Predicting Molecular Ground-State Conformation via Conformation Optimization
Predicting ground-state conformation from the corresponding molecular graph is crucial for many chemical applications, such as molecular modeling, molecular docking, and molecular property prediction. Recently, many learning-based methods have been proposed to replace time-consuming simulations for...
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Zusammenfassung: | Predicting ground-state conformation from the corresponding molecular graph
is crucial for many chemical applications, such as molecular modeling,
molecular docking, and molecular property prediction. Recently, many
learning-based methods have been proposed to replace time-consuming simulations
for this task. However, these methods are often inefficient and sub-optimal as
they merely rely on molecular graph information to make predictions from
scratch. In this work, considering that molecular low-quality conformations are
readily available, we propose a novel framework called ConfOpt to predict
molecular ground-state conformation from the perspective of conformation
optimization. Specifically, ConfOpt takes the molecular graph and corresponding
low-quality 3D conformation as inputs, and then derives the ground-state
conformation by iteratively optimizing the low-quality conformation under the
guidance of the molecular graph. During training, ConfOpt concurrently
optimizes the predicted atomic 3D coordinates and the corresponding interatomic
distances, resulting in a strong predictive model. Extensive experiments
demonstrate that ConfOpt significantly outperforms existing methods, thus
providing a new paradigm for efficiently and accurately predicting molecular
ground-state conformation. |
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DOI: | 10.48550/arxiv.2410.09795 |