Discovery of alkaline laccases from basidiomycete fungi through machine learning-based approach

IF 6.1 1区 工程技术 Q1 BIOTECHNOLOGY & APPLIED MICROBIOLOGY
Xing Wan, Sazzad Shahrear, Shea Wen Chew, Francisco Vilaplana, Miia R. Mäkelä
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引用次数: 0

Abstract

Background

Laccases can oxidize a broad spectrum of substrates, offering promising applications in various sectors, such as bioremediation, biomass fractionation in future biorefineries, and synthesis of biochemicals and biopolymers. However, laccase discovery and optimization with a desirable pH optimum remains a challenge due to the labor-intensive and time-consuming nature of the traditional laboratory methods.

Results

This study presents a machine learning (ML)-integrated approach for predicting pH optima of basidiomycete fungal laccases, utilizing a small, curated dataset against a vast metagenomic data. Comparative computational analyses unveiled the structural and pH-dependent solubility differences between acidic and neutral-alkaline laccases, helping us understand the molecular bases of enzyme pH optimum. The pH profiling of the two ML-predicted alkaline laccase candidates from the basidiomycete fungus Lepista nuda further validated our computational approach, showing the accuracy of this comprehensive method.

Conclusions

This study uncovers the efficacy of ML in the prediction of enzyme pH optimum from minimal datasets, marking a significant step towards harnessing computational tools for systematic screening of enzymes for biotechnology applications.

Graphical Abstract

通过基于机器学习的方法从基生真菌中发现碱性漆酶
背景漆酶可以氧化多种底物,在生物修复、未来生物炼制厂中的生物质分馏以及生物化学品和生物聚合物的合成等多个领域具有广阔的应用前景。然而,由于传统的实验室方法需要耗费大量的人力和时间,发现和优化具有理想 pH 值的漆酶仍然是一项挑战。对比计算分析揭示了酸性和中性-碱性长酶之间的结构和依赖于pH值的溶解度差异,帮助我们了解酶pH值最优的分子基础。对来自基生真菌Lepista nuda的两种ML预测的碱性漆酶候选物的pH分析进一步验证了我们的计算方法,显示了这种综合方法的准确性。结论这项研究揭示了ML在从最小数据集预测酶pH最佳值方面的功效,标志着我们在利用计算工具为生物技术应用系统筛选酶方面迈出了重要一步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Biotechnology for Biofuels
Biotechnology for Biofuels 工程技术-生物工程与应用微生物
自引率
0.00%
发文量
0
审稿时长
2.7 months
期刊介绍: Biotechnology for Biofuels is an open access peer-reviewed journal featuring high-quality studies describing technological and operational advances in the production of biofuels, chemicals and other bioproducts. The journal emphasizes understanding and advancing the application of biotechnology and synergistic operations to improve plants and biological conversion systems for the biological production of these products from biomass, intermediates derived from biomass, or CO2, as well as upstream or downstream operations that are integral to biological conversion of biomass. Biotechnology for Biofuels focuses on the following areas: • Development of terrestrial plant feedstocks • Development of algal feedstocks • Biomass pretreatment, fractionation and extraction for biological conversion • Enzyme engineering, production and analysis • Bacterial genetics, physiology and metabolic engineering • Fungal/yeast genetics, physiology and metabolic engineering • Fermentation, biocatalytic conversion and reaction dynamics • Biological production of chemicals and bioproducts from biomass • Anaerobic digestion, biohydrogen and bioelectricity • Bioprocess integration, techno-economic analysis, modelling and policy • Life cycle assessment and environmental impact analysis
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