Markova Evgenia A, Shaw Rachel E, Reynolds Christopher R
Eden Bio Ltd Scale Space London UK.
Eng Biol. 2022 Sep 16;6(4):82-90. doi: 10.1049/enb2.12025. eCollection 2022 Dec.
This article presents a discussion of the process of precision fermentation (PF), describing the history of the space, the expected 70% growth over the next 5 years, various applications of precision fermented products, and the markets available to be disrupted by the technology. A range of prokaryotic and eukaryotic host organisms used for PF are described, with the advantages, disadvantages and applications of each. The process of setting up PF and strain engineering is described, as well as various ways that computational analysis and design techniques can be employed to assist PF engineering. The article then describes the design and implementation of a machine learning method, machine learning predictions having amplified secretion (MaLPHAS) to predict strain engineerings, which optimise the secretion of a recombinant protein. This approach showed an in silico cross-validated accuracy on the training data of up to 46.6% and in an in vitro test on a strain, identified one gene engineering out of five predicted, which was shown to double the secretion of a heterologous protein and outperform three of the best-known edits from the literature for improving secretion in .
本文讨论了精准发酵(PF)的过程,介绍了该领域的发展历程、预计在未来5年实现70%的增长、精准发酵产品的各种应用以及该技术可能颠覆的市场。文中描述了一系列用于精准发酵的原核和真核宿主生物,以及每种生物的优缺点和应用。阐述了建立精准发酵和菌株工程的过程,以及可用于辅助精准发酵工程的各种计算分析和设计技术。文章接着描述了一种机器学习方法——具有放大分泌功能的机器学习预测(MaLPHAS)的设计与实现,该方法用于预测菌株工程,以优化重组蛋白的分泌。这种方法在训练数据上的计算机交叉验证准确率高达46.6%,在对一个菌株的体外测试中,从五个预测结果中识别出一个基因工程,该工程使异源蛋白的分泌增加了一倍,并且在改善分泌方面优于文献中最著名的三种编辑方法。