Massive Parallelization of Massive Sample-size Survival Analysis.
Jianxiao YangMartijn J SchuemieXiang JiMarc A SuchardPublished in: Journal of computational and graphical statistics : a joint publication of American Statistical Association, Institute of Mathematical Statistics, Interface Foundation of North America (2023)
Large-scale observational health databases are increasingly popular for conducting comparative effectiveness and safety studies of medical products. However, increasing number of patients poses computational challenges when fitting survival regression models in such studies. In this paper, we use graphics processing units (GPUs) to parallelize the computational bottlenecks of massive sample-size survival analyses. Specifically, we develop and apply time- and memory-efficient single-pass parallel scan algorithms for Cox proportional hazards models and forward-backward parallel scan algorithms for Fine-Gray models for analysis with and without a competing risk using a cyclic coordinate descent optimization approach. We demonstrate that GPUs accelerate the computation of fitting these complex models in large databases by orders of magnitude as compared to traditional multi-core CPU parallelism. Our implementation enables efficient large-scale observational studies involving millions of patients and thousands of patient characteristics. The above implementation is available in the open-source R package Cyclops (Suchard et al., 2013).
Keyphrases
- healthcare
- end stage renal disease
- newly diagnosed
- machine learning
- ejection fraction
- chronic kidney disease
- primary care
- computed tomography
- prognostic factors
- deep learning
- magnetic resonance imaging
- free survival
- case report
- quality improvement
- patient reported outcomes
- air pollution
- case control
- health information
- artificial intelligence
- cross sectional