利用高质量实验数据,将图神经网络模型应用于分子特性预测

Chen Qu, Barry I. Schneider, Anthony J. Kearsley, Walid Keyrouz, Thomas C. Allison
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引用次数: 0

摘要

由于分子/晶体与图之间的相似性,图神经网络已成功应用于与分子和晶体相关的机器学习模型。在本文中,我们介绍了使用高质量实验数据训练的三个模型,这些模型使用相同的图神经网络架构预测三种分子特性(科瓦茨保留指数、常沸点和质谱)。我们的研究表明,分子的图表示法与深度学习方法和高质量数据集相结合,可以建立准确的机器学习模型来预测分子性质。
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Applying graph neural network models to molecular property prediction using high-quality experimental data

Graph neural networks have been successfully applied to machine learning models related to molecules and crystals, due to the similarity between a molecule/crystal and a graph. In this paper, we present three models that are trained with high-quality experimental data to predict three molecular properties (Kováts retention index, normal boiling point, and mass spectrum), using the same GNN architecture. We show that graph representations of molecules, combined with deep learning methodologies and high-quality data sets, lead to accurate machine learning models to predict molecular properties.

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来源期刊
Artificial intelligence chemistry
Artificial intelligence chemistry Chemistry (General)
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审稿时长
21 days
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