多元分析
生物
癌症
多元统计
计算生物学
进化生物学
医学
遗传学
计算机科学
内科学
机器学习
作者
Cara Abecunas,Mohammad Fallahi‐Sichani,Ying Jiang,Hui Zong,Mohammad Fallahi‐Sichani
出处
期刊:Cell Reports
[Elsevier]
日期:2024-09-20
卷期号:43 (10): 114775-114775
标识
DOI:10.1016/j.celrep.2024.114775
摘要
Targeting the distinct metabolic needs of tumor cells has recently emerged as a promising strategy for cancer therapy. The heterogeneous, context-dependent nature of cancer cell metabolism, however, poses challenges to identifying effective therapeutic interventions. Here, we utilize various unsupervised and supervised multivariate modeling approaches to systematically pinpoint recurrent metabolic states within hundreds of cancer cell lines, elucidate their association with tumor lineage and growth environments, and uncover vulnerabilities linked to their metabolic states across diverse genetic and tissue contexts. We validate key findings via analysis of data from patient-derived tumors and pharmacological screens and by performing genetic and pharmacological experiments. Our analysis uncovers synthetically lethal associations between the tumor metabolic state (e.g., oxidative phosphorylation), driver mutations (e.g., loss of tumor suppressor PTEN), and actionable biological targets (e.g., mitochondrial electron transport chain). Investigating the mechanisms underlying these relationships can inform the development of more precise and context-specific, metabolism-targeted cancer therapies.
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