This paper proposed various feature extraction procedures to separate crackles and rhonchi of pathological lung sounds from normal lung sounds. The feature extraction process for distinguishing crackles and rhonchus from normal sounds comprises three signal-processing modules with the following functions: (1) f(min)/f(max) was the frequency ratio from the conventional technique of power spectral density (PSD) based on the Welch method. (2) The average instantaneous frequency (IF) and the exchange time of the instantaneous frequency were calculated by the Hilbert Huang transform (HHT). (3) The eigenvalues were obtained from the singular spectrum analysis (SSA) method. In the classification process, a support vector machine (SVM) was used to ...
This study aims to develop a computer-based clinical decision support system that will help clinicia...
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 ...
This paper proposed various feature extraction procedures to separate crackles and rhonchi of pathol...
The lung sounds is a non-stationary signal. It is a major challenge to analyze and differentiate the...
ABSTRACT: Auscaltation is a skill that requires substantial clinical experience, a fine stethoscope ...
Traditionally, the clinical diagnosis of a respiratory disease is made from a careful clinical exami...
Classification of respiratory sounds between normal and abnormal is very crucial for screening and d...
Classification of respiratory sounds between normal and abnormal is very crucial for screening and d...
Pneumonia currently accounts for 20.6 percent of total death and is ranked 2nd under the top 10 pri...
Pneumonia currently accounts for 20.6 percent of total death and is ranked 2nd under the top 10 pri...
Signal complexity in lung sounds is assumed to be able to differentiate and classify characteristic ...
Classification of respiratory sounds between normal and abnormal is very crucial for screening and ...
This study aims to develop a computer-based clinical decision support system that will help clinicia...
Today, as a result of the widespread use of electronic stethoscopes, lung sounds can be recorded an...
This study aims to develop a computer-based clinical decision support system that will help clinicia...
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 ...
This paper proposed various feature extraction procedures to separate crackles and rhonchi of pathol...
The lung sounds is a non-stationary signal. It is a major challenge to analyze and differentiate the...
ABSTRACT: Auscaltation is a skill that requires substantial clinical experience, a fine stethoscope ...
Traditionally, the clinical diagnosis of a respiratory disease is made from a careful clinical exami...
Classification of respiratory sounds between normal and abnormal is very crucial for screening and d...
Classification of respiratory sounds between normal and abnormal is very crucial for screening and d...
Pneumonia currently accounts for 20.6 percent of total death and is ranked 2nd under the top 10 pri...
Pneumonia currently accounts for 20.6 percent of total death and is ranked 2nd under the top 10 pri...
Signal complexity in lung sounds is assumed to be able to differentiate and classify characteristic ...
Classification of respiratory sounds between normal and abnormal is very crucial for screening and ...
This study aims to develop a computer-based clinical decision support system that will help clinicia...
Today, as a result of the widespread use of electronic stethoscopes, lung sounds can be recorded an...
This study aims to develop a computer-based clinical decision support system that will help clinicia...
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 ...