Authors :
Kuljeet Singh
Volume/Issue :
Volume 8 - 2023, Issue 12 - December
Google Scholar :
http://tinyurl.com/3567cvua
Scribd :
http://tinyurl.com/nmtw7pnf
DOI :
https://doi.org/10.5281/zenodo.10441769
Abstract :
Respiratory diseases are on the rise around
the world and the impact of COVID-19 has highlighted
the need for early and better diagnosis of respiratory
diseases. The growing air pollution from vehicles,
wildfires, coal-burning power plants and other natural
and non-natural causes, particularly in the developing
world is leading to more deaths due to respiratory
problems leaving many in need of diagnosis and
treatment. The use of machine learning for preliminary
analysis and diagnosis of diseases is evolving rapidly,
particularly in the area of analysis of medical imagesto
help sort through and analyze hundreds of X-ray, CT-
Scan or MRI images to highlight the area affected by a
potential medical condition and suggest a possible
diagnosis. This has allowed timely detection of
potentially life-threatening diseases, reduced diagnosis
time, improved efficiency and better coverage. These
medical aids are also being integrated into the medical
scanning equipment and related software to further
improve the diagnostic process.
This paper attempts to expand the use of deep
learning as a method of assisting in the early diagnosis of
respiratory diseases using audio recordings. The paper
describes an approach for analyzing lung sounds
captured using an electronic stethoscope from different
parts of a patient’s chest wall. The paper describes the
processes used to extract features from the sound signals,
dataset preparation, neural network architectures
evaluated and the prediction results.
Keywords :
Respiratory Diseases, Audio analysis, Deep Learning.
Respiratory diseases are on the rise around
the world and the impact of COVID-19 has highlighted
the need for early and better diagnosis of respiratory
diseases. The growing air pollution from vehicles,
wildfires, coal-burning power plants and other natural
and non-natural causes, particularly in the developing
world is leading to more deaths due to respiratory
problems leaving many in need of diagnosis and
treatment. The use of machine learning for preliminary
analysis and diagnosis of diseases is evolving rapidly,
particularly in the area of analysis of medical imagesto
help sort through and analyze hundreds of X-ray, CT-
Scan or MRI images to highlight the area affected by a
potential medical condition and suggest a possible
diagnosis. This has allowed timely detection of
potentially life-threatening diseases, reduced diagnosis
time, improved efficiency and better coverage. These
medical aids are also being integrated into the medical
scanning equipment and related software to further
improve the diagnostic process.
This paper attempts to expand the use of deep
learning as a method of assisting in the early diagnosis of
respiratory diseases using audio recordings. The paper
describes an approach for analyzing lung sounds
captured using an electronic stethoscope from different
parts of a patient’s chest wall. The paper describes the
processes used to extract features from the sound signals,
dataset preparation, neural network architectures
evaluated and the prediction results.
Keywords :
Respiratory Diseases, Audio analysis, Deep Learning.