Choi H James, Lo Teresa W, Cutler Kevin J, Huang Dean, Will W Ryan, Wiggins Paul A
Department of Physics, University of Washington, Seattle, Washington 98195, USA.
Department of Laboratory Medicine and Pathology, University of Washington, Seattle, Washington 98195, USA.
bioRxiv. 2024 Aug 17:2024.08.14.607847. doi: 10.1101/2024.08.14.607847.
Protein expression levels optimize cell fitness: Too low an expression level of essential proteins will slow growth by compromising essential processes; whereas overexpression slows growth by increasing the metabolic load. This trade-off naïvely predicts that cells maximize their fitness by sufficiency, expressing just enough of each essential protein for function. We test this prediction in the naturally-competent bacterium by characterizing the proliferation dynamics of essential-gene knockouts at a single-cell scale (by imaging) as well as at a genome-wide scale (by TFNseq). In these experiments, cells proliferate for multiple generations as target protein levels are diluted from their endogenous levels. This approach facilitates a proteome-scale analysis of protein overabundance. As predicted by the Robustness-Load Trade-Off (RLTO) model, we find that roughly 70% of essential proteins are overabundant and that overabundance increases as the expression level decreases, the signature prediction of the model. These results reveal that robustness plays a fundamental role in determining the expression levels of essential genes and that overabundance is a key mechanism for ensuring robust growth.
必需蛋白质的表达水平过低会因损害基本过程而减缓生长;而过度表达则会因增加代谢负荷而减缓生长。这种权衡简单地预测,细胞通过充足表达每种必需蛋白质以实现功能最大化其适应性。我们通过在单细胞水平(通过成像)以及全基因组水平(通过TFNseq)表征必需基因敲除的增殖动力学,在具有天然感受态的细菌中测试这一预测。在这些实验中,随着靶蛋白水平从其内源性水平被稀释,细胞增殖多代。这种方法有助于对蛋白质过量进行蛋白质组规模的分析。正如稳健性-负荷权衡(RLTO)模型所预测的,我们发现大约70%的必需蛋白质过量,并且随着表达水平降低,过量增加,这是该模型的标志性预测。这些结果表明,稳健性在决定必需基因的表达水平方面起着基本作用,并且过量是确保稳健生长的关键机制。