Multiplexed single-cell transcriptional response profiling to define cancer vulnerabilities and therapeutic mechanism of action

James M. McFarland(Broad Institute), Brenton R. Paolella(Broad Institute), Allison Warren(Broad Institute), Kathryn Geiger-Schuller(Broad Institute), Tsukasa Shibue(Broad Institute), Michael Rothberg(Broad Institute), Olena Kuksenko(Broad Institute), William Colgan(Broad Institute), Andrew Jones(Broad Institute), Emily S. Chambers(Broad Institute), Danielle Dionne(Broad Institute), Samantha Bender(Broad Institute), Brian M. Wolpin(Brigham and Women's Hospital), Mahmoud Ghandi(Broad Institute), Itay Tirosh(Broad Institute), Orit Rozenblatt–Rosen(Broad Institute), Jennifer A. Roth(Broad Institute), Todd R. Golub(Broad Institute), Aviv Regev(Broad Institute), Andrew J. Aguirre(Broad Institute), Francisca Vázquez(Broad Institute), Aviad Tsherniak(Broad Institute)
Nature Communications
August 27, 2020
Cited by 182Open Access
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Abstract

Assays to study cancer cell responses to pharmacologic or genetic perturbations are typically restricted to using simple phenotypic readouts such as proliferation rate. Information-rich assays, such as gene-expression profiling, have generally not permitted efficient profiling of a given perturbation across multiple cellular contexts. Here, we develop MIX-Seq, a method for multiplexed transcriptional profiling of post-perturbation responses across a mixture of samples with single-cell resolution, using SNP-based computational demultiplexing of single-cell RNA-sequencing data. We show that MIX-Seq can be used to profile responses to chemical or genetic perturbations across pools of 100 or more cancer cell lines. We combine it with Cell Hashing to further multiplex additional experimental conditions, such as post-treatment time points or drug doses. Analyzing the high-content readout of scRNA-seq reveals both shared and context-specific transcriptional response components that can identify drug mechanism of action and enable prediction of long-term cell viability from short-term transcriptional responses to treatment.


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