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患者定制药物组合预测和 T 细胞前淋巴细胞白血病患者的测试。

Patient-Customized Drug Combination Prediction and Testing for T-cell Prolymphocytic Leukemia Patients.

机构信息

Institute for Molecular Medicine Finland (FIMM), University of Helsinki, Helsinki, Finland.

Department of Mathematics and Statistics, University of Turku, Turku, Finland.

出版信息

Cancer Res. 2018 May 1;78(9):2407-2418. doi: 10.1158/0008-5472.CAN-17-3644. Epub 2018 Feb 26.

Abstract

The molecular pathways that drive cancer progression and treatment resistance are highly redundant and variable between individual patients with the same cancer type. To tackle this complex rewiring of pathway cross-talk, personalized combination treatments targeting multiple cancer growth and survival pathways are required. Here we implemented a computational-experimental drug combination prediction and testing (DCPT) platform for efficient prioritization and testing in patient-derived samples to identify customized synergistic combinations for individual cancer patients. DCPT used drug-target interaction networks to traverse the massive combinatorial search spaces among 218 compounds (a total of 23,653 pairwise combinations) and identified cancer-selective synergies by using differential single-compound sensitivity profiles between patient cells and healthy controls, hence reducing the likelihood of toxic combination effects. A polypharmacology-based machine learning modeling and network visualization made use of baseline genomic and molecular profiles to guide patient-specific combination testing and clinical translation phases. Using T-cell prolymphocytic leukemia (T-PLL) as a first case study, we show how the DCPT platform successfully predicted distinct synergistic combinations for each of the three T-PLL patients, each presenting with different resistance patterns and synergy mechanisms. In total, 10 of 24 (42%) of selective combination predictions were experimentally confirmed to show synergy in patient-derived samples The identified selective synergies among approved drugs, including tacrolimus and temsirolimus combined with BCL-2 inhibitor venetoclax, may offer novel drug repurposing opportunities for treating T-PLL. An integrated use of functional drug screening combined with genomic and molecular profiling enables patient-customized prediction and testing of drug combination synergies for T-PLL patients. .

摘要

驱动癌症进展和治疗耐药性的分子途径在具有相同癌症类型的个体患者之间高度冗余且多变。为了解决这种途径交叉对话的复杂重布线,需要针对多种癌症生长和存活途径的个性化联合治疗。在这里,我们实施了一种计算实验药物组合预测和测试(DCPT)平台,用于在患者来源的样本中进行有效的优先级排序和测试,以识别针对个体癌症患者的定制协同组合。DCPT 使用药物-靶标相互作用网络来遍历 218 种化合物(总共 23653 种成对组合)之间的大规模组合搜索空间,并通过在患者细胞和健康对照之间使用差异的单一化合物敏感性谱来识别癌症选择性协同作用,从而降低了有毒组合效应的可能性。基于多药理学的机器学习建模和网络可视化利用基线基因组和分子谱来指导患者特异性组合测试和临床转化阶段。使用 T 细胞前淋巴细胞白血病(T-PLL)作为第一个案例研究,我们展示了 DCPT 平台如何成功地为每位 T-PLL 患者预测出独特的协同组合,每位患者都呈现出不同的耐药模式和协同机制。在总共 24 个(42%)选择性组合预测中,有 10 个在患者来源的样本中被实验证实具有协同作用。在已批准的药物中发现的选择性协同作用,包括他克莫司和替西罗莫司与 BCL-2 抑制剂 venetoclax 联合使用,可能为治疗 T-PLL 提供新的药物再利用机会。功能药物筛选与基因组和分子谱的综合使用能够为 T-PLL 患者进行药物组合协同作用的患者定制预测和测试。

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