Department of Electronics and Telecommunication, Symbiosis Institute of Technology, Symbiosis International (Deemed University), SIU, Lavale, Pune, Maharashtra, India.
Symbiosis Institute of Technology (SIT), Symbiosis International (Deemed University), SIU, Lavale, Pune, Maharashtra, India.
Comput Math Methods Med. 2022 Jan 20;2022:7751263. doi: 10.1155/2022/7751263. eCollection 2022.
Epileptic seizures occur due to brain abnormalities that can indirectly affect patient's health. It occurs abruptly without any symptoms and thus increases the mortality rate of humans. Almost 1% of world's population suffers from epileptic seizures. Prediction of seizures before the beginning of onset is beneficial for preventing seizures by medication. Nowadays, modern computational tools, machine learning, and deep learning methods have been used to predict seizures using EEG. However, EEG signals may get corrupted with background noise, and artifacts such as eye blinks and physical movements of muscles may lead to "pops" in the signal, resulting in electrical interference, which is cumbersome to detect through visual inspection for longer duration recordings. These limitations in automatic detection of interictal spikes and epileptic seizures are preferred, which is an essential tool for examining and scrutinizing the EEG recording more precisely. These restrictions bring our attention to present a review of automated schemes that will help neurologists categorize epileptic and nonepileptic signals. While preparing this review paper, it is observed that feature selection and classification are the main challenges in epilepsy prediction algorithms. This paper presents various techniques depending on various features and classifiers over the last few years. The methods presented will give a detailed understanding and ideas about seizure prediction and future research directions.
癫痫发作是由于大脑异常引起的,这些异常可能会间接影响患者的健康。它会突然发作,没有任何症状,因此会增加人类的死亡率。全球几乎有 1%的人口患有癫痫发作。在发作开始之前预测癫痫发作有利于通过药物预防癫痫发作。如今,现代计算工具、机器学习和深度学习方法已被用于使用 EEG 预测癫痫发作。然而,EEG 信号可能会受到背景噪声的干扰,眨眼和肌肉运动等伪影可能会导致信号“爆裂”,从而产生电干扰,这在长时间记录的情况下通过目视检查来检测非常麻烦。因此,人们更倾向于选择自动检测癫痫发作间期棘波和癫痫发作的局限性,这是检查和更精确地分析 EEG 记录的重要工具。这些限制引起了人们的关注,促使我们对现有的自动方案进行综述,这些方案将有助于神经科医生对癫痫和非癫痫信号进行分类。在编写这篇综述论文时,人们观察到特征选择和分类是癫痫预测算法中的主要挑战。本文介绍了过去几年中基于各种特征和分类器的各种技术。所提出的方法将对癫痫发作预测和未来的研究方向有更深入的理解和想法。