A variety of screening approaches have been proposed to diagnose epileptic seizures, using electroencephalography (EEG) and magnetic resonance imaging (MRI) modalities. Artificial intelligence encompasses a variety of areas, and one of its branches is deep learning (DL). Before the rise of DL, conventional machine learning algorithms involving feature extraction were performed. This limited their performance to the ability of those handcrafting the features. However, in DL, the extraction of features and classification are entirely automated. The advent of these techniques in many areas of medicine, such as in the diagnosis of epileptic seizures, has made significant advances. In this study, a comprehensive overview of works focused on automated epileptic seizure detection using DL techniques and neuroimaging modalities is presented. Various methods proposed to diagnose epileptic seizures automatically using EEG and MRI modalities are described. In addition, rehabilitation systems developed for epileptic seizures using DL have been analyzed, and a summary is provided. The rehabilitation tools include cloud computing techniques and hardware required for implementation of DL algorithms. The important challenges in accurate detection of automated epileptic seizures using DL with EEG and MRI modalities are discussed. The advantages and limitations in employing DL-based techniques for epileptic seizures diagnosis are presented. Finally, the most promising DL models proposed and possible future works on automated epileptic seizure detection are delineated.
翻译:利用电脑法和磁共振成像(磁共振成像)模式,提出了诊断癫痫发作的多种筛选方法,人工智能包括了各个领域,其一个分支是深入学习(DL)。在DL出现之前,实施了传统机器学习算法,涉及特征提取的常规机器学习算法,这些算法的性能限于这些手工艺特征的能力。然而,在DL, 特征的提取和分类是完全自动化的。这些技术在许多医学领域的出现,例如对癫痫发作的诊断,取得了显著的进展。在本研究中,对侧重于使用DL技术和神经成像模式自动癫缓发性癫痫发作检测的工程进行了全面概述。介绍了使用EEG和MRI自动诊断癫缓发性发作的各种方法。此外,对利用DL进行癫痫发作的恢复系统进行了分析,并提供了一份摘要。恢复工具包括云计算技术和DL算算法实施DL算法所需的硬件。在准确检测自动癫发性癫发作方面所面临的重大挑战是使用EG最终诊断方法,在使用DL进行最后诊断的诊断的诊断方法时,对自动癫发性兴奋性兴奋后,对DL进行最优点作了讨论。