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Identifying Protein Features Responsible for Improved Drug Repurposing Accuracies Using the CANDO Platform: Implications for Drug Design

机译:使用CANDO平台鉴定负责改善药物重复利用准确性的蛋白质特征:对药物设计的影响

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摘要

Drug repurposing is a valuable tool for combating the slowing rates of novel therapeutic discovery. The Computational Analysis of Novel Drug Opportunities (CANDO) platform performs shotgun repurposing of 2030 indications/diseases using 3733 drugs/compounds to predict interactions with 46,784 proteins and relating them via proteomic interaction signatures. The accuracy is calculated by comparing interaction similarities of drugs approved for the same indications. We performed a unique subset analysis by breaking down the full protein library into smaller subsets and then recombining the best performing subsets into larger supersets. Up to 14% improvement in accuracy is seen upon benchmarking the supersets, representing a 100–1000-fold reduction in the number of proteins considered relative to the full library. Further analysis revealed that libraries comprised of proteins with more equitably diverse ligand interactions are important for describing compound behavior. Using one of these libraries to generate putative drug candidates against malaria, tuberculosis, and large cell carcinoma results in more drugs that could be validated in the biomedical literature compared to using those suggested by the full protein library. Our work elucidates the role of particular protein subsets and corresponding ligand interactions that play a role in drug repurposing, with implications for drug design and machine learning approaches to improve the CANDO platform.
机译:重新利用药物是对抗新型治疗发现速度减慢的宝贵工具。新药机会计算分析(CANDO)平台使用3733种药物/化合物对2030种适应症/疾病进行了gun弹枪调整,以预测与46784种蛋白质的相互作用,并通过蛋白质组学相互作用特征将它们关联起来。通过比较批准用于相同适应症的药物的相互作用相似性来计算准确性。我们通过将完整的蛋白质文库分解为较小的子集,然后将性能最佳的子集重组为较大的超集,进行了独特的子集分析。通过对超集进行基准测试,可以看到准确性提高了14%,这意味着相对于完整文库而言,蛋白质数量减少了100-1000倍。进一步的分析表明,由具有更丰富多样的配体相互作用的蛋白质组成的文库对于描述化合物的行为很重要。与使用完整蛋白文库所建议的那些药物相比,使用这些文库之一来生成针对疟疾,结核病和大细胞癌的推定药物候选物,将产生更多可在生物医学文献中验证的药物。我们的工作阐明了在蛋白质再利用中起作用的特定蛋白质子集和相应的配体相互作用的作用,对改善CANDO平台的药物设计和机器学习方法具有重要意义。

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