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Classification of Sputum Sounds Using Artificial Neural Network and Wavelet Transform

机译:利用人工神经网络和小波变换对痰液声音进行分类

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摘要

Sputum sounds are biological signals used to evaluate the condition of sputum deposition in a respiratory system. To improve the efficiency of intensive care unit (ICU) staff and achieve timely clearance of secretion in patients with mechanical ventilation, we propose a method consisting of feature extraction of sputum sound signals using the wavelet transform and classification of sputum existence using artificial neural network (ANN). Sputum sound signals were decomposed into the frequency subbands using the wavelet transform. A set of features was extracted from the subbands to represent the distribution of wavelet coefficients. An ANN system, trained using the Back Propagation (BP) algorithm, was implemented to recognize the existence of sputum sounds. The maximum precision rate of automatic recognition in texture of signals was as high as 84.53%. This study can be referred to as the optimization of performance and design in the automatic technology for sputum detection using sputum sound signals.
机译:痰液声音是用于评估呼吸系统中痰液沉积状况的生物信号。为了提高重症监护病房(ICU)人员的效率并及时清除机械通气患者的分泌物,我们提出了一种方法,该方法包括使用小波变换提取痰声信号的特征以及使用人工神经网络对痰液的存在进行分类(人工神经网络)。使用小波变换将痰液声音信号分解为子频带。从子带中提取了一组特征,以表示小波系数的分布。实施了使用反向传播(BP)算法训练的ANN系统,以识别痰液声音的存在。信号纹理自动识别的最大准确率高达84.53%。这项研究可被称为使用痰液声音信号进行痰液自动检测技术中性能和设计的优化。

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