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Synergy from gene expression and network mining (SynGeNet) method predicts synergistic drug combinations for diverse melanoma genomic subtypes

机译:基因表达和网络挖掘(SynGeNet)方法的协同作用可预测多种黑色素瘤基因组亚型的协同药物组合

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摘要

Systems biology perspectives are crucial for understanding the pathophysiology of complex diseases, and therefore hold great promise for the discovery of novel treatment strategies. Drug combinations have been shown to improve durability and reduce resistance to available first-line therapies in a variety of cancers; however, traditional drug discovery approaches are prohibitively cost and labor-intensive to evaluate large-scale matrices of potential drug combinations. Computational methods are needed to efficiently model complex interactions of drug target pathways and identify mechanisms underlying drug combination synergy. In this study, we employ a computational approach, SynGeNet (Synergy from Gene expression and Network mining), which integrates transcriptomics-based connectivity mapping and network centrality analysis to analyze disease networks and predict drug combinations. As an exemplar of a disease in which combination therapies demonstrate efficacy in genomic-specific contexts, we investigate malignant melanoma. We employed SynGeNet to generate drug combination predictions for each of the four major genomic subtypes of melanoma (BRAF, NRAS, NF1, and triple wild type) using publicly available gene expression and mutation data. We validated synergistic drug combinations predicted by our method across all genomic subtypes using results from a high-throughput drug screening study across. Finally, we prospectively validated the drug combination for BRAF-mutant melanoma that was top ranked by our approach, vemurafenib (BRAF inhibitor) + tretinoin (retinoic acid receptor agonist), using both in vitro and in vivo models of BRAF-mutant melanoma and RNA-sequencing analysis of drug-treated melanoma cells to validate the predicted mechanisms. Our approach is applicable to a wide range of disease domains, and, importantly, can model disease-relevant protein subnetworks in precision medicine contexts.
机译:系统生物学的观点对于理解复杂疾病的病理生理至关重要,因此对于发现新的治疗策略具有广阔的前景。药物组合已被证明可以改善耐久性,并降低对多种癌症的可用一线治疗的抵抗力。然而,传统的药物发现方法在评估潜在药物组合的大规模矩阵时成本高昂且劳动强度大。需要计算方法来有效地模拟药物靶途径的复杂相互作用并确定潜在的药物组合协同作用机制。在这项研究中,我们采用一种计算方法SynGeNet(来自基因表达和网络挖掘的协同作用),该方法将基于转录组学的连通性映射和网络集中性分析相集成,以分析疾病网络并预测药物组合。作为其中一种联合疗法在特定基因组背景下证明疗效的疾病的典范,我们研究了恶性黑色素瘤。我们使用SynGeNet使用公开可用的基因表达和突变数据为黑素瘤的四种主要基因组亚型(BRAF,NRAS,NF1和三重野生型)中的每一种生成药物组合预测。我们使用来自高通量药物筛选研究的结果,验证了通过我们的方法预测的所有基因组亚型的协同药物组合。最后,我们使用BRAF突变型黑色素瘤和RNA的体外和体内模型,对我们的方法中排名最高的BRA突变型黑色素瘤药物组合vemurafenib(BRAF抑制剂)+维甲酸(视黄酸受体激动剂)进行了验证。药物治疗的黑色素瘤细胞的序列分析,以验证预测的机制。我们的方法适用于广泛的疾病领域,重要的是,可以在精密医学环境中对与疾病相关的蛋白质子网络进行建模。

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