A deep generative model for multi-view profiling of single-cell RNA-seq and ATAC-seq data

Gaoyang Li(Tongji University), Shaliu Fu(Shanghai East Hospital), Shuguang Wang(Shanghai East Hospital), Chenyu Zhu(Shanghai East Hospital), Bin Duan(Shanghai East Hospital), Chen Tang(Shanghai East Hospital), Xiaohan Chen(Shanghai East Hospital), Guohui Chuai(Shanghai East Hospital), Ping Wang(Tongji University), Qi Liu(Tongji University)
Genome biology
January 12, 2022
Cited by 104Open Access
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Abstract

Here, we present a multi-modal deep generative model, the single-cell Multi-View Profiler (scMVP), which is designed for handling sequencing data that simultaneously measure gene expression and chromatin accessibility in the same cell, including SNARE-seq, sci-CAR, Paired-seq, SHARE-seq, and Multiome from 10X Genomics. scMVP generates common latent representations for dimensionality reduction, cell clustering, and developmental trajectory inference and generates separate imputations for differential analysis and cis-regulatory element identification. scMVP can help mitigate data sparsity issues with imputation and accurately identify cell groups for different joint profiling techniques with common latent embedding, and we demonstrate its advantages on several realistic datasets.


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