Slingshot: cell lineage and pseudotime inference for single-cell transcriptomics

Kelly Street(University of California, Berkeley), Davide Risso(Cornell University), Russell B. Fletcher(University of California, Berkeley), Diya Das(University of California, Berkeley), John Ngai(Innovative Genomics Institute), Nir Yosef(University of California, Berkeley), Elizabeth Purdom(University of California, Berkeley), Sandrine Dudoit(Berkeley College)
BMC Genomics
June 18, 2018
Cited by 3,312Open Access
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Abstract

BACKGROUND: Single-cell transcriptomics allows researchers to investigate complex communities of heterogeneous cells. It can be applied to stem cells and their descendants in order to chart the progression from multipotent progenitors to fully differentiated cells. While a variety of statistical and computational methods have been proposed for inferring cell lineages, the problem of accurately characterizing multiple branching lineages remains difficult to solve. RESULTS: We introduce Slingshot, a novel method for inferring cell lineages and pseudotimes from single-cell gene expression data. In previously published datasets, Slingshot correctly identifies the biological signal for one to three branching trajectories. Additionally, our simulation study shows that Slingshot infers more accurate pseudotimes than other leading methods. CONCLUSIONS: Slingshot is a uniquely robust and flexible tool which combines the highly stable techniques necessary for noisy single-cell data with the ability to identify multiple trajectories. Accurate lineage inference is a critical step in the identification of dynamic temporal gene expression.


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