Division of Neurological Pain Research and Therapy, Department of Neurology, University Hospital Schleswig-Holstein, Campus Kiel, Kiel, Germany.
Translational Pain Biomarker, Center for Neuroplasticity and Pain & Sport Sciences - Performance and Technology, Department of Health Science and Technology, School of Medicine, Aalborg University, Aalborg, Denmark.
Pain. 2022 Feb 1;163(2):308-318. doi: 10.1097/j.pain.0000000000002335.
Different pathophysiological mechanisms contribute to the pain development in osteoarthritis (OA). Sensitization mechanisms play an important role in the amplification and chronification of pain and may predict the therapeutic outcome. Stratification of patients according to their pain mechanisms could help to target pain therapy. This study aimed at developing an easy-to-use, bedside tool-kit to assess sensitization in patients with chronic painful knee OA or chronic pain after total knee replacement (TKR). In total, 100 patients were examined at the most affected knee and extrasegmentally by the use of 4 standardized quantitative sensory testing parameters reflecting sensitization (mechanical pain threshold, mechanical pain sensitivity, dynamic mechanical allodynia, and pressure pain threshold), a bedside testing battery of equivalent parameters including also temporal summation and conditioned pain modulation, and pain questionnaires. Machine learning techniques were applied to identify an appropriate set of bedside screening tools. Approximately half of the patients showed signs of sensitization (46%). Based on machine learning techniques, a composition of tests consisting of 3 modalities was developed. The most adequate bedside tools to detect sensitization were pressure pain sensitivity (pain intensity at 4 mL pressure using a 10-mL blunted syringe), mechanical pinprick pain sensitivity (pain intensity of a 0.7 mm nylon filament) over the most affected knee, and extrasegmental pressure pain sensitivity (pain threshold). This pilot study presents a first attempt to develop an easy-to-use bedside test to probe sensitization in patients with chronic OA knee pain or chronic pain after TKR. This tool may be used to optimize individualized, mechanism-based pain therapy.
不同的病理生理机制导致骨关节炎(OA)疼痛的发展。敏化机制在疼痛的放大和慢性化中起重要作用,并可能预测治疗效果。根据患者的疼痛机制进行分层,可以帮助针对疼痛治疗。本研究旨在开发一种易于使用的床边工具包,以评估慢性疼痛性膝关节 OA 或全膝关节置换术后(TKR)慢性疼痛患者的敏化情况。总共对 100 例患者进行了检查,最受影响的膝关节和节段外使用 4 种标准化定量感觉测试参数来反映敏化(机械痛阈、机械痛敏、动态机械性痛觉过敏和压痛阈),床边测试电池还包括时间总和和条件性疼痛调制以及疼痛问卷。应用机器学习技术来识别适当的床边筛选工具集。大约一半的患者表现出敏化迹象(46%)。基于机器学习技术,开发了一种由 3 种模式组成的测试组合。最适合检测敏化的床边工具是压痛敏化(使用 10 毫升钝注射器施加 4 毫升压力时的疼痛强度)、最受影响的膝关节上的机械刺痛敏化(0.7 毫米尼龙丝的疼痛强度)和节段外压痛敏化(疼痛阈值)。这项初步研究首次尝试开发一种易于使用的床边工具来探测慢性 OA 膝关节疼痛或 TKR 后慢性疼痛患者的敏化情况。该工具可用于优化个体化、基于机制的疼痛治疗。