Comparative analysis of VEP signals discrimination methods based on time-frequency transformation and CNN-2D

Zineb Cheker , Saad Chakkor , Ahmed EL Oualkadi , Mostafa Baghouri , Rachid Belfkih , Jalil Abdelkader El Hangouche , Jawhar Laameche
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Abstract

The Visual Evoked Potential (VEP) examination is used to analyze the appropriate functioning of the optical pathways from the retina to the visual cortex. In hospitals, the diagnosis made by physicians is based mainly on reading the temporal trace and identifying the latency P100. However, after a considerable research effort, it has been confirmed that this method is subjective and relatively less reliable. In our work, we report different approaches to resolve the inadequacy of traditional classification, by studying the efficiency of VEP signal classification in a comparative approach using 3 models: Model A: STFT-CNN, Model B: CWT-CNN, and Model C: Wigner-Ville-CNN, therefore we evaluate in the same context the effectiveness of using a pre-trained 2D CNN structure. The time-frequency transformation allows us to generate two-dimensional data from one-dimensional signals to bring out the integrated features that are not valued in the temporal plot, and then exploit them for good discrimination between the two classes, in order to be able to use a CNN-2D classification architecture, taking into consideration the advantages offered by this architecture in terms of the involvement of the attribute extraction phase and its efficiency in classifying 2D data. The results provided by the different scenarios proved that the Wigner-Ville transformation combined with a pre-trained CNN architecture can be considered a good method in terms of different performance metrics, which demonstrates that it is a successful candidate for providing significant assistance to physicians in their analysis of VEP signals.

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基于时频变换和 CNN-2D 的 VEP 信号辨别方法对比分析
视觉诱发电位(VEP)检查用于分析从视网膜到视觉皮层的光路是否正常。在医院里,医生的诊断主要基于阅读时间轨迹和识别潜伏期 P100。然而,经过大量研究证实,这种方法主观性强,可靠性相对较低。在我们的工作中,我们报告了不同的方法来解决传统分类的不足,通过使用 3 个模型来比较研究 VEP 信号分类的效率:模型 A:STFT-CNN、模型 B:CWT-CNN 和模型 C:Wigner-Ville-CNN,因此我们在同样的背景下评估了使用预训练二维 CNN 结构的有效性。通过时频变换,我们可以从一维信号中生成二维数据,从而提取出在时间图中未被重视的综合特征,然后利用这些特征在两个类别之间进行良好的区分,以便能够使用 CNN-2D 分类架构,同时考虑到该架构在属性提取阶段的参与性及其对二维数据进行分类的效率方面所提供的优势。不同方案提供的结果证明,就不同的性能指标而言,Wigner-Ville 变换与预先训练的 CNN 架构相结合可被视为一种良好的方法,这表明它是一种成功的候选方案,可为医生分析 VEP 信号提供重要帮助。
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来源期刊
Biomedical engineering advances
Biomedical engineering advances Bioengineering, Biomedical Engineering
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59 days
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