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随机森林模型预测双重抗疟药物。

Random Forest Model Predictions Afford Dual-Stage Antimalarial Agents.

机构信息

Department of Pharmacology, Physiology, and Neuroscience, Rutgers University - New Jersey Medical School, 185 South Orange Avenue, Newark, New Jersey 07103, United States.

Department of Chemistry, Duke University, 124 Science Drive, Durham, North Carolina 27708, United States.

出版信息

ACS Infect Dis. 2022 Aug 12;8(8):1553-1562. doi: 10.1021/acsinfecdis.2c00189. Epub 2022 Jul 27.

Abstract

The need for novel antimalarials is apparent given the continuing disease burden worldwide, despite significant drug discovery advances from the bench to the bedside. In particular, small-molecule agents with potent efficacy against both the liver and blood stages of parasite infection are critical for clinical settings as they would simultaneously prevent and treat malaria with a reduced selection pressure for resistance. While experimental screens for such dual-stage inhibitors have been conducted, the time and cost of these efforts limit their scope. Here, we have focused on leveraging machine learning approaches to discover novel antimalarials with such properties. A random forest modeling approach was taken to predict small molecules with in vitro efficacy versus liver-stage parasites and a lack of human liver cell cytotoxicity. Empirical validation of the model was achieved with the realization of hits with liver-stage efficacy after prospective scoring of a commercial diversity library and consideration of structural diversity. A subset of these hits also demonstrated promising blood-stage efficacy. These 18 validated dual-stage antimalarials represent novel starting points for drug discovery and mechanism of action studies with significant potential for seeding a new generation of therapies.

摘要

鉴于全球持续存在疾病负担,尽管在从实验室到临床的过程中药物发现取得了重大进展,但仍需要新型抗疟药物。特别是对于临床环境来说,具有针对寄生虫感染的肝脏和血液阶段的强效疗效的小分子药物至关重要,因为它们可以同时预防和治疗疟疾,并且降低了耐药性的选择压力。虽然已经进行了针对此类双阶段抑制剂的实验筛选,但这些工作的时间和成本限制了它们的范围。在这里,我们专注于利用机器学习方法来发现具有这种特性的新型抗疟药物。采用随机森林建模方法来预测具有体外抗肝脏阶段寄生虫功效且对人肝细胞无细胞毒性的小分子。通过对商业多样性文库进行前瞻性评分并考虑结构多样性来实现对模型的经验验证,从而实现了肝脏阶段疗效的命中。其中一部分命中还表现出有希望的血液阶段功效。这 18 种经过验证的双阶段抗疟药物代表了药物发现和作用机制研究的新起点,具有为新一代治疗方法提供种子的巨大潜力。

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Random Forest Model Predictions Afford Dual-Stage Antimalarial Agents.随机森林模型预测双重抗疟药物。
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