Funmap: integrating high-dimensional functional annotations to improve fine-mapping.

Yuekai Li, Jiashun Xiao, Jingsi Ming, Yicheng Zeng, Mingxuan Cai
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Abstract

Motivation: Fine-mapping aims to prioritize causal variants underlying complex traits by accounting for the linkage disequilibrium of genome-wide association study risk locus. The expanding resources of functional annotations serve as auxiliary evidence to improve the power of fine-mapping. However, existing fine-mapping methods tend to generate many false positive results when integrating a large number of annotations.

Results: In this study, we propose a unified method to integrate high-dimensional functional annotations with fine-mapping (Funmap). Funmap can effectively improve the power of fine-mapping by borrowing information from hundreds of functional annotations. Meanwhile, it relates the annotation to the causal probability with a random effects model that avoids the over-fitting issue, thereby producing a well-controlled false positive rate. Paired with a fast algorithm, Funmap enables scalable integration of a large number of annotations to facilitate prioritizing multiple causal single nucleotide polymorphisms. Our comprehensive simulations across a wide range of annotation relevance settings demonstrate that Funmap is the only method that produces well-calibrated false discovery rate under the setting of high-dimensional annotations while achieving better or comparable power gains as compared to existing methods. By integrating genome-wide association studies of 4 lipid traits with 187 functional annotations, Funmap consistently identified more variants that can be replicated in an independent cohort, achieving 15.5%-26.2% improvement over the runner-up in terms of replication rate.

Availability and implementation: The Funmap software and all analysis code are available at https://github.com/LeeHITsz/Funmap.

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Funmap:集成高维函数注释,改进精细映射。
动机:精细映射的目的是通过考虑GWAS风险位点的连锁不平衡来优先考虑复杂性状的因果变异。不断扩展的功能注释资源可以作为辅助证据来提高精细映射的能力。然而,现有的精细映射方法在集成大量注释时容易产生许多假阳性结果。结果:在本研究中,我们提出了一种统一的方法来整合高维函数注释和精细映射(Funmap)。Funmap可以通过从数百个功能注释中借用信息,有效地提高精细映射的能力。同时,通过随机效应模型将标注与因果概率联系起来,避免了过拟合问题,从而产生了控制良好的假阳性率。Funmap与快速算法相结合,可以对大量注释进行可扩展集成,以方便对多个因果snp进行优先排序。我们对各种注释相关设置的综合模拟表明,Funmap是唯一一种在高维注释设置下产生校准良好的FDR的方法,同时与现有方法相比,可以获得更好或相当的功率增益。通过整合4个脂质性状的GWASs和187个功能注释,Funmap一致地鉴定出更多可以在独立队列中复制的变异,在复制率方面比第二名提高了15.5%-26.2%。可用性:Funmap软件和所有分析代码可在https://github.com/LeeHITsz/Funmap.Supplementary上获得信息:补充数据可在Bioinformatics在线获得。
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