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基于多分辨率交错网络和时频特征增强的肺音识别方法

Lung Sound Recognition Method Based on Multi-Resolution Interleaved Net and Time-Frequency Feature Enhancement.

作者信息

Shi Lukui, Zhang Jingye, Yang Bo, Gao Yingjie

出版信息

IEEE J Biomed Health Inform. 2023 Oct;27(10):4768-4779. doi: 10.1109/JBHI.2023.3306911. Epub 2023 Oct 5.

Abstract

Air pollution and aging population have caused increasing rates of lung diseases and elderly lung diseases year by year. At the same time, the outbreak of COVID-19 has brought challenges to the medical system, which placed higher demands on preventing lung diseases and improving diagnostic efficiency to some extent. Artificial intelligence can alleviate the burden on the medical system by analyzing lung sound signals to help to diagnose lung diseases. The existing models for lung sound recognition have challenges in capturing the correlation between time and frequency information. It is difficult for convolutional neural network to capture multi-scale features across different resolutions, and the fusion of features ignores the difference of influences between time and frequency features. To address these issues, a lung sound recognition model based on multi-resolution interleaved net and time-frequency feature enhancement was proposed, which consisted of a heterogeneous dual-branch time-frequency feature extractor (TFFE), a time-frequency feature enhancement module based on branch attention (FEBA), and a fusion semantic classifier based on semantic mapping (FSC). TFFE independently extracts the time and frequency information of lung sounds through a multi-resolution interleaved net and Transformer, which maintains the correlation between time-frequency features. FEBA focuses on the differences in the influence of time and frequency information on prediction results by branch attention. The proposed model achieved an accuracy of 91.56% on the combined dataset, by an improvement of over 2.13% compared to other models.

摘要

空气污染和人口老龄化导致肺部疾病和老年肺部疾病的发病率逐年上升。与此同时,新冠疫情的爆发给医疗系统带来了挑战,这在一定程度上对预防肺部疾病和提高诊断效率提出了更高要求。人工智能可以通过分析肺音信号来减轻医疗系统的负担,以帮助诊断肺部疾病。现有的肺音识别模型在捕捉时间和频率信息之间的相关性方面存在挑战。卷积神经网络难以捕捉不同分辨率下的多尺度特征,并且特征融合忽略了时间和频率特征之间影响的差异。为了解决这些问题,提出了一种基于多分辨率交错网络和时频特征增强的肺音识别模型,该模型由一个异构双分支时频特征提取器(TFFE)、一个基于分支注意力的时频特征增强模块(FEBA)和一个基于语义映射的融合语义分类器(FSC)组成。TFFE通过多分辨率交错网络和Transformer独立提取肺音的时间和频率信息,保持了时频特征之间的相关性。FEBA通过分支注意力关注时间和频率信息对预测结果影响的差异。所提出的模型在组合数据集上达到了91.56%的准确率,比其他模型提高了超过2.13%。

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