Department of Neural and Pain Sciences, School of Dentistry, and Center to Advance Chronic Pain Research, University of Maryland, Baltimore, Maryland 21201.
Program in Neuroscience, University of Maryland School of Medicine, Baltimore, Maryland 21201.
J Neurosci. 2022 Aug 3;42(31):6156-6166. doi: 10.1523/JNEUROSCI.1796-21.2022. Epub 2022 Jun 29.
Migraine is a heterogeneous disorder with variable symptoms and responsiveness to therapy. Because of previous analytic shortcomings, variance in migraine symptoms has been inconsistently related to brain function. In the current analysis, we used data from two sites ( = 143, male and female humans), and performed canonical correlation analysis, relating resting-state functional connectivity (RSFC) with a broad range of migraine symptoms, ranging from headache characteristics to sleep abnormalities. This identified three dimensions of covariance between symptoms and RSFC. The first dimension related to headache intensity, headache frequency, pain catastrophizing, affect, sleep disturbances, and somatic abnormalities, and was associated with frontoparietal and dorsal attention network connectivity, both of which are major cognitive networks. Additionally, RSFC scores from this dimension, both the baseline value and the change from baseline to postintervention, were associated with responsiveness to mind-body therapy. The second dimension was related to an inverse association between pain and anxiety, and to default mode network connectivity. The final dimension was related to pain catastrophizing, and salience, sensorimotor, and default mode network connectivity. In addition to performing canonical correlation analysis, we evaluated the current clustering of migraine patients into episodic and chronic subtypes, and found no evidence to support this clustering. However, when using RSFC scores from the three significant dimensions, we identified a novel clustering of migraine patients into four biotypes with unique functional connectivity patterns. These findings provide new insight into individual variability in migraine, and could serve as the foundation for novel therapies that take advantage of migraine heterogeneity. Using a large multisite dataset of migraine patients, we identified three dimensions of multivariate association between symptoms and functional connectivity. This analysis revealed neural networks that relate to all measured symptoms, but also to specific symptom ensembles, such as patient propensity to catastrophize painful events. Using these three dimensions, we found four biotypes of migraine informed by clinical and neural variation together. Such findings pave the way for precision medicine therapy for migraine.
偏头痛是一种具有不同症状和治疗反应的异质性疾病。由于之前的分析缺陷,偏头痛症状的变化与大脑功能之间的关系不一致。在当前的分析中,我们使用了两个地点的数据(n=143,男性和女性人类),并进行了典型相关分析,将静息态功能连接(RSFC)与广泛的偏头痛症状相关联,从头痛特征到睡眠异常。这确定了症状和 RSFC 之间三个协方差维度。第一个维度与头痛强度、头痛频率、疼痛灾难化、情感、睡眠障碍和躯体异常有关,与额顶和背侧注意网络连接有关,这两个网络都是主要的认知网络。此外,来自该维度的 RSFC 分数,包括基线值和从基线到干预后的变化,与身心治疗的反应性有关。第二个维度与疼痛和焦虑之间的反比关系以及默认模式网络连接有关。最后一个维度与疼痛灾难化以及突显、感觉运动和默认模式网络连接有关。除了进行典型相关分析外,我们还评估了当前将偏头痛患者聚类为发作性和慢性亚型的情况,没有证据支持这种聚类。然而,当使用三个显著维度的 RSFC 分数时,我们发现了一种新的偏头痛患者聚类方法,将其分为具有独特功能连接模式的四种生物型。这些发现为偏头痛的个体变异性提供了新的见解,并为利用偏头痛异质性的新型疗法奠定了基础。使用偏头痛患者的大型多站点数据集,我们确定了症状和功能连接之间存在三个维度的多元关联。这项分析揭示了与所有测量症状相关的神经网络,但也与特定的症状组合相关,例如患者对疼痛事件的灾难化倾向。使用这三个维度,我们发现了四种偏头痛生物型,它们由临床和神经变异性共同决定。这些发现为偏头痛的精准医学治疗铺平了道路。