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首页> 外文期刊>Bioorganic and Medicinal Chemistry >Computational modeling tools for the design of potent antimalarial bisbenzamidines: Overcoming the antimalarial potential of pentamidine
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Computational modeling tools for the design of potent antimalarial bisbenzamidines: Overcoming the antimalarial potential of pentamidine

机译:设计有效的抗疟药双苯甲m的计算机建模工具:克服喷他idine的抗疟药潜力

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Malaria is nowadays a worldwide and serious problem with a significant social, economic, and human cost, mainly in developing countries. In addition, the emergence and spread of resistance to existing antimalarial therapies deteriorate the global malaria situation, and lead thus to an urgent need toward the design and discovery of new antimalarial drugs. In this work, a QSAR predictive model based on GETAWAY descriptors was developed which is able to explain with, only three variables, more than 77% of the variance in antimalarial potency and displays a good internal predictive ability (of 73.3% and 72.9% from leave-one-out cross-validation and bootstrapping analyses, respectively). The performance of the proposed model was judged against other five methodologies providing evidence of the superiority of GETAWAY descriptors in predicting the antimalarial potency of the bisbenzamidine family. Moreover, a desirability analysis based on the final QSAR model showed that to be a useful way of selecting the predictive variable level necessary to obtain potent bisbenzamidines. From the proposed model it is also possible to infer that elevated high atomic masses/polarizabilities/van der Waals volumes could play a negative/positive/positive role in the molecular interactions responsible for the desired drug conformation, which is required for the optimal binding to the macromolecular target. The results obtained point out that our final QSAR model is statistically significant and robust as well as possessing a high predictive effectiveness. Thus, the model provides a feasible and practical tool for looking for new and potent antimalarial bisbenzamidines.
机译:如今,疟疾已成为一个世界性的严重问题,主要在发展中国家造成了巨大的社会,经济和人力成本。此外,对现有抗疟疾疗法的抗药性的出现和传播使全球疟疾状况恶化,因此导致迫切需要设计和发现新的抗疟疾药物。在这项工作中,开发了基于GETAWAY描述符的QSAR预测模型,该模型仅用三个变量就能解释抗疟疾效力方差的77%以上,并显示出良好的内部预测能力(从73.3%和72.9%留一法交叉验证和自举分析)。所提出的模型的性能是根据其他五种方法论来判断的,这些方法论证了GETAWAY描述子在预测比比苯甲idine家族抗疟药效力方面的优越性。此外,基于最终QSAR模型的合意性分析表明,这是选择获得有效的双苯甲m所必需的预测变量水平的有用方法。从提出的模型中,还可能推断出高原子质量/极化率/范德华体积可能在负责所需药物构象的分子相互作用中起负/正/正作用,这是与药物最佳结合所必需的高分子目标。获得的结果指出,我们最终的QSAR模型具有统计学意义和稳健性,并且具有很高的预测效果。因此,该模型为寻找新的有效的抗疟药双苯甲m提供了一种可行的实用工具。

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