Deep generative modeling for single-cell transcriptomics

R Lopez, J Regier, MB Cole, MI Jordan, N Yosef - Nature methods, 2018 - nature.com
Nature methods, 2018nature.com
Single-cell transcriptome measurements can reveal unexplored biological diversity, but they
suffer from technical noise and bias that must be modeled to account for the resulting
uncertainty in downstream analyses. Here we introduce single-cell variational inference
(scVI), a ready-to-use scalable framework for the probabilistic representation and analysis of
gene expression in single cells (https://github. com/YosefLab/scVI). scVI uses stochastic
optimization and deep neural networks to aggregate information across similar cells and …
Abstract
Single-cell transcriptome measurements can reveal unexplored biological diversity, but they suffer from technical noise and bias that must be modeled to account for the resulting uncertainty in downstream analyses. Here we introduce single-cell variational inference (scVI), a ready-to-use scalable framework for the probabilistic representation and analysis of gene expression in single cells (https://github.com/YosefLab/scVI). scVI uses stochastic optimization and deep neural networks to aggregate information across similar cells and genes and to approximate the distributions that underlie observed expression values, while accounting for batch effects and limited sensitivity. We used scVI for a range of fundamental analysis tasks including batch correction, visualization, clustering, and differential expression, and achieved high accuracy for each task.
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