MolNet_Equi: A Chemically Intuitive, Rotation-Equivariant Graph Neural Network

IF 3.5 3区 化学 Q2 CHEMISTRY, MULTIDISCIPLINARY
Jihoo Kim, Yoonho Jeong, Prof. Won June Kim, Prof. Eok Kyun Lee, Prof. Insung S. Choi
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Abstract

Although deep-learning (DL) models suggest unprecedented prediction capabilities in tackling various chemical problems, their demonstrated tasks have so far been limited to the scalar properties including the magnitude of vectorial properties, such as molecular dipole moments. A rotation-equivariant MolNet_Equi model, proposed in this paper, understands and recognizes the molecular rotation in the 3D Euclidean space, and exhibits the ability to predict directional dipole moments in the rotation-sensitive mode, as well as showing superior performance for the prediction of scalar properties. Three consecutive operations of molecular rotation , dipole-moment prediction , and dipole-moment inverse-rotation do not alter the original prediction of the total dipole moment of a molecule , assuring the rotational equivariance of MolNet_Equi. Furthermore, MolNet_Equi faithfully predicts the absolute direction of dipole moments given molecular poses, albeit the model has been trained only with the information on dipole-moment magnitudes, not directions. This work highlights the potential of incorporating fundamental yet crucial chemical rules and concepts into DL models, leading to the development of chemically intuitive models.

Abstract Image

Abstract Image

MolNet_Equi:一个化学上直观的,旋转等变图神经网络。
尽管深度学习(DL)模型在解决各种化学问题方面显示出前所未有的预测能力,但迄今为止,它们所展示的任务仅限于标量性质,包括矢量性质的大小,如分子偶极矩。本文提出的旋转等变MolNet_Equi模型能够理解和识别三维欧几里得空间中的分子旋转,并表现出以旋转敏感模式预测定向偶极矩的能力,并且在预测标量性质方面表现出优异的性能。分子旋转[[EQUATION]]、偶极矩预测[[EQUATION]]和偶极矩逆旋转[[EQUATION]]三次连续操作不改变分子总偶极矩的原始预测[[EQUATION]],保证了MolNet_Equi的旋转等方差。此外,MolNet_Equi忠实地预测了给定分子姿态的偶极矩的绝对方向,尽管该模型仅使用偶极矩大小的信息进行训练,而不是方向。这项工作强调了将基本但关键的化学规则和概念纳入DL模型的潜力,从而导致化学直观模型的发展。
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来源期刊
Chemistry - An Asian Journal
Chemistry - An Asian Journal 化学-化学综合
CiteScore
7.00
自引率
2.40%
发文量
535
审稿时长
1.3 months
期刊介绍: Chemistry—An Asian Journal is an international high-impact journal for chemistry in its broadest sense. The journal covers all aspects of chemistry from biochemistry through organic and inorganic chemistry to physical chemistry, including interdisciplinary topics. Chemistry—An Asian Journal publishes Full Papers, Communications, and Focus Reviews. A professional editorial team headed by Dr. Theresa Kueckmann and an Editorial Board (headed by Professor Susumu Kitagawa) ensure the highest quality of the peer-review process, the contents and the production of the journal. Chemistry—An Asian Journal is published on behalf of the Asian Chemical Editorial Society (ACES), an association of numerous Asian chemical societies, and supported by the Gesellschaft Deutscher Chemiker (GDCh, German Chemical Society), ChemPubSoc Europe, and the Federation of Asian Chemical Societies (FACS).
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