Multimodal Protein Language Models for Enzyme Kinetic Parameters: From Substrate Recognition to Conformational Adaptation
Fei Wang, Xinye Zheng, Kun Li, Yanyan Wei, Yuxin Liu, Ganpeng Hu, Tong Bao, Jingwen Yang

TL;DR
This paper introduces ERBA, a staged multimodal modeling approach that enhances enzyme kinetic parameter prediction by integrating substrate recognition and conformational adaptation into protein language models.
Contribution
It proposes a novel two-stage conditioning framework with cross-modal attention and mixture-of-experts, improving accuracy and robustness over sequence-only methods.
Findings
ERBA outperforms sequence-only baselines on multiple kinetic endpoints.
It maintains semantic fidelity through distributional alignment in the PLM space.
The approach shows strong out-of-distribution generalization.
Abstract
Predicting enzyme kinetic parameters quantifies how efficiently an enzyme catalyzes a specific substrate under defined biochemical conditions. Canonical parameters such as the turnover number (), Michaelis constant (), and inhibition constant () depend jointly on the enzyme sequence, the substrate chemistry, and the conformational adaptation of the active site during binding. Many learning pipelines simplify this process to a static compatibility problem between the enzyme and substrate, fusing their representations through shallow operations and regressing a single value. Such formulations overlook the staged nature of catalysis, which involves both substrate recognition and conformational adaptation. In this regard, we reformulate kinetic prediction as a staged multimodal conditional modeling problem and introduce the Enzyme-Reaction Bridging…
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