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ScMerge leverages factor analysis, stable expression, and pseudoreplication to merge multiple single-cell RNA-seq datasets.


ABSTRACT: Concerted examination of multiple collections of single-cell RNA sequencing (RNA-seq) data promises further biological insights that cannot be uncovered with individual datasets. Here we present scMerge, an algorithm that integrates multiple single-cell RNA-seq datasets using factor analysis of stably expressed genes and pseudoreplicates across datasets. Using a large collection of public datasets, we benchmark scMerge against published methods and demonstrate that it consistently provides improved cell type separation by removing unwanted factors; scMerge can also enhance biological discovery through robust data integration, which we show through the inference of development trajectory in a liver dataset collection.

SUBMITTER: Lin Y 

PROVIDER: S-EPMC6525515 | biostudies-literature | 2019 May

REPOSITORIES: biostudies-literature

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scMerge leverages factor analysis, stable expression, and pseudoreplication to merge multiple single-cell RNA-seq datasets.

Lin Yingxin Y   Ghazanfar Shila S   Wang Kevin Y X KYX   Gagnon-Bartsch Johann A JA   Lo Kitty K KK   Su Xianbin X   Han Ze-Guang ZG   Ormerod John T JT   Speed Terence P TP   Yang Pengyi P   Yang Jean Yee Hwa JYH  

Proceedings of the National Academy of Sciences of the United States of America 20190426 20


Concerted examination of multiple collections of single-cell RNA sequencing (RNA-seq) data promises further biological insights that cannot be uncovered with individual datasets. Here we present scMerge, an algorithm that integrates multiple single-cell RNA-seq datasets using factor analysis of stably expressed genes and pseudoreplicates across datasets. Using a large collection of public datasets, we benchmark scMerge against published methods and demonstrate that it consistently provides impro  ...[more]

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