A Medical Cloud-Based Platform for Respiration Rate Measurement and Hierarchical Classification of Breath Disorders
The measurement of human respiratory signals is crucial in cyberbiological systems. A disordered breathing pattern can be the first symptom of different physiological, mechanical, or psychological dysfunctions. Therefore, a real-time monitoring of the respiration patterns, as well as respiration rat...
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doaj-e4662638184c4a78b5d3d23eb57a325a2020-11-24T23:46:19ZengMDPI AGSensors1424-82202014-06-01146112041122410.3390/s140611204s140611204A Medical Cloud-Based Platform for Respiration Rate Measurement and Hierarchical Classification of Breath DisordersAtena Roshan Fekr0Majid Janidarmian1Katarzyna Radecka2Zeljko Zilic3Department of Electrical and Computer Engineering, McGill University, 3480 University Street Montreal H3A 0E9, CanadaDepartment of Electrical and Computer Engineering, McGill University, 3480 University Street Montreal H3A 0E9, CanadaDepartment of Electrical and Computer Engineering, McGill University, 3480 University Street Montreal H3A 0E9, CanadaDepartment of Electrical and Computer Engineering, McGill University, 3480 University Street Montreal H3A 0E9, CanadaThe measurement of human respiratory signals is crucial in cyberbiological systems. A disordered breathing pattern can be the first symptom of different physiological, mechanical, or psychological dysfunctions. Therefore, a real-time monitoring of the respiration patterns, as well as respiration rate is a critical need in medical applications. There are several methods for respiration rate measurement. However, despite their accuracy, these methods are expensive and could not be integrated in a body sensor network. In this work, we present a real-time cloud-based platform for both monitoring the respiration rate and breath pattern classification, remotely. The proposed system is designed particularly for patients with breathing problems (e.g., respiratory complications after surgery) or sleep disorders. Our system includes calibrated accelerometer sensor, Bluetooth Low Energy (BLE) and cloud-computing model. We also suggest a procedure to improve the accuracy of respiration rate for patients at rest positions. The overall error in the respiration rate calculation is obtained 0.53% considering SPR-BTA spirometer as the reference. Five types of respiration disorders, Bradapnea, Tachypnea, Cheyn-stokes, Kaussmal, and Biot’s breathing are classified based on hierarchical Support Vector Machine (SVM) with seven different features. We have evaluated the performance of the proposed classification while it is individualized to every subject (case 1) as well as considering all subjects (case 2). Since the selection of kernel function is a key factor to decide SVM’s performance, in this paper three different kernel functions are evaluated. The experiments are conducted with 11 subjects and the average accuracy of 94.52% for case 1 and the accuracy of 81.29% for case 2 are achieved based on Radial Basis Function (RBF). Finally, a performance evaluation has been done for normal and impaired subjects considering sensitivity, specificity and G-mean parameters of different kernel functions.http://www.mdpi.com/1424-8220/14/6/11204respiration ratebreath analysisaccelerometer sensorSupport Vector Machinebreath disorder |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Atena Roshan Fekr Majid Janidarmian Katarzyna Radecka Zeljko Zilic |
spellingShingle |
Atena Roshan Fekr Majid Janidarmian Katarzyna Radecka Zeljko Zilic A Medical Cloud-Based Platform for Respiration Rate Measurement and Hierarchical Classification of Breath Disorders Sensors respiration rate breath analysis accelerometer sensor Support Vector Machine breath disorder |
author_facet |
Atena Roshan Fekr Majid Janidarmian Katarzyna Radecka Zeljko Zilic |
author_sort |
Atena Roshan Fekr |
title |
A Medical Cloud-Based Platform for Respiration Rate Measurement and Hierarchical Classification of Breath Disorders |
title_short |
A Medical Cloud-Based Platform for Respiration Rate Measurement and Hierarchical Classification of Breath Disorders |
title_full |
A Medical Cloud-Based Platform for Respiration Rate Measurement and Hierarchical Classification of Breath Disorders |
title_fullStr |
A Medical Cloud-Based Platform for Respiration Rate Measurement and Hierarchical Classification of Breath Disorders |
title_full_unstemmed |
A Medical Cloud-Based Platform for Respiration Rate Measurement and Hierarchical Classification of Breath Disorders |
title_sort |
medical cloud-based platform for respiration rate measurement and hierarchical classification of breath disorders |
publisher |
MDPI AG |
series |
Sensors |
issn |
1424-8220 |
publishDate |
2014-06-01 |
description |
The measurement of human respiratory signals is crucial in cyberbiological systems. A disordered breathing pattern can be the first symptom of different physiological, mechanical, or psychological dysfunctions. Therefore, a real-time monitoring of the respiration patterns, as well as respiration rate is a critical need in medical applications. There are several methods for respiration rate measurement. However, despite their accuracy, these methods are expensive and could not be integrated in a body sensor network. In this work, we present a real-time cloud-based platform for both monitoring the respiration rate and breath pattern classification, remotely. The proposed system is designed particularly for patients with breathing problems (e.g., respiratory complications after surgery) or sleep disorders. Our system includes calibrated accelerometer sensor, Bluetooth Low Energy (BLE) and cloud-computing model. We also suggest a procedure to improve the accuracy of respiration rate for patients at rest positions. The overall error in the respiration rate calculation is obtained 0.53% considering SPR-BTA spirometer as the reference. Five types of respiration disorders, Bradapnea, Tachypnea, Cheyn-stokes, Kaussmal, and Biot’s breathing are classified based on hierarchical Support Vector Machine (SVM) with seven different features. We have evaluated the performance of the proposed classification while it is individualized to every subject (case 1) as well as considering all subjects (case 2). Since the selection of kernel function is a key factor to decide SVM’s performance, in this paper three different kernel functions are evaluated. The experiments are conducted with 11 subjects and the average accuracy of 94.52% for case 1 and the accuracy of 81.29% for case 2 are achieved based on Radial Basis Function (RBF). Finally, a performance evaluation has been done for normal and impaired subjects considering sensitivity, specificity and G-mean parameters of different kernel functions. |
topic |
respiration rate breath analysis accelerometer sensor Support Vector Machine breath disorder |
url |
http://www.mdpi.com/1424-8220/14/6/11204 |
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