基于堆叠自编码器的深度学习方法用于癫痫发作自动检测

Kuldeep Singh, J. Malhotra
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引用次数: 15

摘要

癫痫是一种主要的慢性神经疾病,每年影响全球数百万患者的生命,原因是在步行、驾驶或在危险工作环境中工作时发生猝死或重大伤害。通过现代技术对其进行预测是当今的需要,随着物联网、机器学习和云计算等最新技术的使用,这一趋势正在引起研究界的广泛关注。本文提出了一种基于堆叠自编码器的深度学习方法的癫痫发作自动检测模型模型,该模型是机器学习的一种高级形式,用于有效地处理大数据问题,降低复杂性和处理时间,使该过程更加实时兼容,延迟最小。该模型对感知到的脑电信号进行处理,将其分解为短时间段。然后,将这些脑电片段送入堆叠自编码器,将其分类为正常、癫痫发作前和癫痫发作后的不同阶段。将该模型的性能与其他现有的基于高阶谱分析的特征提取和分类的模型进行了比较,这些模型使用传统的机器学习算法,如Bayes Net、Naïve Bayes、Multilayer Perceptron、径向基函数神经网络和C4.5决策树分类器。仿真结果表明,基于堆叠自编码器的深度学习方法是一种有效的早期癫痫发作实时自动检测模型,分类准确率为88.8%,灵敏度为89.44%,特异性为93.77%,处理时间最小。这比使用传统的高阶统计特征提取和基于机器学习的分类方法的模型少了大约23倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stacked Autoencoders Based Deep Learning Approach for Automatic Epileptic Seizure Detection
Epilepsy is one of the major chronic nervous disorders, which affects the lives of millions of patients per annum globally, because of occurrence of sudden death or major injuries occurred during walk, driving or working in hazardous work environment. Its prognosis through modern technologies is the need of the day, which is attaining worldwide attention in research community with the use of latest technologies like internet of things, machine learning and cloud computing. This paper presents a model of automatic epileptic seizure detection model using Stacked Autoencoders based deep learning approach, which is an advanced form of machine leaning, employed for effectively handling the problem of big data with reduced complexity and processing time and to make this process more real time compatible with least delays. This model processes the sensed EEG signals by breaking it into short duration segments. Then, these EEG segments are fed to Stacked Autoencoders for its classification into different epileptic seizure stages like normal, preictal and ictal. The performance of this model has been compared with other existing models consisting of higher order spectral analysis based feature extraction and classification using traditional machine learning algorithms like Bayes Net, Naïve Bayes, Multilayer Perceptron, Radial basis function neural networks and C4.5 decision tree classifier. The analysis of performance through simulation results reveal that Stacked Autoencoders based deep learning approach is an efficient model for real time automatic epileptic seizures detection at early stage with classification accuracy 88.8%, sensitivity 89.44%, specificity 93.77% values and least value of processing time, which is approximately 23 times lesser than that of models utilizing traditional higher order statistics feature extraction and machine learning based classification approaches.
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