Journal article
Trade-off between conservation of biological variation and batch effect removal in deep generative modeling for single-cell transcriptomics
H Li, DJ McCarthy, H Shim, S Wei
BMC Bioinformatics | BMC | Published : 2022
Abstract
Background: Single-cell RNA sequencing (scRNA-seq) technology has contributed significantly to diverse research areas in biology, from cancer to development. Since scRNA-seq data is high-dimensional, a common strategy is to learn low-dimensional latent representations better to understand overall structure in the data. In this work, we build upon scVI, a powerful deep generative model which can learn biologically meaningful latent representations, but which has limited explicit control of batch effects. Rather than prioritizing batch effect removal over conservation of biological variation, or vice versa, our goal is to provide a bird’s eye view of the trade-offs between these two conflictin..
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Awarded by Australian Government
Funding Acknowledgements
This research is supported by the Australian Research Council Discovery Early Career Award received by Dr. Susan Wei (Project Number DE200101253) funded by the Australian Government.