Department of Decision Sciences and MIS, Drexel University, 3220 Market St, Philadelphia, PA 19104, USA.
Department of Mathematics, University of Utah, 155 S 1400 E, Salt Lake City, UT 84112, USA.
Math Biosci Eng. 2021 Jul 21;18(5):6305-6327. doi: 10.3934/mbe.2021315.
When eradication is impossible, cancer treatment aims to delay the emergence of resistance while minimizing cancer burden and treatment. Adaptive therapies may achieve these aims, with success based on three assumptions: resistance is costly, sensitive cells compete with resistant cells, and therapy reduces the population of sensitive cells. We use a range of mathematical models and treatment strategies to investigate the tradeoff between controlling cell populations and delaying the emergence of resistance. These models extend game theoretic and competition models with four additional components: 1) an Allee effect where cell populations grow more slowly at low population sizes, 2) healthy cells that compete with cancer cells, 3) immune cells that suppress cancer cells, and 4) resource competition for a growth factor like androgen. In comparing maximum tolerable dose, intermittent treatment, and adaptive therapy strategies, no therapeutic choice robustly breaks the three-way tradeoff among the three therapeutic aims. Almost all models show a tight tradeoff between time to emergence of resistant cells and cancer cell burden, with intermittent and adaptive therapies following identical curves. For most models, some adaptive therapies delay overall tumor growth more than intermittent therapies, but at the cost of higher cell populations. The Allee effect breaks these relationships, with some adaptive therapies performing poorly due to their failure to treat sufficiently to drive populations below the threshold. When eradication is impossible, no treatment can simultaneously delay emergence of resistance, limit total cancer cell numbers, and minimize treatment. Simple mathematical models can play a role in designing the next generation of therapies that balance these competing objectives.
当无法根除癌症时,癌症治疗的目标是在最小化癌症负担和治疗的同时延迟耐药性的出现。适应性疗法可能会实现这些目标,其成功基于三个假设:耐药性是有代价的,敏感细胞与耐药细胞竞争,以及治疗减少了敏感细胞的数量。我们使用一系列数学模型和治疗策略来研究控制细胞群体和延迟耐药性出现之间的权衡。这些模型通过以下四个附加组件扩展了博弈论和竞争模型:1)阿利效应,即在低种群数量下细胞群体的生长速度较慢,2)与癌细胞竞争的健康细胞,3)抑制癌细胞的免疫细胞,以及 4)生长因子(如雄激素)的资源竞争。在比较最大耐受剂量、间歇性治疗和适应性治疗策略时,没有一种治疗选择能够打破三种治疗目标之间的三方权衡。几乎所有模型都显示出耐药细胞出现时间和癌细胞负担之间的紧密权衡,间歇性和适应性治疗遵循相同的曲线。对于大多数模型,一些适应性治疗比间歇性治疗更能延迟总体肿瘤生长,但代价是更高的细胞群体。阿利效应打破了这些关系,一些适应性治疗由于未能充分治疗而导致种群低于阈值,从而表现不佳。当根除癌症不可能时,没有一种治疗方法能够同时延迟耐药性的出现、限制癌细胞总数并最小化治疗。简单的数学模型可以在设计平衡这些竞争目标的下一代治疗方法方面发挥作用。