Title :
Discrimination power of spectral and nonlinear heart rate variability features for the identification of congestive heart failure
Author :
Heinze, C. ; Sommer, D. ; Trutschel, U. ; Schirmer, S. ; Golz, M.
Author_Institution :
Univ. of Appl. Sci. Schmalkalden, Schmalkalden, Germany
Abstract :
Recognizing pathological heart rhythm features remains a challenge of cardiovascular research. We adopt a machine learning framework with empirically optimized parameters to distinguish heart failure from healthy condition, emphasizing on spectral and nonlinear features of heart rate variability. Fine-grained spectral power densities of RR intervals emerged as the best discriminating group of features, yielding a classification error rate of 13.6 % when presented at a segment length of 50 minutes.
Keywords :
cardiovascular system; diseases; RR intervals; cardiovascular research; congestive heart failure identification; empirical optimized parameters; fine-grained spectral power density; machine learning framework; nonlinear heart rate variability features; pathological heart rhythm; power spectral; Error analysis; Feature extraction; Heart rate variability; Power measurement; Prototypes;
Conference_Titel :
Cardiovascular Oscillations (ESGCO), 2014 8th Conference of the European Study Group on
Conference_Location :
Trento
DOI :
10.1109/ESGCO.2014.6847591