Prediction Of Carboxylic Acid Toxicity Using Machine Learning Model

IF 0.8 Q3 MULTIDISCIPLINARY SCIENCES
Zubainun Mohamed Zabidi, Nurul Batrisyia Muhamad Suhaimy, Ahmad Nazib Alias, Nur Diyana Nazihah Fuadi, Nur Hanisah Hamzi
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引用次数: 0

Abstract

Carboxylic acids are organic compounds characterized by the presence of a carboxyl functional group capable of donating a proton and forming carboxylate ions in aqueous solutions. The carboxylic acid has widely been used in in manufacturing and medical applications. The rapid growth in carboxylic acid has established a need to predict its toxicity. The purpose of this paper to build predictive toxicity of carboxylic acid models by using five molecular descriptors (refractive index, The octanol/water partition coefficient (log P), acid dissociation constant (pKa), density, and dipole moment) through Machine Learning algorithms. The accuracy of the Machine Learning algorithm was determined by using three different types of models which are Decision Tree, Random Forest and k-Nearest Neighbour (k-NN). Among the machine learning algorithms used, we have determined that the decision tree is the best model for predicting the toxicity of carboxylic acid. This finding demonstrates that the decision tree model exhibits an acceptable level of performance in predicting toxicity within the field of toxicology.
使用机器学习模型预测羧酸毒性
羧酸是一种有机化合物,其特征是存在羧基官能团,能够在水溶液中提供质子并形成羧酸离子。羧酸在制造业和医疗领域有着广泛的应用。羧酸的快速增长已经建立了预测其毒性的需要。本文的目的是通过机器学习算法,利用五个分子描述符(折射率、辛醇/水分配系数(log P)、酸解离常数(pKa)、密度和偶极矩)建立羧酸毒性预测模型。机器学习算法的准确性是通过使用决策树、随机森林和k-近邻(k-NN)三种不同类型的模型来确定的。在使用的机器学习算法中,我们已经确定决策树是预测羧酸毒性的最佳模型。这一发现表明决策树模型在毒理学领域预测毒性方面表现出可接受的性能水平。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
1.40
自引率
0.00%
发文量
45
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