Program for Computational and Systems Biology, Memorial Sloan Kettering Cancer Center, New York, New York.
Human Oncology and Pathogenesis Program, Memorial Sloan Kettering Cancer Center, New York, New York.
Mol Cancer Ther. 2022 May 4;21(5):831-843. doi: 10.1158/1535-7163.MCT-21-0574.
Therapeutic resistance is a fundamental obstacle in cancer treatment. Tumors that initially respond to treatment may have a preexisting resistant subclone or acquire resistance during treatment, making relapse theoretically inevitable. Here, we investigate treatment strategies that may delay relapse using mathematical modeling. We find that for a single-drug therapy, pulse treatment-short, elevated doses followed by a complete break from treatment-delays relapse compared with continuous treatment with the same total dose over a length of time. For tumors treated with more than one drug, continuous combination treatment is only sometimes better than sequential treatment, while pulsed combination treatment or simply alternating between the two therapies at defined intervals delays relapse the longest. These results are independent of the fitness cost or benefit of resistance, and are robust to noise. Machine-learning analysis of simulations shows that the initial tumor response and heterogeneity at the start of treatment suffice to determine the benefit of pulsed or alternating treatment strategies over continuous treatment. Analysis of eight tumor burden trajectories of breast cancer patients treated at Memorial Sloan Kettering Cancer Center shows the model can predict time to resistance using initial responses to treatment and estimated preexisting resistant populations. The model calculated that pulse treatment would delay relapse in all eight cases. Overall, our results support that pulsed treatments optimized by mathematical models could delay therapeutic resistance.
治疗抵抗是癌症治疗中的一个基本障碍。最初对治疗有反应的肿瘤可能预先存在耐药亚克隆,或者在治疗过程中获得耐药性,从而使复发在理论上不可避免。在这里,我们通过数学建模研究了可能延迟复发的治疗策略。我们发现,对于单一药物治疗,脉冲治疗——短时间内升高剂量,然后完全停止治疗——与在一段时间内用相同的总剂量连续治疗相比,可延迟复发。对于用多种药物治疗的肿瘤,连续联合治疗并不总是优于序贯治疗,而脉冲联合治疗或只是在规定的时间间隔内交替使用两种治疗方法,可以延迟复发的时间最长。这些结果与耐药性的适应性成本或益处无关,并且对噪声具有鲁棒性。对模拟的机器学习分析表明,治疗开始时肿瘤的初始反应和异质性足以确定脉冲或交替治疗策略相对于连续治疗的益处。对 Memorial Sloan Kettering 癌症中心治疗的 8 名乳腺癌患者的肿瘤负担轨迹进行分析表明,该模型可以使用初始治疗反应和估计的预先存在的耐药性人群来预测耐药时间。该模型计算出,在所有 8 种情况下,脉冲治疗都会延迟耐药。总体而言,我们的研究结果支持通过数学模型优化的脉冲治疗可以延迟治疗抵抗。