Title :
False alarm reduction in continuous cardiac monitoring using 3D acceleration signals
Author :
Tanantong, Tanatorn ; Nantajeewarawat, Ekawit ; Thiemjarus, Surapa
Author_Institution :
Comput. Sci. Program, Thammasat Univ., Pathumthani, Thailand
fDate :
July 30 2014-Aug. 1 2014
Abstract :
In continuous cardiac monitoring through wireless Body Sensor Networks (BSNs) using ECG signals, signal quality can be deteriorated due to several factors, including, noise, low battery power and network transmission problems. Body movements occurring when a subject performs activities of daily living (ADLs) are also major causes of high false alarm rates. This paper presents a hybrid framework for false alarm reduction in continuous cardiac monitoring, where classification models constructed using machine learning algorithms are used for labeling input signals and a rule-based expert system is used for combining the classification results into make a final decision. From their extracted low-level features, ECG signal portions are labeled with heartbeat types and also signal quality levels. Meanwhile, low-level features from 3D acceleration signals are used for predicting types of activities. Taking signal quality levels and activity types into considerations, the rule-based expert system then determines whether abnormal ECG portions should trigger alarms or should be ignored. The proposed framework is validated using two datasets: one is obtained from the MIT-BIH arrhythmia database and the other is acquired from 10 subjects while they are performing ADLs. The results of the experiments demonstrate that our proposed framework can reduce false alarm rates in continuous cardiac monitoring and potentially assist physicians in diagnosing a vast amount of data acquired from wireless sensors.
Keywords :
biomedical equipment; body sensor networks; data acquisition; electrocardiography; feature extraction; gait analysis; learning (artificial intelligence); medical signal detection; medical signal processing; patient monitoring; signal classification; 3D acceleration signals; ADL; ECG signal portions; MIT-BIH arrhythmia database; body movements; continuous cardiac monitoring; daily living activity; data acquisition; false alarm reduction; heartbeat; high false alarm rates; low-battery power factors; low-level feature extraction; machine learning algorithms; network transmission problems; noise factors; patient diagnosis; signal classification models; signal quality; wireless BSN; wireless body sensor networks; Computer science; Conferences; Arrhythmia classification; activity classification; body sensor network; machine learning; rule-based expert system; signal quality classification;
Conference_Titel :
Computer Science and Engineering Conference (ICSEC), 2014 International
Conference_Location :
Khon Kaen
Print_ISBN :
978-1-4799-4965-6
DOI :
10.1109/ICSEC.2014.6978218