Center for Translational Medicine, University of Maryland School of Pharmacy, Baltimore, Maryland, USA.
Inova Schar Cancer Institute, Fairfax, Virginia, USA.
CPT Pharmacometrics Syst Pharmacol. 2023 Jul;12(7):929-940. doi: 10.1002/psp4.12963. Epub 2023 Apr 26.
Taxanes are currently the most frequently used chemotherapeutic agents in cancer care, where real-world use has focused on minimizing adverse events and standardizing the delivery. Myelosuppression is a well-characterized, adverse pharmacodynamic effect of taxanes. Electronic health records (EHRs) comprise data collected during routine clinical care that include patients with heterogeneous demographic, clinical, and treatment characteristics. Application of pharmacokinetic/pharmacodynamic (PK/PD) modeling to EHR data promises new insights on the real-world use of taxanes and strategies to improve therapeutic outcomes especially for populations who are typically excluded from clinical trials, including the elderly. This investigation: (i) leveraged previously published PK/PD models developed with clinical trial data and addressed challenges to fit EHR data, and (ii) evaluated predictors of paclitaxel-induced myelosuppression. Relevant EHR data were collected from patients treated with paclitaxel-containing chemotherapy at Inova Schar Cancer Institute between 2015 and 2019 (n = 405). Published PK models were used to simulate mean individual exposures of paclitaxel and carboplatin, which were linearly linked to absolute neutrophil count (ANC) using a published semiphysiologic myelosuppression model. Elderly patients (≥70 years) constituted 21.2% of the dataset and 2274 ANC measurements were included in the analysis. The PD parameters were estimated and matched previously reported values. The baseline ANC and chemotherapy regimen were significant predictors of paclitaxel-induced myelosuppression. The nadir ANC and use of supportive treatments, such as growth factors and antimicrobials, were consistent across age quantiles suggesting age had no effect on paclitaxel-induced myelosuppression. In conclusion, EHR data could complement clinical trial data in answering key therapeutic questions.
紫杉烷类药物目前是癌症治疗中最常用的化疗药物,实际应用侧重于最大限度地减少不良反应并使药物递送标准化。骨髓抑制是紫杉烷类药物的一种特征性的、不良的药效学作用。电子健康记录 (EHR) 包含在常规临床护理期间收集的数据,其中包括具有异质人口统计学、临床和治疗特征的患者。将药代动力学/药效学 (PK/PD) 模型应用于 EHR 数据有望为紫杉烷类药物的实际应用提供新的见解,并为改善治疗结果提供策略,特别是对于通常被排除在临床试验之外的人群,包括老年人。本研究:(i) 利用先前基于临床试验数据开发的 PK/PD 模型,并解决了适用于 EHR 数据的挑战,(ii) 评估了紫杉醇引起的骨髓抑制的预测因素。从 2015 年至 2019 年在 Inova Schar 癌症研究所接受紫杉醇含化疗治疗的患者中收集了相关的 EHR 数据(n=405)。使用已发表的 PK 模型来模拟紫杉醇和卡铂的个体平均暴露量,并用已发表的半生理骨髓抑制模型将其与绝对中性粒细胞计数 (ANC) 进行线性关联。年龄在 70 岁及以上的老年患者占数据集的 21.2%,共纳入了 2274 次 ANC 测量值进行分析。估计了 PD 参数并与先前报道的值相匹配。基线 ANC 和化疗方案是紫杉醇引起的骨髓抑制的重要预测因素。ANC 最低点和支持性治疗(如生长因子和抗生素)的使用在年龄分位数中是一致的,这表明年龄对紫杉醇引起的骨髓抑制没有影响。总之,EHR 数据可以补充临床试验数据,以回答关键的治疗问题。