Mapping transcriptomic vector fields of single cells

Xiaojie Qiu(Howard Hughes Medical Institute), Yan Zhang(University of Pittsburgh), Jorge D. Martin-Rufino(Broad Institute), Chen Weng(Boston Children's Hospital), Shayan Hosseinzadeh(University of California, Berkeley), Dian Yang(Howard Hughes Medical Institute), Angela N. Pogson(Howard Hughes Medical Institute), Marco Y. Hein(Chan Zuckerberg Initiative (United States)), Kyung Hoi Min(Howard Hughes Medical Institute), Li Wang(The University of Texas at Arlington), Emanuelle I. Grody(Broad Institute), Matthew J. Shurtleff(Intarcia Therapeutics (United States)), Ruoshi Yuan(QB3), Song Xu(Microsoft (United States)), Yi-An Ma(University of California San Diego), Joseph M. Replogle(Howard Hughes Medical Institute), Eric S. Lander(Broad Institute), Spyros Darmanis, İvet Bahar(University of Pittsburgh), Vijay G. Sankaran(Broad Institute), Jianhua Xing(University of Pittsburgh), Jonathan S. Weissman(Howard Hughes Medical Institute)
Cell
February 1, 2022
Cited by 472Open Access
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Abstract

Single-cell (sc)RNA-seq, together with RNA velocity and metabolic labeling, reveals cellular states and transitions at unprecedented resolution. Fully exploiting these data, however, requires kinetic models capable of unveiling governing regulatory functions. Here, we introduce an analytical framework dynamo (https://github.com/aristoteleo/dynamo-release), which infers absolute RNA velocity, reconstructs continuous vector fields that predict cell fates, employs differential geometry to extract underlying regulations, and ultimately predicts optimal reprogramming paths and perturbation outcomes. We highlight dynamo's power to overcome fundamental limitations of conventional splicing-based RNA velocity analyses to enable accurate velocity estimations on a metabolically labeled human hematopoiesis scRNA-seq dataset. Furthermore, differential geometry analyses reveal mechanisms driving early megakaryocyte appearance and elucidate asymmetrical regulation within the PU.1-GATA1 circuit. Leveraging the least-action-path method, dynamo accurately predicts drivers of numerous hematopoietic transitions. Finally, in silico perturbations predict cell-fate diversions induced by gene perturbations. Dynamo, thus, represents an important step in advancing quantitative and predictive theories of cell-state transitions.


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