Title :
A risk and Incidence Based Atrial Fibrillation Detection Scheme for wearable healthcare computing devices
Author :
Bouhenguel, R. ; Mahgoub, Imad
Author_Institution :
Dept. of Comput., Electr. Eng. & Comput. Sci., Florida Atlantic Univ., Boca Raton, FL, USA
Abstract :
Today small, battery-operated electrocardiograph devices, known as Ambulatory Event Monitors, are used to monitor the heart´s rhythm and activity. These on-body healthcare devices typically require a long battery life and moreover efficient detection algorithms. They need the ability to automatically assess atrial fibrillation (A-Fib) risk, and detect the onset of A-Fib from EKG recordings for further clinical diagnosis and treatment. The focus of this paper is the design of a real-time early detection algorithm cascaded with an A-Fib risk assessment algorithm. We compare accuracy of machine learning schemes such as J48, Naïve Bayes, and Logistic Regression and choose the best algorithm to classify A-Fib from EKG medical data. Though all three algorithms have similar accuracy, the Logistic Regression model is selected for its easy portability to mobile devices. A-Fib risk factor is used to determine a monitoring schedule where the detection algorithm is triggered by the age dependent A-Fib incidence rate inside a circadian prevalence window. The design may provide a great public health benefit by predicting A-Fib risk and detecting A-Fib in order to prevent strokes and heart attacks. It also shows promising results in helping meet the needs for energy efficient real-time A-Fib monitoring, detecting and reporting.
Keywords :
biomedical equipment; electrocardiography; health care; learning (artificial intelligence); patient diagnosis; patient treatment; A-Fib risk assessment algorithm; EKG medical data; EKG recordings; ambulatory event monitors; battery-operated electrocardiograph devices; circadian prevalence window; clinical diagnosis; clinical treatment; heart attacks; incidence based atrial fibrillation detection scheme; logistic regression model; machine learning schemes; on-body healthcare devices; real-time early detection algorithm; risk based atrial fibrillation detection scheme; wearable healthcare computing devices; Image edge detection; Medical services; Telemetry; Algorithms; arrhythmia; atrial fibrillation; classification; logistic regression model of atrial fibrillation; real-time monitoring; wearable computing;
Conference_Titel :
Pervasive Computing Technologies for Healthcare (PervasiveHealth), 2012 6th International Conference on
Conference_Location :
San Diego, CA
Print_ISBN :
978-1-4673-1483-1
Electronic_ISBN :
978-1-936968-43-5