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Support vector machines for automated recognition of obstructive sleep apnea syndrome from ECG recordings

Version 2 2024-06-04, 04:20
Version 1 2015-08-18, 15:53
journal contribution
posted on 2024-06-04, 04:20 authored by AH Khandoker, M Palaniswami, Chandan KarmakarChandan Karmakar
Obstructive sleep apnea syndrome (OSAS) is associated with cardiovascular morbidity as well as excessive daytime sleepiness and poor quality of life. In this study, we apply a machine learning technique [support vector machines (SVMs)] for automated recognition of OSAS types from their nocturnal ECG recordings. A total of 125 sets of nocturnal ECG recordings acquired from normal subjects (OSAS - ) and subjects with OSAS (OSAS +), each of approximately 8 h in duration, were analyzed. Features extracted from successive wavelet coefficient levels after wavelet decomposition of signals due to heart rate variability (HRV) from RR intervals and ECG-derived respiration (EDR) from R waves of QRS amplitudes were used as inputs to the SVMs to recognize OSAS +/- subjects. Using leave-one-out technique, the maximum accuracy of classification for 83 training sets was found to be 100% for SVMs using a subset of selected combination of HRV and EDR features. Independent test results on 42 subjects showed that it correctly recognized 24 out of 26 OSAS + subjects and 15 out of 16 OSAS - subjects (accuracy = 92.85%; Cohen's kappa value of 0.85). For estimating the relative severity of OSAS, the posterior probabilities of SVM outputs were calculated and compared with respective apnea/hypopnea index. These results suggest superior performance of SVMs in OSAS recognition supported by wavelet-based features of ECG. The results demonstrate considerable potential in applying SVMs in an ECG-based screening device that can aid a sleep specialist in the initial assessment of patients with suspected OSAS.

History

Journal

IEEE Transactions on Information Technology in Biomedicine

Volume

13

Pagination

37-48

Location

Piscataway, N.J.

ISSN

1089-7771

eISSN

1558-0032

Language

eng

Publication classification

CN.1 Other journal article

Copyright notice

2009, IEEE

Issue

1

Publisher

IEEE