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Detecting PCOS susceptibility loci from genome-wide association studies via iterative trend correlation based feature screening

机译:通过基于迭代趋势相关性的特征筛选来检测来自基因组关联研究的PCOS敏感基因座

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BACKGROUND:Feature screening plays a critical role in handling ultrahigh dimensional data analyses when the number of features exponentially exceeds the number of observations. It is increasingly common in biomedical research to have case-control (binary) response and an extremely large-scale categorical features. However, the approach considering such data types is limited in extant literature. In this article, we propose a new feature screening approach based on the iterative trend correlation (ITC-SIS, for short) to detect important susceptibility loci that are associated with the polycystic ovary syndrome (PCOS) affection status by screening 731,442 SNP features that were collected from the genome-wide association studies.RESULTS:We prove that the trend correlation based screening approach satisfies the theoretical strong screening consistency property under a set of reasonable conditions, which provides an appealing theoretical support for its outperformance. We demonstrate that the finite sample performance of ITC-SIS is accurate and fast through various simulation designs.CONCLUSION:ITC-SIS serves as a good alternative method to detect disease susceptibility loci for clinic genomic data.
机译:背景:特征筛选在处理次要数量超过观察次数时在处理超高尺寸数据分析方面发挥着关键作用。它在生物医学研究中越来越常见,以具有案例控制(二进制)响应和极大的分类特征。然而,考虑这些数据类型的方法在现存文献中受到限制。在本文中,我们提出了一种基于迭代趋势相关性的新特征筛选方法(ITC-SIS,短暂的),以检测通过筛选731,442 SNP特征的多囊卵巢综合征(PCOS)情感状态相关的重要敏感性基因座从基因组关联研究中收集。结果:我们证明了基于趋势相关的筛查方法,满足了一系列合理条件下的理论强筛选一致性,这提供了对其表现优于的吸引人的理论支持。我们证明ITC-SIS的有限样本性能通过各种仿真设计进行准确且快速快速。结论:ITC-SIS作为检测临床基因组数据的疾病易感位基因座的良好替代方法。

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