A network analysis of pain intensity and pain-related measures of physical, emotional, and social functioning in US military service members with chronic pain.

IF 2.9 3区 医学 Q1 ANESTHESIOLOGY
Pain Medicine Pub Date : 2024-03-01 DOI:10.1093/pm/pnad148
Dahee Wi, Chang Park, Jeffrey C Ransom, Diane M Flynn, Ardith Z Doorenbos
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引用次数: 0

Abstract

Objective: The purpose of this study was to apply network analysis methodology to better understand the relationships between pain-related measures among people with chronic pain.

Methods: We analyzed data from a cross-sectional sample of 4614 active duty service members with chronic pain referred to 1 military interdisciplinary pain management center between 2014 and 2021. Using a combination of Patient-Reported Outcomes Measurement Information System measures and other pain-related measures, we applied the "EBICglasso" algorithm to create regularized partial correlation networks that would identify the most influential measures.

Results: Pain interference, depression, and anxiety had the highest strength in these networks. Pain catastrophizing played an important role in the association between pain and other pain-related health measures. Bootstrap analyses showed that the networks were very stable and the edge weights accurately estimated in 2 analyses (with and without pain catastrophizing).

Conclusions: Our findings offer new insights into the relationships between symptoms using network analysis. Important findings highlight the strength of association between pain interference, depression and anxiety, which suggests that if pain is to be treated depression and anxiety must also be addressed. What was of specific importance was the role that pain catastrophizing had in the relationship between pain and other symptoms suggesting that pain catastrophizing is a key symptom on which to focus for treatment of chronic pain.

慢性疼痛美军服役人员的疼痛强度和身体、情感和社会功能的疼痛相关测量的网络分析。
目的:本研究的目的是应用网络分析方法,更好地了解慢性疼痛患者疼痛相关指标之间的关系。方法:我们分析了2014年至2021年间一家军事跨学科疼痛管理中心4614名患有慢性疼痛的现役军人的横断面样本数据。使用患者报告结果测量信息系统测量和其他疼痛相关测量的组合,我们应用“EBICglasso”算法创建正则化偏相关网络,以确定最具影响力的测量。结果:疼痛干扰、抑郁、焦虑在这些网络中的强度最高。疼痛灾难在疼痛和其他与疼痛相关的健康措施之间的联系中发挥了重要作用。Bootstrap分析表明,网络非常稳定,在两次分析中准确估计了边缘权重(有和没有疼痛灾难)。结论:我们的发现为使用网络分析的症状之间的关系提供了新的见解。重要的是,研究结果强调了疼痛干扰、抑郁和焦虑之间的联系强度,这表明如果要治疗疼痛,抑郁和焦虑也必须得到解决。特别重要的是疼痛突变在疼痛和其他症状之间的关系中所起的作用,这表明疼痛突变是治疗慢性疼痛的关键症状。
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来源期刊
Pain Medicine
Pain Medicine 医学-医学:内科
CiteScore
6.50
自引率
3.20%
发文量
187
审稿时长
3 months
期刊介绍: Pain Medicine is a multi-disciplinary journal dedicated to pain clinicians, educators and researchers with an interest in pain from various medical specialties such as pain medicine, anaesthesiology, family practice, internal medicine, neurology, neurological surgery, orthopaedic spine surgery, psychiatry, and rehabilitation medicine as well as related health disciplines such as psychology, neuroscience, nursing, nurse practitioner, physical therapy, and integrative health.
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