LGAIBMDec 28, 2024

ProtCLIP: Function-Informed Protein Multi-Modal Learning

arXiv:2412.20014v113 citationsh-index: 18AAAI
Originality Highly original
AI Analysis

This addresses the need for better protein foundation models in computational biology, representing a novel method for a known bottleneck rather than incremental progress.

The paper tackles the problem of ineffective protein-text alignment in multi-modal protein representation learning by introducing ProtCLIP, a function-informed pre-training paradigm that achieves state-of-the-art performance across 22 protein benchmarks, including 75% average improvement in cross-modal transformation and 59.9% improvement in GO-CC function prediction.

Multi-modality pre-training paradigm that aligns protein sequences and biological descriptions has learned general protein representations and achieved promising performance in various downstream applications. However, these works were still unable to replicate the extraordinary success of language-supervised visual foundation models due to the ineffective usage of aligned protein-text paired data and the lack of an effective function-informed pre-training paradigm. To address these issues, this paper curates a large-scale protein-text paired dataset called ProtAnno with a property-driven sampling strategy, and introduces a novel function-informed protein pre-training paradigm. Specifically, the sampling strategy determines selecting probability based on the sample confidence and property coverage, balancing the data quality and data quantity in face of large-scale noisy data. Furthermore, motivated by significance of the protein specific functional mechanism, the proposed paradigm explicitly model protein static and dynamic functional segments by two segment-wise pre-training objectives, injecting fine-grained information in a function-informed manner. Leveraging all these innovations, we develop ProtCLIP, a multi-modality foundation model that comprehensively represents function-aware protein embeddings. On 22 different protein benchmarks within 5 types, including protein functionality classification, mutation effect prediction, cross-modal transformation, semantic similarity inference and protein-protein interaction prediction, our ProtCLIP consistently achieves SOTA performance, with remarkable improvements of 75% on average in five cross-modal transformation benchmarks, 59.9% in GO-CC and 39.7% in GO-BP protein function prediction. The experimental results verify the extraordinary potential of ProtCLIP serving as the protein multi-modality foundation model.

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