Enhancing Multimodal Protein Function Prediction Through Dual-Branch Dynamic Selection with Reconstructive Pre-Training

arXiv — cs.LGFriday, November 7, 2025 at 5:00:00 AM

Enhancing Multimodal Protein Function Prediction Through Dual-Branch Dynamic Selection with Reconstructive Pre-Training

A new method for predicting protein functions, called DSRPGO, has been introduced, which leverages dynamic selection and reconstructive pre-training. This approach addresses the complexities of multimodal protein features, which include structural data and interaction networks. By enhancing the accuracy of protein function predictions, this research could significantly impact fields like drug discovery and biotechnology, making it easier to understand how proteins interact and function within biological systems.
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