Litcius/Paper detail

KiRNet: Kinase-centered network propagation of pharmacological screen results

Thomas R. Bello, Marina Chan, Martin Golkowski, Andrew G. Xue, Nithisha Khasnavis, Michele Ceribelli, Shao‐En Ong, Craig J. Thomas, Taranjit S. Gujral

2021Cell Reports Methods19 citationsDOIOpen Access PDF

Abstract

The ever-increasing size and scale of biological information have popularized network-based approaches as a means to interpret these data. We develop a network propagation method that integrates kinase-inhibitor-focused functional screens with known protein-protein interactions (PPIs). This method, dubbed KiRNet, uses an a priori edge-weighting strategy based on node degree to establish a pipeline from a kinase inhibitor screen to the generation of a predictive PPI subnetwork. We apply KiRNet to uncover molecular regulators of mesenchymal cancer cells driven by overexpression of Frizzled 2 (FZD2). KiRNet produces a network model consisting of 166 high-value proteins. These proteins exhibit FZD2-dependent differential phosphorylation, and genetic knockdown studies validate their role in maintaining a mesenchymal cell state. Finally, analysis of clinical data shows that mesenchymal tumors exhibit significantly higher average expression of the 166 corresponding genes than epithelial tumors for nine different cancer types.

Topics & Concepts

SubnetworkGene knockdownComputational biologyMesenchymal stem cellKinaseComputer scienceBiologyCell biologyBioinformaticsGeneComputer networkGeneticsBioinformatics and Genomic NetworksComputational Drug Discovery MethodsBiotin and Related Studies