Single-cell RNA-seq denoising using a deep count autoencoder
Helmholtz Zentrum München · Technical University of Munich · +1 more institution
Abstract
Single-cell RNA sequencing (scRNA-seq) has enabled researchers to study gene expression at a cellular resolution. However, noise due to amplification and dropout may obstruct analyses, so scalable denoising methods for increasingly large but sparse scRNA-seq data are needed. We propose a deep count autoencoder network (DCA) to denoise scRNA-seq datasets. DCA takes the count distribution, overdispersion and sparsity of the data into account using a negative binomial noise model with or without zero-inflation, and nonlinear gene-gene dependencies are captured. Our method scales linearly with the number of cells and can, therefore, be applied to datasets of millions of cells. We demonstrate that DCA denoising…
Citation impact
- FWCI
- 48.53
- Percentile
- 100%
- References
- 52
Authors
5- GEGökçen EraslanCorresponding
Helmholtz Zentrum München, Technical University of Munich
- LMLukas M. Simon
Helmholtz Zentrum München
- MMMaria Mircea
Helmholtz Zentrum München
- NSNikola S. Mueller
Helmholtz Zentrum München
- FJFabian J. Theis
Helmholtz Zentrum München, Weihenstephan-Triesdorf University of Applied Sciences, Technical University of Munich
Topics & keywords
- Computer science
- Imputation (statistics)
- Autoencoder
- Count data
- Noise reduction
- Negative binomial distribution
- Overdispersion
- Artificial intelligence