Despite extensive research in the area of identification and discrimination of tracheal-bronchial breath sounds by computer analysis, the process of identifying auscultated sounds is still subject to high estimation uncertainties. Here we assess the performance of the relatively new constructive probabilistic neural network (CPNN) against the more common classifiers, namely the multilayer perceptron (MLP) and radial basis function network (RBFN), in classifying a broad range of tracheal-bronchial breath sounds. We present our data as signal estimation models of the tracheal bronchial frequency spectra. We have examined the trained structure of the CPNN with respect to the other architectures and conclude that this architecture offers an att...
Abstract — A continuation of research into modeling airway events of patients undergoing sedation is...
With the development of computer -systems that can collect and analyze enormous volumes of data, the...
The paper proposes a graph-theoretical approach to auscultation, bringing out the potential of graph...
A reliable, remote, and continuous real-time respiratory sound monitor with automated respiratory so...
Abstract Auscultation has been essential part of the physical examination; this is non-invasive, rea...
Background: Computerized lung sound analysis involves recording lung sound via an electronic device,...
Background: Respiratory sound analysis represents a research topic of growing interest in recent tim...
Respiratory illnesses are a main source of death in the world and exact lung sound identification is...
The acquisition of Breath sounds (BS) signals from a human respiratory system with an electronic ste...
Abstract In the field of medicine, with the introduction of computer systems that can collect and an...
Abstract-In this paper, a classification method for respiratory sounds (RSs) in patients with asthma...
A continuation of research into modeling airway events of patients undergoing sedation is described....
Objectives: The present work reports the study of 34 rhonchi (RB) and Bronchial Breath (BB) signals ...
We applied deep learning to create an algorithm for breathing phase detection in lung sound recordin...
The goal of this study was to develop an automated and objective method to separate swallowing sound...
Abstract — A continuation of research into modeling airway events of patients undergoing sedation is...
With the development of computer -systems that can collect and analyze enormous volumes of data, the...
The paper proposes a graph-theoretical approach to auscultation, bringing out the potential of graph...
A reliable, remote, and continuous real-time respiratory sound monitor with automated respiratory so...
Abstract Auscultation has been essential part of the physical examination; this is non-invasive, rea...
Background: Computerized lung sound analysis involves recording lung sound via an electronic device,...
Background: Respiratory sound analysis represents a research topic of growing interest in recent tim...
Respiratory illnesses are a main source of death in the world and exact lung sound identification is...
The acquisition of Breath sounds (BS) signals from a human respiratory system with an electronic ste...
Abstract In the field of medicine, with the introduction of computer systems that can collect and an...
Abstract-In this paper, a classification method for respiratory sounds (RSs) in patients with asthma...
A continuation of research into modeling airway events of patients undergoing sedation is described....
Objectives: The present work reports the study of 34 rhonchi (RB) and Bronchial Breath (BB) signals ...
We applied deep learning to create an algorithm for breathing phase detection in lung sound recordin...
The goal of this study was to develop an automated and objective method to separate swallowing sound...
Abstract — A continuation of research into modeling airway events of patients undergoing sedation is...
With the development of computer -systems that can collect and analyze enormous volumes of data, the...
The paper proposes a graph-theoretical approach to auscultation, bringing out the potential of graph...