Department of Data Science, Dana-Farber Cancer Institute, Boston, Massachusetts.
Department of Biostatistics, Harvard T.H. Chan School of Public Health, Boston, Massachusetts.
Cancer Res Commun. 2023 Nov 16;3(11):2331-2344. doi: 10.1158/2767-9764.CRC-23-0257.
Cyclin-dependent kinases 4/6 (CDK4/6) inhibitors such as palbociclib are approved for the treatment of metastatic estrogen receptor-positive (ER+) breast cancer in combination with endocrine therapies and significantly improve outcomes in patients with this disease. However, given the large number of possible pairwise drug combinations and administration schedules, it remains unclear which clinical strategy would lead to best survival. Here, we developed a computational, cell cycle-explicit model to characterize the pharmacodynamic response to palbociclib-fulvestrant combination therapy. This pharmacodynamic model was parameterized, in a Bayesian statistical inference approach, using in vitro data from cells with wild-type estrogen receptor (WT-ER) and cells expressing the activating missense ER mutation, Y537S, which confers resistance to fulvestrant. We then incorporated pharmacokinetic models derived from clinical data into our computational modeling platform. To systematically compare dose administration schedules, we performed in silico clinical trials based on integrating our pharmacodynamic and pharmacokinetic models as well as considering clinical toxicity constraints. We found that continuous dosing of palbociclib is more effective for lowering overall tumor burden than the standard, pulsed-dose palbociclib treatment. Importantly, our mathematical modeling and statistical analysis platform provides a rational method for comparing treatment strategies in search of optimal combination dosing strategies of other cell-cycle inhibitors in ER+ breast cancer.
We created a computational modeling platform to predict the effects of fulvestrant/palbocilib treatment on WT-ER and Y537S-mutant breast cancer cells, and found that continuous treatment schedules are more effective than the standard, pulsed-dose palbociclib treatment schedule.
细胞周期蛋白依赖性激酶 4/6(CDK4/6)抑制剂,如帕博西利,与内分泌治疗联合用于治疗转移性雌激素受体阳性(ER+)乳腺癌,并显著改善该疾病患者的预后。然而,鉴于可能的药物组合和给药方案数量众多,哪种临床策略会带来最佳生存结果仍不清楚。在这里,我们开发了一种计算性的、细胞周期特异性模型,以描述对帕博西利联合氟维司群治疗的药效反应。该药效模型通过贝叶斯统计推断方法,使用野生型雌激素受体(WT-ER)细胞和表达激活性错义 ER 突变 Y537S 的细胞的体外数据进行参数化,该突变使氟维司群产生耐药性。然后,我们将从临床数据中得出的药代动力学模型纳入我们的计算建模平台。为了系统地比较剂量给药方案,我们根据整合我们的药效学和药代动力学模型并考虑临床毒性约束,进行了计算机临床试验。我们发现,与标准的脉冲剂量帕博西利治疗相比,持续给药帕博西利更能有效降低整体肿瘤负担。重要的是,我们的数学建模和统计分析平台为比较治疗策略提供了一种合理的方法,以寻找 ER+乳腺癌中其他细胞周期抑制剂的最佳联合给药策略。
我们创建了一个计算建模平台来预测氟维司群/帕博西利治疗对 WT-ER 和 Y537S 突变乳腺癌细胞的影响,发现连续治疗方案比标准的脉冲剂量帕博西利治疗方案更有效。