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Knowledge-driven binning approach for rare variant association analysis: application to neuroimaging biomarkers in Alzheimer’s disease

机译:知识驱动的分箱方法,用于稀有变异关联分析:在阿尔茨海默氏病神经影像生物标志物中的应用

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Background Rapid advancement of next generation sequencing technologies such as whole genome sequencing (WGS) has facilitated the search for genetic factors that influence disease risk in the field of human genetics. To identify rare variants associated with human diseases or traits, an efficient genome-wide binning approach is needed. In this study we developed a novel biological knowledge-based binning approach for rare-variant association analysis and then applied the approach to structural neuroimaging endophenotypes related to late-onset Alzheimer’s disease (LOAD). Methods For rare-variant analysis, we used the knowledge-driven binning approach implemented in Bin-KAT, an automated tool, that provides 1) binning/collapsing methods for multi-level variant aggregation with a flexible, biologically informed binning strategy and 2) an option of performing unified collapsing and statistical rare variant analyses in one tool. A total of 750 non-Hispanic Caucasian participants from the Alzheimer’s Disease Neuroimaging Initiative (ADNI) cohort who had both WGS data and magnetic resonance imaging (MRI) scans were used in this study. Mean bilateral cortical thickness of the entorhinal cortex extracted from MRI scans was used as an AD-related neuroimaging endophenotype. SKAT was used for a genome-wide gene- and region-based association analysis of rare variants (MAF (minor allele frequency)?Results Our knowledge-driven binning approach identified 16 functional exonic rare variants in FANCC significantly associated with entorhinal cortex thickness (FDR-corrected p -value?1–42 ( p -value?Conclusions Our novel binning approach identified rare variants in FANCC as well as 7 evolutionary conserved regions significantly associated with a LOAD-related neuroimaging endophenotype. FANCC (fanconi anemia complementation group C) has been shown to modulate TLR and p38 MAPK-dependent expression of IL-1β in macrophages. Our results warrant further investigation in a larger independent cohort and demonstrate that the biological knowledge-driven binning approach is a powerful strategy to identify rare variants associated with AD and other complex disease.
机译:背景技术诸如全基因组测序(WGS)之类的下一代测序技术的飞速发展促进了对影响人类遗传学领域疾病风险的遗传因素的寻找。为了鉴定与人类疾病或性状相关的稀有变体,需要一种有效的全基因组分级方法。在这项研究中,我们开发了一种基于生物知识的新颖分箱方法,用于稀有变异关联分析,然后将该方法应用于与迟发性阿尔茨海默氏病(LOAD)相关的结构性神经影像内表型。方法对于稀有变异分析,我们使用在Bin-KAT(一种自动化工具)中实施的知识驱动的分箱方法,该方法提供1)具有灵活的,具有生物学信息的分箱策略的多级变体聚集的分箱/合拢方法,以及2)在一个工具中执行统一折叠和统计稀有变异分析的选项。这项研究总共使用了来自WPS数据和磁共振成像(MRI)扫描的750名来自阿尔茨海默氏病神经影像学倡议(ADNI)队列的非西班牙裔白种人参与者。从MRI扫描中提取的内嗅皮层的平均双侧皮质厚度用作AD相关的神经影像内表型。 SKAT用于全基因组和基于区域的稀有变异(MAF(次要等位基因频率)的关联分析)?结果我们的知识驱动分箱方法在FANCC中鉴定出16种功能性外显子稀有变异,这些变异与内嗅皮层厚度(FDR)显着相关校正后的p值1–42 (p值?)结论我们的新颖分箱方法确定了FANCC中的罕见变异以及与LOAD相关的神经成像内表型显着相关的7个进化保守区域。研究表明,C组可调节巨噬细胞中IL-1β的TLR和p38 MAPK依赖性表达,我们的结果值得在更大的独立队列中进行进一步研究,并证明以生物知识为驱动的分箱方法是鉴定罕见变异的有效策略与AD和其他复杂疾病有关。

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