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Structural Stabilization and Activity Enhancement of Glucoamylase via the Machine-Learning Technique and Immobilization

JOURNAL OF AGRICULTURAL AND FOOD CHEMISTRY [2025]
Frank Peprah Addai, Xinglin Chen, Hao Zhu, Zongjian Zhen, Feng Lin, Chengxiang Feng, Juan Han, Zhirong Wang, Yun Wang, Yang Zhou
ABSTRACT

Glucoamylases (GLL) hydrolyze starch to glucose syrup without yielding intermediate oligosaccharides, but their lack of stability under industrial conditions poses a major limiting factor. Using consensus- and ancestral-based machine-learning tools, a functional GLL with six mutations (GLLI73l/T130V/N212V/D238G/N327M/S332P) was constructed that exhibited superior hydrolytic activity relative to the wild-type (WT-GLL). An oxidized multi-walled carbon nanotube (oMW-CNT) was used as a solid support to immobilize the WT-GLL with an immobilization capacity of 211.28 mg/g. The specific activity of mutant GLL-6M and GLL@oMW-CNTII was improved by 2.5-fold and 3.9-fold respectively, with both retaining 64.5% residual activity after incubation at 50 °C for 2 h compared to the WT-GLL with 42.6% activity. GLL and GLL-6M were however completely inactivated at 55 °C in 30 min while oMW-CNTII retained ∼43.1% activity. Our results demonstrate that employing a machine-learning approach for enzyme redesign and immobilization is a practicable alternative for improving enzyme performance and stability for industrial applications.

MATERIALS

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