In silico design and automated learning to boost next-generation smart biomanufacturing.

IF 2.6 Q2 BIOCHEMICAL RESEARCH METHODS
Synthetic biology (Oxford, England) Pub Date : 2020-10-17 eCollection Date: 2020-01-01 DOI:10.1093/synbio/ysaa020
Pablo Carbonell, Rosalind Le Feuvre, Eriko Takano, Nigel S Scrutton
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引用次数: 19

Abstract

The increasing demand for bio-based compounds produced from waste or sustainable sources is driving biofoundries to deliver a new generation of prototyping biomanufacturing platforms. Integration and automation of the design, build, test and learn (DBTL) steps in centers like SYNBIOCHEM in Manchester and across the globe (Global Biofoundries Alliance) are helping to reduce the delivery time from initial strain screening and prototyping towards industrial production. Notably, a portfolio of producer strains for a suite of material monomers was recently developed, some approaching industrial titers, in a tour de force by the Manchester Centre that was achieved in less than 90 days. New in silico design tools are providing significant contributions to the front end of the DBTL pipelines. At the same time, the far-reaching initiatives of modern biofoundries are generating a large amount of high-dimensional data and knowledge that can be integrated through automated learning to expedite the DBTL cycle. In this Perspective, the new design tools and the role of the learning component as an enabling technology for the next generation of automated biofoundries are discussed. Future biofoundries will operate under completely automated DBTL cycles driven by in silico optimal experimental planning, full biomanufacturing devices connectivity, virtualization platforms and cloud-based design. The automated generation of robotic build worklists and the integration of machine-learning algorithms will collectively allow high levels of adaptability and rapid design changes toward fully automated smart biomanufacturing.

Abstract Image

Abstract Image

在硅设计和自动化学习,以促进下一代智能生物制造。
对从废物或可持续来源生产的生物基化合物的需求日益增长,正推动生物代工厂提供新一代原型生物制造平台。在曼彻斯特的SYNBIOCHEM和全球(全球生物铸造联盟)等中心,设计、制造、测试和学习(DBTL)步骤的集成和自动化有助于缩短从最初的应变筛选和原型制作到工业生产的交货时间。值得注意的是,曼彻斯特中心在不到90天的时间内完成了一项杰作,研制出了一套材料单体的生产菌株组合,其中一些接近工业滴度。新的硅设计工具为DBTL管道的前端提供了重要的贡献。与此同时,现代生物铸造厂的深远举措正在产生大量高维数据和知识,这些数据和知识可以通过自动化学习进行整合,以加快DBTL周期。在这个角度,新的设计工具和学习组件的作用,作为下一代自动化生物铸造厂的使能技术进行了讨论。未来的生物铸造厂将在完全自动化的DBTL周期下运行,由计算机优化实验规划、全生物制造设备连接、虚拟化平台和基于云的设计驱动。机器人构建工作清单的自动生成和机器学习算法的集成将共同实现高水平的适应性和快速设计变更,从而实现全自动智能生物制造。
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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