Department of Electronics and Communication Engineering, Pondicherry Engineering College, Puducherry, 605 014, India.
Comput Biol Med. 2021 Nov;138:104930. doi: 10.1016/j.compbiomed.2021.104930. Epub 2021 Oct 8.
Respiratory illness is the primary cause of mortality and impairment in the life span of an individual in the current COVID-19 pandemic scenario. The inability to inhale and exhale is one of the difficult conditions for a person suffering from respiratory disorders. Unfortunately, the diagnosis of respiratory disorders with the presently available imaging and auditory screening modalities are sub-optimal and the accuracy of diagnosis varies with different medical experts. At present, deep neural nets demand a massive amount of data suitable for precise models. In reality, the respiratory data set is quite limited, and therefore, data augmentation (DA) is employed to enlarge the data set. In this study, conditional generative adversarial networks (cGAN) based DA is utilized for synthetic generation of signals. The publicly available repository such as ICBHI 2017 challenge, RALE and Think Labs Lung Sounds Library are considered for classifying the respiratory signals. To assess the efficacy of the artificially created signals by the DA approach, similarity measures are calculated between original and augmented signals. After that, to quantify the performance of augmentation in classification, scalogram representation of generated signals are fed as input to different pre-trained deep learning architectures viz Alexnet, GoogLeNet and ResNet-50. The experimental results are computed and performance results are compared with existing classical approaches of augmentation. The research findings conclude that the proposed cGAN method of augmentation provides better accuracy of 92.50% and 92.68%, respectively for both the two data sets using ResNet 50 model.
在当前 COVID-19 大流行背景下,呼吸道疾病是导致个体死亡和寿命缩短的主要原因。对于患有呼吸道疾病的人来说,无法呼吸是一种困难的情况。不幸的是,目前可用的成像和听觉筛查方式对呼吸道疾病的诊断效果并不理想,而且诊断的准确性因不同的医学专家而异。目前,深度学习网络需要大量适合精确模型的数据。实际上,呼吸数据集非常有限,因此需要进行数据扩充(DA)来扩大数据集。在这项研究中,我们使用基于条件生成对抗网络(cGAN)的 DA 方法来进行信号的合成生成。我们考虑了一些公开的数据集,如 ICBHI 2017 挑战赛、RALE 和 Think Labs Lung Sounds Library,来对呼吸信号进行分类。为了评估 DA 方法生成的人工信号的效果,我们计算了原始信号和扩充信号之间的相似性度量。然后,为了量化扩充在分类中的性能,我们将生成信号的 scalogram 表示作为输入,分别输入到预先训练好的深度学习架构 Alexnet、GoogLeNet 和 ResNet-50 中。我们计算了实验结果,并将其与现有的经典扩充方法进行了比较。研究结果表明,使用 ResNet 50 模型,所提出的 cGAN 扩充方法分别为两个数据集提供了更好的准确性,分别为 92.50%和 92.68%。