We applied deep learning to create an algorithm for breathing phase detection in lung sound recordings, and we compared the breathing phases detected by the algorithm and manually annotated by two experienced lung sound researchers. Our algorithm uses a convolutional neural network with spectrograms as the features, removing the need to specify features explicitly. We trained and evaluated the algorithm using three subsets that are larger than previously seen in the literature. We evaluated the performance of the method using two methods. First, discrete count of agreed breathing phases (using 50% overlap between a pair of boxes), shows a mean agreement with lung sound experts of 97% for inspiration and 87% for expiration. Second, the fract...
This paper presents a robust deep learning framework developed to detect respiratory diseases from r...
The present report describes the development of a technique for automatic wheezing recognition in di...
Respiratory diseases indicate severe medical problems. They cause death for more than three million ...
Lung diseases are among the diseases that seriously threaten human health, and many deaths today ar...
A reliable, remote, and continuous real-time respiratory sound monitor with automated respiratory so...
Background: Respiratory sound analysis represents a research topic of growing interest in recent tim...
Respiratory diseases indicate severe medical problems. They cause death for more than three million ...
A respiratory phase detection method was developed for automatic lung sound recognition without meas...
Abstract In the field of medicine, with the introduction of computer systems that can collect and an...
Respiratory illnesses are a main source of death in the world and exact lung sound identification is...
In this paper, we show the first results on the estimation of breathing signal from conversational s...
Abstract Auscultation has been essential part of the physical examination; this is non-invasive, rea...
This pioneering study aims to revolutionize self-symptom management and telemedicine-based remote mo...
Objective: This paper proposes a novel framework for lung sound event detection, segmenting continuo...
Objective: This paper proposes a novel framework for lung sound event detection, segmenting continuo...
This paper presents a robust deep learning framework developed to detect respiratory diseases from r...
The present report describes the development of a technique for automatic wheezing recognition in di...
Respiratory diseases indicate severe medical problems. They cause death for more than three million ...
Lung diseases are among the diseases that seriously threaten human health, and many deaths today ar...
A reliable, remote, and continuous real-time respiratory sound monitor with automated respiratory so...
Background: Respiratory sound analysis represents a research topic of growing interest in recent tim...
Respiratory diseases indicate severe medical problems. They cause death for more than three million ...
A respiratory phase detection method was developed for automatic lung sound recognition without meas...
Abstract In the field of medicine, with the introduction of computer systems that can collect and an...
Respiratory illnesses are a main source of death in the world and exact lung sound identification is...
In this paper, we show the first results on the estimation of breathing signal from conversational s...
Abstract Auscultation has been essential part of the physical examination; this is non-invasive, rea...
This pioneering study aims to revolutionize self-symptom management and telemedicine-based remote mo...
Objective: This paper proposes a novel framework for lung sound event detection, segmenting continuo...
Objective: This paper proposes a novel framework for lung sound event detection, segmenting continuo...
This paper presents a robust deep learning framework developed to detect respiratory diseases from r...
The present report describes the development of a technique for automatic wheezing recognition in di...
Respiratory diseases indicate severe medical problems. They cause death for more than three million ...