Network-based estimation of therapeutic efficacy and adverse reaction potential for prioritisation of anti-cancer drug combinations

Arindam Ghosh, Vittorio Fortino
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Abstract

Drug combinations, although a key therapeutic agent against cancer, are yet to reach their full applicability potential due to the challenges involved in the identification of effective and safe drug pairs. In vitro or in vivo screening would have been the optimal approach if combinatorial explosion was not an issue. In silico methods, on the other hand, can enable rapid screening of drug pairs to prioritise for experimental validation. Here we present a novel network medicine approach that systematically models the proximity of drug targets to disease-associated genes and adverse effect-associated genes, through the combination of network propagation algorithm and gene set enrichment analysis. The proposed approach is applied in the context of identifying effective drug combinations for cancer treatment starting from a training set of drug combinations curated from DrugComb and DrugBank databases. We observed that effective drug combinations usually enrich disease-related gene sets while adverse drug combinations enrich adverse-effect gene sets. We use this observation to systematically train classifiers distinguishing drug combinations with higher therapeutic effects and no known adverse reaction from combinations with lower therapeutic effects and potential adverse reactions in six cancer types. The approach is tested and validated using drug combinations curated from in vitro screening data and clinical reports. Trained classification models are also used to identify novel potential anti-cancer drug combinations for experimental validation. We believe our framework would be a key addition to the anti-cancer drug combination identification pipeline by enabling rapid yet robust estimation of therapeutic efficacy or adverse reaction potential.
基于网络的疗效和不良反应可能性评估,用于确定抗癌药物组合的优先次序
联合用药虽然是治疗癌症的关键药物,但由于在确定有效和安全的药物配对方面存在挑战,因此尚未充分发挥其应用潜力。如果组合爆炸不是问题,体外或体内筛选将是最佳方法。硅学方法则可以快速筛选药物配对,为实验验证确定优先次序。在这里,我们提出了一种新的网络医学方法,通过结合网络传播算法和基因组富集分析,系统地模拟药物靶点与疾病相关基因和不良反应相关基因的接近程度。我们将所提出的方法应用于从 DrugComb 和 DrugBank 数据库中收集的药物组合训练集开始,识别治疗癌症的有效药物组合。我们观察到,有效的药物组合通常会丰富与疾病相关的基因集,而不良的药物组合则会丰富不良反应基因集。我们利用这一观察结果系统地训练了分类器,以区分六种癌症类型中疗效较高且无已知不良反应的药物组合与疗效较低且有潜在不良反应的药物组合。我们使用从体外筛选数据和临床报告中筛选出的药物组合对该方法进行了测试和验证。经过训练的分类模型还用于识别新的潜在抗癌药物组合,以进行实验验证。我们相信,我们的框架将成为抗癌药物组合识别管道的重要补充,能够快速而稳健地估计疗效或不良反应的可能性。
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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