Latypov Timur H, Wolfensohn Abigail, Yakubov Rose, Li Jerry, Srisaikaew Patcharaporn, Jörgens Daniel, Jones Ashley, Colak Errol, Mikulis David, Rudzicz Frank, Oh Jiwon, Hodaie Mojgan
Division of Brain, Imaging and Behaviour, Krembil Research Institute University Health Network, Toronto, ON, Canada.
Institute of Medical Science, Temerty Faculty of Medicine, University of Toronto, Toronto, ON, Canada.
Pain. 2024 Dec 13;166(7):1622-1630. doi: 10.1097/j.pain.0000000000003497.
Chronic pain is a pervasive, disabling, and understudied feature of multiple sclerosis (MS), a progressive demyelinating and neurodegenerative disease. Current focus on motor components of MS disability combined with difficulties assessing pain symptoms present a challenge for the evaluation and management of pain in MS, highlighting the need for novel methods of assessment of neural signatures of chronic pain in MS. We investigate chronic pain in MS using MS-related trigeminal neuralgia (MS-TN) as a model condition focusing on gray matter structures as predictors of chronic pain. T1 imaging data from people with MS (n = 75) and MS-TN (n = 77) using machine learning (ML) was analyzed to derive imaging predictors at the level of cortex and subcortical gray matter. The ML classifier compared imaging metrics of patients with MS and MS-TN and distinguished between these conditions with 93.4% individual average testing accuracy. Structures within default-mode, somatomotor, salience, and visual networks (including hippocampus, primary somatosensory cortex, occipital cortex, and thalamic subnuclei) were identified as significant imaging predictors of trigeminal neuralgia pain. Our results emphasize the multifaceted nature of chronic pain and demonstrate the utility of imaging and ML in assessing and understanding MS-TN with greater objectivity.
慢性疼痛是多发性硬化症(MS)普遍存在、导致功能障碍且研究不足的一个特征,MS是一种进行性脱髓鞘和神经退行性疾病。目前对MS残疾运动成分的关注,加上评估疼痛症状的困难,给MS疼痛的评估和管理带来了挑战,凸显了需要新的方法来评估MS慢性疼痛的神经特征。我们以与MS相关的三叉神经痛(MS-TN)作为模型情况来研究MS中的慢性疼痛,将灰质结构作为慢性疼痛的预测指标。使用机器学习(ML)分析了来自MS患者(n = 75)和MS-TN患者(n = 77)的T1成像数据,以得出皮质和皮质下灰质水平的成像预测指标。ML分类器比较了MS患者和MS-TN患者的成像指标,并以93.4%的个体平均测试准确率区分了这些情况。默认模式、躯体运动、突显和视觉网络内的结构(包括海马体、初级躯体感觉皮质、枕叶皮质和丘脑亚核)被确定为三叉神经痛疼痛的重要成像预测指标。我们的结果强调了慢性疼痛的多面性,并证明了成像和ML在更客观地评估和理解MS-TN方面的实用性。