Analysis of unlabeled lung sound samples using semi-supervised convolutional neural networks

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摘要

Lung sounds convey valuable information relevant to human respiratory health. Therefore, it is important to classify lung sounds for early diagnoses of respiratory disorders. In recent years, computerized lung sound analysis with machine learning algorithms has attracted researchers, especially the state-of-the-art convolutional neural network (CNN). However, most of these algorithms require a large number of labeled respiratory sound samples, which is time- and cost-consuming. Based on a four-layers CNN, this study proposes graph semi-supervised CNNs (GS-CNNs), which can classify respiratory sounds into normal, crackle and wheeze ones with only a small labeled sample size and a large unlabeled sample size. The graph of respiratory sounds (Graph-RS) with labeled and unlabeled respiratory sound samples as vertexes is first constructed, which can indicate not only the reasonable metric information but also the relationship of all the samples. Then, GS-CNNs are developed by adding the information extracted from Graph-RS to the loss function of the original CNN. The added information enables the GS-CNNs to regulate the structure of the original CNN, thus enhancing classification accuracy. The GS-CNNs are evaluated by experiments with the samples collected by electronic stethoscope. Results demonstrate that the proposed GS-CNNs outperform the original CNN, and that the more information from Graph-RS is used, the better recognition effect will be achieved.

论文关键词:Respiratory sounds,Graph-based semi-supervised learning,Convolutional neural network

论文评审过程:Received 7 March 2021, Revised 1 July 2021, Accepted 5 July 2021, Available online 25 July 2021, Version of Record 25 July 2021.

论文官网地址:https://doi.org/10.1016/j.amc.2021.126511