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SAIGE-GPU: accelerating genome- and phenome-wide association studies using GPUs

Author(s)
Rodriguez, AlexKim, YoungdaeNandi, Tarak NathKeat, KarlKumar, RachitConery, MitchellBhukar, RohanLiu, MoleiHessington, JohnMaheshwari, KetanBegoli, EdmonTourassi, GeorgiaNatarajan, PradeepVoight, Benjamin F.Gaziano, John MichaelDamrauer, Scott M.Liao, Katherine P.Zhou, WeiHuffman, Jennifer E.Verma, AnuragMadduri, Ravi K.
Issued Date
2026-03
DOI
10.1093/bioinformatics/btag032
URI
https://scholarworks.unist.ac.kr/handle/201301/91691
Fulltext
https://academic.oup.com/bioinformatics/article-abstract/42/3/btag032/8438945
Citation
BIOINFORMATICS, v.42, no.3, pp.btag032
Abstract
Motivation Genome-wide association studies (GWAS) at biobank scale are computationally intensive, especially for admixed populations requiring robust statistical models. SAIGE is a widely used method for generalized linear mixed-model GWAS but is limited by its CPU-based implementation, making phenome-wide association studies impractical for many research groups.Results We developed SAIGE-GPU, a GPU-accelerated version of SAIGE that replaces CPU-intensive matrix operations with GPU-optimized kernels. The core innovation is distributing genetic relationship matrix calculations across GPUs and communication layers. Applied to 2068 phenotypes from 635 969 participants in the Million Veteran Program, including diverse and admixed populations, SAIGE-GPU achieved a 5-fold speedup in mixed model fitting on supercomputing infrastructure and cloud platforms. We further optimized the variant association testing step through multi-core and multi-trait parallelization. Deployed on Google Cloud Platform and Azure, the method provided substantial cost and time savings.Availability and implementation Source code and binaries are available for download at https://github.com/saigegit/SAIGE/tree/SAIGE-GPU-1.3.3. A code snapshot is archived at Zenodo for reproducibility (DOI: [10.5281/zenodo.17642591]). SAIGE-GPU is available in a containerized format for use across HPC and cloud environments and is implemented in R/C++ and runs on Linux systems.
Publisher
OXFORD UNIV PRESS
ISSN
1367-4803

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