Literature DB >> 34500471

scDeepSort: a pre-trained cell-type annotation method for single-cell transcriptomics using deep learning with a weighted graph neural network.

Xin Shao1,2, Haihong Yang3,4, Xiang Zhuang3, Jie Liao1,2, Penghui Yang1, Junyun Cheng1, Xiaoyan Lu1,5, Huajun Chen3,6,4, Xiaohui Fan1,2,5,7.   

Abstract

Advances in single-cell RNA sequencing (scRNA-seq) have furthered the simultaneous classification of thousands of cells in a single assay based on transcriptome profiling. In most analysis protocols, single-cell type annotation relies on marker genes or RNA-seq profiles, resulting in poor extrapolation. Still, the accurate cell-type annotation for single-cell transcriptomic data remains a great challenge. Here, we introduce scDeepSort (https://github.com/ZJUFanLab/scDeepSort), a pre-trained cell-type annotation tool for single-cell transcriptomics that uses a deep learning model with a weighted graph neural network (GNN). Using human and mouse scRNA-seq data resources, we demonstrate the high performance and robustness of scDeepSort in labeling 764 741 cells involving 56 human and 32 mouse tissues. Significantly, scDeepSort outperformed other known methods in annotating 76 external test datasets, reaching an 83.79% accuracy across 265 489 cells in humans and mice. Moreover, we demonstrate the universality of scDeepSort using more challenging datasets and using references from different scRNA-seq technology. Above all, scDeepSort is the first attempt to annotate cell types of scRNA-seq data with a pre-trained GNN model, which can realize the accurate cell-type annotation without additional references, i.e. markers or RNA-seq profiles.
© The Author(s) 2021. Published by Oxford University Press on behalf of Nucleic Acids Research.

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Year:  2021        PMID: 34500471      PMCID: PMC8643674          DOI: 10.1093/nar/gkab775

Source DB:  PubMed          Journal:  Nucleic Acids Res        ISSN: 0305-1048            Impact factor:   16.971


  47 in total

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Journal:  Nature       Date:  2016-01-28       Impact factor: 49.962

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Journal:  J Arthroplasty       Date:  2018-02-27       Impact factor: 4.757

3.  Highly Parallel Genome-wide Expression Profiling of Individual Cells Using Nanoliter Droplets.

Authors:  Evan Z Macosko; Anindita Basu; Rahul Satija; James Nemesh; Karthik Shekhar; Melissa Goldman; Itay Tirosh; Allison R Bialas; Nolan Kamitaki; Emily M Martersteck; John J Trombetta; David A Weitz; Joshua R Sanes; Alex K Shalek; Aviv Regev; Steven A McCarroll
Journal:  Cell       Date:  2015-05-21       Impact factor: 41.582

4.  ACTINN: automated identification of cell types in single cell RNA sequencing.

Authors:  Feiyang Ma; Matteo Pellegrini
Journal:  Bioinformatics       Date:  2020-01-15       Impact factor: 6.937

5.  Molecular architecture of the developing mouse brain.

Authors:  Gioele La Manno; Kimberly Siletti; Alessandro Furlan; Daniel Gyllborg; Elin Vinsland; Alejandro Mossi Albiach; Christoffer Mattsson Langseth; Irina Khven; Alex R Lederer; Lisa M Dratva; Anna Johnsson; Mats Nilsson; Peter Lönnerberg; Sten Linnarsson
Journal:  Nature       Date:  2021-07-28       Impact factor: 49.962

6.  scmap: projection of single-cell RNA-seq data across data sets.

Authors:  Vladimir Yu Kiselev; Andrew Yiu; Martin Hemberg
Journal:  Nat Methods       Date:  2018-04-02       Impact factor: 28.547

7.  SingleCellNet: A Computational Tool to Classify Single Cell RNA-Seq Data Across Platforms and Across Species.

Authors:  Yuqi Tan; Patrick Cahan
Journal:  Cell Syst       Date:  2019-07-31       Impact factor: 10.304

8.  scGNN is a novel graph neural network framework for single-cell RNA-Seq analyses.

Authors:  Juexin Wang; Anjun Ma; Yuzhou Chang; Jianting Gong; Yuexu Jiang; Ren Qi; Cankun Wang; Hongjun Fu; Qin Ma; Dong Xu
Journal:  Nat Commun       Date:  2021-03-25       Impact factor: 17.694

Review 9.  New avenues for systematically inferring cell-cell communication: through single-cell transcriptomics data.

Authors:  Xin Shao; Xiaoyan Lu; Jie Liao; Huajun Chen; Xiaohui Fan
Journal:  Protein Cell       Date:  2020-05-21       Impact factor: 14.870

10.  GNNExplainer: Generating Explanations for Graph Neural Networks.

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Journal:  Adv Neural Inf Process Syst       Date:  2019-12
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  2 in total

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Authors:  Xin Shao; Chengyu Li; Haihong Yang; Xiaoyan Lu; Jie Liao; Jingyang Qian; Kai Wang; Junyun Cheng; Penghui Yang; Huajun Chen; Xiao Xu; Xiaohui Fan
Journal:  Nat Commun       Date:  2022-07-30       Impact factor: 17.694

2.  A neural network-based method for exhaustive cell label assignment using single cell RNA-seq data.

Authors:  Ziyi Li; Hao Feng
Journal:  Sci Rep       Date:  2022-01-18       Impact factor: 4.996

  2 in total

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