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通过蛋白质组范围的信号网络分析阐明肺腺癌中的协同依赖关系。

Elucidating synergistic dependencies in lung adenocarcinoma by proteome-wide signaling-network analysis.

机构信息

Psychogenics Inc., Paramus, New Jersey, United States of America.

Department of Neuroscience, Icahn School of Medicine at Mount Sinai, New York, NY, United States of America.

出版信息

PLoS One. 2019 Jan 7;14(1):e0208646. doi: 10.1371/journal.pone.0208646. eCollection 2019.

Abstract

To understand drug combination effect, it is necessary to decipher the interactions between drug targets-many of which are signaling molecules. Previously, such signaling pathway models are largely based on the compilation of literature data from heterogeneous cellular contexts. Indeed, de novo reconstruction of signaling interactions from large-scale molecular profiling is still lagging, compared to similar efforts in transcriptional and protein-protein interaction networks. To address this challenge, we introduce a novel algorithm for the systematic inference of protein kinase pathways, and applied it to published mass spectrometry-based phosphotyrosine profile data from 250 lung adenocarcinoma (LUAD) samples. The resulting network includes 43 TKs and 415 inferred, LUAD-specific substrates, which were validated at >60% accuracy by SILAC assays, including "novel' substrates of the EGFR and c-MET TKs, which play a critical oncogenic role in lung cancer. This systematic, data-driven model supported drug response prediction on an individual sample basis, including accurate prediction and validation of synergistic EGFR and c-MET inhibitor activity in cells lacking mutations in either gene, thus contributing to current precision oncology efforts.

摘要

为了理解药物组合的效果,有必要对药物靶点之间的相互作用进行解码——其中许多是信号分子。以前,这类信号通路模型主要是基于对来自不同细胞环境的文献数据的汇编。事实上,与转录和蛋白质-蛋白质相互作用网络的类似工作相比,从大规模分子分析中重新构建信号相互作用仍然滞后。为了应对这一挑战,我们引入了一种用于系统推断蛋白激酶途径的新算法,并将其应用于从 250 个肺腺癌 (LUAD) 样本中获得的已发表的基于质谱的磷酸酪氨酸图谱数据。该网络包含 43 个 TK 和 415 个推断出的 LUAD 特异性底物,通过 SILAC 测定法验证的准确率超过 60%,包括 EGFR 和 c-MET TK 的“新”底物,这些底物在肺癌中发挥着关键的致癌作用。该系统的、基于数据的模型支持基于单个样本的药物反应预测,包括对缺乏任何一种基因突变的细胞中 EGFR 和 c-MET 抑制剂活性的准确预测和验证,从而为当前的精准肿瘤学努力做出贡献。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3220/6322741/62927fd62657/pone.0208646.g001.jpg

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