Building a translational cancer dependency map for The Cancer Genome Atlas

IF 23.5 1区 医学 Q1 ONCOLOGY
Xu Shi, Christos Gekas, Daniel Verduzco, Sakina Petiwala, Cynthia Jeffries, Charles Lu, Erin Murphy, Tifani Anton, Andy H. Vo, Zhiguang Xiao, Padmini Narayanan, Bee-Chun Sun, Aloma L. D’Souza, J. Matthew Barnes, Somdutta Roy, Cyril Ramathal, Michael J. Flister, Zoltan Dezso
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引用次数: 0

Abstract

Cancer dependency maps have accelerated the discovery of tumor vulnerabilities that can be exploited as drug targets when translatable to patients. The Cancer Genome Atlas (TCGA) is a compendium of ‘maps’ detailing the genetic, epigenetic and molecular changes that occur during the pathogenesis of cancer, yet it lacks a dependency map to translate gene essentiality in patient tumors. Here, we used machine learning to build translational dependency maps for patient tumors, which identified tumor vulnerabilities that predict drug responses and disease outcomes. A similar approach was used to map gene tolerability in healthy tissues to prioritize tumor vulnerabilities with the best therapeutic windows. A subset of patient-translatable synthetic lethalities were experimentally tested, including PAPSS1/PAPSS12 and CNOT7/CNOT78, which were validated in vitro and in vivo. Notably, PAPSS1 synthetic lethality was driven by collateral deletion of PAPSS2 with PTEN and was correlated with patient survival. Finally, the translational dependency map is provided as a web-based application for exploring tumor vulnerabilities. Shi et al. present a hybrid dependency map based on machine-learning analysis of gene essentiality data from the DEPMAP database, translated to data from TCGA. This application can be used to visualize other gene essentiality data.

Abstract Image

Abstract Image

为癌症基因组图谱建立转化癌症依赖关系图。
癌症依赖性图谱加速了对肿瘤弱点的发现,这些弱点一旦转化为病人,就可以作为药物靶点加以利用。癌症基因组图谱(TCGA)是一个 "图谱 "汇编,详细描述了癌症发病过程中发生的遗传、表观遗传和分子变化,但它缺乏一个依赖性图谱来转化患者肿瘤中的基因本质。在这里,我们利用机器学习建立了患者肿瘤的转化依赖性图谱,确定了可预测药物反应和疾病结果的肿瘤弱点。我们还采用类似的方法绘制了健康组织中的基因耐受性图谱,以优先考虑具有最佳治疗窗口的肿瘤弱点。对患者可翻译的合成致死基因进行了实验测试,包括 PAPSS1/PAPSS12 和 CNOT7/CNOT78,并在体外和体内进行了验证。值得注意的是,PAPSS1 合成致死性是由 PAPSS2 与 PTEN 的旁系缺失驱动的,并且与患者的存活率相关。最后,转化依赖性图谱作为一种基于网络的应用提供,用于探索肿瘤的脆弱性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Nature cancer
Nature cancer Medicine-Oncology
CiteScore
31.10
自引率
1.80%
发文量
129
期刊介绍: Cancer is a devastating disease responsible for millions of deaths worldwide. However, many of these deaths could be prevented with improved prevention and treatment strategies. To achieve this, it is crucial to focus on accurate diagnosis, effective treatment methods, and understanding the socioeconomic factors that influence cancer rates. Nature Cancer aims to serve as a unique platform for sharing the latest advancements in cancer research across various scientific fields, encompassing life sciences, physical sciences, applied sciences, and social sciences. The journal is particularly interested in fundamental research that enhances our understanding of tumor development and progression, as well as research that translates this knowledge into clinical applications through innovative diagnostic and therapeutic approaches. Additionally, Nature Cancer welcomes clinical studies that inform cancer diagnosis, treatment, and prevention, along with contributions exploring the societal impact of cancer on a global scale. In addition to publishing original research, Nature Cancer will feature Comments, Reviews, News & Views, Features, and Correspondence that hold significant value for the diverse field of cancer research.
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