COPD severity classification using principal component and cluster analysis on HRV parameters
Document Type
Conference Proceeding
Publication Date
1-1-2003
Abstract
The application of the principal component analysis and cluster analysis (PCACA) using Heart Rate Variability (HRV) parameters to identify the most severe Chronic Obstructive Pulmonary Disease (COPD) subjects in a mixture of normal and COPD population is discussed. These parameters were obtained from real physiological data and cross-spectral analysis (i.e. the coherence and partial coherence between heart rate, blood pressure and respiration signals). Results demonstrated that these two groups could be differentiated with greater than 99.0% accuracy. Furthermore, differences on the same HRV parameters between all four severity levels of COPD subjects were also investigated. These groups were differentiated with over 88.0% accuracy. In analyzing the studied data of the COPD population, the technique correctly characterized 8.5% of COPD group as severe COPD. It was concluded that the PCA-CA technique identified the combination of parameters that can classify disease severity (COPD) as well as differences between normal and COPD subjects in a mixed population. The PCA-CA technique could perhaps also be used to classify other diseases non-invasively.
Identifier
33750550814 (Scopus)
Publication Title
Proceedings of the IEEE Annual Northeast Bioengineering Conference Nebec
e-ISSN
21607001
ISSN
1071121X
First Page
134
Last Page
135
Recommended Citation
Newandee, D. A.; Reisman, S. S.; Bartels, M. N.; and De Meersman, R. E., "COPD severity classification using principal component and cluster analysis on HRV parameters" (2003). Faculty Publications. 14397.
https://digitalcommons.njit.edu/fac_pubs/14397
