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Low back pain patient subgroups in primary care: pain characteristics, psychosocial determinants, and health care utilization.初级保健中的腰痛患者亚组:疼痛特征、社会心理决定因素及医疗保健利用情况
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使用围绕中心点划分的聚类分析(PAM)来检查基于治疗的分类系统亚组中腰痛患者的异质性。

The Use of Cluster Analysis by Partitioning around Medoids (PAM) to Examine the Heterogeneity of Patients with Low Back Pain within Subgroups of the Treatment Based Classification System.

作者信息

Shokri Esmaeil, Razeghi Mohsen, Raeisi Shahraki Hadi, Jalli Reza, Motealleh Alireza

机构信息

Department of Physiotherapy, School of Rehabilitation Sciences, Shiraz University of Medical Sciences, Shiraz, Iran.

Rehabilitation Sciences Research Center, Shiraz University of Medical Sciences, Shiraz, Iran.

出版信息

J Biomed Phys Eng. 2023 Feb 1;13(1):89-98. doi: 10.31661/jbpe.v0i0.2001-1047. eCollection 2023 Feb.

DOI:10.31661/jbpe.v0i0.2001-1047
PMID:36818010
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC9923237/
Abstract

BACKGROUND

Current evidence in low back pain (LBP) focuses on population averages and traditional multivariate analyses to find the significant difference between variables. Such a focus actively obscured the heterogeneity and increased errors. Cluster analysis (CA) addresses the mentioned shortcomings by calculating the degree of similarity among the relevant variables of the different objects.

OBJECTIVE

This study aims to evaluate the agreement between the treatment-based classification (TBC) system and the equivalent 3 cluster typology created by partitioning around medoids (PAM) analysis.

MATERIAL AND METHODS

In this cross-sectional study, a convenient sample of 90 patients with low back pain (50 males and 40 females) aged 20 to 65 years was included in the study. The patients were selected based on the 21 criteria of 2007 TBC system. An equivalent 3 cluster typology (C3) was applied using PAM method. Cohen's Kappa was run to determine if there was agreement between the TBC system and the equivalent C3 typology.

RESULTS

PAM analysis revealed the evidence of clustering for a C3 cluster typology with average Silhouette widths of 0.12. Cohen's Kappa revealed fair agreement between the TBC system and C3 cluster typology (Percent of agreement 61%, Kappa=0.36, <0.001). Selected criteria by PAM analysis were different with original TBC system.

CONCLUSION

Higher probability of chance agreement was observed between two classification methods. Significant inhomogeneity was observed in subgroups of the 2007 TBC system.

摘要

背景

目前关于腰痛(LBP)的证据主要集中在总体平均值和传统多变量分析上,以找出变量之间的显著差异。这种关注点实际上掩盖了异质性并增加了误差。聚类分析(CA)通过计算不同对象相关变量之间的相似程度来解决上述缺点。

目的

本研究旨在评估基于治疗的分类(TBC)系统与通过围绕中心点划分(PAM)分析创建的等效三聚类类型之间的一致性。

材料与方法

在这项横断面研究中,纳入了90例年龄在20至65岁之间的腰痛患者(50例男性和40例女性)的便利样本。患者根据2007年TBC系统的21条标准进行选择。使用PAM方法应用等效的三聚类类型(C3)。运行Cohen's Kappa以确定TBC系统与等效C3类型之间是否存在一致性。

结果

PAM分析显示了C3聚类类型的聚类证据,平均轮廓宽度为0.12。Cohen's Kappa显示TBC系统与C3聚类类型之间存在中等程度的一致性(一致性百分比为61%,Kappa = 0.36,P < 0.001)。PAM分析选择的标准与原始TBC系统不同。

结论

在两种分类方法之间观察到较高的偶然一致性概率。在2007年TBC系统的亚组中观察到显著的不均匀性。