Neuroinnovation Technology & Brain Mapping Laboratory, Federal University of the Parnaíba Delta, Av. São Sebastião, 2819 - Bairro São Benedito, Parnaíba, Piauí, CEP: 64202-020, Brazil.
The Northeast Biotechnology Network, Federal University of Piauí, Teresina, Brazil.
Brain Topogr. 2022 Jul;35(4):464-480. doi: 10.1007/s10548-022-00901-4. Epub 2022 May 21.
Software such as EEGLab has enabled the treatment and visualization of the tracing and cortical topography of the electroencephalography (EEG) signals. In particular, the topography of the cortical electrical activity is represented by colors, which make it possible to identify functional differences between cortical areas and to associate them with various diseases. The use of cortical topography with EEG origin in the investigation of diseases is often not used due to the representation of colors making it difficult to classify the disease. Thus, the analyses have been carried out, mainly, based on the EEG tracings. Therefore, a computer system that recognizes disease patterns through cortical topography can be a solution to the diagnostic aid. In view of this, this study compared five models of Convolutional Neural Networks (CNNs), namely: Inception v3, SqueezeNet, LeNet, VGG-16 and VGG-19, in order to know the patterns in cortical topography images obtained with EEG, in Parkinson's disease, Depression and Bipolar Disorder. SqueezeNet performed better in the 3 diseases analyzed, with Parkinson's disease being better evaluated for Accuracy (88.89%), Precison (86.36%), Recall (91.94%) and F1 Score (89.06%), the other CNNs had less performance. In the analysis of the values of the Area under ROC Curve (AUC), SqueezeNet reached (93.90%) for Parkinson's disease, (75.70%) for Depression and (72.10%) for Bipolar Disorder. We understand that there is the possibility of classifying neurological diseases from cortical topographies with the use of CNNs and, thus, creating a computational basis for the implementation of software for screening and possible diagnostic assistance.
软件,如 EEGLab,已经能够实现对脑电图(EEG)信号的跟踪和皮质地形图的处理和可视化。特别是,皮质电活动的地形图通过颜色表示,这使得识别皮质区域之间的功能差异并将其与各种疾病相关联成为可能。由于颜色的表示使得疾病难以分类,因此通常不在 EEG 起源的皮质地形图研究中使用。因此,分析主要基于 EEG 轨迹进行。因此,通过皮质地形图识别疾病模式的计算机系统可以成为诊断辅助的解决方案。有鉴于此,本研究比较了五种卷积神经网络(CNN)模型,即:Inception v3、SqueezeNet、LeNet、VGG-16 和 VGG-19,以了解从 EEG 获得的皮质地形图图像中的模式,用于帕金森病、抑郁症和双相情感障碍。SqueezeNet 在 3 种分析疾病中表现更好,帕金森病的准确性(88.89%)、精确率(86.36%)、召回率(91.94%)和 F1 得分(89.06%)评估更好,其他 CNN 的性能较低。在 ROC 曲线下面积(AUC)值的分析中,SqueezeNet 达到了帕金森病(93.90%)、抑郁症(75.70%)和双相情感障碍(72.10%)。我们理解,有可能从皮质地形图使用 CNN 对神经疾病进行分类,从而为实施用于筛查和可能的诊断辅助的软件创建计算基础。