非疼痛因素对有轻度脑外伤症状的美国军人和退伍军人疼痛干扰的影响。

IF 3.9 2区 医学 Q1 CLINICAL NEUROLOGY
Eamonn Kennedy, Ajay Manhapra, Shannon R Miles, Sarah Martindale, Jared Rowland, Helal Mobasher, Madeleine Myers, Samin Panahi, William C Walker, Mary Jo Pugh
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引用次数: 0

摘要

美国军人和退伍军人(SM/V)的脑外伤(TBI)、慢性疼痛和其他非疼痛症状的发生率较高。然而,非疼痛因素对美国军人和退伍军人(SM/V)疼痛干扰水平的作用仍不清楚,尤其是那些有创伤性脑损伤病史的人。本研究的主要目的是确定在疼痛强度相当的情况下,在参与正在进行的 LIMBIC-CENC 全国多中心前瞻性纵向观察研究的美国 SM/V 中,区分疼痛干扰程度高/低的因素。该研究使用可解释的机器学习来识别等效疼痛强度条件下疼痛干扰的关键预测因素。最终样本包括 1577 名 SM/V,他们主要为男性(87%),83.6% 有轻度 TBI 病史,16.4% 为 TBI 阴性对照。样本根据疼痛干扰程度进行分类(低度:19.9%;中度:52.5%;高度:27.6%)。疼痛强度评分和疼痛干扰评分均随轻度创伤性脑损伤次数的增加而增加(P0.05)。在有轻度创伤性脑损伤病史的 SM/V 中,非疼痛因素与功能限制和残疾经历有关。疼痛对功能的影响可能是通过其他多种因素介导的。疼痛是一种多层面的体验,针对合并症和建立促进康复的支持的整体治疗方法可能会使其受益最大。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Impact of Non-Pain Factors on Pain Interference Among U.S. Service Members and Veterans with Symptoms of Mild Traumatic Brain Injury.

U.S. Service members and Veterans (SM/V) experience elevated rates of traumatic brain injury (TBI), chronic pain, and other non-pain symptoms. However, the role of non-pain factors on pain interference levels remains unclear among SM/Vs, particularly those with a history of TBI. The primary objective of this study was to identify factors that differentiate high/low pain interference, given equivalent pain intensity among U.S. SM/V participating in the ongoing Long-term Impact of Military-relevant Brain Injury Consortium-Chronic Effects of Neurotrauma Consortium (LIMBIC-CENC) national multi-center prospective longitudinal observational study. An explainable machine learning was used to identify key predictors of pain interference conditioned on equivalent pain intensity. The final sample consisted of n = 1,577 SM/Vs who were predominantly male (87%), and 83.6% had a history of mild TBI(s) (mTBI), while 16.4% were TBI negative controls. The sample was categorized according to pain interference level (Low: 19.9%, Moderate: 52.5%, and High: 27.6%). Both pain intensity scores and pain interference scores increased with the number of mTBIs (p < 0.001), and there was evidence of a dose response between the number of injuries and pain scores. Machine learning models identified fatigue and anxiety as the most important predictors of pain interference, whereas emotional control was protective. Partial dependence plots identified that marginal effects of fatigue and anxiety were associated with pain interference (p < 0.001), but the marginal effect of mTBI was not significant in models considering all variables (p > 0.05). Non-pain factors are associated with functional limitations and disability experience among SM/V with an mTBI history. The functional effects of pain may be mediated through multiple other factors. Pain is a multi-dimensional experience that may benefit most from holistic treatment approaches that target comorbidities and build supports that promote recovery.

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来源期刊
Journal of neurotrauma
Journal of neurotrauma 医学-临床神经学
CiteScore
9.20
自引率
7.10%
发文量
233
审稿时长
3 months
期刊介绍: Journal of Neurotrauma is the flagship, peer-reviewed publication for reporting on the latest advances in both the clinical and laboratory investigation of traumatic brain and spinal cord injury. The Journal focuses on the basic pathobiology of injury to the central nervous system, while considering preclinical and clinical trials targeted at improving both the early management and long-term care and recovery of traumatically injured patients. This is the essential journal publishing cutting-edge basic and translational research in traumatically injured human and animal studies, with emphasis on neurodegenerative disease research linked to CNS trauma.
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