Human Biology Division, Fred Hutchinson Cancer Research Center, Seattle, WA 98109, USA.
Department of Molecular and Cellular Biology, University of Washington, Seattle, WA 98195-7275, USA.
Cell Rep Methods. 2021 Jun 21;1(2). doi: 10.1016/j.crmeth.2021.100007. Epub 2021 Jun 1.
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 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.
生物信息的规模不断扩大,网络方法已经普及,成为解释这些数据的一种手段。我们开发了一种网络传播方法,将激酶抑制剂为重点的功能筛选与已知的蛋白质-蛋白质相互作用(PPIs)相结合。这种方法被称为 KiRNet,它使用基于节点度的边缘加权策略,从激酶抑制剂筛选建立到预测 PPI 子网络的生成的管道。我们应用 KiRNet 来揭示由 Frizzled 2(FZD2)过表达驱动的间充质癌细胞的分子调节剂。KiRNet 生成了一个由 166 个高价值蛋白质组成的网络模型。这些蛋白质表现出 FZD2 依赖性的差异磷酸化,遗传敲低研究验证了它们在维持间充质细胞状态中的作用。最后,对临床数据的分析表明,在九种不同的癌症类型中,间充质肿瘤中与 166 个相应基因对应的平均表达水平明显高于上皮肿瘤。