Literature DB >> 34040149

NEBULA is a fast negative binomial mixed model for differential or co-expression analysis of large-scale multi-subject single-cell data.

Liang He1, Jose Davila-Velderrain2,3, Tomokazu S Sumida4,5, David A Hafler4, Manolis Kellis6,7, Alexander M Kulminski8.   

Abstract

The increasing availability of single-cell data revolutionizes the understanding of biological mechanisms at cellular resolution. For differential expression analysis in multi-subject single-cell data, negative binomial mixed models account for both subject-level and cell-level overdispersions, but are computationally demanding. Here, we propose an efficient NEgative Binomial mixed model Using a Large-sample Approximation (NEBULA). The speed gain is achieved by analytically solving high-dimensional integrals instead of using the Laplace approximation. We demonstrate that NEBULA is orders of magnitude faster than existing tools and controls false-positive errors in marker gene identification and co-expression analysis. Using NEBULA in Alzheimer's disease cohort data sets, we found that the cell-level expression of APOE correlated with that of other genetic risk factors (including CLU, CST3, TREM2, C1q, and ITM2B) in a cell-type-specific pattern and an isoform-dependent manner in microglia. NEBULA opens up a new avenue for the broad application of mixed models to large-scale multi-subject single-cell data.

Entities:  

Year:  2021        PMID: 34040149     DOI: 10.1038/s42003-021-02146-6

Source DB:  PubMed          Journal:  Commun Biol        ISSN: 2399-3642


  40 in total

1.  Full-length RNA-seq from single cells using Smart-seq2.

Authors:  Simone Picelli; Omid R Faridani; Asa K Björklund; Gösta Winberg; Sven Sagasser; Rickard Sandberg
Journal:  Nat Protoc       Date:  2014-01-02       Impact factor: 13.491

2.  Droplet barcoding for single-cell transcriptomics applied to embryonic stem cells.

Authors:  Allon M Klein; Linas Mazutis; Ilke Akartuna; Naren Tallapragada; Adrian Veres; Victor Li; Leonid Peshkin; David A Weitz; Marc W Kirschner
Journal:  Cell       Date:  2015-05-21       Impact factor: 41.582

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.  Single-cell transcriptomic analysis of Alzheimer's disease.

Authors:  Hansruedi Mathys; Jose Davila-Velderrain; Zhuyu Peng; Fan Gao; Shahin Mohammadi; Jennie Z Young; Madhvi Menon; Liang He; Fatema Abdurrob; Xueqiao Jiang; Anthony J Martorell; Richard M Ransohoff; Brian P Hafler; David A Bennett; Manolis Kellis; Li-Huei Tsai
Journal:  Nature       Date:  2019-05-01       Impact factor: 49.962

5.  Differential expression analysis of multifactor RNA-Seq experiments with respect to biological variation.

Authors:  Davis J McCarthy; Yunshun Chen; Gordon K Smyth
Journal:  Nucleic Acids Res       Date:  2012-01-28       Impact factor: 16.971

6.  voom: Precision weights unlock linear model analysis tools for RNA-seq read counts.

Authors:  Charity W Law; Yunshun Chen; Wei Shi; Gordon K Smyth
Journal:  Genome Biol       Date:  2014-02-03       Impact factor: 13.583

7.  Moderated estimation of fold change and dispersion for RNA-seq data with DESeq2.

Authors:  Michael I Love; Wolfgang Huber; Simon Anders
Journal:  Genome Biol       Date:  2014       Impact factor: 13.583

8.  UMI-count modeling and differential expression analysis for single-cell RNA sequencing.

Authors:  Wenan Chen; Yan Li; John Easton; David Finkelstein; Gang Wu; Xiang Chen
Journal:  Genome Biol       Date:  2018-05-31       Impact factor: 13.583

9.  Bayesian model selection reveals biological origins of zero inflation in single-cell transcriptomics.

Authors:  Kwangbom Choi; Yang Chen; Daniel A Skelly; Gary A Churchill
Journal:  Genome Biol       Date:  2020-07-27       Impact factor: 13.583

10.  CEL-Seq2: sensitive highly-multiplexed single-cell RNA-Seq.

Authors:  Tamar Hashimshony; Naftalie Senderovich; Gal Avital; Agnes Klochendler; Yaron de Leeuw; Leon Anavy; Dave Gennert; Shuqiang Li; Kenneth J Livak; Orit Rozenblatt-Rosen; Yuval Dor; Aviv Regev; Itai Yanai
Journal:  Genome Biol       Date:  2016-04-28       Impact factor: 13.583

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  5 in total

1.  Mostly natural sequencing-by-synthesis for scRNA-seq using Ultima sequencing.

Authors:  Sean K Simmons; Gila Lithwick-Yanai; Xian Adiconis; Florian Oberstrass; Nika Iremadze; Kathryn Geiger-Schuller; Pratiksha I Thakore; Chris J Frangieh; Omer Barad; Gilad Almogy; Orit Rozenblatt-Rosen; Aviv Regev; Doron Lipson; Joshua Z Levin
Journal:  Nat Biotechnol       Date:  2022-09-15       Impact factor: 68.164

2.  Recommendations of scRNA-seq Differential Gene Expression Analysis Based on Comprehensive Benchmarking.

Authors:  Jake Gagnon; Lira Pi; Matthew Ryals; Qingwen Wan; Wenxing Hu; Zhengyu Ouyang; Baohong Zhang; Kejie Li
Journal:  Life (Basel)       Date:  2022-06-07

3.  Allele-specific analysis reveals exon- and cell-type-specific regulatory effects of Alzheimer's disease-associated genetic variants.

Authors:  Liang He; Yury Loika; Alexander M Kulminski
Journal:  Transl Psychiatry       Date:  2022-04-18       Impact factor: 7.989

4.  Detecting Fear-Memory-Related Genes from Neuronal scRNA-seq Data by Diverse Distributions and Bhattacharyya Distance.

Authors:  Shaoqiang Zhang; Linjuan Xie; Yaxuan Cui; Benjamin R Carone; Yong Chen
Journal:  Biomolecules       Date:  2022-08-17

5.  Comparison and evaluation of statistical error models for scRNA-seq.

Authors:  Saket Choudhary; Rahul Satija
Journal:  Genome Biol       Date:  2022-01-18       Impact factor: 13.583

  5 in total

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