MSNGO: multi-species protein function annotation based on 3D protein structure and network propagation
- URL: http://arxiv.org/abs/2503.23014v1
- Date: Sat, 29 Mar 2025 08:35:45 GMT
- Title: MSNGO: multi-species protein function annotation based on 3D protein structure and network propagation
- Authors: Beibei Wang, Boyue Cui, Shiqu Chen, Xuan Wang, Yadong Wang, Junyi Li,
- Abstract summary: We propose the MSNGO model, which integrates structural features and network propagation methods.<n>Our validation shows that using structural features can significantly improve the accuracy of multi-species protein function prediction.
- Score: 38.732449945780246
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Motivation: In recent years, protein function prediction has broken through the bottleneck of sequence features, significantly improving prediction accuracy using high-precision protein structures predicted by AlphaFold2. While single-species protein function prediction methods have achieved remarkable success, multi-species protein function prediction methods are still in the stage of using PPI networks and sequence features. Providing effective cross-species label propagation for species with sparse protein annotations remains a challenging issue. To address this problem, we propose the MSNGO model, which integrates structural features and network propagation methods. Our validation shows that using structural features can significantly improve the accuracy of multi-species protein function prediction. Results: We employ graph representation learning techniques to extract amino acid representations from protein structure contact maps and train a structural model using a graph convolution pooling module to derive protein-level structural features. After incorporating the sequence features from ESM-2, we apply a network propagation algorithm to aggregate information and update node representations within a heterogeneous network. The results demonstrate that MSNGO outperforms previous multi-species protein function prediction methods that rely on sequence features and PPI networks. Availability: https://github.com/blingbell/MSNGO.
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