Author:
Shao Zhonghe,Wang Ting,Qiao Jiahao,Zhang Yuchen,Huang Shuiping,Zeng Ping
Abstract
AbstractBackgroundMultilocus analysis on a set of single nucleotide polymorphisms (SNPs) pre-assigned within a gene constitutes a valuable complement to single-marker analysis by aggregating data on complex traits in a biologically meaningful way. However, despite the existence of a wide variety of SNP-set methods, few comprehensive comparison studies have been previously performed to evaluate the effectiveness of these methods.ResultsWe herein sought to fill this knowledge gap by conducting a comprehensive empirical comparison for 22 commonly-used summary-statistics based SNP-set methods. We showed that only seven methods could effectively control the type I error, and that these well-calibrated approaches had varying power performance under the simulation scenarios. Overall, we confirmed that the burden test was generally underpowered and score-based variance component tests (e.g., sequence kernel association test) were much powerful under the polygenic genetic architecture in both common and rare variant association analyses. We further revealed that two linkage-disequilibrium-freePvalue combination methods (e.g., harmonic meanPvalue method and aggregated Cauchy association test) behaved very well under the sparse genetic architecture in simulations and real-data applications to common and rare variant association analyses as well as in expression quantitative trait loci weighted integrative analysis. We also assessed the scalability of these approaches by recording computational time and found that all these methods can be scalable to biobank-scale data although some might be relatively slow.ConclusionIn conclusion, we hope that our findings can offer an important guidance on how to choose appropriate multilocus association analysis methods in post-GWAS era. All the SNP-set methods are implemented in the R package called MCA, which is freely available athttps://github.com/biostatpzeng/.
Funder
the Social Development Project of Xuzhou City
National Natural Science Foundation of China
the Youth Foundation of Humanity and Social Science funded by Ministry of Education of China
the Natural Science Foundation of Jiangsu Province of China
the China Postdoctoral Science Foundation
the Six-Talent Peaks Project in Jiangsu Province of China
the Training Project for Youth Teams of Science and Technology Innovation at Xuzhou Medical University
the Statistical Science Research Project from National Bureau of Statistics of China
Publisher
Springer Science and Business Media LLC
Subject
Applied Mathematics,Computer Science Applications,Molecular Biology,Biochemistry,Structural Biology
Cited by
5 articles.
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