PT - JOURNAL ARTICLE AU - Sara Jiménez AU - Valérie Schreiber AU - Gérard Gradwohl AU - Nacho Molina TI - Characterization of cell-fate decision landscapes by estimating transcription factor dynamics AID - 10.1101/2022.04.01.486696 DP - 2022 Jan 01 TA - bioRxiv PG - 2022.04.01.486696 4099 - http://biorxiv.org/content/early/2022/04/01/2022.04.01.486696.short 4100 - http://biorxiv.org/content/early/2022/04/01/2022.04.01.486696.full AB - Transcriptional regulation is a fundamental process during cell subtype specification. By modulating the rate of gene expression dynamically, transcription factors promote cell diversity and functional specialization. Despite their crucial role in cell fate decisions, no experimental assays allow the estimation of transcription factors’ regulatory activity in a high-throughput manner and at the single-cell resolution. Here, we present FateCompass, a computational method for identifying lineage-specific transcription factors across differentiation. Our pipeline uses single-cell RNA sequencing data to infer differentiation trajectories and transcription factor activities. We combined a probabilistic framework with RNA velocities or a differentiation potential to estimate transition probabilities and perform stochastic simulations. Also, we implemented a linear model of gene regulation to learn transcription factor activities. Taking into account dynamic changes and correlations, we identified lineage-specific regulators. We applied FateCompass to an islet cell formation dataset from the mouse embryo, and we found known and novel potential cell-type dependent drivers. Also, when applied to a differentiation protocol dataset of human embryonic stem cells towards beta-like cells, our approach pinpointed undescribed regulators of an off-target population of intestinal-like cells. Thus, as a framework for identifying lineage-specific transcription factors, FateCompass could have broader implications on hypothesis generation to increase the understanding of the gene regulatory networks driving cell fate choices during differentiation.HighlightsWe developed FateCompass, a flexible pipeline to estimate transcription factor activities during cell-fate decision using single-cell RNA seq data.FateCompass outlines gene expression stochastic trajectories by infusing the direction of differentiation using RNA velocity or a differentiation potential when RNA velocity fails.Transcription factor dynamics allow the identification of time-specific regulatory interactions.FateCompass predictions revealed known and novel cell-subtype-specific regulators of mouse pancreatic islet cell development.Differential motif analysis predicts lineage-specific regulators of stem cell-derived human β-cells and sheds light on the cellular heterogeneity of β-cell differentiation protocols.Competing Interest StatementThe authors have declared no competing interest.