Deep Learning-Driven Prediction of Chemical Addition Patterns for Carboncones and Fullerenes

IF 2.9 3区 化学 Q3 CHEMISTRY, PHYSICAL
Zhengda Li, Xuyang Chen, Yang Wang
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Abstract

Carboncones and fullerenes are exemplary π-conjugated carbon nanomaterials with unsaturated, positively curved surfaces, enabling the attachment of atoms or functional groups to enhance their physicochemical properties. However, predicting and understanding the addition patterns in functionalized carboncones and fullerenes are extremely challenging due to the formidable complexity of the regioselectivity exhibited in the adducts. Existing predictive models fall short in systems where the carbon molecular framework undergoes severe distortion upon high degrees of addition. Here, we propose an incremental deep learning approach to predict regioselectivity in the hydrogenation of carboncones and chlorination of fullerenes. Utilizing exclusively graph-based features, our deep neural network (DNN) models rely solely on atomic connectivity, without requiring 3D molecular coordinates as input or iterative optimization of them. This advantage inherently avoids the risk of obtaining chemically unreasonable optimized structures, enabling the handling of highly distorted adducts. The DNN models allow us to study regioselectivity in hydrogenated carboncones of C70H20 and C62H16, accommodating up to at least, 40 and 30 additional H atoms, respectively. Our approach also correctly predicts experimental addition patterns in C50Cl10 and C76Cln (n = 18, 24, and 28), whereas in the latter cases all other known methods have proven unsuccessful. Compared to our previously developed topology-based models, the DNN’s superior predictive power and generalization ability make it a promising tool for investigating complex addition patterns in similar chemical systems.
深度学习驱动的碳锥和富勒烯化学加成模式预测
碳环和富勒烯是典型的π-共轭碳纳米材料,具有不饱和的正弯曲表面,可通过原子或官能团的附着增强其物理化学特性。然而,由于加成物的区域选择性非常复杂,因此预测和理解功能化碳环和富勒烯的加成模式极具挑战性。在碳分子框架在高度加成时会发生严重变形的系统中,现有的预测模型存在不足。在此,我们提出了一种增量深度学习方法,用于预测碳环氢化和富勒烯氯化的区域选择性。利用完全基于图的特征,我们的深度神经网络(DNN)模型只依赖原子连接性,而无需将三维分子坐标作为输入或对其进行迭代优化。这一优势从本质上避免了获得化学上不合理的优化结构的风险,从而能够处理高度扭曲的加合物。DNN 模型使我们能够研究 C70H20 和 C62H16 的氢化碳环的区域选择性,分别可容纳至少 40 和 30 个额外的 H 原子。我们的方法还能正确预测 C50Cl10 和 C76Cln(n = 18、24 和 28)的实验加成模式,而在后一种情况下,所有其他已知方法都被证明是不成功的。与我们之前开发的基于拓扑结构的模型相比,DNN 具有更强的预测能力和泛化能力,这使它成为研究类似化学体系中复杂加成模式的一种有前途的工具。
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来源期刊
Physical Chemistry Chemical Physics
Physical Chemistry Chemical Physics 化学-物理:原子、分子和化学物理
CiteScore
5.50
自引率
9.10%
发文量
2675
审稿时长
2.0 months
期刊介绍: Physical Chemistry Chemical Physics (PCCP) is an international journal co-owned by 19 physical chemistry and physics societies from around the world. This journal publishes original, cutting-edge research in physical chemistry, chemical physics and biophysical chemistry. To be suitable for publication in PCCP, articles must include significant innovation and/or insight into physical chemistry; this is the most important criterion that reviewers and Editors will judge against when evaluating submissions. The journal has a broad scope and welcomes contributions spanning experiment, theory, computation and data science. Topical coverage includes spectroscopy, dynamics, kinetics, statistical mechanics, thermodynamics, electrochemistry, catalysis, surface science, quantum mechanics, quantum computing and machine learning. Interdisciplinary research areas such as polymers and soft matter, materials, nanoscience, energy, surfaces/interfaces, and biophysical chemistry are welcomed if they demonstrate significant innovation and/or insight into physical chemistry. Joined experimental/theoretical studies are particularly appreciated when complementary and based on up-to-date approaches.
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