Institute of Neurological Diseases, North Sichuan Medical College, Nanchong, 637000, China.
Department of Neurology, Affiliated Hospital of North Sichuan Medical College, Nanchong, 637000, China.
BMC Neurol. 2023 Apr 4;23(1):142. doi: 10.1186/s12883-023-03183-w.
Migraine is a complex disorder characterized by debilitating headaches. Despite its prevalence, its pathophysiology remains unknown, with subsequent gaps in diagnosis and treatment. We combined machine learning with connectivity analysis and applied a whole-brain network approach to identify potential targets for migraine diagnosis and treatment.
Baseline anatomical T1 magnetic resonance imaging (MRI), resting-state functional MRI(rfMRI), and diffusion weighted scans were obtained from 31 patients with migraine, and 17 controls. A recently developed machine learning technique, Hollow Tree Super (HoTS) was used to classify subjects into diagnostic groups based on functional connectivity (FC) and derive networks and parcels contributing to the model. PageRank centrality analysis was also performed on the structural connectome to identify changes in hubness.
Our model attained an area under the receiver operating characteristic curve (AUC-ROC) of 0.68, which rose to 0.86 following hyperparameter tuning. FC of the language network was most predictive of the model's classification, though patients with migraine also demonstrated differences in the accessory language, visual and medial temporal regions. Several analogous regions in the right hemisphere demonstrated changes in PageRank centrality, suggesting possible compensation.
Although our small sample size demands caution, our preliminary findings demonstrate the utility of our method in providing a network-based perspective to diagnosis and treatment of migraine.
偏头痛是一种以使人虚弱的头痛为特征的复杂疾病。尽管其发病率很高,但它的病理生理学仍然未知,导致在诊断和治疗方面存在差距。我们将机器学习与连通性分析相结合,并应用全脑网络方法来确定偏头痛诊断和治疗的潜在靶点。
从 31 名偏头痛患者和 17 名对照者中获得了基线解剖 T1 磁共振成像 (MRI)、静息态功能 MRI(rfMRI)和弥散加权扫描。我们使用一种新开发的机器学习技术,空心树超级 (HoTS),根据功能连通性 (FC)对受试者进行分类,并得出有助于模型的网络和区室。还对结构连接组进行了 PageRank 中心性分析,以识别中枢性变化。
我们的模型的接收者操作特征曲线下面积 (AUC-ROC)为 0.68,经过超参数调整后上升到 0.86。语言网络的 FC 最能预测模型的分类,尽管偏头痛患者在辅助语言、视觉和内侧颞叶区域也表现出差异。右半球的几个类似区域的 PageRank 中心性发生了变化,表明可能存在代偿。
尽管我们的样本量较小需要谨慎,但我们的初步发现表明,我们的方法在为偏头痛的诊断和治疗提供基于网络的视角方面具有实用性。