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Deep learning based smart health monitoring for automated prediction of epileptic seizures using spectral analysis of scalp EEG

机译:基于深度学习的智能健康监测使用自动预测癫痫发作头皮脑电图的光谱分析

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摘要

Being one of the most prevalent neurological disorders, epilepsy affects the lives of patients through the infrequent occurrence of spontaneous seizures. These seizures can result in serious injuries or unexpected deaths in individuals due to accidents. So, there exists a crucial need for an automatic prediction of epileptic seizures to alert the patients well before the onset of seizures, enabling them to have a healthier quality of life. In this era, the Internet of Things (IoT) technologies are being used in a cloud-fog integrated environment to address such healthcare challenges using deep learning approaches. The present paper also proposes a smart health monitoring approach for automated prediction of epileptic seizures using deep learning-based spectral analysis of EEG signals. This approach processes EEG signals using filtering, segmentation into short duration segments and spectral-domain transformation. These signals are then analysed spectrally by separating them into several spectral bands, such as delta, theta, alpha, beta, and sub-bands of gamma. Furthermore, the mean spectral amplitude and spectral power features are retrieved from each spectral band to characterize various seizure states, which are fed to the proposed LSTM and CNN models. The results of the proposed CNN model show a maximum accuracy of 98.3% and 97.4% to obtain a binary classification of preictal and interictal seizure states for two different spectral band combinations respectively. Thus, the proposed CNN architecture accompanied by spectral analysis of EEG signals provides a viable method for reliable and real-time prediction of epileptic seizures.
机译:是其中一个最普遍的神经癫痫疾病,影响患者的生活通过偶然发生自发的癫痫发作。个人由于受伤或意外死亡事故。一个自动预测癫痫发作提醒病人发病前癫痫发作、使他们更健康的生活质量。事情(物联网)技术被用于cloud-fog集成环境来解决医疗使用深度学习的挑战方法。自动化智能健康监测方法使用深度预测癫痫发作上优于EEG信号的频谱分析。这种方法处理EEG信号使用过滤,分割成短的持续时间段和spectral-domain转换。然后对这些信号进行分析幽灵似地分离成几个光谱波段,当δθ,α、β和分解γ。检索和光谱特性每个光谱波段不同的特点癫痫状态,这是美联储的提议LSTM和CNN模型。CNN模型显示的最大精度98.3%和97.4%获得二进制分类preictal和发作癫痫状态不同的光谱波段组合分别。伴随着EEG信号的频谱分析提供了一个可靠和可行的方法实时预测癫痫发作。

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