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用于衣物应用的驱蚊剂的计算机预测。

In silico prediction of mosquito repellents for clothing application.

机构信息

CTIS, Rillieux-La-Pape, France.

Laboratoire des IMRCP, Université de Toulouse, Toulouse, France.

出版信息

SAR QSAR Environ Res. 2022 Apr;33(4):239-257. doi: 10.1080/1062936X.2022.2062871.

Abstract

Use of protective clothing is a simple and efficient way to reduce the contacts with mosquitoes and consequently the probability of transmission of diseases spread by them. This mechanical barrier can be enhanced by the application of repellents. Unfortunately the number of available repellents is limited. As a result, there is a crucial need to find new active and safer molecules repelling mosquitoes. In this context, a structure-activity relationship (SAR) model was proposed for the design of repellents active on clothing. It was computed from a dataset of 2027 chemicals for which repellent activity on clothing was measured against . Molecules were described by means of 20 molecular descriptors encoding physicochemical properties, topological information and structural features. A three-layer perceptron was used as statistical tool. An accuracy of 87% was obtained for both the training and test sets. Most of the wrong predictions can be explained. Avenues for increasing the performances of the model have been proposed.

摘要

使用防护服是减少与蚊子接触并降低通过蚊子传播疾病的概率的一种简单而有效的方法。这种机械屏障可以通过使用驱虫剂来增强。不幸的是,可用的驱虫剂数量有限。因此,迫切需要寻找新的有效且更安全的驱蚊分子。在这种情况下,提出了一种用于设计对衣物有驱避活性的驱避剂的构效关系(SAR)模型。它是根据针对 2027 种化学物质的数据集计算得出的,这些化学物质的驱虫活性是针对 进行测量的。分子通过 20 种描述物理化学性质、拓扑信息和结构特征的分子描述符进行描述。三层感知器被用作统计工具。训练集和测试集的准确率均达到 87%。可以解释大多数错误的预测。已经提出了提高模型性能的途径。

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