Literature DB >> 29036714

Accounting for technical noise in differential expression analysis of single-cell RNA sequencing data.

Cheng Jia1, Yu Hu1, Derek Kelly2, Junhyong Kim3, Mingyao Li1, Nancy R Zhang4.   

Abstract

Recent technological breakthroughs have made it possible to measure RNA expression at the single-cell level, thus paving the way for exploring expression heterogeneity among individual cells. Current single-cell RNA sequencing (scRNA-seq) protocols are complex and introduce technical biases that vary across cells, which can bias downstream analysis without proper adjustment. To account for cell-to-cell technical differences, we propose a statistical framework, TASC (Toolkit for Analysis of Single Cell RNA-seq), an empirical Bayes approach to reliably model the cell-specific dropout rates and amplification bias by use of external RNA spike-ins. TASC incorporates the technical parameters, which reflect cell-to-cell batch effects, into a hierarchical mixture model to estimate the biological variance of a gene and detect differentially expressed genes. More importantly, TASC is able to adjust for covariates to further eliminate confounding that may originate from cell size and cell cycle differences. In simulation and real scRNA-seq data, TASC achieves accurate Type I error control and displays competitive sensitivity and improved robustness to batch effects in differential expression analysis, compared to existing methods. TASC is programmed to be computationally efficient, taking advantage of multi-threaded parallelization. We believe that TASC will provide a robust platform for researchers to leverage the power of scRNA-seq.
© The Author(s) 2017. Published by Oxford University Press on behalf of Nucleic Acids Research.

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Mesh:

Year:  2017        PMID: 29036714      PMCID: PMC5737676          DOI: 10.1093/nar/gkx754

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


  28 in total

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Review 2.  Computational and analytical challenges in single-cell transcriptomics.

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3.  Entering the era of single-cell transcriptomics in biology and medicine.

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4.  Bayesian approach to single-cell differential expression analysis.

Authors:  Peter V Kharchenko; Lev Silberstein; David T Scadden
Journal:  Nat Methods       Date:  2014-05-18       Impact factor: 28.547

5.  OEFinder: a user interface to identify and visualize ordering effects in single-cell RNA-seq data.

Authors:  Ning Leng; Jeea Choi; Li-Fang Chu; James A Thomson; Christina Kendziorski; Ron Stewart
Journal:  Bioinformatics       Date:  2016-01-06       Impact factor: 6.937

6.  Beyond comparisons of means: understanding changes in gene expression at the single-cell level.

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Journal:  Genome Biol       Date:  2016-04-15       Impact factor: 13.583

Review 7.  Design and computational analysis of single-cell RNA-sequencing experiments.

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Journal:  Genome Biol       Date:  2016-04-07       Impact factor: 13.583

8.  Single-cell mRNA quantification and differential analysis with Census.

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9.  Batch effects and the effective design of single-cell gene expression studies.

Authors:  Po-Yuan Tung; John D Blischak; Chiaowen Joyce Hsiao; David A Knowles; Jonathan E Burnett; Jonathan K Pritchard; Yoav Gilad
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10.  MAST: a flexible statistical framework for assessing transcriptional changes and characterizing heterogeneity in single-cell RNA sequencing data.

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  18 in total

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

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Review 4.  An Introduction to the Analysis of Single-Cell RNA-Sequencing Data.

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5.  Bulk tissue cell type deconvolution with multi-subject single-cell expression reference.

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6.  Sparsity-Penalized Stacked Denoising Autoencoders for Imputing Single-Cell RNA-Seq Data.

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7.  DECENT: differential expression with capture efficiency adjustmeNT for single-cell RNA-seq data.

Authors:  Chengzhong Ye; Terence P Speed; Agus Salim
Journal:  Bioinformatics       Date:  2019-12-15       Impact factor: 6.937

Review 8.  Statistical and Bioinformatics Analysis of Data from Bulk and Single-Cell RNA Sequencing Experiments.

Authors:  Xiaoqing Yu; Farnoosh Abbas-Aghababazadeh; Y Ann Chen; Brooke L Fridley
Journal:  Methods Mol Biol       Date:  2021

9.  A Hybrid Clustering Algorithm for Identifying Cell Types from Single-Cell RNA-Seq Data.

Authors:  Xiaoshu Zhu; Hong-Dong Li; Yunpei Xu; Lilu Guo; Fang-Xiang Wu; Guihua Duan; Jianxin Wang
Journal:  Genes (Basel)       Date:  2019-01-29       Impact factor: 4.096

10.  DeepImpute: an accurate, fast, and scalable deep neural network method to impute single-cell RNA-seq data.

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Journal:  Genome Biol       Date:  2019-10-18       Impact factor: 13.583

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