Preventing evolutionary rescue in cancer.

Srishti Patil, Armaan Ahmed, Yannick Viossat, Robert Noble
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Abstract

First-line cancer treatment frequently fails due to initially rare therapeutic resistance. An important clinical question is then how to schedule subsequent treatments to maximize the probability of tumour eradication. Here, we provide a theoretical solution to this problem by using mathematical analysis and extensive stochastic simulations within the framework of evolutionary rescue theory to determine how best to exploit the vulnerability of small tumours to stochastic extinction. Whereas standard clinical practice is to wait for evidence of relapse, we confirm a recent hypothesis that the optimal time to switch to a second treatment is when the tumour is close to its minimum size before relapse, when it is likely undetectable. This optimum can lie slightly before or slightly after the nadir, depending on tumour parameters. Given that this exact time point may be difficult to determine in practice, we study windows of high extinction probability that lie around the optimal switching point, showing that switching after the relapse has begun is typically better than switching too early. We further reveal how treatment dose and tumour demographic and evolutionary parameters influence the predicted clinical outcome, and we determine how best to schedule drugs of unequal efficacy. Our work establishes a foundation for further experimental and clinical investigation of this evolutionarily-informed "extinction therapy" strategy.

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阻止癌症的进化拯救。
灭绝疗法旨在通过优化调度多次治疗打击来利用小细胞群体对随机灭绝的脆弱性来根除肿瘤。这个概念最近被证明在理论上是合理的,但还没有经过彻底的数学分析。在这里,我们获得肿瘤灭绝概率的定量估计使用确定性分析模型和随机模拟模型的两次罢工灭绝治疗,基于进化救援理论。我们发现第二次打击的最佳时间是当肿瘤接近其复发前的最小尺寸。考虑到这个确切的时间点在实践中可能难以确定,我们表明,在复发开始后轻微打击通常比过早切换更好。我们进一步揭示和解释人口统计和环境参数如何影响治疗结果。令人惊讶的是,低剂量的第一次打击与高剂量的第二次打击被证明是最佳的。作为灭绝疗法的首批研究之一,我们的工作为进一步的理论和实验研究奠定了基础,这一有前途的进化信息癌症治疗策略。
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