A Continuous Change Detection Mechanism to Identify Anomalies in ECG Signals for WBAN-Based Healthcare Environments

The developments and applications of wireless body area networks (WBANs) for healthcare and remote monitoring have brought a revolution in the medical research field. Numerous physiological sensors are integrated in a WBAN architecture in order to monitor any significant changes in normal health con...

Full description

Bibliographic Details
Main Authors: Farrukh Aslam Khan, Nur Al Hasan Haldar, Aftab Ali, Mohsin Iftikhar, Tanveer A. Zia, Albert Y. Zomaya
Format: Article
Language:English
Published: IEEE 2017-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/7945242/
id doaj-7d9e48baf6e3427a88d6120dc1de252e
record_format Article
spelling doaj-7d9e48baf6e3427a88d6120dc1de252e2021-03-29T20:15:16ZengIEEEIEEE Access2169-35362017-01-015135311354410.1109/ACCESS.2017.27142587945242A Continuous Change Detection Mechanism to Identify Anomalies in ECG Signals for WBAN-Based Healthcare EnvironmentsFarrukh Aslam Khan0https://orcid.org/0000-0002-7023-7172Nur Al Hasan Haldar1Aftab Ali2Mohsin Iftikhar3Tanveer A. Zia4Albert Y. Zomaya5Center of Excellence in Information Assurance, King Saud University, Riyadh, Saudi ArabiaCenter of Excellence in Information Assurance, King Saud University, Riyadh, Saudi ArabiaCenter of Excellence in Information Assurance, King Saud University, Riyadh, Saudi ArabiaCentre for Distributed and High Performance Computing, School of Information Technologies, The University of Sydney, Sydney, NSW, AustraliaSchool of Computing and Mathematics, Charles Sturt University, Wagga Wagga, NSW, AustraliaCentre for Distributed and High Performance Computing, School of Information Technologies, The University of Sydney, Sydney, NSW, AustraliaThe developments and applications of wireless body area networks (WBANs) for healthcare and remote monitoring have brought a revolution in the medical research field. Numerous physiological sensors are integrated in a WBAN architecture in order to monitor any significant changes in normal health conditions. This monitored data are then wirelessly transferred to a centralized personal server (PS). However, this transferred information can be captured and altered by an adversary during communication between the physiological sensors and the PS. Another scenario where changes can occur in the physiological data is an emergency situation, when there is a sudden change in the physiological values, e.g., changes occur in electrocardiogram (ECG) values just before the occurrence of a heart attack. This paper presents a centralized approach for the detection of abnormalities, as well as intrusions, such as forgery, insertions, and modifications in the ECG data. A simplified Markov model-based detection mechanism is used to detect changes in the ECG data. The features are extracted from the ECG data to form a feature set, which is then divided into sequences. The probability of each sequence is calculated, and based on this probability, the system decides whether the change has occurred or not. Our experiments and analyses show that the proposed scheme has a high detection rate for 5% as well as 10% abnormalities in the data set. The proposed scheme also has a higher true negative rate with a significantly reduced running time for both 5% and 10% abnormalities. Similarly, the receiver operating characteristic (ROC) and ROC convex hull have very promising results.https://ieeexplore.ieee.org/document/7945242/Healthcarewireless body area networkschange detectionintrusion detectionMarkov model
collection DOAJ
language English
format Article
sources DOAJ
author Farrukh Aslam Khan
Nur Al Hasan Haldar
Aftab Ali
Mohsin Iftikhar
Tanveer A. Zia
Albert Y. Zomaya
spellingShingle Farrukh Aslam Khan
Nur Al Hasan Haldar
Aftab Ali
Mohsin Iftikhar
Tanveer A. Zia
Albert Y. Zomaya
A Continuous Change Detection Mechanism to Identify Anomalies in ECG Signals for WBAN-Based Healthcare Environments
IEEE Access
Healthcare
wireless body area networks
change detection
intrusion detection
Markov model
author_facet Farrukh Aslam Khan
Nur Al Hasan Haldar
Aftab Ali
Mohsin Iftikhar
Tanveer A. Zia
