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Pharmaceutical Machine Learning: Virtual High-Throughput Screens Identifying Promising and Economical Small Molecule Inhibitors of Complement Factor C1s

机译:制药机械学习:虚拟高吞吐量屏幕识别有前途和经济的小分子抑制剂的补充因子C1s

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摘要

When excessively activated, C1 is insufficiently regulated, which results in tissue damage. Such tissue damage causes the complement system to become further activated to remove the resulting tissue damage, and a vicious cycle of activation/tissue damage occurs. Current Food and Drug Administration approved treatments include supplemental recombinant C1 inhibitor, but these are extremely costly and a more economical solution is desired. In our work, we have utilized an existing data set of 136 compounds that have been previously tested for activity against C1. Using these compounds and the activity data, we have created models using principal component analysis, genetic algorithm, and support vector machine approaches to characterize activity. The models were then utilized to virtually screen the 72 million compound PubChem repository. This first round of virtual high-throughput screening identified many economical and promising inhibitor candidates, a subset of which was tested to validate their biological activity. These results were used to retrain the models and rescreen PubChem in a second round vHTS. Hit rates for the first round vHTS were 57%, while hit rates for the second round vHTS were 50%. Additional structure–property analysis was performed on the active and inactive compounds to identify interesting scaffolds for further investigation.
机译:当过度激活时,C1不充分调节,这导致组织损伤。这种组织损伤导致补体系统进一步活化以除去所产生的组织损伤,并且发生激活/组织损伤的恶性循环。目前的食物和药物管理批准的治疗包括补充重组C1抑制剂,但这些是非常昂贵的,并且需要更经济的溶液。在我们的工作中,我们使用了先前测试了针对C1的活动的136个化合物的现有数据集。使用这些化合物和活动数据,我们使用主成分分析,遗传算法和支持矢量机器方法创建了模型来表征活动。然后将模型用于几乎筛选7200万化合物Pubchem储存库。该第一轮虚拟高通量筛选鉴定了许多经济和有前途的抑制剂候选者,其子集被测试以验证其生物活性。这些结果用于在第二轮VHT中恢复模型和储存Pubchem。第一轮VHT的命中率为57%,而第二轮VHT的命中率为50%。对活性和无活性化合物进行另外的结构性质分析,以确定有趣的支架进行进一步调查。

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