In this paper, a wavelet packet-based method is used for detection of abnormal respiratory sounds. The sound signal is divided into segments, and a feature vector for classification is formed using the results of the search for the best wavelet packet decomposition. The segments are classified as containing crackles, wheezes or normal lung sounds, using Learning Vector Quantization. The method is tested using a small set of real patient data which was also analysed by an expert observer. The preliminary results are promising, although not yet good enough for clinical use
Audio-based technologies and healthcare go hand-in-hand [1]. Research has shown that it is possible ...
66 p.Lung sounds have been valuable indicators of respiratory health and disease since ancient times...
Traditionally, the clinical diagnosis of a respiratory disease is made from a careful clinical exami...
This work presents a system achieving classification of respiratory sounds directly related to vario...
Abstract-In this paper, a classification method for respiratory sounds (RSs) in patients with asthma...
Background:Auscultation is a medical procedure used for the initial diagnosis and assessment of lung...
The lung sounds is a non-stationary signal. It is a major challenge to analyze and differentiate the...
Background: Respiratory sound analysis represents a research topic of growing interest in recent tim...
This study aims to develop a computer-based clinical decision support system that will help clinicia...
This study aims to develop a computer-based clinical decision support system that will help clinicia...
Several disease affecting the human respiratory system, such as asthma, pneumonia, etc. are associat...
Pneumonia currently accounts for 20.6 percent of total death and is ranked 2nd under the top 10 pri...
Abstract. Wheezes are one of the most important adventitious sounds in pulmonary system. They are ob...
Pneumonia currently accounts for 20.6 percent of total death and is ranked 2nd under the top 10 pri...
Audio-based technologies and healthcare go hand-in-hand [1]. Research has shown that it is possible ...
Audio-based technologies and healthcare go hand-in-hand [1]. Research has shown that it is possible ...
66 p.Lung sounds have been valuable indicators of respiratory health and disease since ancient times...
Traditionally, the clinical diagnosis of a respiratory disease is made from a careful clinical exami...
This work presents a system achieving classification of respiratory sounds directly related to vario...
Abstract-In this paper, a classification method for respiratory sounds (RSs) in patients with asthma...
Background:Auscultation is a medical procedure used for the initial diagnosis and assessment of lung...
The lung sounds is a non-stationary signal. It is a major challenge to analyze and differentiate the...
Background: Respiratory sound analysis represents a research topic of growing interest in recent tim...
This study aims to develop a computer-based clinical decision support system that will help clinicia...
This study aims to develop a computer-based clinical decision support system that will help clinicia...
Several disease affecting the human respiratory system, such as asthma, pneumonia, etc. are associat...
Pneumonia currently accounts for 20.6 percent of total death and is ranked 2nd under the top 10 pri...
Abstract. Wheezes are one of the most important adventitious sounds in pulmonary system. They are ob...
Pneumonia currently accounts for 20.6 percent of total death and is ranked 2nd under the top 10 pri...
Audio-based technologies and healthcare go hand-in-hand [1]. Research has shown that it is possible ...
Audio-based technologies and healthcare go hand-in-hand [1]. Research has shown that it is possible ...
66 p.Lung sounds have been valuable indicators of respiratory health and disease since ancient times...
Traditionally, the clinical diagnosis of a respiratory disease is made from a careful clinical exami...