Organismal and Evolutionary Biology Research Programme, Department of Computer Science, University of Helsinki, Helsinki, Finland.
Department of Biosystems Science and Engineering, ETH Zurich, Basel, Switzerland.
PLoS Comput Biol. 2021 Sep 23;17(9):e1009418. doi: 10.1371/journal.pcbi.1009418. eCollection 2021 Sep.
Increasing body of experimental evidence suggests that anticancer and antimicrobial therapies may themselves promote the acquisition of drug resistance by increasing mutability. The successful control of evolving populations requires that such biological costs of control are identified, quantified and included to the evolutionarily informed treatment protocol. Here we identify, characterise and exploit a trade-off between decreasing the target population size and generating a surplus of treatment-induced rescue mutations. We show that the probability of cure is maximized at an intermediate dosage, below the drug concentration yielding maximal population decay, suggesting that treatment outcomes may in some cases be substantially improved by less aggressive treatment strategies. We also provide a general analytical relationship that implicitly links growth rate, pharmacodynamics and dose-dependent mutation rate to an optimal control law. Our results highlight the important, but often neglected, role of fundamental eco-evolutionary costs of control. These costs can often lead to situations, where decreasing the cumulative drug dosage may be preferable even when the objective of the treatment is elimination, and not containment. Taken together, our results thus add to the ongoing criticism of the standard practice of administering aggressive, high-dose therapies and motivate further experimental and clinical investigation of the mutagenicity and other hidden collateral costs of therapies.
越来越多的实验证据表明,抗癌和抗菌治疗本身可能会通过增加突变率来促进耐药性的产生。成功控制不断进化的种群需要识别、量化和纳入这些控制的生物学成本,以使其符合进化信息治疗方案。在这里,我们确定、描述并利用了一种权衡关系,即在降低目标种群规模和产生治疗诱导的拯救突变过剩之间进行权衡。我们表明,在低于产生最大种群衰减的药物浓度的中间剂量下,治愈率最大化,这表明在某些情况下,通过不那么激进的治疗策略,治疗效果可能会得到显著改善。我们还提供了一个一般的分析关系,将增长率、药效学和剂量依赖性突变率隐含地联系到最优控制律中。我们的研究结果突出了控制的基本生态进化成本的重要性,但这些成本往往被忽视。这些成本通常会导致这样的情况,即在治疗的目的是消除而不是控制时,降低累积药物剂量可能更可取。总之,我们的研究结果增加了对标准实践中使用激进、高剂量治疗的持续批评,并促使进一步进行实验和临床研究,以了解治疗的致突变性和其他隐藏的附带成本。