Nie Jianhao, Shu Huazhong, Wu Fuzhi
Laboratory of Image Science and Technology, Key Laboratory of Computer Network and Information Integration, Ministry of Education, Southeast University, Nanjing, China.
Front Neurosci. 2024 Jul 30;18:1436619. doi: 10.3389/fnins.2024.1436619. eCollection 2024.
Epilepsy, which is associated with neuronal damage and functional decline, typically presents patients with numerous challenges in their daily lives. An early diagnosis plays a crucial role in managing the condition and alleviating the patients' suffering. Electroencephalogram (EEG)-based approaches are commonly employed for diagnosing epilepsy due to their effectiveness and non-invasiveness. In this study, a classification method is proposed that use fast Fourier Transform (FFT) extraction in conjunction with convolutional neural networks (CNN) and long short-term memory (LSTM) models.
Most methods use traditional frameworks to classify epilepsy, we propose a new approach to this problem by extracting features from the source data and then feeding them into a network for training and recognition. It preprocesses the source data into training and validation data and then uses CNN and LSTM to classify the style of the data.
Upon analyzing a public test dataset, the top-performing features in the fully CNN nested LSTM model for epilepsy classification are FFT features among three types of features. Notably, all conducted experiments yielded high accuracy rates, with values exceeding 96% for accuracy, 93% for sensitivity, and 96% for specificity. These results are further benchmarked against current methodologies, showcasing consistent and robust performance across all trials. Our approach consistently achieves an accuracy rate surpassing 97.00%, with values ranging from 97.95 to 99.83% in individual experiments. Particularly noteworthy is the superior accuracy of our method in the AB versus (vs.) CDE comparison, registering at 99.06%.
Our method exhibits precise classification abilities distinguishing between epileptic and non-epileptic individuals, irrespective of whether the participant's eyes are closed or open. Furthermore, our technique shows remarkable performance in effectively categorizing epilepsy type, distinguishing between epileptic ictal and interictal states versus non-epileptic conditions. An inherent advantage of our automated classification approach is its capability to disregard EEG data acquired during states of eye closure or eye-opening. Such innovation holds promise for real-world applications, potentially aiding medical professionals in diagnosing epilepsy more efficiently.
癫痫与神经元损伤和功能衰退相关,给患者的日常生活带来诸多挑战。早期诊断对控制病情和减轻患者痛苦起着关键作用。基于脑电图(EEG)的方法因其有效性和非侵入性,常用于癫痫诊断。在本研究中,提出了一种结合快速傅里叶变换(FFT)提取、卷积神经网络(CNN)和长短期记忆(LSTM)模型的分类方法。
大多数方法使用传统框架对癫痫进行分类,我们提出了一种新方法,从源数据中提取特征,然后将其输入网络进行训练和识别。它将源数据预处理为训练和验证数据,然后使用CNN和LSTM对数据类型进行分类。
在分析一个公共测试数据集时,用于癫痫分类的全CNN嵌套LSTM模型中表现最佳的特征是三种特征中的FFT特征。值得注意的是,所有实验的准确率都很高,准确率超过96%,灵敏度为93%,特异性为96%。这些结果与当前方法进行了进一步的基准测试,在所有试验中都展示了一致且稳健的性能。我们的方法始终实现超过97.00%的准确率,在个别实验中的值在97.95%至99.83%之间。特别值得注意的是,我们的方法在AB与CDE比较中的准确率更高,为99.06%。
我们的方法具有精确的分类能力,能够区分癫痫患者和非癫痫患者,无论参与者的眼睛是闭合还是睁开。此外,我们的技术在有效分类癫痫类型、区分癫痫发作期和发作间期状态与非癫痫状态方面表现出色。我们的自动分类方法的一个固有优势是能够忽略在闭眼或睁眼状态下获取的EEG数据。这种创新在实际应用中具有前景,可能有助于医疗专业人员更高效地诊断癫痫。