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Efficient differential expression analysis of large-scale single cell transcriptomics data using dreamlet

Authors :
Gabriel E. Hoffman
Donghoon Lee
Jaroslav Bendl
Prashant Fnu
Aram Hong
Clara Casey
Marcela Alvia
Zhiping Shao
Stathis Argyriou
Karen Therrien
Sanan Venkatesh
Georgios Voloudakis
Vahram Haroutunian
John F. Fullard
Panos Roussos
Source :
bioRxiv
Publication Year :
2023
Publisher :
Research Square Platform LLC, 2023.

Abstract

Advances in single-cell and -nucleus transcriptomics have enabled generation of increasingly large-scale datasets from hundreds of subjects and millions of cells. These studies promise to give unprecedented insight into the cell type specific biology of human disease. Yet performing differential expression analyses across subjects remains difficult due to challenges in statistical modeling of these complex studies and scaling analyses to large datasets. Our open-source R package dreamlet (DiseaseNeurogenomics.github.io/dreamlet) uses a pseudobulk approach based on precision-weighted linear mixed models to identify genes differentially expressed with traits across subjects for each cell cluster. Designed for data from large cohorts, dreamlet is substantially faster and uses less memory than existing workflows, while supporting complex statistical models and controlling the false positive rate. We demonstrate computational and statistical performance on published datasets, and a novel dataset of 1.4M single nuclei from postmortem brains of 150 Alzheimer’s disease cases and 149 controls.

Subjects

Subjects :
Article

Details

Database :
OpenAIRE
Journal :
bioRxiv
Accession number :
edsair.doi.dedup.....f32b87eedf93b924fe28f76ab5c5fe1a
Full Text :
https://doi.org/10.21203/rs.3.rs-2705625/v1