Author
Listed:
- Koen Van den Berge
(Ghent University
Ghent University
University of California)
- Hector Roux de Bézieux
(University of California
University of California)
- Kelly Street
(Dana-Farber Cancer Institute
Harvard T.H. Chan School of Public Health)
- Wouter Saelens
(Ghent University
VIB Center for Inflammation Research)
- Robrecht Cannoodt
(VIB Center for Inflammation Research
Ghent University Hospital
Ghent University)
- Yvan Saeys
(Ghent University
VIB Center for Inflammation Research)
- Sandrine Dudoit
(University of California
University of California
University of California)
- Lieven Clement
(Ghent University
Ghent University)
Abstract
Trajectory inference has radically enhanced single-cell RNA-seq research by enabling the study of dynamic changes in gene expression. Downstream of trajectory inference, it is vital to discover genes that are (i) associated with the lineages in the trajectory, or (ii) differentially expressed between lineages, to illuminate the underlying biological processes. Current data analysis procedures, however, either fail to exploit the continuous resolution provided by trajectory inference, or fail to pinpoint the exact types of differential expression. We introduce tradeSeq, a powerful generalized additive model framework based on the negative binomial distribution that allows flexible inference of both within-lineage and between-lineage differential expression. By incorporating observation-level weights, the model additionally allows to account for zero inflation. We evaluate the method on simulated datasets and on real datasets from droplet-based and full-length protocols, and show that it yields biological insights through a clear interpretation of the data.
Suggested Citation
Koen Van den Berge & Hector Roux de Bézieux & Kelly Street & Wouter Saelens & Robrecht Cannoodt & Yvan Saeys & Sandrine Dudoit & Lieven Clement, 2020.
"Trajectory-based differential expression analysis for single-cell sequencing data,"
Nature Communications, Nature, vol. 11(1), pages 1-13, December.
Handle:
RePEc:nat:natcom:v:11:y:2020:i:1:d:10.1038_s41467-020-14766-3
DOI: 10.1038/s41467-020-14766-3
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