Physiological Sensor Signals Classification for Healthcare Using Sensor Data Fusion and Case-Based Reasoning

Today, clinicians often do diagnosis and classification of diseases based on information collected from several physiological sensor signals. However, sensor signal could easily be vulnerable to uncertain noises or interferences and due to large individual variations sensitivity to different physiol...

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Main Authors: Shahina Begum, Shaibal Barua, Mobyen Uddin Ahmed
Format: Article
Language:English
Published: MDPI AG 2014-07-01
Series:Sensors
Subjects:
Online Access:http://www.mdpi.com/1424-8220/14/7/11770
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spelling doaj-92f4fa4218704f1c9f04e29392b8dabb2020-11-24T23:31:32ZengMDPI AGSensors1424-82202014-07-01147117701178510.3390/s140711770s140711770Physiological Sensor Signals Classification for Healthcare Using Sensor Data Fusion and Case-Based ReasoningShahina Begum0Shaibal Barua1Mobyen Uddin Ahmed2School of Innovation, Design and Engineering, Mälardalen University, SE-72123 Västerås, SwedenSchool of Innovation, Design and Engineering, Mälardalen University, SE-72123 Västerås, SwedenSchool of Innovation, Design and Engineering, Mälardalen University, SE-72123 Västerås, SwedenToday, clinicians often do diagnosis and classification of diseases based on information collected from several physiological sensor signals. However, sensor signal could easily be vulnerable to uncertain noises or interferences and due to large individual variations sensitivity to different physiological sensors could also vary. Therefore, multiple sensor signal fusion is valuable to provide more robust and reliable decision. This paper demonstrates a physiological sensor signal classification approach using sensor signal fusion and case-based reasoning. The proposed approach has been evaluated to classify Stressed or Relaxed individuals using sensor data fusion. Physiological sensor signals i.e., Heart Rate (HR), Finger Temperature (FT), Respiration Rate (RR), Carbon dioxide (CO2) and Oxygen Saturation (SpO2) are collected during the data collection phase. Here, sensor fusion has been done in two different ways: (i) decision-level fusion using features extracted through traditional approaches; and (ii) data-level fusion using features extracted by means of Multivariate Multiscale Entropy (MMSE). Case-Based Reasoning (CBR) is applied for the classification of the signals. The experimental result shows that the proposed system could classify Stressed or Relaxed individual 87.5% accurately compare to an expert in the domain. So, it shows promising result in the psychophysiological domain and could be possible to adapt this approach to other relevant healthcare systems.http://www.mdpi.com/1424-8220/14/7/11770sensor fusioncase-based reasoningMultivariate Multiscale Entropyclassificationmental state
collection DOAJ
language English
format Article
sources DOAJ
author Shahina Begum
Shaibal Barua
Mobyen Uddin Ahmed
spellingShingle Shahina Begum
Shaibal Barua
Mobyen Uddin Ahmed
Physiological Sensor Signals Classification for Healthcare Using Sensor Data Fusion and Case-Based Reasoning
Sensors
sensor fusion
case-based reasoning
Multivariate Multiscale Entropy
classification
mental state
author_facet Shahina Begum
Shaibal Barua
Mobyen Uddin Ahmed
author_sort Shahina Begum
title Physiological Sensor Signals Classification for Healthcare Using Sensor Data Fusion and Case-Based Reasoning
title_short Physiological Sensor Signals Classification for Healthcare Using Sensor Data Fusion and Case-Based Reasoning
title_full Physiological Sensor Signals Classification for Healthcare Using Sensor Data Fusion and Case-Based Reasoning
title_fullStr Physiological Sensor Signals Classification for Healthcare Using Sensor Data Fusion and Case-Based Reasoning
title_full_unstemmed Physiological Sensor Signals Classification for Healthcare Using Sensor Data Fusion and Case-Based Reasoning
title_sort physiological sensor signals classification for healthcare using sensor data fusion and case-based reasoning
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2014-07-01
description Today, clinicians often do diagnosis and classification of diseases based on information collected from several physiological sensor signals. However, sensor signal could easily be vulnerable to uncertain noises or interferences and due to large individual variations sensitivity to different physiological sensors could also vary. Therefore, multiple sensor signal fusion is valuable to provide more robust and reliable decision. This paper demonstrates a physiological sensor signal classification approach using sensor signal fusion and case-based reasoning. The proposed approach has been evaluated to classify Stressed or Relaxed individuals using sensor data fusion. Physiological sensor signals i.e., Heart Rate (HR), Finger Temperature (FT), Respiration Rate (RR), Carbon dioxide (CO2) and Oxygen Saturation (SpO2) are collected during the data collection phase. Here, sensor fusion has been done in two different ways: (i) decision-level fusion using features extracted through traditional approaches; and (ii) data-level fusion using features extracted by means of Multivariate Multiscale Entropy (MMSE). Case-Based Reasoning (CBR) is applied for the classification of the signals. The experimental result shows that the proposed system could classify Stressed or Relaxed individual 87.5% accurately compare to an expert in the domain. So, it shows promising result in the psychophysiological domain and could be possible to adapt this approach to other relevant healthcare systems.
topic sensor fusion
case-based reasoning
Multivariate Multiscale Entropy
classification
mental state
url http://www.mdpi.com/1424-8220/14/7/11770
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AT mobyenuddinahmed physiologicalsensorsignalsclassificationforhealthcareusingsensordatafusionandcasebasedreasoning
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