ICON Plc, Stockholm, Sweden.
Department of Clinical Sciences Lund, Rheumatology, Lund University, Skåne University Hospital, Lund, Sweden.
Adv Ther. 2023 Oct;40(10):4657-4674. doi: 10.1007/s12325-023-02600-3. Epub 2023 Aug 11.
Treatment persistence is a proxy for efficacy, safety and patient satisfaction, and a switch in treatment or treatment discontinuation has been associated with increased indirect and direct costs in inflammatory arthritis (IA). Hence, there are both clinical and economic incentives for the identification of factors associated with treatment persistence. Until now, studies have mainly leveraged traditional regression analysis, but it has been suggested that novel approaches, such as statistical learning techniques, may improve our understanding of factors related to treatment persistence. Therefore, we set up a study using nationwide Swedish high-coverage administrative register data with the objective to identify patient groups with distinct persistence of subcutaneous tumor necrosis factor inhibitor (SC-TNFi) treatment in IA, using recursive partitioning, a statistical learning algorithm.
IA was defined as a diagnosis of rheumatic arthritis (RA), ankylosing spondylitis/unspecified spondyloarthritis (AS/uSpA) or psoriatic arthritis (PsA). Adult swedish biologic-naïve patients with IA initiating biologic treatment with a SC-TNFi (adalimumab, etanercept, certolizumab or golimumab) between May 6, 2010, and December 31, 2017. Treatment persistence of SC-TNFi was derived based on prescription data and a defined standard daily dose. Patient characteristics, including age, sex, number of health care contacts, comorbidities and treatment, were collected at treatment initiation and 12 months before treatment initiation. Based on these characteristics, we used recursive partitioning in a conditional inference framework to identify patient groups with distinct SC-TNFi treatment persistence by IA diagnosis.
A total of 13,913 patients were included. Approximately 50% had RA, while 27% and 23% had AS/uSpA and PsA, respectively. The recursive partitioning algorithm identified sex and treatment as factors associated with SC-TNFi treatment persistence in PsA and AS/uSpA. Time on treatment in the groups with the lowest treatment persistence was similar across all three indications (9.5-11.3 months), whereas there was more variation in time on treatment across the groups with the highest treatment persistence (18.4-48.9 months).
Women have low SC-TNFi treatment persistence in PsA and AS/uSpA whereas male sex and golimumab are associated with high treatment persistence in these indications. The factors associated with treatment persistence in RA were less distinct but may comprise disease activity and concurrent conventional systemic disease-modifying anti-rheumatic drug (DMARD) treatment.
治疗持续时间是疗效、安全性和患者满意度的替代指标,炎症性关节炎(IA)中治疗的转换或停止与间接和直接成本的增加有关。因此,对于确定与治疗持续时间相关的因素,既有临床方面的激励,也有经济方面的激励。到目前为止,研究主要利用了传统的回归分析,但有人认为,新的方法,如统计学习技术,可能会提高我们对与治疗持续时间相关因素的理解。因此,我们利用全国性的瑞典高覆盖率行政登记数据,采用递归分割(一种统计学习算法),建立了一项研究,目的是确定 IA 患者皮下肿瘤坏死因子抑制剂(SC-TNFi)治疗持续时间不同的患者群体。
IA 定义为风湿性关节炎(RA)、强直性脊柱炎/未特指的脊柱关节炎(AS/uSpA)或银屑病关节炎(PsA)的诊断。2010 年 5 月 6 日至 2017 年 12 月 31 日期间,瑞典首次接受 SC-TNFi(阿达木单抗、依那西普、赛妥珠单抗或戈利木单抗)生物治疗的生物初治成年 IA 患者。根据处方数据和规定的标准日剂量,确定 SC-TNFi 的治疗持续时间。患者特征,包括年龄、性别、医疗接触次数、合并症和治疗情况,在治疗开始时和治疗开始前 12 个月收集。基于这些特征,我们使用条件推理框架中的递归分割来确定根据 IA 诊断具有不同 SC-TNFi 治疗持续时间的患者群体。
共纳入 13913 名患者。约 50%有 RA,27%和 23%分别有 AS/uSpA 和 PsA。递归分割算法确定了性别和治疗是 PsA 和 AS/uSpA 中与 SC-TNFi 治疗持续时间相关的因素。治疗持续时间最低的两组的治疗时间相似(9.5-11.3 个月),而治疗持续时间最高的两组的治疗时间差异较大(18.4-48.9 个月)。
女性在 PsA 和 AS/uSpA 中 SC-TNFi 治疗持续时间较低,而男性和戈利木单抗与这些疾病的高治疗持续时间相关。RA 中与治疗持续时间相关的因素不那么明显,但可能包括疾病活动度和同时使用传统的全身性疾病修饰抗风湿药物(DMARD)治疗。