Engineering biology and automation–Replicability as a design principle

Author:

Bultelle Matthieu1,Casas Alexis1,Kitney Richard1ORCID

Affiliation:

1. Department of Bioengineering Imperial College London London UK

Abstract

AbstractApplications in engineering biology increasingly share the need to run operations on very large numbers of biological samples. This is a direct consequence of the application of good engineering practices, the limited predictive power of current computational models and the desire to investigate very large design spaces in order to solve the hard, important problems the discipline promises to solve. Automation has been proposed as a key component for running large numbers of operations on biological samples. This is because it is strongly associated with higher throughput, and with higher replicability (thanks to the reduction of human input). The authors focus on replicability and make the point that, far from being an additional burden for automation efforts, replicability should be considered central to the design of the automated pipelines processing biological samples at scale—as trialled in biofoundries. There cannot be successful automation without effective error control. Design principles for an IT infrastructure that supports replicability are presented. Finally, the authors conclude with some perspectives regarding the evolution of automation in engineering biology. In particular, they speculate that the integration of hardware and software will show rapid progress, and offer users a degree of control and abstraction of the robotic infrastructure on a level significantly greater than experienced today.

Funder

Engineering and Physical Sciences Research Council

National Physical Laboratory

Publisher

Institution of Engineering and Technology (IET)

Reference144 articles.

1. OECD:Artificial Intelligence in Science: Challenges Opportunities and the Future of Research’ (Organisation for Economic Co‐operation and Development(2023)

2. Synthetic Biology in the Driving Seat of the Bioeconomy

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