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使用系统医学方法对三阴性乳腺癌亚型进行治疗的差异化优先级排序。

Differential prioritization of therapies to subtypes of triple negative breast cancer using a systems medicine method.

作者信息

Wathieu Henri, Issa Naiem T, Fernandez Aileen I, Mohandoss Manisha, Tiek Deanna M, Franke Jennifer L, Byers Stephen W, Riggins Rebecca B, Dakshanamurthy Sivanesan

机构信息

Georgetown-Lombardi Comprehensive Cancer Center, Department of Oncology, Georgetown University Medical Center, Washington, DC, 20057 USA.

Department of Biochemistry and Molecular Biology, Georgetown University, Washington, DC, 20057 USA.

出版信息

Oncotarget. 2017 Oct 9;8(54):92926-92942. doi: 10.18632/oncotarget.21669. eCollection 2017 Nov 3.

Abstract

Triple negative breast cancer (TNBC) is a group of cancers whose heterogeneity and shortage of effective drug therapies has prompted efforts to divide these cancers into molecular subtypes. Our computational platform, entitled GenEx-TNBC, applies concepts in systems biology and polypharmacology to prioritize thousands of approved and experimental drugs for therapeutic potential against each molecular subtype of TNBC. Using patient-based and cell line-based gene expression data, we constructed networks to describe the biological perturbation associated with each TNBC subtype at multiple levels of biological action. These networks were analyzed for statistical coincidence with drug action networks stemming from known drug-protein targets, while accounting for the direction of disease modulation for coinciding entities. GenEx-TNBC successfully designated drugs, and drug classes, that were previously shown to be broadly effective or subtype-specific against TNBC, as well as novel agents. We further performed biological validation of the platform by testing the relative sensitivities of three cell lines, representing three distinct TNBC subtypes, to several small molecules according to the degree of predicted biological coincidence with each subtype. GenEx-TNBC is the first computational platform to associate drugs to diseases based on inverse relationships with multi-scale disease mechanisms mapped from global gene expression of a disease. This method may be useful for directing current efforts in preclinical drug development surrounding TNBC, and may offer insights into the targetable mechanisms of each TNBC subtype.

摘要

三阴性乳腺癌(TNBC)是一组癌症,其异质性和有效药物治疗的缺乏促使人们努力将这些癌症分为分子亚型。我们名为GenEx-TNBC的计算平台应用系统生物学和多药理学的概念,对数以千计的已批准和实验性药物针对TNBC各分子亚型的治疗潜力进行优先级排序。利用基于患者和基于细胞系的基因表达数据,我们构建了网络,以描述在多个生物作用水平上与每种TNBC亚型相关的生物扰动。对这些网络进行分析,以统计与源自已知药物-蛋白质靶点的药物作用网络的一致性,同时考虑重合实体的疾病调节方向。GenEx-TNBC成功地确定了先前已证明对TNBC具有广泛有效性或亚型特异性的药物和药物类别,以及新型药物。我们通过根据与每种亚型预测的生物一致性程度,测试代表三种不同TNBC亚型的三种细胞系对几种小分子的相对敏感性,进一步对该平台进行了生物学验证。GenEx-TNBC是第一个基于与从疾病的全局基因表达映射的多尺度疾病机制的反比关系将药物与疾病关联的计算平台。这种方法可能有助于指导目前围绕TNBC的临床前药物开发工作,并可能为每种TNBC亚型的可靶向机制提供见解。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b1db/5696233/4d4104e9f32a/oncotarget-08-92926-g001.jpg

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