Feature selection and dimension reduction for single-cell RNA-Seq based on a multinomial model
Harvard University · Princeton University · +6 more institutions
Abstract
Single-cell RNA-Seq (scRNA-Seq) profiles gene expression of individual cells. Recent scRNA-Seq datasets have incorporated unique molecular identifiers (UMIs). Using negative controls, we show UMI counts follow multinomial sampling with no zero inflation. Current normalization procedures such as log of counts per million and feature selection by highly variable genes produce false variability in dimension reduction. We propose simple multinomial methods, including generalized principal component analysis (GLM-PCA) for non-normal distributions, and feature selection using deviance. These methods outperform the current practice in a downstream clustering assessment using ground truth datasets.
Citation impact
- FWCI
- 22.05
- Percentile
- 100%
- References
- 73
Authors
4- FWF. William TownesCorresponding
Harvard University, Princeton University
- SCStephanie C. Hicks
Johns Hopkins University
- MJMartin J. Aryee
Harvard University, Massachusetts General Hospital, Center for Cancer Research
- RARafael A. Irizarry
Harvard University, Harvard University Press, Dana-Farber Cancer Institute, Dana-Farber/Harvard Cancer Center
Topics & keywords
- Multinomial distribution
- Feature selection
- Normalization (sociology)
- Dimensionality reduction
- Biology
- Principal component analysis
- Cluster analysis
- RNA-Seq