Multiplex profiling of developmental cis-regulatory elements with quantitative single-cell expression reporters

Jean‐Benoît Lalanne(University of Washington), Samuel G. Regalado(University of Washington), Silvia Domcke(University of Washington), Diego Calderon(University of Washington), Beth Martin(University of Washington), Xiaoyi Li(University of Washington), Tony Li(University of Washington), Chase C. Suiter(University of Washington), Choli Lee(University of Washington), Cole Trapnell(University of Washington), Jay Shendure(Howard Hughes Medical Institute)
Nature Methods
May 9, 2024
Cited by 49Open Access
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Abstract

The inability to scalably and precisely measure the activity of developmental cis-regulatory elements (CREs) in multicellular systems is a bottleneck in genomics. Here we develop a dual RNA cassette that decouples the detection and quantification tasks inherent to multiplex single-cell reporter assays. The resulting measurement of reporter expression is accurate over multiple orders of magnitude, with a precision approaching the limit set by Poisson counting noise. Together with RNA barcode stabilization via circularization, these scalable single-cell quantitative expression reporters provide high-contrast readouts, analogous to classic in situ assays but entirely from sequencing. Screening >200 regions of accessible chromatin in a multicellular in vitro model of early mammalian development, we identify 13 (8 previously uncharacterized) autonomous and cell-type-specific developmental CREs. We further demonstrate that chimeric CRE pairs generate cognate two-cell-type activity profiles and assess gain- and loss-of-function multicellular expression phenotypes from CRE variants with perturbed transcription factor binding sites. Single-cell quantitative expression reporters can be applied in developmental and multicellular systems to quantitatively characterize native, perturbed and synthetic CREs at scale, with high sensitivity and at single-cell resolution.


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