Gene-level alignment of single-cell trajectories

Dinithi Sumanaweera(University of Cambridge), Chenqu Suo(Cambridge University Hospitals NHS Foundation Trust), Ana-Maria Cujba(Wellcome Sanger Institute), Daniele Muraro(Wellcome Sanger Institute), Emma Dann(Wellcome Sanger Institute), Krzysztof Polański(Wellcome Sanger Institute), Alexander S. Steemers(Wellcome Sanger Institute), Woochan Lee(Seoul National University), Amanda J. Oliver(Wellcome Sanger Institute), Jong-Eun Park(Korea Advanced Institute of Science and Technology), Kerstin B. Meyer(Wellcome Sanger Institute), Bianca Dumitrascu(Columbia University Irving Medical Center), Sarah A. Teichmann(Wellcome/MRC Cambridge Stem Cell Institute)
Nature Methods
September 19, 2024
Cited by 16Open Access
Full Text

Abstract

Single-cell data analysis can infer dynamic changes in cell populations, for example across time, space or in response to perturbation, thus deriving pseudotime trajectories. Current approaches comparing trajectories often use dynamic programming but are limited by assumptions such as the existence of a definitive match. Here we describe Genes2Genes, a Bayesian information-theoretic dynamic programming framework for aligning single-cell trajectories. It is able to capture sequential matches and mismatches of individual genes between a reference and query trajectory, highlighting distinct clusters of alignment patterns. Across both real world and simulated datasets, it accurately inferred alignments and demonstrated its utility in disease cell-state trajectory analysis. In a proof-of-concept application, Genes2Genes revealed that T cells differentiated in vitro match an immature in vivo state while lacking expression of genes associated with TNF signaling. This demonstrates that precise trajectory alignment can pinpoint divergence from the in vivo system, thus guiding the optimization of in vitro culture conditions.


Related Papers

No related papers found

Powered by citation graph analysis