基于图像卷积的越南传统草药数据库抗癌代谢物分类模型

N. Vu, P. T. Duy, Leang Ly
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引用次数: 2

摘要

数千年来,越南一直以丰富多样的草药来源而闻名,这些草药在药物开发中用于各种目的,试图解决癌症等健康问题。根据化学信息学相关原理,结构相似的化合物很可能具有相似的生物活性,本研究采用分子图卷积(一种用于从小分子中提取无向图特征的机器学习架构),根据其代谢物的结构预测越南草药的抗癌能力。除了分子图卷积之外,为了进行性能比较,还使用了扩展连接指纹(ECFP),这是一种利用分子细节的传统特征器。最后,我们成功构建了一个基于图卷积的神经网络,在训练集和验证集上都具有较高的预测精度,表明该模型在检测抗癌活性方面是可靠的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Agraph convolution-based classification model for identifying anticancer metabolites from traditional vietnamese herbal medicine database
Vietnam has been well known as a source of abundantly diverse herbal medicines for thousands of years, which serves a variety of purposes in drug development in attempts to address health issues, such as cancer. As claimed by a chemoinformatics-related principle that structurally similar chemical compounds will very likely have similar biological activity, this study employs molecular graph convolution, a machine learning architecture for extracting features from small molecules as undirected graphs, to predict anticancer ability of Vietnamese herbal medicines based on their metabolites' structures. In addition to molecular graph convolution, extended connectivity fingerprint (ECFP), a traditional featurizer for exploiting details of molecules, is also performed in order to make performance comparison. Finally, we successfully constructed a graph convolution-based neural network with high predictive accuracy on both training and validation set, suggesting that the model is reliable in detecting anticancer activity.
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