InterLabelGO+: unraveling label correlations in protein function prediction.

Quancheng Liu, Chengxin Zhang, Lydia Freddolino
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Abstract

Motivation: Accurate protein function prediction is crucial for understanding biological processes and advancing biomedical research. However, the rapid growth of protein sequences far outpaces the experimental characterization of their functions, necessitating the development of automated computational methods.

Results: We present InterLabelGO+, a hybrid approach that integrates a deep learning-based method with an alignment-based method for improved protein function prediction. InterLabelGO+ incorporates a novel loss function that addresses label dependency and imbalance and further enhances performance through dynamic weighting of the alignment-based component. A preliminary version of InterLabelGO+ achieved a strong performance in the CAFA5 challenge, ranking sixth out of 1625 participating teams. Comprehensive evaluations on large-scale protein function prediction tasks demonstrate InterLabelGO+'s ability to accurately predict Gene Ontology terms across various functional categories and evaluation metrics.

Availability and implementation: The source code and datasets for InterLabelGO+ are freely available on GitHub at https://github.com/QuanEvans/InterLabelGO. A web-server is available at https://seq2fun.dcmb.med.umich.edu/InterLabelGO/. The software is implemented in Python and PyTorch, and is supported on Linux and macOS.

InterLabelGO+:揭示蛋白质功能预测中的标签相关性
动机准确预测蛋白质功能对于了解生物过程和推动生物医学研究至关重要。然而,蛋白质序列的快速增长远远超过了对其功能的实验表征,因此有必要开发自动计算方法:我们提出的 InterLabelGO+ 是一种混合方法,它整合了基于深度学习的方法和基于比对的方法,用于改进蛋白质功能预测。InterLabelGO+ 采用了一种新颖的损失函数来解决标签依赖性和不平衡性问题,并通过对基于配准的部分进行动态加权来进一步提高性能。InterLabelGO+ 的初步版本在 CAFA5 挑战赛中表现出色,在 1625 个参赛团队中排名第六。对大规模蛋白质功能预测任务的综合评估表明,InterLabelGO+ 能够准确预测不同功能类别和评估指标的基因本体术语:InterLabelGO+ 的源代码和数据集可在 GitHub 上免费获取,网址为 https://github.com/QuanEvans/InterLabelGO。该软件使用 Python 和 PyTorch 实现,支持 Linux 和 macOS:补充图、表和数据可在 Bioinformatics online 上获取。
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