Pattern Recognition Lab, University of Erlangen-Nuremberg, 91058 Erlangen, Germany.
Engineering School of Information Technologies, Telecommunications and Control Systems, Ural Federal University Named after the First President of Russia B. N. Yeltsin, Yekaterinburg 620002, Russia.
Sensors (Basel). 2023 Jun 22;23(13):5813. doi: 10.3390/s23135813.
The continuous advancements in healthcare technology have empowered the discovery, diagnosis, and prediction of diseases, revolutionizing the field. Artificial intelligence (AI) is expected to play a pivotal role in achieving the goals of precision medicine, particularly in disease prevention, detection, and personalized treatment. This study aims to determine the optimal combination of the mother wavelet and AI model for the analysis of pediatric electroretinogram (ERG) signals. The dataset, consisting of signals and corresponding diagnoses, undergoes Continuous Wavelet Transform (CWT) using commonly used wavelets to obtain a time-frequency representation. Wavelet images were used for the training of five widely used deep learning models: VGG-11, ResNet-50, DensNet-121, ResNext-50, and Vision Transformer, to evaluate their accuracy in classifying healthy and unhealthy patients. The findings demonstrate that the combination of Ricker Wavelet and Vision Transformer consistently yields the highest median accuracy values for ERG analysis, as evidenced by the upper and lower quartile values. The median balanced accuracy of the obtained combination of the three considered types of ERG signals in the article are 0.83, 0.85, and 0.88. However, other wavelet types also achieved high accuracy levels, indicating the importance of carefully selecting the mother wavelet for accurate classification. The study provides valuable insights into the effectiveness of different combinations of wavelets and models in classifying ERG wavelet scalograms.
医疗技术的持续进步使疾病的发现、诊断和预测成为可能,从而彻底改变了这一领域。人工智能(AI)有望在实现精准医学的目标方面发挥关键作用,特别是在疾病预防、检测和个性化治疗方面。本研究旨在确定用于分析儿科视网膜电图(ERG)信号的母小波和 AI 模型的最佳组合。该数据集由信号和相应的诊断组成,使用常用的小波进行连续小波变换(CWT),以获得时频表示。使用小波图像对五种广泛使用的深度学习模型(VGG-11、ResNet-50、DensNet-121、ResNext-50 和 Vision Transformer)进行训练,以评估它们在分类健康和不健康患者方面的准确性。研究结果表明,Ricker 小波和 Vision Transformer 的组合在 ERG 分析中始终产生最高的中位数准确率,这可以从上下四分位数值中看出。在本文中,三种类型的 ERG 信号的组合的中位数平衡准确率分别为 0.83、0.85 和 0.88。然而,其他小波类型也达到了很高的准确率水平,这表明仔细选择母小波对于准确分类很重要。该研究为不同的小波和模型组合在分类 ERG 小波标度图方面的有效性提供了有价值的见解。