Inferring gene regulation from stochastic transcriptional variation across single cells at steady state

Anika Gupta(Broad Institute), Jorge D. Martin-Rufino(Broad Institute), Thouis R. Jones(Broad Institute), Vidya Subramanian(Broad Institute), Xiaojie Qiu(Whitehead Institute for Biomedical Research), Emanuelle I. Grody(Broad Institute), Alex Bloemendal(Broad Institute), Chen Weng(Broad Institute), Sheng-Yong Niu(Broad Institute), Kyung Hoi Min(Whitehead Institute for Biomedical Research), Arnav Mehta(Broad Institute), Kaite Zhang(Broad Institute), Layla Siraj(Broad Institute), Aziz Al' Khafaji(Broad Institute), Vijay G. Sankaran(Broad Institute), Soumya Raychaudhuri(Broad Institute), Brian Cleary(Broad Institute), Sharon R. Grossman(Broad Institute), Eric S. Lander(Broad Institute)
Proceedings of the National Academy of Sciences
August 15, 2022
Cited by 57Open Access
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Abstract

Regulatory relationships between transcription factors (TFs) and their target genes lie at the heart of cellular identity and function; however, uncovering these relationships is often labor-intensive and requires perturbations. Here, we propose a principled framework to systematically infer gene regulation for all TFs simultaneously in cells at steady state by leveraging the intrinsic variation in the transcriptional abundance across single cells. Through modeling and simulations, we characterize how transcriptional bursts of a TF gene are propagated to its target genes, including the expected ranges of time delay and magnitude of maximum covariation. We distinguish these temporal trends from the time-invariant covariation arising from cell states, and we delineate the experimental and technical requirements for leveraging these small but meaningful cofluctuations in the presence of measurement noise. While current technology does not yet allow adequate power for definitively detecting regulatory relationships for all TFs simultaneously in cells at steady state, we investigate a small-scale dataset to inform future experimental design. This study supports the potential value of mapping regulatory connections through stochastic variation, and it motivates further technological development to achieve its full potential.


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