通过耦合生成式对抗网络和图卷积网络预测有机晶体结构

IF 33.2 1区 综合性期刊 Q1 MULTIDISCIPLINARY SCIENCES The Innovation Pub Date : 2024-01-08 DOI:10.1016/j.xinn.2023.100562
Zhuyifan Ye, Nannan Wang, Jiantao Zhou, Defang Ouyang
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引用次数: 0

摘要

有机晶体结构对有机化合物的理化性质和生物效应有着深远的影响。基于量子力学(QM)的晶体结构预测(CSP)在一定程度上缓解了实验晶体结构研究难以进行完整的多态性研究的困境,但高昂的计算成本对其广泛应用提出了挑战。本研究旨在构建一个可行的纯机器学习框架--DeepCSP,用于分钟级快速有机晶体结构预测。最初,基于剑桥晶体结构数据库(CSD)中的 177,746 个数据条目,建立了一个生成对抗网络,在给定分子的选定特征约束下有条件地生成试验晶体结构。同时,采用图卷积注意力网络预测输入分子的稳定晶体结构密度。随后,预测密度与基于定义计算的密度之间的距离将被视为晶体结构筛选和排序的基础,最后输出基于密度的晶体结构排序。这两种不同的算法分别执行生成和排序功能,共同构成了 DeepCSP,它在上市药物验证中表现出令人信服的性能,准确率超过 80%,命中率超过 85%。令人鼓舞的是,纯机器学习方法的计算速度证明了人工智能在推进 CSP 研究方面的潜力。
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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Organic crystal structure prediction via coupled generative adversarial networks and graph convolutional networks

Organic crystal structures exert a profound impact on the physicochemical properties and biological effects of organic compounds. Quantum mechanics (QM) based crystal structure predictions (CSP) have somewhat alleviated the dilemma that experimental crystal structure investigations struggle to conduct complete polymorphism studies, but the high computing cost poses a challenge to its widespread application. The current study aims to construct DeepCSP, a feasible pure machine learning framework for minute-scale rapid organic crystal structure prediction. Initially, based on 177,746 data entries from the Cambridge Crystal Structure Database (CSD), a generative adversarial network was built to conditionally generate trial crystal structures under selected feature constraints for the given molecule. Simultaneously, a graph convolutional attention network was employed to predict the density of stable crystal structures for the input molecule. Subsequently, the distances between the predicted density and the definition-based calculated density would be considered as the crystal structure screening and ranking basis, and finally, the density-based crystal structure ranking would be output. Such two distinct algorithms, performing the generation and ranking functionalities respectively, collectively constitute the DeepCSP, which has demonstrated compelling performance in marketed drug validations, achieving an accuracy rate exceeding 80% and hit rate surpassing 85%. Inspiringly, the computing speed of the pure machine learning methodology demonstrates the potential of artificial intelligence in advancing CSP research.

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来源期刊
The Innovation
The Innovation MULTIDISCIPLINARY SCIENCES-
CiteScore
38.30
自引率
1.20%
发文量
134
审稿时长
6 weeks
期刊介绍: The Innovation is an interdisciplinary journal that aims to promote scientific application. It publishes cutting-edge research and high-quality reviews in various scientific disciplines, including physics, chemistry, materials, nanotechnology, biology, translational medicine, geoscience, and engineering. The journal adheres to the peer review and publishing standards of Cell Press journals. The Innovation is committed to serving scientists and the public. It aims to publish significant advances promptly and provides a transparent exchange platform. The journal also strives to efficiently promote the translation from scientific discovery to technological achievements and rapidly disseminate scientific findings worldwide. Indexed in the following databases, The Innovation has visibility in Scopus, Directory of Open Access Journals (DOAJ), Web of Science, Emerging Sources Citation Index (ESCI), PubMed Central, Compendex (previously Ei index), INSPEC, and CABI A&I.
期刊最新文献
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