Hsu Ting-Chen Chloe, Whelan Pauline, Armitage Christopher J, McBeth John
Centre for Musculoskeletal Research, University of Manchester, Manchester, UK.
Centre for Health Informatics, Division of Informatics, Imaging & Data Sciences, University of Manchester, Manchester, UK.
Digit Health. 2025 May 14;11:20552076251333497. doi: 10.1177/20552076251333497. eCollection 2025 Jan-Dec.
To conduct a preliminary clustering analysis using the UK Biobank to (1) identify distinct chronic pain clusters based on age, sex, and number of pain sites; (2) assess the associations between chronic pain clusters and health-related outcomes; and (3) outline future directions for developing chronic pain personas to inform targeted digital health interventions.
Participants were selected from a 2019 chronic pain survey. The domains included demographics, pain, daily functioning, and emotional health. The clustering analysis employed the k-prototype algorithm. Cluster characteristics were summarised and quantified using multinomial logistic regression. Preliminary data personas were described.
89,853 people with chronic pain were analysed (60.4% female, mean age 66.5 years). Five clusters were identified: Fibromyalgia-like pain (FP, 11.2%), multisite pain (MP, 17.9%), younger with regional pain (21.9%), middle age with regional pain (MRP, 25.5%), and elderly with regional pain (ERP, 23.5%). FP was associated with more severe health-related outcomes, characterised by greater depression, fatigue, and difficulties with daily activities and social relationships. Sleep, mobility, and usual activities were commonly affected at mild and moderate levels across all clusters. Fatigue and depression varied, with FP and MP experiencing greater impacts. ERP and MRP were associated with a lower likelihood of adverse health-related outcomes.
All chronic pain clusters identified from the UK Biobank showed common challenges in sleep, mobility and daily functioning; the impacts of fatigue and depression varied between clusters. The next step involves engaging key stakeholders to create, refine, and validate these personas to inform the development of targeted digital health interventions.
利用英国生物银行进行初步聚类分析,以(1)基于年龄、性别和疼痛部位数量识别不同的慢性疼痛集群;(2)评估慢性疼痛集群与健康相关结局之间的关联;(3)概述开发慢性疼痛人物角色以指导针对性数字健康干预措施的未来方向。
参与者选自2019年慢性疼痛调查。调查领域包括人口统计学、疼痛、日常功能和情绪健康。聚类分析采用k-原型算法。使用多项逻辑回归对集群特征进行总结和量化。描述了初步的数据人物角色。
对89853名慢性疼痛患者进行了分析(女性占60.4%,平均年龄66.5岁)。识别出五个集群:纤维肌痛样疼痛(FP,11.2%)、多部位疼痛(MP,17.9%)、年轻区域疼痛患者(21.9%)、中年区域疼痛患者(MRP,25.5%)和老年区域疼痛患者(ERP,23.5%)。FP与更严重的健康相关结局相关,其特征为抑郁、疲劳程度更高,以及在日常活动和社会关系方面存在困难。所有集群中,睡眠、行动能力和日常活动在轻度和中度水平上普遍受到影响。疲劳和抑郁程度各不相同,FP和MP受影响更大。ERP和MRP与不良健康相关结局的可能性较低相关。
从英国生物银行识别出的所有慢性疼痛集群在睡眠、行动能力和日常功能方面都面临共同挑战;疲劳和抑郁的影响在不同集群之间有所不同。下一步是让关键利益相关者参与创建、完善和验证这些人物角色,以为针对性数字健康干预措施的开发提供信息。