Resting-state magnetoencephalographic oscillatory connectivity to identify patients with chronic migraine using machine learning.

Fu-Jung Hsiao, Wei-Ta Chen, Li-Ling Hope Pan, Hung-Yu Liu, Yen-Feng Wang, Shih-Pin Chen, Kuan-Lin Lai, Gianluca Coppola, Shuu-Jiun Wang
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引用次数: 4

Abstract

To identify and validate the neural signatures of resting-state oscillatory connectivity for chronic migraine (CM), we used machine learning techniques to classify patients with CM from healthy controls (HC) and patients with other pain disorders. The cross-sectional study obtained resting-state magnetoencephalographic data from 240 participants (70 HC, 100 CM, 35 episodic migraine [EM], and 35 fibromyalgia [FM]). Source-based oscillatory connectivity of relevant cortical regions was calculated to determine intrinsic connectivity at 1-40 Hz. A classification model that employed a support vector machine was developed using the magnetoencephalographic data to assess the reliability and generalizability of CM identification. In the findings, the discriminative features that differentiate CM from HC were principally observed from the functional interactions between salience, sensorimotor, and part of the default mode networks. The classification model with these features exhibited excellent performance in distinguishing patients with CM from HC (accuracy ≥ 86.8%, area under the curve (AUC) ≥ 0.9) and from those with EM (accuracy: 94.5%, AUC: 0.96). The model also achieved high performance (accuracy: 89.1%, AUC: 0.91) in classifying CM from other pain disorders (FM in this study). These resting-state magnetoencephalographic electrophysiological features yield oscillatory connectivity to identify patients with CM from those with a different type of migraine and pain disorder, with adequate reliability and generalizability.

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静息状态脑磁图振荡连接识别慢性偏头痛患者使用机器学习。
为了识别和验证慢性偏头痛(CM)静息状态振荡连接的神经特征,我们使用机器学习技术将CM患者与健康对照(HC)和其他疼痛疾病患者进行分类。横断面研究获得了240名参与者的静息状态脑磁图数据(70名HC, 100名CM, 35名发作性偏头痛[EM]和35名纤维肌痛[FM])。计算了相关皮质区域的基于源的振荡连通性,以确定1-40 Hz的固有连通性。利用脑磁图数据建立支持向量机分类模型,评估CM识别的可靠性和泛化性。在研究结果中,区分CM和HC的区别特征主要是从显著性、感觉运动和部分默认模式网络之间的功能相互作用中观察到的。具有这些特征的分类模型在鉴别CM与HC(准确率≥86.8%,曲线下面积(AUC)≥0.9)和EM(准确率:94.5%,AUC: 0.96)方面表现优异。该模型在CM与其他疼痛障碍(本研究为FM)的分类中也取得了很高的性能(准确率:89.1%,AUC: 0.91)。这些静息状态脑磁图电生理特征产生振荡连通性,可将CM患者与其他类型的偏头痛和疼痛障碍患者区分开来,具有足够的可靠性和普遍性。
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