Yihan Li , Yingfan Wang , Fengyuan Xu , Teng Jiang , Xiaoshan Wang
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引用次数: 0
Abstract
Introduction
Our aim was to use magnetoencephalography (MEG) and clinical features to early identify self-limited epilepsy with centrotemporal spikes (SeLECTS) patients who evolve into atypical SeLECTS (AS).
Methods
The baseline clinical and MEG data of 28 AS and 33 typical SeLECTS (TS) patients were collected. Based on the triple-network model, MEG analysis included power spectral density representing spectral power and corrected amplitude envelope correlation representing functional connectivity (FC). Based on the clinical and MEG features of AS patients, the linear support vector machine (SVM) classifier was used to construct the prediction model.
Results
The spectral power transferred from the alpha band to the delta band in the bilateral posterior cingulate cortex, and the inactivation of the beta band in both the right anterior cingulate cortex and left middle frontal gyrus were distinctive features of the AS group. The FC network in the AS group was characterized by attenuated intrinsic FC within the salience network in the alpha band, as well as attenuated FC interactions between the salience network and both the default mode network and central executive network in the beta band. The prediction model that integrated MEG and clinical features had a high prediction efficiency, with an accuracy of 0.80 and an AUC of 0.84.
Conclusion
The triple-network model of early AS patients has band-dependent MEG alterations. These MEG features combined with clinical features can efficiently predict AS at an early stage.
简介:我们的目的是利用脑磁图(MEG)和临床特征来早期识别演变为非典型SeLECTS(AS)的自限性癫痫伴心颞区棘波(SeLECTS)患者:方法:收集了28名AS和33名典型SeLECTS(TS)患者的临床和MEG基线数据。基于三重网络模型,MEG分析包括代表频谱功率的功率谱密度和代表功能连接性(FC)的校正振幅包络相关性。根据 AS 患者的临床和 MEG 特征,使用线性支持向量机(SVM)分类器构建预测模型:结果:双侧扣带回后皮层的频谱功率从α波段转移到δ波段,右侧扣带回前皮层和左侧额中回的β波段失活是AS组的显著特征。强直性脊柱炎组的FC网络特点是:在α波段,显著性网络内部的内在FC减弱;在β波段,显著性网络与默认模式网络和中央执行网络之间的FC相互作用减弱。整合了 MEG 和临床特征的预测模型具有很高的预测效率,准确率为 0.80,AUC 为 0.84:早期强直性脊柱炎患者的三重网络模型具有波段依赖性 MEG 改变。结论:早期强直性脊柱炎患者的三重网络模型具有频带依赖性脑电图改变,这些脑电图特征与临床特征相结合可有效预测早期强直性脊柱炎。