Literature DB >> 35524568

scIMC: a platform for benchmarking comparison and visualization analysis of scRNA-seq data imputation methods.

Chichi Dai1, Yi Jiang2,3, Chenglin Yin2,3, Ran Su1, Xiangxiang Zeng4, Quan Zou5, Kenta Nakai6, Leyi Wei2,3.   

Abstract

With the advent of single-cell RNA sequencing (scRNA-seq), one major challenging is the so-called 'dropout' events that distort gene expression and remarkably influence downstream analysis in single-cell transcriptome. To address this issue, much effort has been done and several scRNA-seq imputation methods were developed with two categories: model-based and deep learning-based. However, comprehensively and systematically comparing existing methods are still lacking. In this work, we use six simulated and two real scRNA-seq datasets to comprehensively evaluate and compare a total of 12 available imputation methods from the following four aspects: (i) gene expression recovering, (ii) cell clustering, (iii) gene differential expression, and (iv) cellular trajectory reconstruction. We demonstrate that deep learning-based approaches generally exhibit better overall performance than model-based approaches under major benchmarking comparison, indicating the power of deep learning for imputation. Importantly, we built scIMC (single-cell Imputation Methods Comparison platform), the first online platform that integrates all available state-of-the-art imputation methods for benchmarking comparison and visualization analysis, which is expected to be a convenient and useful tool for researchers of interest. It is now freely accessible via https://server.wei-group.net/scIMC/.
© The Author(s) 2022. Published by Oxford University Press on behalf of Nucleic Acids Research.

Entities:  

Mesh:

Year:  2022        PMID: 35524568      PMCID: PMC9122610          DOI: 10.1093/nar/gkac317

Source DB:  PubMed          Journal:  Nucleic Acids Res        ISSN: 0305-1048            Impact factor:   19.160


  55 in total

1.  Introduction to Single-Cell RNA Sequencing.

Authors:  Thale Kristin Olsen; Ninib Baryawno
Journal:  Curr Protoc Mol Biol       Date:  2018-04

2.  scIGANs: single-cell RNA-seq imputation using generative adversarial networks.

Authors:  Yungang Xu; Zhigang Zhang; Lei You; Jiajia Liu; Zhiwei Fan; Xiaobo Zhou
Journal:  Nucleic Acids Res       Date:  2020-09-04       Impact factor: 16.971

3.  Condensing Raman spectrum for single-cell phenotype analysis.

Authors:  Shiwei Sun; Xuetao Wang; Xin Gao; Lihui Ren; Xiaoquan Su; Dongbo Bu; Kang Ning
Journal:  BMC Bioinformatics       Date:  2015-12-09       Impact factor: 3.169

4.  Single-cell RNA-seq reveals novel regulators of human embryonic stem cell differentiation to definitive endoderm.

Authors:  Li-Fang Chu; Ning Leng; Jue Zhang; Zhonggang Hou; Daniel Mamott; David T Vereide; Jeea Choi; Christina Kendziorski; Ron Stewart; James A Thomson
Journal:  Genome Biol       Date:  2016-08-17       Impact factor: 13.583

5.  AutoImpute: Autoencoder based imputation of single-cell RNA-seq data.

Authors:  Divyanshu Talwar; Aanchal Mongia; Debarka Sengupta; Angshul Majumdar
Journal:  Sci Rep       Date:  2018-11-05       Impact factor: 4.379

6.  Single-cell trajectories reconstruction, exploration and mapping of omics data with STREAM.

Authors:  Huidong Chen; Luca Albergante; Jonathan Y Hsu; Caleb A Lareau; Giosuè Lo Bosco; Jihong Guan; Shuigeng Zhou; Alexander N Gorban; Daniel E Bauer; Martin J Aryee; David M Langenau; Andrei Zinovyev; Jason D Buenrostro; Guo-Cheng Yuan; Luca Pinello
Journal:  Nat Commun       Date:  2019-04-23       Impact factor: 14.919

7.  scNPF: an integrative framework assisted by network propagation and network fusion for preprocessing of single-cell RNA-seq data.

Authors:  Wenbin Ye; Guoli Ji; Pengchao Ye; Yuqi Long; Xuesong Xiao; Shuchao Li; Yaru Su; Xiaohui Wu
Journal:  BMC Genomics       Date:  2019-05-08       Impact factor: 3.969

8.  Deep learning shapes single-cell data analysis.

Authors:  Qin Ma; Dong Xu
Journal:  Nat Rev Mol Cell Biol       Date:  2022-05       Impact factor: 113.915

9.  DISC: a highly scalable and accurate inference of gene expression and structure for single-cell transcriptomes using semi-supervised deep learning.

Authors:  Yao He; Hao Yuan; Cheng Wu; Zhi Xie
Journal:  Genome Biol       Date:  2020-07-10       Impact factor: 13.583

10.  Uncovering pseudotemporal trajectories with covariates from single cell and bulk expression data.

Authors:  Kieran R Campbell; Christopher Yau
Journal:  Nat Commun       Date:  2018-06-22       Impact factor: 14.919

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