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In Silico Mining for Antimalarial Structure-Activity Knowledge and Discovery of Novel Antimalarial Curcuminoids

机译:用于抗疟疾结构活性知识的计算机采矿和新型抗疟疾姜黄素的发现

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摘要

Malaria is a parasitic tropical disease that kills around 600,000 patients every year. The emergence of resistant Plasmodium falciparum parasites to artemisinin-based combination therapies (ACTs) represents a significant public health threat, indicating the urgent need for new effective compounds to reverse ACT resistance and cure the disease. For this, extensive curation and homogenization of experimental anti-Plasmodium screening data from both in-house and ChEMBL sources were conducted. As a result, a coherent strategy was established that allowed compiling coherent training sets that associate compound structures to the respective antimalarial activity measurements. Seventeen of these training sets led to the successful generation of classification models discriminating whether a compound has a significant probability to be active under the specific conditions of the antimalarial test associated with each set. These models were used in consensus prediction of the most likely active from a series of curcuminoids available in-house. Positive predictions together with a few predicted as inactive were then submitted to experimental in vitro antimalarial testing. A large majority from predicted compounds showed antimalarial activity, but not those predicted as inactive, thus experimentally validating the in silico screening approach. The herein proposed consensus machine learning approach showed its potential to reduce the cost and duration of antimalarial drug discovery. View Full-Text
机译:疟疾是一种寄生性热带病,每年杀死约60万人。对基于青蒿素的联合疗法(ACT)产生的耐药性恶性疟原虫寄生虫表示严重的公共卫生威胁,表明迫切需要新的有效化合物来逆转ACT耐药性并治愈该疾病。为此,对来自室内和ChEMBL来源的实验性抗疟原虫筛查数据进行了广泛的整理和均质化。结果,建立了一种连贯的策略,该策略允许编译连贯的训练集,该训练集将化合物结构与相应的抗疟活性测量值相关联。这些训练集中的17个导致分类模型的成功生成,该模型区分化合物在与每个集合相关的抗疟疾测试的特定条件下是否具有显着的活性。这些模型用于从内部可用的一系列姜黄素类化合物中最可能的活性的共识预测中。然后将阳性预测与一些预测为无效的预测一起进行实验性体外抗疟测试。预测化合物中的绝大多数显示出抗疟活性,但预测的化合物没有活性,因此在实验上验证了计算机筛选方法。本文提出的共识机器学习方法显示了减少抗疟药物发现成本和持续时间的潜力。查看全文

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