PoseBusters: AI-based docking methods fail to generate physically valid poses or generalise to novel sequences
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Abstract
The last few years have seen the development of numerous deep learning-based protein-ligand docking methods. They offer huge promise in terms of speed and accuracy. However, despite claims of state-of-the-art performance in terms of crystallographic root-mean-square deviation (RMSD), upon closer inspection, it has become apparent that they often produce physically implausible molecular structures. It is therefore not sufficient to evaluate these methods solely by RMSD to a native binding mode. It is vital, particularly for deep learning-based methods, that they are also evaluated on steric and energetic criteria. We present PoseBusters, a Python package that performs a series of standard quality checks using…
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3Topics & keywords
Topics
Keywords
- Docking (animal)
- Computer science
- Artificial intelligence
- AutoDock
- Force field (fiction)
- Python (programming language)
- Steric effects
- Machine learning
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