Publication | Open Access
rMVP: A Memory-efficient, Visualization-enhanced, and Parallel-accelerated tool for Genome-Wide Association Study
91
Citations
28
References
2020
Year
Unknown Venue
GeneticsGenomicsBioinformatics DatabaseParallel-accelerated ToolHigh Throughput SequencingGenome-wide Association StudiesGenome-wide Association StudyComputational GenomicsStatistical ComputingBiostatisticsSample SizeWhole Genome StudiesPublic HealthBiological Network VisualizationStatistical GeneticsOmicsBioinformaticsSequencingFunctional GenomicsParallel-accelerated R PackageOmics DatasetsComputational BiologyHe Regression AlgorithmsSystems BiologyMedicine
Abstract Along with the development of high-throughout sequencing technologies, both sample size and number of SNPs are increasing rapidly in Genome-Wide Association Studies (GWAS) and the associated computation is more challenging than ever. Here we present a Memory-efficient, Visualization-enhanced, and Parallel-accelerated R package called “rMVP” to address the need for improved GWAS computation. rMVP can: (1) effectively process large GWAS data; (2) rapidly evaluate population structure; (3) efficiently estimate variance components by EMMAX, FaST-LMM, and HE regression algorithms; (4) implement parallel-accelerated association tests of markers using GLM, MLM, and FarmCPU methods; (5) compute fast with a globally efficient design in the GWAS processes; and (6) generate various visualizations of GWAS related information. Accelerated by block matrix multiplication strategy and multiple threads, the association test methods embedded in rMVP are approximately 5-20 times faster than PLINK, GEMMA, and FarmCPU_pkg. rMVP is freely available at https://github.com/xiaolei-lab/rMVP .
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