Accelerometer-based Convulsive Seizure Detection using CNN

Erina Binte Motahar, Farhan Ishtiaque, Md Sharjis Ibne Wadud
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Abstract

Convulsive seizures contribute to a significant portion of the seizure-associated injuries, accidents, and sudden unexpected deaths in Epilepsy (SUDEP). An ambulatory seizure detection system may prevent such accidents and improve the quality of life. Conventional seizure detection methods require specialized approaches such as video or EEG analysis, which are frequently ineffective in non-clinical settings such as during daily activities. In recent years, a couple of wearable accelerometer-based seizure detection systems have been proposed. But the common problem these devices face is low specificity and high False Alarm Rate (FAR). In this work, we proposed an improved way to study and classify accelerometer data using Convolutional Neural Network (CNN) to detect General Tonic Clonic Seizures (GTCS), also known as Convulsive Seizures. Due to the unavailability of a dataset of accelerometer data related to seizure movements, an accelerometer-based wrist-worn data acquisition device was constructed to develop a dataset mimicking seizure-like movement. The accelerometer data were then converted to RGB images for training and testing with three different CNN architectures: DenseNet, ResNet-50, and VGG16, to determine which architecture is best suited for these types of data. Among these three, the DenseNet architecture achieved the highest accuracy of 99.2%, sensitivity of 98.4%, and specificity of 100%. Hence, an algorithm was developed based on the DenseNet model to detect convulsive seizures with a feature to tune according to the patient’s seizure type. The proposed method can be implemented to develop an ambulatory seizure monitoring device to detect seizures before accidents occur.
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基于加速计的抽搐发作检测
惊厥发作是癫痫(SUDEP)中与癫痫相关的伤害、事故和意外猝死的重要原因。动态癫痫检测系统可以预防此类事故并提高生活质量。传统的癫痫检测方法需要专门的方法,如视频或脑电图分析,这在日常活动等非临床环境中往往无效。近年来,人们提出了几种基于可穿戴加速度计的癫痫检测系统。但这些设备普遍面临的问题是特异性低、虚警率(FAR)高。在这项工作中,我们提出了一种改进的方法,使用卷积神经网络(CNN)来研究和分类加速度计数据,以检测全身性强直性阵挛性癫痫(GTCS),也称为惊厥性癫痫发作。由于无法获得与癫痫发作运动相关的加速度计数据集,因此构建了基于加速度计的腕带数据采集装置来开发模拟癫痫发作运动的数据集。然后将加速度计数据转换为RGB图像,使用三种不同的CNN架构(DenseNet, ResNet-50和VGG16)进行训练和测试,以确定哪种架构最适合这些类型的数据。其中,DenseNet架构准确率最高,为99.2%,灵敏度为98.4%,特异性为100%。因此,基于DenseNet模型开发了一种算法来检测抽搐发作,并根据患者的发作类型进行调整。所提出的方法可用于开发动态癫痫发作监测装置,以便在事故发生前检测癫痫发作。
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