Han Changming, Peng Fulai, Chen Cai, Li Wenchao, Zhang Xikun, Wang Xingwei, Zhou Weidong
School of Microelectronics, Shandong University, Jinan 250101, P.R.China.
Shandong Institute of Advanced Technology, Chinese Academy of Sciences, Jinan 250000, P.R.China.
Sheng Wu Yi Xue Gong Cheng Xue Za Zhi. 2021 Dec 25;38(6):1193-1202. doi: 10.7507/1001-5515.202105052.
As a common disease in nervous system, epilepsy is possessed of characteristics of high incidence, suddenness and recurrent seizures. Timely prediction with corresponding rescues and treatments can be regarded as effective countermeasure to epilepsy emergencies, while most accidental injuries can thus be avoided. Currently, how to use electroencephalogram (EEG) signals to predict seizure is becoming a highlight topic in epilepsy researches. In spite of significant progress that made, more efforts are still to be made before clinical applications. This paper reviews past epilepsy studies, including research records and critical technologies. Contributions of machine learning (ML) and deep learning (DL) on seizure predictions have been emphasized. Since feature selection and model generalization limit prediction ratings of conventional ML measures, DL based seizure predictions predominate future epilepsy studies. Consequently, more exploration may be vitally important for promoting clinical applications of epileptic seizure prediction.
癫痫作为神经系统的一种常见疾病,具有发病率高、发作突然和反复发作的特点。及时进行预测并给予相应的抢救和治疗可被视为应对癫痫紧急情况的有效对策,同时大多数意外伤害也可因此避免。目前,如何利用脑电图(EEG)信号来预测癫痫发作正成为癫痫研究中的一个热点话题。尽管已取得显著进展,但在临床应用之前仍需付出更多努力。本文回顾了以往的癫痫研究,包括研究记录和关键技术。强调了机器学习(ML)和深度学习(DL)在癫痫发作预测方面的贡献。由于特征选择和模型泛化限制了传统机器学习方法的预测准确率,基于深度学习的癫痫发作预测将主导未来的癫痫研究。因此,更多的探索对于推动癫痫发作预测的临床应用可能至关重要。