DocumentCode :
3562252
Title :
Risk assessment of Atrial Fibrillation: A failure prediction approach
Author :
Milosevic, Jelena ; Dittrich, Andreas ; Ferrante, Alberto ; Malek, Miroslaw ; Quiros, Camilo Rojas ; Braojos, Ruben ; Ansaloni, Giovanni ; Atienza, David
Author_Institution :
ALaRI, Univ. della Svizzera italiana, Lugano, Switzerland
fYear :
2014
Firstpage :
801
Lastpage :
804
Abstract :
We present a methodology for identifying patients who have experienced Paroxysmal Atrial Fibrillation (PAF) among a given subject population. Our work is intended as an initial step towards the design of an unobtrusive portable system for concurrent detection and monitoring of chronic cardiac conditions.The methodology comprises two stages: off-line training and on-line analysis. During training the most significant features are selected using machine learning methods, without relying on a manual selection based on previous knowledge. Analysis is done in two phases: feature extraction and detection of PAF patients. Light-weight algorithms are employed in the feature extraction phase, allowing the on-line implementation of this step on wearable sensor nodes. The detection phase employs techniques borrowed from the field of failure prediction. While these algorithms have found extensive application in diverse scenarios, their application to automated cardiac analysis has not been sufficiently investigated to date. The proposed methodology is able to correctly classify 68% of the test records in the PAF Prediction Challenge database, performing comparably to state of the art offline algorithms. Nonetheless, the proposed method employs embedded signal processing for the critical feature extraction step, which is executed on resource-constrained body sensor nodes. This allows for a real-time and energyefficient implementation.
Keywords :
bioelectric potentials; body sensor networks; cardiology; diseases; feature extraction; feature selection; learning (artificial intelligence); medical signal detection; medical signal processing; risk management; automated cardiac analysis; chronic cardiac condition detection; chronic cardiac condition monitoring; embedded signal processing; failure prediction approach; feature extraction phase; feature selection; light-weight algorithms; machine learning methods; paroxysmal atrial fibrillation; resource-constrained body sensor nodes; risk assessment; unobtrusive portable system; wearable sensor nodes; Abstracts; Nonhomogeneous media; Training; Uniform resource locators;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Computing in Cardiology Conference (CinC), 2014
ISSN :
2325-8861
Print_ISBN :
978-1-4799-4346-3
Type :
conf
Filename :
7043164
Link To Document :
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