RT Journal Article SR Electronic T1 Exploring High-Dimensional Biological Data with Sparse Contrastive Principal Component Analysis JF bioRxiv FD Cold Spring Harbor Laboratory SP 836650 DO 10.1101/836650 A1 Philippe Boileau A1 Nima S. Hejazi A1 Sandrine Dudoit YR 2020 UL http://biorxiv.org/content/early/2020/02/23/836650.abstract AB Motivation Statistical analyses of high-throughput sequencing data have re-shaped the biological sciences. In spite of myriad advances, recovering interpretable biological signal from data corrupted by technical noise remains a prevalent open problem. Several classes of procedures, among them classical dimensionality reduction techniques and others incorporating subject-matter knowledge, have provided effective advances; however, no procedure currently satisfies the dual objectives of recovering stable and relevant features simultaneously.Results Inspired by recent proposals for making use of control data in the removal of unwanted variation, we propose a variant of principal component analysis, sparse contrastive principal component analysis, that extracts sparse, stable, interpretable, and relevant biological signal. The new methodology is compared to competing dimensionality reduction approaches through a simulation study as well as via analyses of several publicly available protein expression, microarray gene expression, and single-cell transcriptome sequencing datasets.Availability A free and open-source software implementation of the methodology, the scPCA R package, is made available via the Bioconductor Project. Code for all analyses presented in the paper is also available via GitHub.