Mira Portia M, Crona Kristina, Greene Devin, Meza Juan C, Sturmfels Bernd, Barlow Miriam
School of Natural Science, University of California Merced, Merced, California, United States of America.
Department of Mathematics and Statistics, American University, Washington, DC, United States of America.
PLoS One. 2015 May 6;10(5):e0122283. doi: 10.1371/journal.pone.0122283. eCollection 2015.
The development of reliable methods for restoring susceptibility after antibiotic resistance arises has proven elusive. A greater understanding of the relationship between antibiotic administration and the evolution of resistance is key to overcoming this challenge. Here we present a data-driven mathematical approach for developing antibiotic treatment plans that can reverse the evolution of antibiotic resistance determinants. We have generated adaptive landscapes for 16 genotypes of the TEM β-lactamase that vary from the wild type genotype "TEM-1" through all combinations of four amino acid substitutions. We determined the growth rate of each genotype when treated with each of 15 β-lactam antibiotics. By using growth rates as a measure of fitness, we computed the probability of each amino acid substitution in each β-lactam treatment using two different models named the Correlated Probability Model (CPM) and the Equal Probability Model (EPM). We then performed an exhaustive search through the 15 treatments for substitution paths leading from each of the 16 genotypes back to the wild type TEM-1. We identified optimized treatment paths that returned the highest probabilities of selecting for reversions of amino acid substitutions and returning TEM to the wild type state. For the CPM model, the optimized probabilities ranged between 0.6 and 1.0. For the EPM model, the optimized probabilities ranged between 0.38 and 1.0. For cyclical CPM treatment plans in which the starting and ending genotype was the wild type, the probabilities were between 0.62 and 0.7. Overall this study shows that there is promise for reversing the evolution of resistance through antibiotic treatment plans.
事实证明,要开发出在抗生素耐药性出现后恢复其敏感性的可靠方法并非易事。深入了解抗生素使用与耐药性演变之间的关系是克服这一挑战的关键。在此,我们提出一种数据驱动的数学方法,用于制定能够逆转抗生素耐药决定因素演变的抗生素治疗方案。我们针对TEMβ-内酰胺酶的16种基因型生成了适应性景观,这些基因型从野生型基因型“TEM-1”开始,通过四个氨基酸替换的所有组合变化而来。我们测定了用15种β-内酰胺类抗生素中的每一种处理时每种基因型的生长速率。通过将生长速率作为适合度的衡量标准,我们使用两种不同的模型,即相关概率模型(CPM)和平等概率模型(EPM),计算了每种β-内酰胺处理中每个氨基酸替换的概率。然后,我们对15种处理进行了详尽搜索,寻找从16种基因型中的每一种回到野生型TEM-1的替换路径。我们确定了优化的治疗路径,这些路径返回选择氨基酸替换逆转并使TEM回到野生型状态的最高概率。对于CPM模型,优化概率在0.6至1.0之间。对于EPM模型,优化概率在0.38至1.0之间。对于起始和结束基因型均为野生型的循环CPM治疗方案,概率在0.62至0.7之间。总体而言,这项研究表明,通过抗生素治疗方案逆转耐药性演变是有希望的。