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利用 AlphaFold 探索寄生虫中的药物靶点

The Use of AlphaFold for Exploration of Drug Targets in the Parasite .

机构信息

Barcelona Institute for Global Health (ISGlobal), Hospital Clinic - University of Barcelona, Barcelona, Spain.

Departament de Biologia, Sanitat i Medi Ambient, Facultat de Farmàcia i Ciències de l´Alimentació, Universitat de Barcelona, Barcelona, Spain.

出版信息

Front Cell Infect Microbiol. 2022 Jul 14;12:944748. doi: 10.3389/fcimb.2022.944748. eCollection 2022.

Abstract

Chagas disease is a devastating neglected disease caused by the parasite , which affects millions of people worldwide. The two anti-parasitic drugs available, nifurtimox and benznidazole, have a good efficacy against the acute stage of the infection. But this is short, usually asymptomatic and often goes undiagnosed. Access to treatment is mostly achieved during the chronic stage, when the cardiac and/or digestive life-threatening symptoms manifest. Then, the efficacy of both drugs is diminished, and their long administration regimens involve frequently associated adverse effects that compromise treatment compliance. Therefore, the discovery of safer and more effective drugs is an urgent need. Despite its advantages over lately used phenotypic screening, target-based identification of new anti-parasitic molecules has been hampered by incomplete annotation and lack of structures of the parasite protein space. Presently, the AlphaFold Protein Structure Database is home to 19,036 protein models from , which could hold the key to not only describe new therapeutic approaches, but also shed light on molecular mechanisms of action for known compounds. In this proof-of-concept study, we screened the AlphaFold set of predicted protein models to find prospective targets for a pre-selected list of compounds with known anti-trypanosomal activity using docking-based inverse virtual screening. The best receptors (targets) for the most promising ligands were analyzed in detail to address molecular interactions and potential drugs' mode of action. The results provide insight into the mechanisms of action of the compounds and their targets, and pave the way for new strategies to finding novel compounds or optimize already existing ones.

摘要

恰加斯病是一种由寄生虫引起的毁灭性的被忽视疾病,影响着全世界数百万人。现有的两种抗寄生虫药物,硝呋替莫和苯硝唑,对感染的急性期有很好的疗效。但这种疗效持续时间短,通常无症状,而且常常未被诊断出来。治疗的机会主要是在慢性期,当心脏和/或消化系统出现危及生命的症状时。此时,这两种药物的疗效都会减弱,而且它们的长期给药方案经常伴随着不良反应,这会影响治疗的依从性。因此,迫切需要发现更安全、更有效的药物。尽管基于表型的筛选方法具有优势,但针对寄生虫蛋白空间的目标鉴定新的抗寄生虫分子方法受到寄生虫蛋白空间不完全注释和缺乏结构的限制。目前,AlphaFold 蛋白质结构数据库拥有来自的 19036 个蛋白质模型,这些模型不仅可能为描述新的治疗方法提供关键信息,还可能为已知化合物的作用机制提供启示。在这项概念验证研究中,我们使用基于对接的反向虚拟筛选,从 AlphaFold 预测的蛋白质模型集中筛选出针对一组预先选定的具有已知抗锥虫活性的化合物的潜在靶标。我们详细分析了最佳受体(靶标),以解决分子相互作用和潜在药物的作用模式问题。研究结果深入了解了化合物及其靶标的作用机制,并为寻找新化合物或优化已有化合物的新策略铺平了道路。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c46f/9329570/bb15d3a1b263/fcimb-12-944748-g001.jpg

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