Lagrangian Trajectories to Predict the Formation of Population Heterogeneity in Large-Scale Bioreactors

Successful scale-up of bioprocesses requires that laboratory-scale performance is equally achieved during large-scale production to meet economic constraints. In industry, heuristic approaches are often applied, making use of physical scale-up criteria that do not consider cellular needs or properti...

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Main Authors: Maike Kuschel, Flora Siebler, Ralf Takors
Format: Article
Language:English
Published: MDPI AG 2017-03-01
Series:Bioengineering
Subjects:
Online Access:http://www.mdpi.com/2306-5354/4/2/27
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spelling doaj-d4056009743e46d3971e752da0c625bd2020-11-24T21:58:20ZengMDPI AGBioengineering2306-53542017-03-01422710.3390/bioengineering4020027bioengineering4020027Lagrangian Trajectories to Predict the Formation of Population Heterogeneity in Large-Scale BioreactorsMaike Kuschel0Flora Siebler1Ralf Takors2Institute of Biochemical Engineering, University of Stuttgart, 70569 Stuttgart, GermanyInstitute of Biochemical Engineering, University of Stuttgart, 70569 Stuttgart, GermanyInstitute of Biochemical Engineering, University of Stuttgart, 70569 Stuttgart, GermanySuccessful scale-up of bioprocesses requires that laboratory-scale performance is equally achieved during large-scale production to meet economic constraints. In industry, heuristic approaches are often applied, making use of physical scale-up criteria that do not consider cellular needs or properties. As a consequence, large-scale productivities, conversion yields, or product purities are often deteriorated, which may prevent economic success. The occurrence of population heterogeneity in large-scale production may be the reason for underperformance. In this study, an in silico method to predict the formation of population heterogeneity by combining computational fluid dynamics (CFD) with a cell cycle model of Pseudomonas putida KT2440 was developed. The glucose gradient and flow field of a 54,000 L stirred tank reactor were generated with the Euler approach, and bacterial movement was simulated as Lagrange particles. The latter were statistically evaluated using a cell cycle model. Accordingly, 72% of all cells were found to switch between standard and multifork replication, and 10% were likely to undergo massive, transcriptional adaptations to respond to extracellular starving conditions. At the same time, 56% of all cells replicated very fast, with µ ≥ 0.3 h−1 performing multifork replication. The population showed very strong heterogeneity, as indicated by the observation that 52.9% showed higher than average adenosine triphosphate (ATP) maintenance demands (12.2%, up to 1.5 fold). These results underline the potential of CFD linked to structured cell cycle models for predicting large-scale heterogeneity in silico and ab initio.http://www.mdpi.com/2306-5354/4/2/27computational fluid dynamicscell cycle modelLagrange trajectoryscale-upstirred tank reactorpopulation dynamicsenergy level
collection DOAJ
language English
format Article
sources DOAJ
author Maike Kuschel
Flora Siebler
Ralf Takors
spellingShingle Maike Kuschel
Flora Siebler
Ralf Takors
Lagrangian Trajectories to Predict the Formation of Population Heterogeneity in Large-Scale Bioreactors
Bioengineering
computational fluid dynamics
cell cycle model
Lagrange trajectory
scale-up
stirred tank reactor
population dynamics
energy level
author_facet Maike Kuschel
Flora Siebler
Ralf Takors
author_sort Maike Kuschel
title Lagrangian Trajectories to Predict the Formation of Population Heterogeneity in Large-Scale Bioreactors
title_short Lagrangian Trajectories to Predict the Formation of Population Heterogeneity in Large-Scale Bioreactors
title_full Lagrangian Trajectories to Predict the Formation of Population Heterogeneity in Large-Scale Bioreactors
title_fullStr Lagrangian Trajectories to Predict the Formation of Population Heterogeneity in Large-Scale Bioreactors
title_full_unstemmed Lagrangian Trajectories to Predict the Formation of Population Heterogeneity in Large-Scale Bioreactors
title_sort lagrangian trajectories to predict the formation of population heterogeneity in large-scale bioreactors
publisher MDPI AG
series Bioengineering
issn 2306-5354
publishDate 2017-03-01
description Successful scale-up of bioprocesses requires that laboratory-scale performance is equally achieved during large-scale production to meet economic constraints. In industry, heuristic approaches are often applied, making use of physical scale-up criteria that do not consider cellular needs or properties. As a consequence, large-scale productivities, conversion yields, or product purities are often deteriorated, which may prevent economic success. The occurrence of population heterogeneity in large-scale production may be the reason for underperformance. In this study, an in silico method to predict the formation of population heterogeneity by combining computational fluid dynamics (CFD) with a cell cycle model of Pseudomonas putida KT2440 was developed. The glucose gradient and flow field of a 54,000 L stirred tank reactor were generated with the Euler approach, and bacterial movement was simulated as Lagrange particles. The latter were statistically evaluated using a cell cycle model. Accordingly, 72% of all cells were found to switch between standard and multifork replication, and 10% were likely to undergo massive, transcriptional adaptations to respond to extracellular starving conditions. At the same time, 56% of all cells replicated very fast, with µ ≥ 0.3 h−1 performing multifork replication. The population showed very strong heterogeneity, as indicated by the observation that 52.9% showed higher than average adenosine triphosphate (ATP) maintenance demands (12.2%, up to 1.5 fold). These results underline the potential of CFD linked to structured cell cycle models for predicting large-scale heterogeneity in silico and ab initio.
topic computational fluid dynamics
cell cycle model
Lagrange trajectory
scale-up
stirred tank reactor
population dynamics
energy level
url http://www.mdpi.com/2306-5354/4/2/27
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