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基于数据驱动识别不同的疼痛绘图模式及其与临床和心理因素的关联:对21123例脊柱疼痛患者的研究

Data-driven identification of distinct pain drawing patterns and their association with clinical and psychological factors: a study of 21,123 patients with spinal pain.

作者信息

Chang Natalie Hong Siu, Nim Casper, Harsted Steen, Young James J, O'Neill Søren

机构信息

Medical Spinal Research Unit, Spine Centre of Southern Denmark, University Hospital of Southern Denmark, Middelfart, Denmark.

Department of Regional Health Research, University of Southern Denmark, Odense, Denmark.

出版信息

Pain. 2024 Oct 1;165(10):2291-2304. doi: 10.1097/j.pain.0000000000003261. Epub 2024 May 15.

Abstract

The variability in pain drawing styles and analysis methods has raised concerns about the reliability of pain drawings as a screening tool for nonpain symptoms. In this study, a data-driven approach to pain drawing analysis has been used to enhance the reliability. The aim was to identify distinct clusters of pain patterns by using latent class analysis (LCA) on 46 predefined anatomical areas of a freehand digital pain drawing. Clusters were described in the clinical domains of activity limitation, pain intensity, and psychological factors. A total of 21,123 individuals were included from 2 subgroups by primary pain complaint (low back pain (LBP) [n = 15,465]) or midback/neck pain (MBPNP) [n = 5658]). Five clusters were identified for the LBP subgroup: LBP and radiating pain (19.9%), radiating pain (25.8%), local LBP (24.8%), LBP and whole leg pain (18.7%), and widespread pain (10.8%). Four clusters were identified for the MBPNP subgroup: MBPNP bilateral posterior (19.9%), MBPNP unilateral posterior + anterior (23.6%), MBPNP unilateral posterior (45.4%), and widespread pain (11.1%). The clusters derived by LCA corresponded to common, specific, and recognizable clinical presentations. Statistically significant differences were found between these clusters in every self-reported health domain. Similarly, for both LBP and MBPNP, pain drawings involving more extensive pain areas were associated with higher activity limitation, more intense pain, and more psychological distress. This study presents a versatile data-driven approach for analyzing pain drawings to assist in managing spinal pain.

摘要

疼痛绘图风格和分析方法的变异性引发了人们对疼痛绘图作为非疼痛症状筛查工具可靠性的担忧。在本研究中,采用了一种数据驱动的疼痛绘图分析方法来提高可靠性。目的是通过对徒手数字疼痛绘图的46个预定义解剖区域进行潜在类别分析(LCA),识别不同的疼痛模式簇。在活动受限、疼痛强度和心理因素等临床领域对这些簇进行了描述。根据主要疼痛主诉,从2个亚组中纳入了总共21123名个体:腰痛(LBP)[n = 15465]或中背部/颈部疼痛(MBPNP)[n = 5658]。为LBP亚组识别出5个簇:LBP和放射痛(19.9%)、放射痛(25.8%)、局部LBP(24.8%)、LBP和整条腿痛(18.7%)以及广泛性疼痛(10.8%)。为MBPNP亚组识别出4个簇:双侧MBPNP后部(19.9%)、单侧MBPNP后部+前部(23.6%)、单侧MBPNP后部(45.4%)以及广泛性疼痛(11.1%)。通过LCA得出的簇与常见、特定且可识别的临床表现相对应。在每个自我报告的健康领域中,这些簇之间均发现了具有统计学意义的差异。同样,对于LBP和MBPNP,涉及更广泛疼痛区域的疼痛绘图与更高的活动受限、更强烈的疼痛以及更多的心理困扰相关。本研究提出了一种通用的数据驱动方法来分析疼痛绘图,以协助管理脊柱疼痛。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ef95/11404331/b03547350483/jop-165-2291-g001.jpg

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