Clustering of single-cell multi-omics data with a multimodal deep learning method

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作者
Xiang Lin
Tian Tian
Zhi Wei
Hakon Hakonarson
机构
[1] New Jersey Institute of Technology,Department of Computer Science
[2] Children’s Hospital of Philadelphia,Center of Applied Genomics
[3] University of Pennsylvania,Division of Human Genetics, Department of Pediatrics, Perelman School of Medicine
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Nature Communications | / 13卷
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摘要
Single-cell multimodal sequencing technologies are developed to simultaneously profile different modalities of data in the same cell. It provides a unique opportunity to jointly analyze multimodal data at the single-cell level for the identification of distinct cell types. A correct clustering result is essential for the downstream complex biological functional studies. However, combining different data sources for clustering analysis of single-cell multimodal data remains a statistical and computational challenge. Here, we develop a novel multimodal deep learning method, scMDC, for single-cell multi-omics data clustering analysis. scMDC is an end-to-end deep model that explicitly characterizes different data sources and jointly learns latent features of deep embedding for clustering analysis. Extensive simulation and real-data experiments reveal that scMDC outperforms existing single-cell single-modal and multimodal clustering methods on different single-cell multimodal datasets. The linear scalability of running time makes scMDC a promising method for analyzing large multimodal datasets.
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