Park Jinho, Nguyen Thien, Park Soongho, Hill Brian, Shadgan Babak, Gandjbakhche Amir
Eunice Kennedy Shriver National Institute of Child Health and Human Development, National Institutes of Health, 49 Convent Dr., Bethesda, MD 20894, USA.
National Heart, Lung and Blood Institute, National Institutes of Health, 10 Center Dr., Bethesda, MD 20892, USA.
Bioengineering (Basel). 2024 Jul 12;11(7):709. doi: 10.3390/bioengineering11070709.
A two-stream convolutional neural network (TCNN) for breathing pattern classification has been devised for the continuous monitoring of patients with infectious respiratory diseases. The TCNN consists of a convolutional neural network (CNN)-based autoencoder and classifier. The encoder of the autoencoder generates deep compressed feature maps, which contain the most important information constituting data. These maps are concatenated with feature maps generated by the classifier to classify breathing patterns. The TCNN, single-stream CNN (SCNN), and state-of-the-art classification models were applied to classify four breathing patterns: normal, slow, rapid, and breath holding. The input data consisted of chest tissue hemodynamic responses measured using a wearable near-infrared spectroscopy device on 14 healthy adult participants. Among the classification models evaluated, random forest had the lowest classification accuracy at 88.49%, while the TCNN achieved the highest classification accuracy at 94.63%. In addition, the proposed TCNN performed 2.6% better in terms of classification accuracy than an SCNN (without an autoencoder). Moreover, the TCNN mitigates the issue of declining learning performance with increasing network depth, as observed in the SCNN model. These results prove the robustness of the TCNN in classifying breathing patterns despite using a significantly smaller number of parameters and computations compared to state-of-the-art classification models.
一种用于呼吸模式分类的双流卷积神经网络(TCNN)已被设计出来,用于对感染性呼吸道疾病患者进行持续监测。TCNN由基于卷积神经网络(CNN)的自动编码器和分类器组成。自动编码器的编码器生成深度压缩特征图,其中包含构成数据的最重要信息。这些图与分类器生成的特征图连接起来以对呼吸模式进行分类。将TCNN、单流CNN(SCNN)和最先进的分类模型应用于对四种呼吸模式进行分类:正常、缓慢、快速和屏气。输入数据包括使用可穿戴近红外光谱设备在14名健康成年参与者身上测量的胸部组织血液动力学反应。在评估的分类模型中,随机森林的分类准确率最低,为88.49%,而TCNN的分类准确率最高,为94.63%。此外,所提出的TCNN在分类准确率方面比SCNN(无自动编码器)提高了2.6%。此外,与SCNN模型不同,TCNN缓解了随着网络深度增加学习性能下降的问题。这些结果证明了TCNN在对呼吸模式进行分类时的稳健性,尽管与最先进的分类模型相比,其使用的参数和计算量要少得多。