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KNOWLEDGE DRIVEN BINNING AND PHEWAS ANALYSIS IN MARSHFIELD PERSONALIZED MEDICINE RESEARCH PROJECT USING BIOBIN

机译:Marshfield个性化医学研究项目中的知识驱动搭桥和Phewas分析使用Biobin

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Next-generation sequencing technology has presented an opportunity for rare variant discovery and association of these variants with disease. To address the challenges of rare variant analysis, multiple statistical methods have been developed for combining rare variants to increase statistical power for detecting associations. BioBin is an automated tool that expands on collapsing/binning methods by performing multi-level variant aggregation with a flexible, biologically informed binning strategy using an internal biorepository, the Library of Knowledge (LOKI). The databases within LOKI provide variant details, regional annotations and pathway interactions which can be used to generate bins of biologically-related variants, thereby increasing the power of any subsequent statistical test. In this study, we expand the framework of BioBin to incorporate statistical tests, including a dispersion-based test, SKAT, thereby providing the option of performing a unified collapsing and statistical rare variant analysis in one tool. Extensive simulation studies performed on gene-coding regions showed a Bin-KAT analysis to have greater power than BioBin-regression in all simulated conditions,including variants influencing the phenotype in the same direction, a scenario where burden tests often retain greater power. The use ofMadsen-Browning variant weighting increased power in the burden analysis to that equitable with Bin-KAT; but overall Bin-KAT retained equivalent or higher power under all conditions. Bin-KAT was applied to a study of 82 pharmacogenes sequenced in the Marshfield Personalized Medicine Research Project (PMRP). We looked for association of these genes with 9 different phenotypes extracted from the electronic health record. This study demonstrates that Bin-KAT is a powerful tool for the identification of genes harboring low frequency variants for complex phenotypes.
机译:新一代测序技术已经提出了罕见的变种发现和关联的机会,这些与疾病变种。为了应对罕见变异分析的挑战,多元统计方法已经被开发用于结合罕见的变异,增加统计电源检测协会。 BioBin是一个自动化的工具在折叠/通过使用内部biorepository具有柔性的,生物通知分箱策略执行多级变体的聚集像素合并方法膨胀,知识的库(LOKI)。内LOKI数据库提供的变体的细节,区域注释和其可被用于产生具有生物相关的变体的二进制位,从而提高了任何后续的统计检验的功率通路相互作用。在这项研究中,我们扩大BioBin框架纳入统计测试,包括基于色散测试,SKAT,从而提供执行的选项统一的崩溃,而在一个工具统计罕见变异分析。对基因编码区进行大量的仿真研究表明,实施Bin-KAT分析比在所有模拟的条件,包括影响在同一方向,这样一个场景,负担检查常保留更大的功率表型变异BioBin回归更大的权力。使用ofMadsen褐变变加权在负担分析与宾-KAT该公平增加的功率;但总体滨KAT任何情况下都保持同等或更高的功率。滨KAT施到82个pharmacogenes在马什菲尔德个性化医学研究项目(PMRP)进行测序研究。我们寻找这些基因与来自电子健康记录中提取的9页不同的表型的关联。这项研究表明,滨KAT是基因窝藏低频的识别的有力工具复杂的表型变异。

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