一种用于肺听诊统计分析与分类的鲁棒自动算法

Joyjit Chatterjee, G. Sharma, Ayush Sexena, Anu Mehra, Varun Gupta
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引用次数: 1

摘要

呼吸系统疾病影响到全世界2亿多人,是造成成人和婴儿死亡的最根本原因之一。肺部疾病的范围从普通感冒和流感等轻微症状到肺炎、哮喘和肺癌等危及生命的情况。因此,呼吸系统疾病的早期诊断往往有助于防止悲剧的发生。肺部疾病的医学诊断通常需要听诊肺音,短暂的胸部x光检查,在某些情况下甚至包括支气管镜检查、胸部成像和胸腔镜检查。听诊常常受到不同医生的各种偏见的影响,如果医生未经训练,结果可能是灾难性的。本文对各种肺音听诊进行了统计分析和分类。在这里,选择一个人的呼吸频率作为核心参数,将呼吸总数分割为温和、柔和和艰难的呼吸。除此之外,标准化信号的包络的峰值被成功地用于预测患有肺部疾病的几率,从噼啪声,肺炎,喘息和哮喘。所提出的系统减少了对训练有素的医生的需求,这反过来又使肺部疾病的诊断具有成本效益,并提供公正的预测。该系统的时间复杂度很低,适用于各种肺部疾病的实时诊断。肺音取自加拿大R.A.L.E存储库。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Robust Automatic Algorithm for Statistical Analysis and Classification of Lung Auscultations
Respiratory diseases affect more than 200 million people across the world and are one of the most intrinsic contributors towards deaths of adults and infants alike. Lung disorders range from mild symptoms like common cold and influenza, to life threatening instances like Pneumonia, Asthma and Lung Cancer. Therefore, early diagnosis of a respiratory disorder can often help prevent a tragedy. Medical Diagnostic of a lung disorder generally requires an auscultation of lung sounds, brief chest x-ray and in some cases can even include bronchoscopy, chest imaging and thoracoscopy. Auscultation is often subject to various biased opinions by different physicians and the results can be catastrophic if the physician is untrained. This research paper proposes statistical analysis and classification of the various auscultations of lung sounds. Here, the breathing rate of a person is chosen as the core parameter to segment the total number of breaths into mild, soft and hard breaths. In addition to this, the peak value of the envelope of the normalized signal is successfully used to predict the odds of having a lung disorder, from among Crackle, Pneumonia, Wheeze and Asthma. The proposed system reduces the need of a trained pra ctitioner which in turn makes the lung disorder diagnosis cost effective and also pro vides unbiased predictions. The time complexity of the system is very low which makes it suitable for the real time diagnosis of various lung disorders. The lung sounds are taken from the R.A.L.E, Canada repository.
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