Dosage optimization for reducing tumor burden using a phenotype-structured population model with a drug-resistance continuum.

Lifeng Han, Osman N Yogurtcu, Marisabel Rodriguez Messan, Wencel Valega-Mackenzie, Ujwani Nukala, Hong Yang
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Abstract

Drug resistance is a significant obstacle to effective cancer treatment. To gain insights into how drug resistance develops, we adopted a concept called fitness landscape and employed a phenotype-structured population model by fitting to a set of experimental data on a drug used for ovarian cancer, olaparib. Our modeling approach allowed us to understand how a drug affects the fitness landscape and track the evolution of a population of cancer cells structured with a spectrum of drug resistance. We also incorporated pharmacokinetic (PK) modeling to identify the optimal dosages of the drug that could lead to long-term tumor reduction. We derived a formula that indicates that maximizing variation in plasma drug concentration over a dosing interval could be important in reducing drug resistance. Our findings suggest that it may be possible to achieve better treatment outcomes with a drug dose lower than the levels recommended by the drug label. Acknowledging the current limitations of our work, we believe that our approach, which combines modeling of both PK and drug resistance evolution, could contribute to a new direction for better designing drug treatment regimens to improve cancer treatment.

利用具有耐药性连续体的表型结构群体模型优化剂量,减轻肿瘤负担。
耐药性是有效治疗癌症的一大障碍。为了深入了解耐药性是如何产生的,我们采用了一个名为 "适应性景观"(fitness landscape)的概念,并通过拟合一组卵巢癌药物奥拉帕利(Olaparib)的实验数据,采用了一种表型结构群体模型。我们的建模方法使我们能够了解药物是如何影响适应性景观的,并跟踪具有耐药性谱系结构的癌细胞群体的进化过程。我们还结合了药代动力学(PK)建模,以确定能够长期减少肿瘤的最佳药物剂量。我们推导出的公式表明,在给药间隔内使血浆药物浓度变化最大化对减少耐药性非常重要。我们的研究结果表明,用低于药物标签推荐水平的药物剂量可能会取得更好的治疗效果。尽管我们的工作目前还存在局限性,但我们相信,我们的方法结合了 PK 和耐药性演变的建模,可以为更好地设计药物治疗方案以改善癌症治疗提供新的方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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