Parallelized multidimensional analytic framework applied to mammary epithelial cells uncovers regulatory principles in EMT

并行多维分析框架应用于乳腺上皮细胞揭示 EMT 的调控原理

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作者:Indranil Paul, Dante Bolzan, Ahmed Youssef, Keith A Gagnon, Heather Hook, Gopal Karemore, Michael U J Oliphant, Weiwei Lin, Qian Liu, Sadhna Phanse, Carl White, Dzmitry Padhorny, Sergei Kotelnikov, Christopher S Chen, Pingzhao Hu, Gerald V Denis, Dima Kozakov, Brian Raught, Trevor Siggers, Stefan Wu

Abstract

A proper understanding of disease etiology will require longitudinal systems-scale reconstruction of the multitiered architecture of eukaryotic signaling. Here we combine state-of-the-art data acquisition platforms and bioinformatics tools to devise PAMAF, a workflow that simultaneously examines twelve omics modalities, i.e., protein abundance from whole-cells, nucleus, exosomes, secretome and membrane; N-glycosylation, phosphorylation; metabolites; mRNA, miRNA; and, in parallel, single-cell transcriptomes. We apply PAMAF in an established in vitro model of TGFβ-induced epithelial to mesenchymal transition (EMT) to quantify >61,000 molecules from 12 omics and 10 timepoints over 12 days. Bioinformatics analysis of this EMT-ExMap resource allowed us to identify; -topological coupling between omics, -four distinct cell states during EMT, -omics-specific kinetic paths, -stage-specific multi-omics characteristics, -distinct regulatory classes of genes, -ligand-receptor mediated intercellular crosstalk by integrating scRNAseq and subcellular proteomics, and -combinatorial drug targets (e.g., Hedgehog signaling and CAMK-II) to inhibit EMT, which we validate using a 3D mammary duct-on-a-chip platform. Overall, this study provides a resource on TGFβ signaling and EMT.

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