Albert Y. Zomaya
author_sort Farrukh Aslam Khan
title A Continuous Change Detection Mechanism to Identify Anomalies in ECG Signals for WBAN-Based Healthcare Environments
title_short A Continuous Change Detection Mechanism to Identify Anomalies in ECG Signals for WBAN-Based Healthcare Environments
title_full A Continuous Change Detection Mechanism to Identify Anomalies in ECG Signals for WBAN-Based Healthcare Environments
title_fullStr A Continuous Change Detection Mechanism to Identify Anomalies in ECG Signals for WBAN-Based Healthcare Environments
title_full_unstemmed A Continuous Change Detection Mechanism to Identify Anomalies in ECG Signals for WBAN-Based Healthcare Environments
title_sort continuous change detection mechanism to identify anomalies in ecg signals for wban-based healthcare environments
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2017-01-01
description The developments and applications of wireless body area networks (WBANs) for healthcare and remote monitoring have brought a revolution in the medical research field. Numerous physiological sensors are integrated in a WBAN architecture in order to monitor any significant changes in normal health conditions. This monitored data are then wirelessly transferred to a centralized personal server (PS). However, this transferred information can be captured and altered by an adversary during communication between the physiological sensors and the PS. Another scenario where changes can occur in the physiological data is an emergency situation, when there is a sudden change in the physiological values, e.g., changes occur in electrocardiogram (ECG) values just before the occurrence of a heart attack. This paper presents a centralized approach for the detection of abnormalities, as well as intrusions, such as forgery, insertions, and modifications in the ECG data. A simplified Markov model-based detection mechanism is used to detect changes in the ECG data. The features are extracted from the ECG data to form a feature set, which is then divided into sequences. The probability of each sequence is calculated, and based on this probability, the system decides whether the change has occurred or not. Our experiments and analyses show that the proposed scheme has a high detection rate for 5% as well as 10% abnormalities in the data set. The proposed scheme also has a higher true negative rate with a significantly reduced running time for both 5% and 10% abnormalities. Similarly, the receiver operating characteristic (ROC) and ROC convex hull have very promising results.
topic Healthcare
wireless body area networks
change detection
intrusion detection
Markov model
url https://ieeexplore.ieee.org/document/7945242/
work_keys_str_mv AT farrukhaslamkhan acontinuouschangedetectionmechanismtoidentifyanomaliesinecgsignalsforwbanbasedhealthcareenvironments
AT nuralhasanhaldar acontinuouschangedetectionmechanismtoidentifyanomaliesinecgsignalsforwbanbasedhealthcareenvironments
AT aftabali acontinuouschangedetectionmechanismtoidentifyanomaliesinecgsignalsforwbanbasedhealthcareenvironments
AT mohsiniftikhar acontinuouschangedetectionmechanismtoidentifyanomaliesinecgsignalsforwbanbasedhealthcareenvironments
AT tanveerazia acontinuouschangedetectionmechanismtoidentifyanomaliesinecgsignalsforwbanbasedhealthcareenvironments
AT albertyzomaya acontinuouschangedetectionmechanismtoidentifyanomaliesinecgsignalsforwbanbasedhealthcareenvironments
AT farrukhaslamkhan continuouschangedetectionmechanismtoidentifyanomaliesinecgsignalsforwbanbasedhealthcareenvironments
AT nuralhasanhaldar continuouschangedetectionmechanismtoidentifyanomaliesinecgsignalsforwbanbasedhealthcareenvironments
AT aftabali continuouschangedetectionmechanismtoidentifyanomaliesinecgsignalsforwbanbasedhealthcareenvironments
AT mohsiniftikhar continuouschangedetectionmechanismtoidentifyanomaliesinecgsignalsforwbanbasedhealthcareenvironments
AT tanveerazia continuouschangedetectionmechanismtoidentifyanomaliesinecgsignalsforwbanbasedhealthcareenvironments
AT albertyzomaya continuouschangedetectionmechanismtoidentifyanomaliesinecgsignalsforwbanbasedhealthcareenvironments
_version_ 1724194992143990784