Identifying Weekly Trajectories of Pain Severity Using Daily Data From an mHealth Study: Cluster Analysis.

IF 5.4 2区 医学 Q1 HEALTH CARE SCIENCES & SERVICES JMIR mHealth and uHealth Pub Date : 2024-07-19 DOI:10.2196/48582
Claire L Little, David M Schultz, Thomas House, William G Dixon, John McBeth
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Abstract

Background: People with chronic pain experience variability in their trajectories of pain severity. Previous studies have explored pain trajectories by clustering sparse data; however, to understand daily pain variability, there is a need to identify clusters of weekly trajectories using daily pain data. Between-week variability can be explored by quantifying the week-to-week movement between these clusters. We propose that future work can use clusters of pain severity in a forecasting model for short-term (eg, daily fluctuations) and longer-term (eg, weekly patterns) variability. Specifically, future work can use clusters of weekly trajectories to predict between-cluster movement and within-cluster variability in pain severity.

Objective: This study aims to understand clusters of common weekly patterns as a first stage in developing a pain-forecasting model.

Methods: Data from a population-based mobile health study were used to compile weekly pain trajectories (n=21,919) that were then clustered using a k-medoids algorithm. Sensitivity analyses tested the impact of assumptions related to the ordinal and longitudinal structure of the data. The characteristics of people within clusters were examined, and a transition analysis was conducted to understand the movement of people between consecutive weekly clusters.

Results: Four clusters were identified representing trajectories of no or low pain (1714/21,919, 7.82%), mild pain (8246/21,919, 37.62%), moderate pain (8376/21,919, 38.21%), and severe pain (3583/21,919, 16.35%). Sensitivity analyses confirmed the 4-cluster solution, and the resulting clusters were similar to those in the main analysis, with at least 85% of the trajectories belonging to the same cluster as in the main analysis. Male participants spent longer (participant mean 7.9, 95% bootstrap CI 6%-9.9%) in the no or low pain cluster than female participants (participant mean 6.5, 95% bootstrap CI 5.7%-7.3%). Younger people (aged 17-24 y) spent longer (participant mean 28.3, 95% bootstrap CI 19.3%-38.5%) in the severe pain cluster than older people (aged 65-86 y; participant mean 9.8, 95% bootstrap CI 7.7%-12.3%). People with fibromyalgia (participant mean 31.5, 95% bootstrap CI 28.5%-34.4%) and neuropathic pain (participant mean 31.1, 95% bootstrap CI 27.3%-34.9%) spent longer in the severe pain cluster than those with other conditions, and people with rheumatoid arthritis spent longer (participant mean 7.8, 95% bootstrap CI 6.1%-9.6%) in the no or low pain cluster than those with other conditions. There were 12,267 pairs of consecutive weeks that contributed to the transition analysis. The empirical percentage remaining in the same cluster across consecutive weeks was 65.96% (8091/12,267). When movement between clusters occurred, the highest percentage of movement was to an adjacent cluster.

Conclusions: The clusters of pain severity identified in this study provide a parsimonious description of the weekly experiences of people with chronic pain. These clusters could be used for future study of between-cluster movement and within-cluster variability to develop accurate and stakeholder-informed pain-forecasting tools.

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利用移动医疗研究的每日数据识别疼痛严重程度的每周轨迹:聚类分析。
背景:慢性疼痛患者的疼痛严重程度的变化轨迹是多变的。以往的研究通过对稀疏数据进行聚类来探索疼痛轨迹;然而,要了解每日疼痛的变异性,需要利用每日疼痛数据确定每周轨迹的聚类。通过量化这些聚类之间的周间移动,可以探索周间变异性。我们建议,未来的工作可以在短期(如每日波动)和长期(如每周模式)变异性预测模型中使用疼痛严重程度集群。具体来说,未来的工作可以利用每周轨迹集群来预测疼痛严重程度的集群间移动和集群内变化:本研究旨在了解常见的每周模式群,作为开发疼痛预测模型的第一阶段:方法:利用一项基于人群的移动健康研究数据编制每周疼痛轨迹(n=21,919),然后使用 K-medoids 算法对这些轨迹进行聚类。敏感性分析测试了与数据的顺序和纵向结构相关的假设的影响。对聚类内人群的特征进行了研究,并进行了过渡分析,以了解人群在连续的周聚类之间的流动情况:结果:发现了四个群组,分别代表无痛或低痛(1714/211919,7.82%)、轻度疼痛(8246/211919,37.62%)、中度疼痛(8376/211919,38.21%)和重度疼痛(3583/211919,16.35%)的轨迹。敏感性分析确认了 4 个群组的解决方案,得出的群组与主要分析中的群组相似,至少有 85% 的轨迹与主要分析中的轨迹属于同一群组。男性参与者在无痛或低痛聚类中花费的时间(参与者平均值为 7.9,95% bootstrap CI 为 6%-9.9%)长于女性参与者(参与者平均值为 6.5,95% bootstrap CI 为 5.7%-7.3%)。年轻人(17-24 岁)在严重疼痛组中的时间(参与者平均 28.3,95% 自举系数 CI 19.3%-38.5%)长于老年人(65-86 岁;参与者平均 9.8,95% 自举系数 CI 7.7%-12.3%)。纤维肌痛(参与者平均值为 31.5,95% bootstrap CI 为 28.5%-34.4%)和神经病理性疼痛(参与者平均值为 31.1,95% bootstrap CI 为 27.3%-34.9%)患者在重度疼痛群组中的时间比其他疾病患者长,类风湿性关节炎患者在无痛或低度疼痛群组中的时间(参与者平均值为 7.8,95% bootstrap CI 为 6.1%-9.6%)比其他疾病患者长。共有 12,267 对连续周数参与了过渡分析。在连续几周内保持在同一群组的经验百分比为 65.96%(8091/12267)。当组群之间发生移动时,移动到相邻组群的比例最高:本研究确定的疼痛严重程度群组对慢性疼痛患者每周的经历进行了简洁的描述。这些群组可用于今后对群组间移动和群组内变异性的研究,从而开发出准确的、由利益相关者提供信息的疼痛预测工具。
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来源期刊
JMIR mHealth and uHealth
JMIR mHealth and uHealth Medicine-Health Informatics
CiteScore
12.60
自引率
4.00%
发文量
159
审稿时长
10 weeks
期刊介绍: JMIR mHealth and uHealth (JMU, ISSN 2291-5222) is a spin-off journal of JMIR, the leading eHealth journal (Impact Factor 2016: 5.175). JMIR mHealth and uHealth is indexed in PubMed, PubMed Central, and Science Citation Index Expanded (SCIE), and in June 2017 received a stunning inaugural Impact Factor of 4.636. The journal focusses on health and biomedical applications in mobile and tablet computing, pervasive and ubiquitous computing, wearable computing and domotics. JMIR mHealth and uHealth publishes since 2013 and was the first mhealth journal in Pubmed. It publishes even faster and has a broader scope with including papers which are more technical or more formative/developmental than what would be published in the Journal of Medical Internet Research.
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