Miscell: An efficient self-supervised learning approach for dissecting single-cell transcriptome
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ABSTRACT: Summary We developed Miscell, a self-supervised learning approach with deep neural network as latent feature encoder for mining information from single-cell transcriptomes. We demonstrated the capability of Miscell with canonical single-cell analysis tasks including delineation of single-cell clusters and identification of cluster-specific marker genes. We evaluated Miscell along with three state-of-the-art methods on three heterogeneous datasets. Miscell achieved at least comparable or better performance than the other methods by significant margin on a variety of clustering metrics such as adjusted rand index, normalized mutual information, and V-measure score. Miscell can identify cell-type specific markers by quantifying the influence of genes on cell clusters via deep learning approach. Graphical abstract Highlights • We presented a deep learning approach Miscell to dissecting single-cell transcriptomes• Miscell achieved high performance on canonical single-cell analysis tasks• Miscell can transfer knowledge learned from single-cell transcriptomes to bulk tumors Biological sciences; Neural networks; Transcriptomics
SUBMITTER: Shen H
PROVIDER: S-EPMC8529514 | biostudies-literature | 2021 Oct
REPOSITORIES: biostudies-literature
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