King Ethan, Holzer Jesse, North Justin A, Cannon William R
Pacific Northwest National Laboratory, Richland, WA, United States.
Department of Microbiology, The Ohio State University, Columbus, OH, United States.
Front Syst Biol. 2023 Apr 5;3:981866. doi: 10.3389/fsysb.2023.981866. eCollection 2023.
Elucidating cell regulation remains a challenging task due to the complexity of metabolism and the difficulty of experimental measurements. Here we present a method for prediction of cell regulation to maximize cell growth rate while maintaining the solvent capacity of the cell. Prediction is formulated as an optimization problem using a thermodynamic framework that can leverage experimental data. We develop a formulation and variable initialization procedure that allows for computing solutions of the optimization with an interior point method. The approach is applied to photoheterotrophic growth of using ethanol as a carbon source, which has applications to biosynthesis of ethylene production. Growth is captured as the rate of synthesis of amino acids into proteins, and synthesis of nucleotide triphoshaptes into RNA and DNA. The method predicts regulation that produces a high rate of protein and RNA synthesis while DNA synthesis is reduced close to zero in agreement with production of DNA being turned off for much of the cell cycle.
由于新陈代谢的复杂性和实验测量的难度,阐明细胞调节仍然是一项具有挑战性的任务。在此,我们提出一种预测细胞调节的方法,以在维持细胞溶剂容量的同时最大化细胞生长速率。预测被表述为一个使用热力学框架的优化问题,该框架可以利用实验数据。我们开发了一种公式和变量初始化程序,允许使用内点法计算优化解。该方法应用于以乙醇作为碳源的光异养生长,这在乙烯生产的生物合成中有应用。生长被捕获为氨基酸合成蛋白质的速率以及三磷酸核苷酸合成RNA和DNA的速率。该方法预测的调节能产生高蛋白质和RNA合成速率,而DNA合成则降至接近零,这与在细胞周期的大部分时间里DNA合成关闭相一致。