Accelerated dimensionality reduction of single-cell RNA sequencing data with fastglmpca

Author:

Weine Eric12ORCID,Carbonetto Peter3,Stephens Matthew34

Affiliation:

1. Laboratory for Information and Decision Systems, Massachusetts Institute of Technology , Cambridge, MA 02139, United States

2. Department of Data Science, Dana Farber Cancer Institute , Boston, MA 02215, United States

3. Department of Human Genetics, University of Chicago , Chicago, IL 60637, United States

4. Department of Statistics, University of Chicago , Chicago, IL 60637, United States

Abstract

Abstract Summary Motivated by theoretical and practical issues that arise when applying Principal component analysis (PCA) to count data, Townes et al. introduced “Poisson GLM-PCA”, a variation of PCA adapted to count data, as a tool for dimensionality reduction of single-cell RNA sequencing (scRNA-seq) data. However, fitting GLM-PCA is computationally challenging. Here we study this problem, and show that a simple algorithm, which we call “Alternating Poisson Regression” (APR), produces better quality fits, and in less time, than existing algorithms. APR is also memory-efficient and lends itself to parallel implementation on multi-core processors, both of which are helpful for handling large scRNA-seq datasets. We illustrate the benefits of this approach in three publicly available scRNA-seq datasets. The new algorithms are implemented in an R package, fastglmpca. Availability and implementation The fastglmpca R package is released on CRAN for Windows, macOS and Linux, and the source code is available at github.com/stephenslab/fastglmpca under the open source GPL-3 license. Scripts to reproduce the results in this paper are also available in the GitHub repository and on Zenodo.

Funder

National Institutes of Health

Publisher

Oxford University Press (OUP)

Reference21 articles.

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