IEEE J Biomed Health Inform. 2022 Oct;26(10):4903-4912. doi: 10.1109/JBHI.2022.3159531. Epub 2022 Oct 4.
Electroencephalogram (EEG) based seizure types classification has not been addressed well, compared to seizure detection, which is very important for the diagnosis and prognosis of epileptic patients. The minuscule changes reflected in EEG signals among different seizure types make such tasks more challenging. Therefore, in this work, underlying features in EEG have been explored by decomposing signals into multiple subcomponents which have been further used to generate 2D input images for deep learning (DL) pipeline. The Hilbert vibration decomposition (HVD) has been employed for decomposing the EEG signals by preserving phase information. Next, 2D images have been generated considering the first three subcomponents having high energy by involving continuous wavelet transform and converting them into 2D images for DL inputs. For classification, a hybrid DL pipeline has been constructed by combining the convolution neural network (CNN) followed by long short-term memory (LSTM) for efficient extraction of spatial and time sequence information. Experimental validation has been conducted by classifying five types of seizures and seizure-free, collected from the Temple University EEG dataset (TUH v1.5.2). The proposed method has achieved the highest classification accuracy up to 99% along with an F1-score of 99%. Further analysis shows that the HVD-based decomposition and hybrid DL model can efficiently extract in-depth features while classifying different types of seizures. In a comparative study, the proposed idea demonstrates its superiority by displaying the uppermost performance.
基于脑电图(EEG)的癫痫发作类型分类尚未得到很好的解决,相比之下,癫痫发作检测对于癫痫患者的诊断和预后非常重要。不同癫痫发作类型之间 EEG 信号中微小的变化使得这些任务更具挑战性。因此,在这项工作中,通过将信号分解为多个子分量来探索 EEG 中的潜在特征,这些子分量进一步用于为深度学习(DL)管道生成 2D 输入图像。采用希尔伯特振动分解(HVD)通过保留相位信息来分解 EEG 信号。接下来,通过连续小波变换考虑具有高能量的前三个子分量生成 2D 图像,并将其转换为 2D 图像以供 DL 输入。为了进行分类,通过组合卷积神经网络(CNN)和长短期记忆(LSTM)构建了混合 DL 管道,以便有效地提取空间和时间序列信息。通过对来自 Temple 大学 EEG 数据集(TUH v1.5.2)的五种癫痫发作和无癫痫发作类型进行分类,对该方法进行了实验验证。该方法的分类准确率高达 99%,F1 得分为 99%。进一步的分析表明,基于 HVD 的分解和混合 DL 模型在分类不同类型的癫痫发作时可以有效地提取深入的特征。在比较研究中,该方法通过显示最高性能证明了其优越性。