@article{Shao15042026, author = {Shao, Jiangyi and Chen, Shutao and Wang, Ziwen and Chen, Zixu and Liu, Bin}, title = {Balancing gene ontology annotation specificity in protein function prediction based on the protein sequence large graph}, year = {2026}, doi = {10.1101/gr.280816.125}, elocation-id = {gr.280816.125}, abstract ={Accurate protein function prediction is fundamental to advancing drug discovery, precision medicine, and understanding complex biological systems. While gene ontology (GO) provides a standardized framework for protein annotation, a critical challenge persists: the imbalance between low-specificity GO terms and high-specificity GO terms. This imbalance creates blind spots in our understanding of protein function landscapes, particularly in clinically relevant pathways. We present ProGO-PSL, a novel large graph architecture designed to resolve this imbalance. ProGO-PSL simultaneously leverages explicit domain identifier from InterPro and implicit evolutionary context from Multiple Sequence Alignments, fusing these complementary data sources within a powerful imbalance learning framework. Our model consistently outperforms state-of-the-art methods by 5-15% across all specificity levels and on both benchmark dataset and independent test set, demonstrating robust generalization. Furthermore, ProGO-PSL generates interpretable representations that clarify relationships between low- and high-specificity GO terms, enabling a more complete functional characterization of the proteome. This work accelerates the identification of therapeutic targets in previously uncharacterized biological pathways.}, URL = {http://genome.cshlp.org/content/early/2026/04/15/gr.280816.125.abstract}, eprint = {http://genome.cshlp.org/content/early/2026/04/15/gr.280816.125.full.pdf+html}, journal = {Genome Research} }