TL;DR
OmniESI is a two-stage deep learning framework that incorporates enzyme catalysis knowledge to improve enzyme-substrate interaction predictions across various tasks, outperforming existing methods.
Contribution
The paper introduces OmniESI, a novel two-stage conditional deep learning framework that models enzyme catalysis knowledge to enhance prediction accuracy and generalization.
Findings
OmniESI outperforms state-of-the-art methods on seven benchmarks.
Conditional networks internalize catalytic efficiency patterns.
Negligible parameter increase (0.16%) with improved performance.
Abstract
Understanding and modeling enzyme-substrate interactions is crucial for catalytic mechanism research, enzyme engineering, and metabolic engineering. Although a large number of predictive methods have emerged, they do not incorporate prior knowledge of enzyme catalysis to rationally modulate general protein-molecule features that are misaligned with catalytic patterns. To address this issue, we introduce a two-stage progressive framework, OmniESI, for enzyme-substrate interaction prediction through conditional deep learning. By decomposing the modeling of enzyme-substrate interactions into a two-stage progressive process, OmniESI incorporates two conditional networks that respectively emphasize enzymatic reaction specificity and crucial catalysis-related interactions, facilitating a gradual feature modulation in the latent space from general protein-molecule domain to catalysis-aware…
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