Ren Zhe, Han Xiong, Wang Bin
Department of Neurology, Zhengzhou University People's Hospital, Zhengzhou, China.
Department of Neurology, Henan Provincial People's Hospital, Zhengzhou, China.
Front Neurol. 2022 Nov 24;13:1016224. doi: 10.3389/fneur.2022.1016224. eCollection 2022.
The recurrent and unpredictable nature of seizures can lead to unintentional injuries and even death. The rapid development of electroencephalogram (EEG) and Artificial Intelligence (AI) technologies has made it possible to predict seizures in real-time through brain-machine interfaces (BCI), allowing advanced intervention. To date, there is still much room for improvement in predictive seizure models constructed by EEG using machine learning (ML) and deep learning (DL). But, the most critical issue is how to improve the performance and generalization of the model, which involves some confusing conceptual and methodological issues. This review focuses on analyzing several factors affecting the performance of seizure prediction models, focusing on the aspects of post-processing, seizure occurrence period (SOP), seizure prediction horizon (SPH), and algorithms. Furthermore, this study presents some new directions and suggestions for building high-performance prediction models in the future. We aimed to clarify the concept for future research in related fields and improve the performance of prediction models to provide a theoretical basis for future applications of wearable seizure detection devices.
癫痫发作的反复性和不可预测性可能导致意外伤害甚至死亡。脑电图(EEG)和人工智能(AI)技术的快速发展使得通过脑机接口(BCI)实时预测癫痫发作成为可能,从而实现提前干预。迄今为止,利用机器学习(ML)和深度学习(DL)通过脑电图构建的癫痫发作预测模型仍有很大的改进空间。但是,最关键的问题是如何提高模型的性能和泛化能力,这涉及到一些令人困惑的概念和方法问题。本综述着重分析影响癫痫发作预测模型性能的几个因素,重点关注后处理、癫痫发作发生期(SOP)、癫痫发作预测范围(SPH)和算法等方面。此外,本研究还为未来构建高性能预测模型提出了一些新的方向和建议。我们旨在为相关领域的未来研究厘清概念,并提高预测模型的性能,为可穿戴癫痫发作检测设备的未来应用提供理论依据。