Background: Respiratory sound analysis represents a research topic of growing interest in recent times. In fact, in this area, there is the potential to automatically infer the abnormalities in the preliminary stages of a lung dysfunction. Methods: In this paper, we propose a method to analyse respiratory sounds in an automatic way. The aim is to show the effectiveness of machine learning techniques in respiratory sound analysis. A feature vector is gathered directly from breath audio and, thus, by exploiting supervised machine learning techniques, we detect if the feature vector is related to a patient affected by a lung disease. Moreover, the proposed method is able to characterise the lung disease in asthma, bronchiectasis, bronchiolitis...
Background: As rapid growth of respiratory diseases is witnessed around the world; medical research ...
Background: As rapid growth of respiratory diseases is witnessed around the world; medical research ...
We applied deep learning to create an algorithm for breathing phase detection in lung sound recordin...
Lung diseases are among the diseases that seriously threaten human health, and many deaths today ar...
Respiratory illnesses are a main source of death in the world and exact lung sound identification is...
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...
Abstract Auscultation has been essential part of the physical examination; this is non-invasive, rea...
Abstract In the field of medicine, with the introduction of computer systems that can collect and an...
Respiratory diseases indicate severe medical problems. They cause death for more than three million ...
With the development of computer -systems that can collect and analyze enormous volumes of data, the...
The lung sounds is a non-stationary signal. It is a major challenge to analyze and differentiate the...
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...
Background: As rapid growth of respiratory diseases is witnessed around the world; medical research ...
Background: As rapid growth of respiratory diseases is witnessed around the world; medical research ...
Background: As rapid growth of respiratory diseases is witnessed around the world; medical research ...
We applied deep learning to create an algorithm for breathing phase detection in lung sound recordin...
Lung diseases are among the diseases that seriously threaten human health, and many deaths today ar...
Respiratory illnesses are a main source of death in the world and exact lung sound identification is...
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...
Abstract Auscultation has been essential part of the physical examination; this is non-invasive, rea...
Abstract In the field of medicine, with the introduction of computer systems that can collect and an...
Respiratory diseases indicate severe medical problems. They cause death for more than three million ...
With the development of computer -systems that can collect and analyze enormous volumes of data, the...
The lung sounds is a non-stationary signal. It is a major challenge to analyze and differentiate the...
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...
Background: As rapid growth of respiratory diseases is witnessed around the world; medical research ...
Background: As rapid growth of respiratory diseases is witnessed around the world; medical research ...
Background: As rapid growth of respiratory diseases is witnessed around the world; medical research ...
We applied deep learning to create an algorithm for breathing phase detection in lung sound recordin...