Aligning Single-Cell Developmental and Reprogramming Trajectories Identifies Molecular Determinants of Myogenic Reprogramming Outcome

Davide Cacchiarelli(Broad Institute), Xiaojie Qiu(University of Washington), Sanjay Srivatsan(University of Washington), Manfredi Anna(Telethon Institute Of Genetics And Medicine), Michael J. Ziller(Max Planck Institute of Psychiatry), Eliah Overbey(University of Washington), Antonio Grimaldi(Telethon Institute Of Genetics And Medicine), Jonna Grimsby(Broad Institute), Prapti Pokharel(Broad Institute), Kenneth J. Livak, Shuqiang Li(Broad Institute), Alexander Meissner(Broad Institute), Tarjei S. Mikkelsen(Broad Institute), John L. Rinn(Broad Institute), Cole Trapnell(University of Washington)
Cell Systems
September 1, 2018
Cited by 87Open Access
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Abstract

Cellular reprogramming through manipulation of defined factors holds great promise for large-scale production of cell types needed for use in therapy and for revealing principles of gene regulation. However, most reprogramming systems are inefficient, converting only a fraction of cells to the desired state. Here, we analyze MYOD-mediated reprogramming of human fibroblasts to myotubes, a well-characterized model system for direct conversion by defined factors, at pseudotemporal resolution using single-cell RNA-seq. To expose barriers to efficient conversion, we introduce a novel analytic technique, trajectory alignment, which enables quantitative comparison of gene expression kinetics across two biological processes. Reprogrammed cells navigate a trajectory with branch points that correspond to two alternative decision points, with cells that select incorrect branches terminating at aberrant or incomplete reprogramming outcomes. Analysis of these branch points revealed insulin and BMP signaling as crucial molecular determinants of reprogramming. Single-cell trajectory alignment enables rigorous quantitative comparisons between biological trajectories found in diverse processes in development, reprogramming, and other contexts.


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