Signatures of chronic pain in multiple sclerosis: a machine learning approach to investigate trigeminal neuralgia.

IF 5.5 1区 医学 Q1 ANESTHESIOLOGY PAIN® Pub Date : 2024-12-13 DOI:10.1097/j.pain.0000000000003497
Timur H Latypov, Abigail Wolfensohn, Rose Yakubov, Jerry Li, Patcharaporn Srisaikaew, Daniel Jörgens, Ashley Jones, Errol Colak, David Mikulis, Frank Rudzicz, Jiwon Oh, Mojgan Hodaie
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Abstract

Abstract: 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.

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多发性硬化症慢性疼痛的特征:研究三叉神经痛的机器学习方法。
摘要:慢性疼痛是多发性硬化症(MS)的一种普遍、致残且未被充分研究的特征,多发性硬化症是一种进行性脱髓鞘和神经退行性疾病。目前对多发性硬化症残疾的运动成分的关注,加上疼痛症状评估的困难,对多发性硬化症疼痛的评估和管理提出了挑战,强调需要新的方法来评估多发性硬化症慢性疼痛的神经特征。我们使用多发性硬化症相关三叉神经痛(MS- tn)作为模型条件,关注灰质结构作为慢性疼痛的预测因子来研究多发性硬化症慢性疼痛。使用机器学习(ML)分析MS (n = 75)和MS- tn (n = 77)患者的T1成像数据,以获得皮层和皮层下灰质水平的成像预测因子。ML分类器比较了MS和MS- tn患者的影像学指标,并以93.4%的个体平均检测准确率区分了这些疾病。默认模式、躯体运动、显著性和视觉网络(包括海马、初级体感觉皮层、枕皮质和丘脑亚核)中的结构被确定为三叉神经痛的重要影像学预测因子。我们的研究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方面的效用。
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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.
期刊最新文献
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