Shi Wei, Shi Yi, Chen Fangni, Zhang Lei, Wan Jian
The Zhejiang Key Laboratory of Biomedical Intelligent Computing Technology and the College of Information and Electronic Engineering, Zhejiang University of Science and Technology, Hangzhou, 310000, China.
The International Institutes of Medicine, Department of Neurology, The Fourth Affiliated Hospital, Zhejiang University School of Medicine, Yiwu, 322000, China.
Sci Rep. 2025 Jul 2;15(1):22852. doi: 10.1038/s41598-025-06123-5.
Due to the lack of validated universal seizure markers, population-level prediction methods often exhibit limited performance. This study proposes homologous microstate dynamic attributes as a generalized, subject-independent seizure marker. Homologous microstate dynamic attributes were extracted using a novel spatiotemporal graph convolutional network (ST-GCN) model for subject-independent seizure prediction. An online deployment stage was introduced to validate the model's clinical applicability. The online deployment stage demonstrated that the model achieved sensitivities of 96.79% and 98.84% on the private dataset and Siena dataset, respectively. The ST-GCN model successfully predicts seizures in a subject-independent manner, demonstrating its potential as a generalized tool for seizure prediction in clinical settings. This study indicates that dynamics within homologous microstates can serve as a universal predictive biomarker for seizures, expanding microstate research beyond transition patterns. It also provides a practical template for clinical seizure prediction models.
由于缺乏经过验证的通用癫痫发作标志物,基于人群水平的预测方法往往表现出有限的性能。本研究提出同源微状态动态属性作为一种通用的、与个体无关的癫痫发作标志物。使用一种新颖的时空图卷积网络(ST-GCN)模型提取同源微状态动态属性,用于与个体无关的癫痫发作预测。引入了在线部署阶段以验证模型的临床适用性。在线部署阶段表明,该模型在私有数据集和锡耶纳数据集上分别达到了96.79%和98.84%的灵敏度。ST-GCN模型成功地以与个体无关的方式预测癫痫发作,证明了其作为临床环境中癫痫发作预测通用工具的潜力。本研究表明,同源微状态内的动力学可以作为癫痫发作的通用预测生物标志物,将微状态研究扩展到过渡模式之外。它还为临床癫痫发作预测模型提供了一个实用模板。