Epileptic seizures are a type of neurological disorder that affect many people worldwide. Specialist physicians and neurologists take advantage of structural and functional neuroimaging modalities to diagnose various types of epileptic seizures. Neuroimaging modalities assist specialist physicians considerably in analyzing brain tissue and the changes made in it. One method to accelerate the accurate and fast diagnosis of epileptic seizures is to employ computer aided diagnosis systems (CADS) based on artificial intelligence (AI) and functional and structural neuroimaging modalities. AI encompasses a variety of areas, and one of its branches is deep learning (DL). Not long ago, and before the rise of DL algorithms, feature extraction was an essential part of every conventional machine learning method, yet handcrafting features limit these models' performances to the knowledge of system designers. DL methods resolved this issue entirely by automating the feature extraction and classification process; applications of these methods in many fields of medicine, such as the diagnosis of epileptic seizures, have made notable improvements. In this paper, a comprehensive overview of the types of DL methods exploited to diagnose epileptic seizures from various neuroimaging modalities has been studied. Additionally, rehabilitation systems and cloud computing in epileptic seizures diagnosis applications have been exactly investigated using various modalities.
翻译:专家医生和神经学家利用结构和功能性神经成像模式来诊断各种类型的癫痫发作。神经成型模式在分析脑组织及其变化方面为专家医生提供大量协助。加速准确和快速诊断癫痫发作的一种方法是利用基于人工智能(AI)和功能性和结构性神经成像模式的计算机辅助诊断系统(CADS ) ; AI 包括许多领域,其分支之一是深入学习(DL )。不久之前,在DL算法上升之前,特征提取是所有常规机器学习方法的一个基本部分,但是手动特征将这些模型的性能限制在系统设计师的知识上。DL 方法完全通过特征提取和分类过程的自动化来解决这个问题;这些方法在许多医学领域的应用,如对癫痫发作病的诊断,已经取得了显著的改进。在本文件中,全面概述了用于诊断各种神经成型诊断中癫痫发作的DL方法的类型,已经利用各种神经成型诊断方法进行了精确的修复。