生成语法
可再生能源
计算机科学
生化工程
生成设计
生成模型
生物能源
合成生物学
人工智能
工程类
计算生物学
生物
运营管理
电气工程
公制(单位)
作者
Rana Ahmed Barghout,Zhiqing Xu,Siddharth Betala,Radhakrishnan Mahadevan
标识
DOI:10.1016/j.copbio.2023.103007
摘要
Biotechnology has revolutionized the development of sustainable energy sources by harnessing biomass as a feedstock for energy production. However, challenges such as recalcitrant feedstocks and inefficient metabolic pathways hinder the large-scale integration of renewable energy systems. Enzyme engineering has emerged as a powerful tool to address these challenges by enhancing enzyme activity, specificity, and stability. Generative machine learning (ML) models have shown great promise in accelerating protein design, allowing for the generation of novel protein sequences with desired properties by navigating vast spaces. This review paper aims to summarize the state of the art in generative models for protein design and how they can be applied to bioenergy applications, including the underlying architectures and training strategies. Additionally, it highlights the importance of high-quality datasets for training and evaluating generative models, organizes available datasets for generative protein design, and discusses the potential of applying generative models to strain design for bioenergy production.
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