Gilam Gadi, Cramer Eric M, Webber Kenneth A, Ziadni Maisa S, Kao Ming-Chih, Mackey Sean C
Division of Pain Medicine, Stanford University School of Medicine, Palo Alto, CA, USA.
Sci Adv. 2021 Sep 10;7(37):eabj0320. doi: 10.1126/sciadv.abj0320. Epub 2021 Sep 8.
Chronic pain conditions present in various forms, yet all feature symptomatic impairments in physical, mental, and social domains. Rather than assessing symptoms as manifestations of illness, we used them to develop a chronic pain classification system. A cohort of real-world treatment-seeking patients completed a multidimensional patient-reported registry as part of a routine initial evaluation in a multidisciplinary academic pain clinic. We applied hierarchical clustering on a training subset of 11,448 patients using nine pain-agnostic symptoms. We then validated a three-cluster solution reflecting a graded scale of severity across all symptoms and eight independent pain-specific measures in additional subsets of 3817 and 1273 patients. Negative affect–related factors were key determinants of cluster assignment. The smallest subset included follow-up assessments that were predicted by baseline cluster assignment. Findings provide a cost-effective classification system that promises to improve clinical care and alleviate suffering by providing putative markers for personalized diagnosis and prognosis.
慢性疼痛病症呈现出多种形式,但所有这些病症在身体、心理和社会领域都有症状性损伤。我们并非将症状评估为疾病的表现,而是利用它们来开发一种慢性疼痛分类系统。一组寻求治疗的真实世界患者完成了一份多维患者报告注册表,作为多学科学术疼痛诊所常规初始评估的一部分。我们使用9种与疼痛无关的症状,对11448名患者的训练子集进行分层聚类。然后,我们在另外3817名和1273名患者的子集中验证了一种三聚类解决方案,该方案反映了所有症状的严重程度分级量表以及8项独立的疼痛特异性测量指标。与消极情绪相关的因素是聚类分配的关键决定因素。最小的子集包括由基线聚类分配预测的随访评估。研究结果提供了一种具有成本效益的分类系统,有望通过提供个性化诊断和预后的推定标志物来改善临床护理并减轻痛苦。