DocumentCode :
3082825
Title :
Selection of features for detection of Obstructive Sleep Apnea events
Author :
Koley, Bijoy Laxmi ; Dey, Debabrata
Author_Institution :
Appl. Electron. & Instrum. Eng, Dr. B.C. Roy Eng. Coll., Durgapur, India
fYear :
2012
fDate :
7-9 Dec. 2012
Firstpage :
991
Lastpage :
996
Abstract :
Generalization performance of a classifier depends primarily, on the selection of good features, i.e., features that represent maximum separation between the classes. So, the optimum number of features are to be identified that maximizes the classifier performance. In the present paper, two different feature selection methods i.e. F-score and Support Vector Machine based Recursive Feature Elimination technique (SVMRFE) are evaluated to find the optimum set of features extracted from short segment overlapping windows of respiration signal, which will help to identify the abnormal breathing events occur during sleep. The extracted features are from time domain, frequency domain and non-linear analysis of the window wise segmented respiration signal. The SVM-RFE based feature selection method technique found to be better in comparison with F-score based feature selection method. The present evaluation is based on the study of total 14 records of Obstructive Sleep Apnea (OSA) subjects collected from MIT-BIH database.
Keywords :
bioelectric phenomena; feature extraction; frequency-domain analysis; generalisation (artificial intelligence); medical disorders; medical signal processing; neurophysiology; pneumodynamics; sleep; support vector machines; time-domain analysis; F-score based feature selection method; SVM-RFE based feature selection method technique; abnormal breathing events; feature extraction; frequency domain analysis; generalization performance; nonlinear analysis; obstructive sleep apnea detection; recursive feature elimination technique; respiration signal; short segment overlapping windows; support vector machine; time domain analysis; window wise segmented respiration signal; Feature extraction; Frequency domain analysis; Sleep apnea; Support vector machines; Time domain analysis; Training; Apnea hypopnea index; F-score; Recursive feature elimination; Respiration signal; Support vector machine;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
India Conference (INDICON), 2012 Annual IEEE
Conference_Location :
Kochi
Print_ISBN :
978-1-4673-2270-6
Type :
conf
DOI :
10.1109/INDCON.2012.6420761
Filename :
6420761
Link To Document :
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