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VASC: Dimension Reduction and Visualization of Single-cell RNA-seq Data by Deep Variational Autoencoder 被引量:7

VASC: Dimension Reduction and Visualization of Single-cell RNA-seq Data by Deep Variational Autoencoder
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摘要 Single-cell RNA sequencing(scRNA-seq) is a powerful technique to analyze the transcriptomic heterogeneities at the single cell level. It is an important step for studying cell subpopulations and lineages, with an effective low-dimensional representation and visualization of the original scRNA-Seq data. At the single cell level, the transcriptional fluctuations are much larger than the average of a cell population, and the low amount of RNA transcripts will increase the rate of technical dropout events. Therefore, scRNA-seq data are much noisier than traditional bulk RNA-seq data. In this study, we proposed the deep variational autoencoder for scRNA-seq data(VASC), a deep multi-layer generative model, for the unsupervised dimension reduction and visualization of scRNA-seq data. VASC can explicitly model the dropout events and find the nonlinear hierarchical feature representations of the original data. Tested on over 20 datasets, VASC shows superior performances in most cases and exhibits broader dataset compatibility compared to four state-of-the-art dimension reduction and visualization methods. In addition, VASC provides better representations for very rare cell populations in the 2D visualization. As a case study, VASC successfully re-establishes the cell dynamics in pre-implantation embryos and identifies several candidate marker genes associated with early embryo development. Moreover, VASC also performs well on a 10× Genomics dataset with more cells and higher dropout rate. Single-cell RNA sequencing(scRNA-seq) is a powerful technique to analyze the transcriptomic heterogeneities at the single cell level. It is an important step for studying cell subpopulations and lineages, with an effective low-dimensional representation and visualization of the original scRNA-Seq data. At the single cell level, the transcriptional fluctuations are much larger than the average of a cell population, and the low amount of RNA transcripts will increase the rate of technical dropout events. Therefore, scRNA-seq data are much noisier than traditional bulk RNA-seq data. In this study, we proposed the deep variational autoencoder for scRNA-seq data(VASC), a deep multi-layer generative model, for the unsupervised dimension reduction and visualization of scRNA-seq data. VASC can explicitly model the dropout events and find the nonlinear hierarchical feature representations of the original data. Tested on over 20 datasets, VASC shows superior performances in most cases and exhibits broader dataset compatibility compared to four state-of-the-art dimension reduction and visualization methods. In addition, VASC provides better representations for very rare cell populations in the 2D visualization. As a case study, VASC successfully re-establishes the cell dynamics in pre-implantation embryos and identifies several candidate marker genes associated with early embryo development. Moreover, VASC also performs well on a 10× Genomics dataset with more cells and higher dropout rate.
出处 《Genomics, Proteomics & Bioinformatics》 SCIE CAS CSCD 2018年第5期320-331,共12页 基因组蛋白质组与生物信息学报(英文版)
基金 supported by the National Natural Science Foundation of China (Grant Nos.61370035 and 31361163004) Tsinghua University Initiative Scientific Research Program
关键词 Single cell RNA sequencing Deep variational autoencoder Dimension reduction VISUALIZATION DROPOUT Single cell RNA sequencing Deep variational autoencoder Dimension reduction Visualization Dropout
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  • 1Huipeng Li, Elise T Courtois, Debarka Sengupta, Yuliana Tan, Shyam Prabhakar,Elise T Courtois, Yuliana Tan, Paul Robson,Debarka Sengupta,Kok Hao Chen, Jolene Jie Lin Goh, Paul Jongjoon Choi,Say Li Kong, Axel M Hillmer, Iain Beehuat Tan,Clarinda Chua, Iain Beehuat Tan,Lim Kiat Hon,Wah Siew Tan, Mark Wong,Lawrence J K Wee,Iain Beehuat Tan,Paul Robson,Paul Robson,Paul Robson.Nat Genet:单细胞分析解开结直肠癌细胞的神秘面纱[J].现代生物医学进展,2017,17(15). 被引量:41

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