Survey on Epileptic Seizure Detection on Varied Machine Learning Algorithms

IF 0.8 Q4 COMPUTER SCIENCE, SOFTWARE ENGINEERING
Nusrat Fatma, Pawan Singh, M. K. Siddiqui
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引用次数: 0

Abstract

Epilepsy is an unavoidable major persistent and critical neurological disorder that influences the human brain. Moreover, this is apparently distinguished via its recurrent malicious seizures. A seizure is a phase of synchronous, abnormal innervations of a neuron’s population which might last from seconds to a few minutes. In addition, epileptic seizures are transient occurrences of complete or partial irregular unintentional body movements that combine with consciousness loss. As epileptic seizures rarely occurred in each patient, their effects based on physical communications, social interactions, and patients’ emotions are considered, and treatment and diagnosis are undergone with crucial implications. Therefore, this survey reviews 65 research papers and states an important analysis on various machine-learning approaches adopted in each paper. The analysis of different features considered in each work is also done. This survey offers a comprehensive study on performance attainment in each contribution. Furthermore, the maximum performance attained by the works and the datasets used in each work is also examined. The analysis on features and the simulation tools used in each contribution is examined. At the end, the survey expanded with different research gaps and their problem which is beneficial to the researchers for promoting advanced future works on epileptic seizure detection.
基于不同机器学习算法的癫痫发作检测研究综述
癫痫是一种不可避免的影响人类大脑的重大、持续和严重的神经系统疾病。此外,这显然是通过其反复发作的恶意发作来区分的。癫痫发作是一个同步的阶段,神经元群的异常神经支配可能持续几秒到几分钟。此外,癫痫发作是完全或部分不规则的无意识身体运动的短暂发生,并伴有意识丧失。由于癫痫发作很少发生在每个患者身上,因此基于身体交流、社会互动和患者情绪的影响被考虑在内,并且进行了具有重要意义的治疗和诊断。因此,本调查回顾了65篇研究论文,并对每篇论文中采用的各种机器学习方法进行了重要分析。并对各作品所考虑的不同特点进行了分析。这项调查提供了对每个贡献的绩效成就的全面研究。此外,还检查了作品和每个作品中使用的数据集所获得的最大性能。分析了每个贡献的特征和使用的仿真工具。最后,对不同的研究空白和存在的问题进行了扩展,有利于研究人员推进未来癫痫发作检测工作。
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来源期刊
International Journal of Image and Graphics
International Journal of Image and Graphics COMPUTER SCIENCE, SOFTWARE ENGINEERING-
CiteScore
2.40
自引率
18.80%
发文量
67
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