Predicted growth, yield, and secretion.

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Metabolic Model Describing Growth of Substrate Uptake By Idelfonso Arrieta Anant Kumar Upadhyayula.
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Predicted growth, yield, and secretion. Predicted growth, yield, and secretion. (A) Predicted growth rate is plotted as a function of the glucose uptake rate bound imposed in glucose minimal media. Three regions of growth are labeled Strictly Nutrient‐Limited (SNL), Janusian, and Batch (i.e., excess of substrate) based on the dominant active constraints (nutrient and/or proteome limitation). The proteome‐activity constraint inherent in the ME‐Model results in a maximal growth rate and substrate uptake rate. The behavior of a genome‐scale metabolic model (M‐Model) is depicted with an arrow. (B) Predicted growth rates as a function of uptake of a limiting nutrient with glucose in excess. The shaded regions correspond to those as labeled in (A). (C) Experimental (triangle) and ME‐Model‐predicted (circle) acetate secretion in Nitrogen‐ (blue) and Carbon‐ (red) limited glucose minimal medium are plotted as a function of growth rate. Data were obtained from Zhuang et al (2011). The root‐mean‐square error (RMSE) between data and the ME‐Model is 0.12 (for comparison, RMSE=0.40 for the M‐Model). (D) Experimental (triangle) and ME‐Model‐predicted (circle) carbon yield (gDW Biomass/g Glucose) in Carbon‐ (red) and Nitrogen‐ (blue) limited glucose minimal medium are plotted as a function of growth rate. Data were obtained from Zhuang et al (2011). RMSE between data and the ME‐Model is 0.04 (for comparison, RMSE=0.07 for the M‐Model). (E) The cartoon depicts changes in extra‐ (blue) and intra‐ (green) cellular substrate (circle) and product (triangle) concentrations and metabolic enzyme (blue/orange) and ribosome (purple/maroon) levels during the Janusian region. Metabolic enzymes are saturated throughout the entire Janusian region. To increase the growth rate, the cell expresses metabolic pathways that have lower operating costs. (Pathways with the smaller blue proteins taken to be 0.25 the cost of the pathways with larger orange proteins.) A higher glucose uptake and turnover results, but energy yield is lower and some carbon is ‘wasted’ and secreted (brown triangles). The dials show keff/kcat, the effective catalytic rate over the maximum for metabolic enzymes (blue/orange) and ribosomes (purple/maroon). Edward J O'Brien et al. Mol Syst Biol 2013;9:693 © as stated in the article, figure or figure legend