Sensor fault and patient anomaly detection and classification in medical wireless sensor networks

Wireless Sensor Networks are vulnerable to a plethora of different fault types and external attacks after their deployment. We focus on sensor networks used in healthcare applications for vital sign collection from remotely monitored patients. These types of personal area networks must be robust and resilient to sensor failures as their capabilities encompass highly critical systems. Our objective is to propose an anomaly detection algorithm for medical wireless sensor networks. Our proposed approach firstly classifies instances of sensed patient attributes as normal and abnormal. Once we detect an abnormal instance, we use regression prediction to discern between a faulty sensor reading and a patient entering into a critical state. Our experimental results on real patient datasets show that our proposed approach is able to quickly detect patient anomalies and sensor faults with high detection accuracy while maintaining a low false alarm ratio.

[1]  Aaas News,et al.  Book Reviews , 1893, Buffalo Medical and Surgical Journal.

[2]  Elaine Lawrence,et al.  Medical MoteCare: A Distributed Personal Healthcare Monitoring System , 2009, 2009 International Conference on eHealth, Telemedicine, and Social Medicine.

[3]  Fei Huang,et al.  Reliability Evaluation of Wireless Sensor Networks Using Logistic Regression , 2010, 2010 International Conference on Communications and Mobile Computing.

[4]  Li Chen,et al.  Implementation of a wearerable real-time system for physical activity recognition based on Naive Bayes classifier , 2010, 2010 International Conference on Bioinformatics and Biomedical Technology.

[5]  Rajeev Tripathi,et al.  MACHINE LEARNING APPROACH FOR ANOMALY DETECTION IN WIRELESS SENSOR DATA , 2011 .

[6]  Min Chen,et al.  Outlier detection and countermeasure for hierarchical wireless sensor networks , 2010, IET Inf. Secur..

[7]  Matt Welsh,et al.  CodeBlue: An Ad Hoc Sensor Network Infrastructure for Emergency Medical Care , 2004 .

[8]  Ramesh Govindan,et al.  Sensor faults: Detection methods and prevalence in real-world datasets , 2010, TOSN.

[9]  Bernardo Cunha,et al.  Vital-Jacket®: A wearable wireless vital signs monitor for patients' mobility in cardiology and sports , 2010, 2010 4th International Conference on Pervasive Computing Technologies for Healthcare.

[10]  Yuan Yao,et al.  Online anomaly detection for sensor systems: A simple and efficient approach , 2010, Perform. Evaluation.

[11]  Dharma P. Agrawal,et al.  Fault tolerant multiple event detection in a wireless sensor network , 2008, J. Parallel Distributed Comput..

[12]  Ricardo Gutierrez-Osuna,et al.  Development and Evaluation of an Ambulatory Stress Monitor Based on Wearable Sensors , 2012, IEEE Transactions on Information Technology in Biomedicine.

[13]  K. Montgomery,et al.  Lifeguard - a personal physiological monitor for extreme environments , 2004, The 26th Annual International Conference of the IEEE Engineering in Medicine and Biology Society.

[14]  Krešimir Grgić,et al.  Medical applications of wireless sensor networks - current status and future directions. , 2012, Medicinski glasnik : official publication of the Medical Association of Zenica-Doboj Canton, Bosnia and Herzegovina.

[15]  Jian Pei,et al.  Hierarchical distributed data classification in wireless sensor networks , 2010, Comput. Commun..

[16]  Cem Ersoy,et al.  Wireless sensor networks for healthcare: A survey , 2010, Comput. Networks.

[17]  Oliver Obst,et al.  Wireless Sensor Network Anomalies: Diagnosis and Detection Strategies , 2011 .

[18]  Chenyang Lu,et al.  Reliable clinical monitoring using wireless sensor networks: experiences in a step-down hospital unit , 2010, SenSys '10.

[19]  JeongGil Ko,et al.  Wireless Sensor Networks for Healthcare , 2010, Proceedings of the IEEE.

[20]  Deborah Estrin,et al.  Heartbeat of a nest: Using imagers as biological sensors , 2010, TOSN.

[21]  Adrian Burns,et al.  SHIMMER™ – A Wireless Sensor Platform for Noninvasive Biomedical Research , 2010, IEEE Sensors Journal.

[22]  Ian Witten,et al.  Data Mining , 2000 .

[23]  Giuseppe Lo Re,et al.  Probabilistic Anomaly Detection for Wireless Sensor Networks , 2011, AI*IA.

[24]  John A. Stankovic,et al.  ALARM-NET: Wireless Sensor Networks for Assisted-Living and Residential Monitoring , 2006 .

[25]  JeongGil Ko,et al.  MEDiSN: medical emergency detection in sensor networks , 2008, SenSys '08.

[26]  W. Marsden I and J , 2012 .

[27]  Supakit Siripanadorn,et al.  Anomaly detection in wireless sensor networks using self-organizing map and wavelets , 2010 .

[28]  อนิรุธ สืบสิงห์,et al.  Data Mining Practical Machine Learning Tools and Techniques , 2014 .

[29]  Pardeep Kumar,et al.  Security Issues in Healthcare Applications Using Wireless Medical Sensor Networks: A Survey , 2011, Sensors.