探索患者生成的电子健康数据在评估类风湿关节炎肌肉注射类固醇治疗反应方面的潜力:病例系列。

IF 2 Q3 HEALTH CARE SCIENCES & SERVICES JMIR Formative Research Pub Date : 2024-10-28 DOI:10.2196/55715
Mariam Al-Attar, Kesmanee Assawamartbunlue, Julie Gandrup, Sabine N van der Veer, William G Dixon
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引用次数: 0

摘要

背景:移动健康设备越来越多,为远程收集高频电子患者健康数据(ePGHD)提供了令人兴奋的机会。这种新型数据类型可在常规临床环境之外提供有关疾病活动的详细见解。评估治疗反应可能会受到预约不频繁和回忆偏差的影响,而 ePGHD 是一种前景广阔的新型应用。肌肉注射类固醇等治疗效果短暂的药物就说明了这一难题,因为患者不可能在复诊时准确回忆起治疗反应,而复诊往往是在几个月之后。回顾性评估意味着反应可能被高估或低估。高频率的 ePGHD(如每天通过应用程序收集患者在门诊之间报告的症状)可以弥补这一缺陷。然而,由于缺乏使用 ePGHD 进行治疗反应的既定定义或分析此类数据的既定方法,ePGHD 的潜力仍未得到开发:本研究旨在探索在使用智能手机应用程序跟踪日常症状的类风湿关节炎患者病例系列中评估肌肉注射类固醇疗法治疗反应的可行性:我们报告了一系列通过类风湿关节炎远程监测(REMORA)智能手机应用收集 ePGHD 的患者病例,这些应用用于日常远程症状跟踪。症状追踪采用 0-10 分制。我们描述了肌肉注射类固醇前后患者的纵向疼痛评分。基线疼痛评分按注射前 10 天的平均疼痛评分计算。这与注射后几天的疼痛评分进行了比较。"反应 "的定义是注射后第一天与基线分数相比的任何改善。反应结束时间定义为疼痛评分超过类固醇注射前基线的第一个日期:我们共纳入了 6 名患者,他们共接受了 9 次类固醇注射。注射前的平均疼痛评分从 3.3 到 9.3 不等。根据我们的定义,7 次注射显示出反应。在有反应者中,反应持续时间从 1 天到 54 天不等(中位数为 9 天,IQR 为 7-41),平均疼痛评分改善幅度从 0.1 到 5.3 不等(中位数为 3.3,IQR 为 2.2-4.0),最大疼痛评分改善幅度从 0.1 到 7.0 不等(中位数为 4.3,IQR 为 1.7-6.0):本病例系列证明了使用 ePGHD 评估治疗反应的可行性,也是朝着为分析这种新型数据类型开发更稳健的方法迈出的重要探索性一步。我们的分析所强调的问题包括考虑一次性数据点、不同的反应开始时间以及其他药物等混杂因素的重要性。未来需要在更大的人群中对 ePGHD 进行分析,以解决我们的分析所强调的问题,并为时间序列数据中的治疗反应制定有意义的共识定义。
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Exploring the Potential of Electronic Patient-Generated Health Data for Evaluating Treatment Response to Intramuscular Steroids in Rheumatoid Arthritis: Case Series.

Background: Mobile health devices are increasingly available, presenting exciting opportunities to remotely collect high-frequency, electronic patient-generated health data (ePGHD). This novel data type may provide detailed insights into disease activity outside usual clinical settings. Assessing treatment responses, which can be hampered by the infrequency of appointments and recall bias, is a promising, novel application of ePGHD. Drugs with short treatment effects, such as intramuscular steroid injections, illustrate the challenge, as patients are unlikely to accurately recall treatment responses at follow-ups, which often occur several months later. Retrospective assessment means that responses may be over- or underestimated. High-frequency ePGHD, such as daily, app-collected, patient-reported symptoms between clinic appointments, may bridge this gap. However, the potential of ePGHD remains untapped due to the absence of established definitions for treatment response using ePGHD or established methodological approaches for analyzing this type of data.

Objective: This study aims to explore the feasibility of evaluating treatment responses to intramuscular steroid therapy in a case series of patients with rheumatoid arthritis tracking daily symptoms using a smartphone app.

Methods: We report a case series of patients who collected ePGHD through the REmote Monitoring Of Rheumatoid Arthritis (REMORA) smartphone app for daily remote symptom tracking. Symptoms were tracked on a 0-10 scale. We described the patients' longitudinal pain scores before and after intramuscular steroid injections. The baseline pain score was calculated as the mean pain score in the 10 days prior to the injection. This was compared to the pain scores in the days following the injection. "Response" was defined as any improvement from the baseline score on the first day following the injection. The response end time was defined as the first date when the pain score exceeded the pre-steroid baseline.

Results: We included 6 patients who, between them, received 9 steroid injections. Average pre-injection pain scores ranged from 3.3 to 9.3. Using our definitions, 7 injections demonstrated a response. Among the responders, the duration of response ranged from 1 to 54 days (median 9, IQR 7-41), average pain score improvement ranged from 0.1 to 5.3 (median 3.3, IQR 2.2-4.0), and maximum pain score improvement ranged from 0.1 to 7.0 (median 4.3, IQR 1.7 to 6.0).

Conclusions: This case series demonstrates the feasibility of using ePGHD to evaluate treatment response and is an important exploratory step toward developing more robust methodological approaches for analysis of this novel data type. Issues highlighted by our analysis include the importance of accounting for one-off data points, varying response start times, and confounders such as other medications. Future analysis of ePGHD across a larger population is required to address issues highlighted by our analysis and to develop meaningful consensus definitions for treatment response in time-series data.

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来源期刊
JMIR Formative Research
JMIR Formative Research Medicine-Medicine (miscellaneous)
CiteScore
2.70
自引率
9.10%
发文量
579
审稿时长
12 weeks
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