Journal article
A geometric deep learning framework for genome-wide prediction of enzyme turnover number
T Pan, X Cui, HY Koh, Y Bi, X Wang, Y Zhang, S Hu, GI Webb, L Kurgan, G Zhang, J Song
Genome Biology | Springer Science and Business Media LLC | Published : 2026
Abstract
Background: Enzyme turnover numbers (Kcat) are fundamental kinetic constants that quantify enzymatic efficiency. Systematic studies of Kcat are essential for characterizing the mechanisms underlying proteomic composition and cellular metabolism. However, experimental measurements of Kcat remain limited and prone to noise. Results: To address this, we present KcatNet, a geometric deep learning model designed for high-throughput prediction of Kcat in metabolic enzymes across all organisms, leveraging paired enzyme sequence and substrate representations. KcatNet consistently outperforms existing predictors, particularly for enzymes with high catalytic efficiency, and demonstrates strong general..
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Grants
Awarded by Monash University