@inproceedings{50bd9a94f35141a393e8407458ad5df0,
title = "Smart Stethoscope: Intelligent Respiratory Disease Prediction System",
abstract = "Diagnosing and treating lung diseases can be challenging since the signs and symptoms of a wide range of medical conditions can indicate interstitial lung diseases. Respiratory diseases impose an immense worldwide health burden. It is even more deadly when considering COVID-19 in present times. Auscultation is the most common and primary method of respiratory disease diagnosis. It is known to be nonexpensive, non-invasive, safe, and takes less time for diagnosis. However, diagnosis accuracy using auscultation is subjective to the experience and knowledge of the physician, and it requires extensive training. This study proposes a solution developed for respiratory disease diagnosis. 'Smart Stethoscope' is an intelligent platform for providing assistance in respiratory disease diagnosis and training of novice physicians, which is powered by state-of-the-art artificial intelligence. This system performs 3 main functions(modes). These 3 modes are a unique aspect of this study. The real-time prediction mode provides real-time respiratory diagnosis predictions for lung sounds collected via auscultation. The offline training mode is for trainee doctors and medical students. Finally, the expert mode is used to continuously improve the system's prediction performance by getting validations and evaluations from pulmonologists. The smart stethoscope's respiratory disease diagnosis prediction model is developed by combining a state of-the-art neural network with an ensembling convolutional recurrent neural network. The proposed convolutional Bidirectional Long Short-Term Memory (C- Bi LSTM) model achieved an accuracy of 98% on 6 class classification of breathing cycles for ICBHF17 scientific challenge respiratory sound database. The novelty of the project lies on the whole platform which provides different functionalities for a diverse hierarchy of medical professionals which supported by a state of-the-art prediction model based on Deep Learning.",
keywords = "Biomedical Engineering, Deep learning, Lung Sound Analysis, Respiratory disease diagnosis, Signal processing",
author = "Akila Subasinghe and Asira Abeywickrama and Harsha Dissanayake and Herath, {Isuru Sachitha} and Rajitha Jayeratne and Randima Dinalankara and Sajith Edirisinghe and Vidura Jayasooriya",
year = "2022",
month = apr,
day = "14",
doi = "10.1109/ICARC54489.2022.9754142",
language = "English",
isbn = "9781665407427 (PoD)",
series = "International conference on advanced research in computing",
publisher = "IEEE",
pages = "242--247",
booktitle = "2022 2nd International Conference on Advanced Research in Computing (ICARC)",
note = "2nd International Conference on Advanced Research in Computing (ICARC 2022) ; Conference date: 23-02-2022 Through 24-02-2022",
}