Becker K W, Scheffer C, Blanckenberg M M, Diacon A H
Annu Int Conf IEEE Eng Med Biol Soc. 2013;2013:4334-7. doi: 10.1109/EMBC.2013.6610505.
Tuberculosis is a common and potentially deadly infectious disease, usually affecting the respiratory system and causing the sound properties of symptomatic infected lungs to differ from non-infected lungs. Auscultation is often ruled out as a reliable diagnostic technique for TB due to the random distribution of the infection and the varying severity of damage to the lungs. However, advancements in signal processing techniques for respiratory sounds can improve the potential of auscultation far beyond the capabilities of the conventional mechanical stethoscope. Though computer-based signal analysis of respiratory sounds has produced a significant body of research, there have not been any recent investigations into the computer-aided analysis of lung sounds associated with pulmonary Tuberculosis (TB), despite the severity of the disease in many countries. In this paper, respiratory sounds were recorded from 14 locations around the posterior and anterior chest walls of healthy volunteers and patients infected with pulmonary TB. The most significant signal features in both the time and frequency domains associated with the presence of TB, were identified by using the statistical overlap factor (SOF). These features were then employed to train a neural network to automatically classify the auscultation recordings into their respective healthy or TB-origin categories. The neural network yielded a diagnostic accuracy of 73%, but it is believed that automated filtering of the noise in the clinics, more training samples and perhaps other signal processing methods can improve the results of future studies. This work demonstrates the potential of computer-aided auscultation as an aid for the diagnosis and treatment of TB.
肺结核是一种常见且可能致命的传染病,通常影响呼吸系统,导致有症状的受感染肺部的声音特性与未受感染的肺部不同。由于感染的随机分布以及肺部损伤程度的差异,听诊常常被排除在肺结核可靠诊断技术之外。然而,呼吸音信号处理技术的进步可以极大地提升听诊的潜力,远超传统机械听诊器的能力。尽管基于计算机的呼吸音信号分析已经产生了大量研究,但尽管在许多国家该疾病的严重性,最近却没有对与肺结核(TB)相关的肺音进行计算机辅助分析的研究。在本文中,从健康志愿者和感染肺结核的患者的前胸壁和后胸壁周围14个位置记录了呼吸音。通过使用统计重叠因子(SOF),确定了与肺结核存在相关的时域和频域中最显著的信号特征。然后利用这些特征训练神经网络,以自动将听诊记录分类为各自的健康或肺结核起源类别。该神经网络的诊断准确率为73%,但人们认为,在临床中对噪声进行自动过滤、增加更多训练样本以及或许采用其他信号处理方法可以改善未来研究的结果。这项工作证明了计算机辅助听诊在肺结核诊断和治疗方面的潜力。