with European origin from the NHLBI's Exome Sequencing Project. We discovered that 6 of 27 pairs of significantly interacted genes in the FHS were replicated in the independent WTCCC study and 24 pairs of significantly interacted genes after applying Bonferroni correction in the EOMI study.
机译:下一代测序(NGS)数据进行交互分析的关键障碍是,适用于常见变体的传统成对交互分析难以应用于罕见变体,因为它们的计算时间长,测试量大且功耗低。成功检测与NGS数据的交互所面临的巨大挑战是:(1)交互分析变化范式中的需求; (2)严格的多重测试; (3)繁重的计算。为了应对这些挑战,我们将两个SNP之间的相互作用分析范式转变为两个基因组区域之间的相互作用分析。换句话说,我们将基因作为分析单位,并使用功能数据分析技术作为降维工具来开发新的统计数据,以共同测试两个基因组区域内所有可能的SNP对之间的相互作用。通过深入的仿真,我们证明了用于交互分析的功能逻辑回归具有正确的1型错误率和比当前使用的方法更高的检测交互的能力。拟议的方法应用于来自Wellcome Trust病例对照协会(WTCCC)研究和Framingham心脏研究(FHS)数据集的冠状动脉疾病数据集,以及源自欧洲的早发性心肌梗塞(EOMI)外显子序列数据集。 NHLBI的外显子组测序项目。我们发现,在独立的WTCCC研究中,FHS中27对显着相互作用的基因中有6对被复制,在EOMI研究中应用Bonferroni校正后,复制了24对显着相互作用的基因。

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