DocumentCode
56960
Title
Automatic Detection of Atrial Fibrillation in Cardiac Vibration Signals
Author
Bruser, Christoph ; Diesel, J. ; Zink, M.D.H. ; Winter, Stefan ; Schauerte, P. ; Leonhardt, Steffen
Author_Institution
Dept. of Med. Inf. Technol., RWTH Aachen Univ., Aachen, Germany
Volume
17
Issue
1
fYear
2013
fDate
Jan. 2013
Firstpage
162
Lastpage
171
Abstract
We present a study on the feasibility of the automatic detection of atrial fibrillation (AF) from cardiac vibration signals (ballistocardiograms/BCGs) recorded by unobtrusive bed-mounted sensors. The proposed system is intended as a screening and monitoring tool in home-healthcare applications and not as a replacement for ECG-based methods used in clinical environments. Based on the BCG data recorded in a study with ten AF patients, we evaluate and rank seven popular machine learning algorithms (naive Bayes, linear and quadratic discriminant analysis, support vector machines, random forests as well as bagged and boosted trees) for their performance in separating 30-s long BCG epochs into one of three classes: sinus rhythm, AF, and artifact. For each algorithm, feature subsets of a set of statistical time-frequency-domain and time-domain features were selected based on the mutual information between features and class labels as well as the first- and second-order interactions among features. The classifiers were evaluated on a set of 856 epochs by means of tenfold cross validation. The best algorithm (random forests) achieved a Matthews correlation coefficient, mean sensitivity, and mean specificity of 0.921, 0.938, and 0.982, respectively.
Keywords
Bayes methods; biomedical equipment; blood vessels; cardiology; correlation methods; diseases; feature extraction; learning (artificial intelligence); medical signal detection; medical signal processing; patient diagnosis; signal classification; statistical analysis; support vector machines; time-frequency analysis; AF class; BCG data; BCG epoch class separation; ECG-based method replacement; Matthews correlation coefficient; artifact class; automatic atrial fibrillation detection feasibility; bagged tree method; ballistocardiograms; boosted tree method; cardiac vibration signal; classifier evaluation; clinical environment; feature first- order interaction; feature second-order interaction; feature subset; home-healthcare application; linear discriminant analysis method; machine learning algorithm evaluation; machine learning algorithm ranking; mean sensitivity; mean specificity; monitoring tool; naive Bayes method; quadratic discriminant analysis method; random forest method; screening tool; sinus rhythm class; statistical time-frequency-domain feature; support vector machine method; tenfold cross validation; time 30 s; time-domain feature; unobtrusive bed-mounted sensor; Electrocardiography; Monitoring; Rhythm; Sensors; Spectrogram; Standards; Vibrations; Atrial fibrillation (AF); ballistocardiography (BCG); classification; Aged; Aged, 80 and over; Algorithms; Atrial Fibrillation; Ballistocardiography; Bayes Theorem; Female; Humans; Male; Middle Aged; Reproducibility of Results; Signal Processing, Computer-Assisted;
fLanguage
English
Journal_Title
Biomedical and Health Informatics, IEEE Journal of
Publisher
ieee
ISSN
2168-2194
Type
jour
DOI
10.1109/TITB.2012.2225067
Filename
6331528
Link To Document