Uncovering and resolving challenges of quantitative modeling in a simplified community of interacting cells

Hart, Samuel F. M. and Mi, Hanbing and Green, Robin and Xie, Li and Pineda, Jose Mario Bello and Momeni, Babak and Shou, Wenying and Sanchez, Alvaro (2019) Uncovering and resolving challenges of quantitative modeling in a simplified community of interacting cells. PLOS Biology, 17 (2). e3000135. ISSN 1545-7885

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Abstract

Quantitative modeling is useful for predicting behaviors of a system and for rationally constructing or modifying the system. The predictive power of a model relies on accurate quantification of model parameters. Here, we illustrate challenges in parameter quantification and offer means to overcome these challenges, using a case example in which we quantitatively predict the growth rate of a cooperative community. Specifically, the community consists of two Saccharomyces cerevisiae strains, each engineered to release a metabolite required and consumed by its partner. The initial model, employing parameters measured in batch monocultures with zero or excess metabolite, failed to quantitatively predict experimental results. To resolve the model–experiment discrepancy, we chemically identified the correct exchanged metabolites, but this did not improve model performance. We then remeasured strain phenotypes in chemostats mimicking the metabolite-limited community environments, while mitigating or incorporating effects of rapid evolution. Almost all phenotypes we measured, including death rate, metabolite release rate, and the amount of metabolite consumed per cell birth, varied significantly with the metabolite environment. Once we used parameters measured in a range of community-like chemostat environments, prediction quantitatively agreed with experimental results. In summary, using a simplified community, we uncovered and devised means to resolve modeling challenges that are likely general to living systems.

Item Type: Article
Subjects: Digital Open Archives > Biological Science
Depositing User: Unnamed user with email support@digiopenarchives.com
Date Deposited: 09 Jan 2023 10:18
Last Modified: 28 May 2024 05:30
URI: http://geographical.openuniversityarchive.com/id/eprint/15

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