Predicting mosquito repellents for clothing application from molecular fingerprint-based artificial neural network SAR models.

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2022-09-01 DOI:10.1080/1062936X.2022.2124014
J Devillers, V Sartor, H Devillers
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引用次数: 2

Abstract

Spraying repellents on clothing limits toxicity and allergy problems that can occur when the repellents are directly applied to skin. This also allows the use of higher doses to ensure longer lasting effects. As the number of repellents available on the market is limited, it is necessary to propose new ones, especially by using in silico methods that reduce costs and time. In this context SAR models were built from a dataset of 2027 chemicals for which repellent activity on clothing was measured against Aedes aegypti. The interest of using either the ECFP or MACCS fingerprints as input neurons of a three-layer perceptron was evaluated. Transformation of MACCS bit strings into disjunctive tables led to interesting results. Models obtained with both types of fingerprints were compared to a model including physicochemical and topological descriptors.

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基于分子指纹的人工神经网络SAR模型预测服装驱蚊剂应用。
在衣服上喷洒驱虫剂,可以限制当驱虫剂直接应用于皮肤时可能发生的毒性和过敏问题。这也允许使用更高的剂量来确保更持久的效果。由于市场上可用的驱蚊剂数量有限,有必要提出新的驱蚊剂,特别是通过使用硅片方法来降低成本和时间。在这种情况下,SAR模型是根据2027种化学物质的数据集建立的,这些化学物质在衣服上对埃及伊蚊的驱避活性进行了测量。评估了使用ECFP或MACCS指纹作为三层感知器输入神经元的兴趣。将MACCS位串转换为析取表得到了有趣的结果。将两种类型的指纹模型与包含物理化学和拓扑描述符的模型进行比较。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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