Strain design optimization using reinforcement learning

dc.contributorAalto-yliopistofi
dc.contributorAalto Universityen
dc.contributor.authorSabzevari, Maryamen_US
dc.contributor.authorSzedmak, Sandoren_US
dc.contributor.authorPenttilä, Merjaen_US
dc.contributor.authorJouhten, Paulaen_US
dc.contributor.authorRousu, Juhoen_US
dc.contributor.departmentDepartment of Computer Scienceen
dc.contributor.groupauthorProfessorship Rousu Juhoen
dc.contributor.groupauthorComputer Science Professorsen
dc.contributor.groupauthorComputer Science - Computational Life Sciences (CSLife) - Research areaen
dc.contributor.groupauthorComputer Science - Artificial Intelligence and Machine Learning (AIML) - Research areaen
dc.contributor.groupauthorComputer Science - Large-scale Computing and Data Analysis (LSCA) - Research areaen
dc.date.accessioned2022-09-14T05:56:43Z
dc.date.available2022-09-14T05:56:43Z
dc.date.issued2022-06en_US
dc.descriptionFunding Information: JR was supported by grants from The Finnish Innovation Fund SITRA (www.sitra.fi), grant number 381202 and Academy of Finland (www.aka.fi) grant number 310107. PJ was supported by grants from Academy of Finland (https://www.aka.fi/en/) with grant numbers 310514 and 314125. MP was supported by grant from Jenny and Antti Wihuri Foundation (wihurinrahasto.fi). The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript. Publisher Copyright: © 2022 Sabzevari et al. This is an open access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
dc.description.abstractEngineered microbial cells present a sustainable alternative to fossil-based synthesis of chemicals and fuels. Cellular synthesis routes are readily assembled and introduced into microbial strains using state-of-the-art synthetic biology tools. However, the optimization of the strains required to reach industrially feasible production levels is far less efficient. It typically relies on trial-and-error leading into high uncertainty in total duration and cost. New techniques that can cope with the complexity and limited mechanistic knowledge of the cellular regulation are called for guiding the strain optimization. In this paper, we put forward a multi-agent reinforcement learning (MARL) approach that learns from experiments to tune the metabolic enzyme levels so that the production is improved. Our method is model-free and does not assume prior knowledge of the microbe’s metabolic network or its regulation. The multi-agent approach is well-suited to make use of parallel experiments such as multi-well plates commonly used for screening microbial strains. We demonstrate the method’s capabilities using the genome-scale kinetic model of Escherichia coli, k-ecoli457, as a surrogate for an in vivo cell behaviour in cultivation experiments. We investigate the method’s performance relevant for practical applicability in strain engineering i.e. the speed of convergence towards the optimum response, noise tolerance, and the statistical stability of the solutions found. We further evaluate the proposed MARL approach in improving L-tryptophan production by yeast Saccharomyces cerevisiae, using publicly available experimental data on the performance of a combinatorial strain library. Overall, our results show that multi-agent reinforcement learning is a promising approach for guiding the strain optimization beyond mechanistic knowledge, with the goal of faster and more reliably obtaining industrially attractive production levels.en
dc.description.versionPeer revieweden
dc.format.extent18
dc.format.mimetypeapplication/pdfen_US
dc.identifier.citationSabzevari, M, Szedmak, S, Penttilä, M, Jouhten, P & Rousu, J 2022, 'Strain design optimization using reinforcement learning', PLoS Computational Biology, vol. 18, no. 6, e1010177, pp. 1-18. https://doi.org/10.1371/journal.pcbi.1010177en
dc.identifier.doi10.1371/journal.pcbi.1010177en_US
dc.identifier.issn1553-734X
dc.identifier.issn1553-7358
dc.identifier.otherPURE UUID: e24ba633-6c57-4d72-9837-d6069560bea0en_US
dc.identifier.otherPURE ITEMURL: https://research.aalto.fi/en/publications/e24ba633-6c57-4d72-9837-d6069560bea0en_US
dc.identifier.otherPURE FILEURL: https://research.aalto.fi/files/87882863/Strain_design_optimization_using_reinforcement_learning.pdf
dc.identifier.urihttps://aaltodoc.aalto.fi/handle/123456789/116797
dc.identifier.urnURN:NBN:fi:aalto-202209145601
dc.language.isoenen
dc.publisherPublic Library of Science
dc.relation.fundinginfoJR was supported by grants from The Finnish Innovation Fund SITRA (www.sitra.fi), grant number 381202 and Academy of Finland (www.aka.fi) grant number 310107. PJ was supported by grants from Academy of Finland (https://www.aka.fi/en/) with grant numbers 310514 and 314125. MP was supported by grant from Jenny and Antti Wihuri Foundation (wihurinrahasto.fi). The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript.
dc.relation.ispartofseriesPLoS Computational Biologyen
dc.relation.ispartofseriesVolume 18, issue 6, pp. 1-18en
dc.rightsopenAccessen
dc.titleStrain design optimization using reinforcement learningen
dc.typeA1 Alkuperäisartikkeli tieteellisessä aikakauslehdessäfi
dc.type.versionpublishedVersion

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