章节 01
Swift Dock: A Machine Learning Framework to Accelerate Molecular Docking Calculations
Swift Dock is an open-source framework that uses LSTM neural networks and traditional machine learning regression models to predict molecular docking scores. Its core goal is to train models on small-scale samples and then use them to predict docking results for large chemical libraries, thereby significantly accelerating the drug screening process. Key technologies include LSTM with attention mechanisms, XGBoost, and various molecular fingerprint features like MACCS and Morgan.