School of Informatics, University of Edinburgh, Edinburgh, U.K.
The Alan Turing Institute, London, U.K.
Biochem Soc Trans. 2023 Oct 31;51(5):1871-1879. doi: 10.1042/BST20221542.
Dynamic pathway engineering aims to build metabolic production systems embedded with intracellular control mechanisms for improved performance. These control systems enable host cells to self-regulate the temporal activity of a production pathway in response to perturbations, using a combination of biosensors and feedback circuits for controlling expression of heterologous enzymes. Pathway design, however, requires assembling together multiple biological parts into suitable circuit architectures, as well as careful calibration of the function of each component. This results in a large design space that is costly to navigate through experimentation alone. Methods from artificial intelligence (AI) and machine learning are gaining increasing attention as tools to accelerate the design cycle, owing to their ability to identify hidden patterns in data and rapidly screen through large collections of designs. In this review, we discuss recent developments in the application of machine learning methods to the design of dynamic pathways and their components. We cover recent successes and offer perspectives for future developments in the field. The integration of AI into metabolic engineering pipelines offers great opportunities to streamline design and discover control systems for improved production of high-value chemicals.
动态途径工程旨在构建嵌入细胞内控制机制的代谢生产系统,以提高性能。这些控制系统使宿主细胞能够自我调节生产途径的时间活性,以响应扰动,使用生物传感器和反馈电路的组合来控制异源酶的表达。然而,途径设计需要将多个生物部件组装成合适的电路结构,以及仔细校准每个组件的功能。这导致了一个庞大的设计空间,仅通过实验来探索是非常昂贵的。人工智能 (AI) 和机器学习方法由于能够识别数据中的隐藏模式并快速筛选大量设计,因此作为加速设计周期的工具越来越受到关注。在这篇综述中,我们讨论了机器学习方法在动态途径及其组件设计中的应用的最新进展。我们介绍了最近的成功案例,并为该领域的未来发展提供了展望。将人工智能集成到代谢工程管道中为简化设计和发现控制系统以提高高价值化学品的生产提供了巨大的机会。