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首页> 外文期刊>Journal of medical systems >Applying Cybernetic Technology to Diagnose Human Pulmonary Sounds
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Applying Cybernetic Technology to Diagnose Human Pulmonary Sounds

机译:应用控制论技术诊断人的肺音

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Chest auscultation is a crucial and efficient method for diagnosing lung disease; however, it is a subjective process that relies on physician experience and the ability to differentiate between various sound patterns. Because the physiological signals composed of heart sounds and pulmonary sounds (PSs) are greater than 120 Hz and the human ear is not sensitive to low frequencies, successfully making diagnostic classifications is difficult. To solve this problem, we constructed various PS recognition systems for classifying six PS classes: vesicular breath sounds, bronchial breath sounds, tracheal breath sounds, crackles, wheezes, and stridor sounds. First, we used a piezoelectric microphone and data acquisition card to acquire PS signals and perform signal preprocessing. A wavelet transform was used for feature extraction, and the PS signals were decomposed into frequency subbands. Using a statistical method, we extracted 17 features that were used as the input vectors of a neural network. We proposed a 2-stage classifier combined with a back-propagation (BP) neural network and learning vector quantization (LVQ) neural network, which improves classification accuracy by using a haploid neural network. The receiver operating characteristic (ROC) curve verifies the high performance level of the neural network. To expand traditional auscultation methods, we constructed various PS diagnostic systems that can correctly classify the six common PSs. The proposed device overcomes the lack of human sensitivity to low-frequency sounds and various PS waves, characteristic values, and a spectral analysis charts are provided to elucidate the design of the human-machine interface.
机译:胸部听诊是诊断肺部疾病的重要而有效的方法。但是,这是一个主观过程,取决于医生的经验以及区分各种声音模式的能力。由于由心音和肺音(PSs)组成的生理信号大于120 Hz,并且人耳对低频不敏感,因此很难成功地进行诊断分类。为了解决这个问题,我们构建了各种PS识别系统,以对6种PS类别进行分类:水泡呼吸音,支气管呼吸音,气管呼吸音,crack啪声,喘息音和喘鸣音。首先,我们使用压电麦克风和数据采集卡来采集PS信号并执行信号预处理。小波变换被用于特征提取,并且PS信号被分解成频率子带。使用统计方法,我们提取了17个特征,这些特征被用作神经网络的输入向量。我们提出了结合反向传播(BP)神经网络和学习矢量量化(LVQ)神经网络的两阶段分类器,该方法通过使用单倍体神经网络提高了分类精度。接收器工作特性(ROC)曲线验证了神经网络的高性能水平。为了扩展传统的听诊方法,我们构建了各种PS诊断系统,可以对6种常见PS进行正确分类。拟议的设备克服了人类对低频声音缺乏敏感性以及各种PS波,特征值和频谱分析图的不足,以阐明人机界面的设计。

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