CWRU School of Medicine, Cleveland, OH, USA.
Department of Translational Hematology and Oncology Research, Cleveland Clinic, Cleveland, OH, USA.
Sci Adv. 2022 Jul;8(26):eabm7212. doi: 10.1126/sciadv.abm7212. Epub 2022 Jul 1.
In this study, we experimentally measure the frequency-dependent interactions between a gefitinib-resistant non-small cell lung cancer population and its sensitive ancestor via the evolutionary game assay. We show that cost of resistance is insufficient to accurately predict competitive exclusion and that frequency-dependent growth rate measurements are required. Using frequency-dependent growth rate data, we then show that gefitinib treatment results in competitive exclusion of the ancestor, while the absence of treatment results in a likely, but not guaranteed, exclusion of the resistant strain. Then, using simulations, we demonstrate that incorporating ecological growth effects can influence the predicted extinction time. In addition, we show that higher drug concentrations may not lead to the optimal reduction in tumor burden. Together, these results highlight the potential importance of frequency-dependent growth rate data for understanding competing populations, both in the laboratory and as we translate adaptive therapy regimens to the clinic.
在这项研究中,我们通过进化博弈测定实验性地测量了吉非替尼耐药非小细胞肺癌群体与其敏感祖先之间的频率依赖性相互作用。我们表明,耐药成本不足以准确预测竞争排除,并且需要进行频率依赖性生长率测量。然后,使用频率依赖性生长率数据,我们表明吉非替尼治疗导致祖先的竞争排除,而缺乏治疗则可能导致但不能保证耐药株的排除。然后,通过模拟,我们证明了包含生态生长效应可以影响预测的灭绝时间。此外,我们表明较高的药物浓度可能不会导致肿瘤负担的最佳降低。总之,这些结果强调了频率依赖性生长率数据对于理解实验室和将适应性治疗方案转化为临床实践中的竞争群体的潜在重要性。