Salvato in:
Dettagli Bibliografici
Autori principali: Wang, Zidi, Zhang, Tao, Yu, Muyao, Zhou, Chuyi, Xu, Zezhao, Liu, Huiyu, Wen, Yuzhen, Chen, Linjiang, Zheng, Jie, Jiang, Shan
Natura: Preprint
Pubblicazione: 2026
Soggetti:
Accesso online:https://arxiv.org/abs/2601.12268
Tags: Aggiungi Tag
Nessun Tag, puoi essere il primo ad aggiungerne!!
_version_ 1866915737614942208
author Wang, Zidi
Zhang, Tao
Yu, Muyao
Zhou, Chuyi
Xu, Zezhao
Liu, Huiyu
Wen, Yuzhen
Chen, Linjiang
Zheng, Jie
Jiang, Shan
author_facet Wang, Zidi
Zhang, Tao
Yu, Muyao
Zhou, Chuyi
Xu, Zezhao
Liu, Huiyu
Wen, Yuzhen
Chen, Linjiang
Zheng, Jie
Jiang, Shan
contents Predicting non-covalent host-guest recognition remains challenging due to the complex interplay of electrostatics, dispersion, and steric effects, and the limited transferability of existing docking approaches to synthetic supramolecular systems. Here we present DeepHostGuest, a geometric deep-learning framework that learns generalizable recognition principles directly from experimentally resolved host-guest structures. Hosts are encoded as electrostatic surfaces and guests as molecular graphs, enabling transferable learning across diverse supramolecular systems. DeepHostGuest achieves high-accuracy predictions (RMSD $\leq 2$ Angstrom for 80.8% of test cases), substantially outperforming classical docking without case-specific tuning. Notably, the method generalizes beyond its training domain to crystalline sponge systems, accurately capturing the binding of large amphiphilic molecules within metal-organic cages. Beyond predicting binding conformations, the structures generated by DeepHostGuest serve as a reliable basis for accurate binding free-energy calculations. Density Functional Theory (DFT)-calculated affinities correlate well with experiment, enabling structure-property relationships across 876 host-guest complexes spanning 34 host families. Interpretable feature analysis reveals that binding strength arises from a cooperative interplay of host polarity, guest hydrophobicity, and geometric complementarity, with distinct design regimes across supramolecular classes. Together, these results establish data-driven molecular recognition as a practical route to predictive supramolecular design, enabling high-throughput virtual screening and rational optimization of functional host-guest systems.
format Preprint
id arxiv_https___arxiv_org_abs_2601_12268
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Learning to Dock: Geometric Deep Learning for Predicting Supramolecular Host-Guest Complexes
Wang, Zidi
Zhang, Tao
Yu, Muyao
Zhou, Chuyi
Xu, Zezhao
Liu, Huiyu
Wen, Yuzhen
Chen, Linjiang
Zheng, Jie
Jiang, Shan
Chemical Physics
Predicting non-covalent host-guest recognition remains challenging due to the complex interplay of electrostatics, dispersion, and steric effects, and the limited transferability of existing docking approaches to synthetic supramolecular systems. Here we present DeepHostGuest, a geometric deep-learning framework that learns generalizable recognition principles directly from experimentally resolved host-guest structures. Hosts are encoded as electrostatic surfaces and guests as molecular graphs, enabling transferable learning across diverse supramolecular systems. DeepHostGuest achieves high-accuracy predictions (RMSD $\leq 2$ Angstrom for 80.8% of test cases), substantially outperforming classical docking without case-specific tuning. Notably, the method generalizes beyond its training domain to crystalline sponge systems, accurately capturing the binding of large amphiphilic molecules within metal-organic cages. Beyond predicting binding conformations, the structures generated by DeepHostGuest serve as a reliable basis for accurate binding free-energy calculations. Density Functional Theory (DFT)-calculated affinities correlate well with experiment, enabling structure-property relationships across 876 host-guest complexes spanning 34 host families. Interpretable feature analysis reveals that binding strength arises from a cooperative interplay of host polarity, guest hydrophobicity, and geometric complementarity, with distinct design regimes across supramolecular classes. Together, these results establish data-driven molecular recognition as a practical route to predictive supramolecular design, enabling high-throughput virtual screening and rational optimization of functional host-guest systems.
title Learning to Dock: Geometric Deep Learning for Predicting Supramolecular Host-Guest Complexes
topic Chemical Physics
url https://arxiv.org/abs/2601.12268