An Automated System towards Diagnosis of Pneumonia using Pulmonary Auscultations

Sumair Aziz, Muhammad Umar Khan, Maheen Shakeel, Zohaib Mushtaq, A. Khan
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引用次数: 32

Abstract

Respiratory sounds carry significant information about the condition of respiratory system. Respiratory sounds are often affected by sounds emanating from heart and other organs thus making the analysis task more complex. Pneumonia is a very common lungs disease and requires efficient diagnosis at initial stage for proper treatment. In this research, an automated system for diagnosis of Pneumonia based on auscultations is proposed. Auscultation signals are first preprocessed through Empirical mode decomposition (EMD), which decomposes original signal into its constituent components known as intrinsic mode functions (IMFs). Preprocessed signal is reconstructed by addition of only those IMFs which carry high discriminative information among healthy and Pneumonia subjects. IMFs which carry redundant and noisy data are rejected thus making preprocessing more effective. Next, characteristic features are extracted by fusion of Mel frequency cepstral coefficients (MFCC) and time domain features. Finally, Support Vector Machines (SVM) classifier is trained and tested through 5-fold cross validation. Experimental evaluation of proposed approach is performed on range of various classifiers on self-collected dataset which contains 480 auscultation signals of normal and Pneumonia subjects. SVM with Quadratic kernel achieved best classification results in terms of accuracy of 99.7%.
基于肺听诊的肺炎自动诊断系统
呼吸音携带有关呼吸系统状况的重要信息。呼吸音经常受到来自心脏和其他器官的声音的影响,从而使分析任务更加复杂。肺炎是一种非常常见的肺部疾病,需要在初始阶段进行有效的诊断以进行适当的治疗。本研究提出一种基于听诊的肺炎自动诊断系统。听诊信号首先通过经验模态分解(EMD)进行预处理,EMD将原始信号分解为其组成成分,称为本征模态函数(IMFs)。仅将健康受试者和肺炎受试者中具有高判别信息的特征向量相加,重建预处理后的信号。携带冗余和噪声数据的imf被拒绝,从而使预处理更有效。然后,将Mel频倒谱系数(MFCC)与时域特征融合提取特征特征;最后,通过5次交叉验证对支持向量机分类器进行训练和测试。在包含480例正常和肺炎患者听诊信号的自采集数据集上,对所提出的方法进行了多种分类器的实验评估。二次核SVM的分类准确率达到99.7%,分类效果最好。
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