What is associated with painful polyneuropathy? A cross-sectional analysis of symptoms and signs in patients with painful and painless polyneuropathy.

IF 5.9 1区 医学 Q1 ANESTHESIOLOGY
PAIN® Pub Date : 2024-12-01 Epub Date: 2024-07-03 DOI:10.1097/j.pain.0000000000003310
Janne Gierthmühlen, Nadine Attal, Georgios Baskozos, Kristine Bennedsgaard, David L Bennett, Didier Bouhassira, Geert Crombez, Nanna B Finnerup, Yelena Granovsky, Troels Staehelin Jensen, Jishi John, Lieven Nils Kennes, Helen Laycock, Mathilde M V Pascal, Andrew S C Rice, Leah Shafran-Topaz, Andreas C Themistocleous, David Yarnitsky, Ralf Baron
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引用次数: 0

Abstract

Abstract: It is still unclear how and why some patients develop painful and others painless polyneuropathy. The aim of this study was to identify multiple factors associated with painful polyneuropathies (NeuP). A total of 1181 patients of the multicenter DOLORISK database with painful (probable or definite NeuP) or painless (unlikely NeuP) probable or confirmed neuropathy were investigated clinically, with questionnaires and quantitative sensory testing. Multivariate logistic regression including all variables (demographics, medical history, psychological symptoms, personality items, pain-related worrying, life-style factors, as well as results from clinical examination and quantitative sensory testing) and machine learning was used for the identification of predictors and final risk prediction of painful neuropathy. Multivariate logistic regression demonstrated that severity and idiopathic etiology of neuropathy, presence of chronic pain in family, Patient-Reported Outcomes Measurement Information System Fatigue and Depression T-Score, as well as Pain Catastrophizing Scale total score are the most important features associated with the presence of pain in neuropathy. Machine learning (random forest) identified the same variables. Multivariate logistic regression archived an accuracy above 78%, random forest of 76%; thus, almost 4 out of 5 subjects can be classified correctly. This multicenter analysis shows that pain-related worrying, emotional well-being, and clinical phenotype are factors associated with painful (vs painless) neuropathy. Results may help in the future to identify patients at risk of developing painful neuropathy and identify consequences of pain in longitudinal studies.

疼痛性多神经病与什么有关?对疼痛性和无痛性多发性神经病患者症状和体征的横断面分析。
摘要:目前仍不清楚一些患者会出现疼痛性多发性神经病,而另一些患者则不会出现疼痛性多发性神经病的原因。本研究旨在确定与疼痛性多发性神经病(NeuP)相关的多种因素。在多中心 DOLORISK 数据库中,共对 1181 名可能或确诊患有疼痛性(可能或确诊为神经性多发性神经病)或无痛性(不可能为神经性多发性神经病)神经病的患者进行了临床调查、问卷调查和定量感觉测试。多变量逻辑回归包括所有变量(人口统计学、病史、心理症状、个性项目、与疼痛相关的担忧、生活方式因素以及临床检查和定量感觉测试结果)和机器学习,用于识别预测因素和疼痛性神经病变的最终风险预测。多变量逻辑回归结果表明,神经病变的严重程度和特发性病因、家族中是否存在慢性疼痛患者、患者报告结果测量信息系统疲劳和抑郁T-得分以及疼痛灾难化量表总分是与神经病变疼痛相关的最重要特征。机器学习(随机森林)确定了相同的变量。多变量逻辑回归的准确率高于 78%,随机森林的准确率为 76%;因此,几乎每 5 个受试者中就有 4 个能被正确分类。这项多中心分析表明,与疼痛相关的担忧、情绪健康和临床表型是与疼痛性(与无痛性)神经病变相关的因素。研究结果可能有助于在未来的纵向研究中识别有可能发展成疼痛性神经病变的患者,并确定疼痛的后果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
PAIN®
PAIN® 医学-临床神经学
CiteScore
12.50
自引率
8.10%
发文量
242
审稿时长
9 months
期刊介绍: PAIN® is the official publication of the International Association for the Study of Pain and publishes original research on the nature,mechanisms and treatment of pain.PAIN® provides a forum for the dissemination of research in the basic and clinical sciences of multidisciplinary interest.
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