The Comparative Health Outcomes, Policy, and Economics (CHOICE) Institute, University of Washington, Seattle, WA, USA.
Fred Hutchinson Cancer Research Center, Seattle, WA, USA.
J Oncol Pharm Pract. 2021 Dec;27(8):1842-1852. doi: 10.1177/1078155220970616. Epub 2020 Nov 11.
Although consistent use of tyrosine kinase inhibitors (TKIs) confers significant improvements in long-term survival for individuals with chronic myeloid leukemia (CML), only 70% of CML patients are adherent to TKIs. Understanding the factors that contribute to non-adherence and establishing dynamic adherence patterns in this population are essential aspects of targeted drug monitoring and intervention strategies.
Newly diagnosed CML patients were identified in the MarketScan database and relevant covariate values extracted. Proportion of days covered (PDC) per 30-day interval was used to calculate adherence over a 12-month follow-up period. We conducted a latent profile analysis (LPA) on these PDC estimates to identify distinct, dynamic patterns of TKI adherence. Identified trajectories were grouped into four clinically relevant categories and predictors of membership in these categories were determined via multinomial logistic regression.
Four broad adherence categories were identified from the LPA: never adherent, initially non-adherent becoming adherent, initially adherent becoming non-adherent, and stable adherent. Results from the subsequent multinomial logistic regression indicated that younger age, female sex, greater monthly financial burden, fewer comorbidities, fewer concomitant medications, year of diagnosis, higher starting dose, TKI type, and a longer duration from diagnosis to treatment were significantly associated with membership in at least one of the three non-stable adherent groups.
Select sociodemographic and clinical characteristics were found to predict membership in clinically meaningful groups of longitudinal TKI adherence. These findings could have major implications for informing personalized monitoring and intervention strategies for individuals who are likely to be non-adherent.
尽管持续使用酪氨酸激酶抑制剂(TKI)可显著改善慢性髓性白血病(CML)患者的长期生存,但只有 70%的 CML 患者能够坚持使用 TKI。了解导致不依从的因素,并在该人群中建立动态依从模式,是靶向药物监测和干预策略的重要方面。
在 MarketScan 数据库中确定新诊断的 CML 患者,并提取相关协变量值。通过计算 12 个月随访期间每个 30 天间隔的覆盖天数(PDC)来评估依从性。我们对这些 PDC 估计值进行潜在剖面分析(LPA),以确定 TKI 依从性的不同、动态模式。根据 LPA 确定的轨迹分为四个临床相关类别,并通过多项逻辑回归确定这些类别的成员预测因素。
通过 LPA 从从不依从、从不依从变为依从、从依从变为不依从和稳定依从四个广泛的依从类别中识别出来。随后的多项逻辑回归结果表明,年龄较小、女性、每月经济负担较大、合并症较少、同时服用的药物较少、诊断年份、起始剂量较高、TKI 类型以及从诊断到治疗的时间较长与至少一个不稳定依从组的成员资格显著相关。
发现一些社会人口统计学和临床特征可预测具有临床意义的 TKI 依从性纵向分组的成员资格。这些发现可能对制定针对可能不依从的个体的个性化监测和干预策略具有重大意义。