论文标题

一种深度学习方法,用于预测分子图上的药物副作用

A Deep Learning Approach to the Prediction of Drug Side-Effects on Molecular Graphs

论文作者

Bongini, Pietro, Messori, Elisa, Pancino, Niccolò, Bianchini, Monica

论文摘要

预测药物副作用在发生之前,是保持与药物相关的住院数量低并改善药物发现过程的关键任务。副作用的自动预测因素通常无法处理药物的结构,从而导致信息损失。图形神经网络近年来取得了巨大的成功,这要归功于它们利用图形结构和标签传达的信息。这些模型已用于多种生物学应用中,其中在大型知识图上预测药物副作用。利用编码药物结构的分子图代表了一种新方法,其中该问题被表述为多级多标签的以图形为中心的分类。我们开发了一种方法,可以使用经常的图神经网络来执行此任务,并从可自由访问且建立的数据源中构建数据集。结果表明,在许多参数和指标下,就先前可用的预测变量,我们的方法具有改进的分类能力。

Predicting drug side-effects before they occur is a key task in keeping the number of drug-related hospitalizations low and to improve drug discovery processes. Automatic predictors of side-effects generally are not able to process the structure of the drug, resulting in a loss of information. Graph neural networks have seen great success in recent years, thanks to their ability of exploiting the information conveyed by the graph structure and labels. These models have been used in a wide variety of biological applications, among which the prediction of drug side-effects on a large knowledge graph. Exploiting the molecular graph encoding the structure of the drug represents a novel approach, in which the problem is formulated as a multi-class multi-label graph-focused classification. We developed a methodology to carry out this task, using recurrent Graph Neural Networks, and building a dataset from freely accessible and well established data sources. The results show that our method has an improved classification capability, under many parameters and metrics, with respect to previously available predictors.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源