Author:
Schiebinger Geoffrey,Shu Jian,Tabaka Marcin,Cleary Brian,Subramanian Vidya,Solomon Aryeh,Liu Siyan,Lin Stacie,Berube Peter,Lee Lia,Chen Jenny,Brumbaugh Justin,Rigollet Philippe,Hochedlinger Konrad,Jaenisch Rudolf,Regev Aviv,Lander Eric S.
Abstract
AbstractUnderstanding the molecular programs that guide cellular differentiation during development is a major goal of modern biology. Here, we introduce an approach, WADDINGTON-OT, based on the mathematics of optimal transport, for inferring developmental landscapes, probabilistic cellular fates and dynamic trajectories from large-scale single-cell RNA-seq (scRNA-seq) data collected along a time course. We demonstrate the power of WADDINGTON-OT by applying the approach to study 65,781 scRNA-seq profiles collected at 10 time points over 16 days during reprogramming of fibroblasts to iPSCs. We construct a high-resolution map of reprogramming that rediscovers known features; uncovers new alternative cell fates including neuraland placental-like cells; predicts the origin and fate of any cell class; highlights senescent-like cells that may support reprogramming through paracrine signaling; and implicates regulatory models in particular trajectories. Of these findings, we highlight Obox6, which we experimentally show enhances reprogramming efficiency. Our approach provides a general framework for investigating cellular differentiation.
Publisher
Cold Spring Harbor Laboratory
Cited by
36 articles.
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