Classification of Auscultation Sounds into Objective Spirometry Findings using MVMD and 3D CNN

Sonia Gupta, M. Agrawal, D. Deepak
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引用次数: 1

Abstract

Millions of people suffer from respiratory illness globally. Early diagnosis of respiratory diseases is hindered because of the lack of cost-effective and simple methods. Spirometry is the pulmonary function test used for diagnosis of obstructive diseases like asthma, chronic obstructive pulmonary disease (COPD) and restrictive diseases like interstitial lung disease (ILD), etc. This test requires repeated manoeuvre, is expensive and is done in laboratory which are not available in resource poor areas. Auscultation is an easy and cost-effective method which can play a vital role in early diagnosis of respiratory diseases. In this paper, a technique is proposed which could classify auscultation sounds into normal, obstructive and restrictive disease category similar to the findings of spirometry. The proposed work uses combination of multivariate variational mode decomposition and dynamic time warping for enhancing multi-channel signal. Further, pre-trained 3D ResNet18 neural network model is used for classification into three classes. Encouraging results are achieved with accuracy of 94.57%, sensitivity of 100% and specificity of 94.11%.
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用MVMD和3D CNN将听诊声音分类为客观肺活量测量结果
全球有数百万人患有呼吸道疾病。由于缺乏成本效益高和简单的方法,妨碍了呼吸道疾病的早期诊断。肺量测定法是一种肺功能检查,用于诊断哮喘、慢性阻塞性肺疾病(COPD)和间质性肺疾病(ILD)等阻塞性疾病。这种测试需要反复操作,价格昂贵,而且是在实验室进行的,而在资源贫乏的地区,这些实验室是无法提供的。听诊是一种简便、经济的方法,对呼吸系统疾病的早期诊断具有重要作用。本文提出了一种类似肺活量测定法的听诊声音分类技术,可将听诊声音分为正常、阻塞性和限制性疾病三类。该方法采用多元变分模态分解和动态时间规整相结合的方法来增强多通道信号。进一步,利用预训练好的3D ResNet18神经网络模型进行分类,分为三类。结果令人鼓舞,准确率为94.57%,灵敏度为100%,特异性为94.11%。
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