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Introduction The aim of this work is investigating the differences of Heart Rate Variability (HRV) features between normal subjects and patients suffering from Congestive Heart Failure (CHF) at several levels of NYHA scale. CHF is … Introduction Only a few studies have been focused on using HRV measures for diagnosis purpose in CHF and these studies proposed binary classification for identify normal and CHF patient without considering NYHA class. One study* investigate the discrimination power of long term HRV measures; the other** proposed a classifier based on short term HRV measures but does not provide any information about NYHA class. Consequently, we investigate the differences of Heart Rate Variability (HRV) features between normal subjects and patients suffering from Congestive Heart Failure (CHF) at several levels of NYHA scale. *M.H. Asyali, Discrimination power of long-term heart rate variability measures, in: Proceedings of the 25th Annual International Conference of the IEEE Engineering in Medicine and Biology Society, Cancun, September 17–21, 2003. **Y. Isler, and M. Kuntalp, “Combining classical HRV indices with wavelet entropy measures improves to performance in diagnosing congestive heart failure,” Computers in Biology and Medicine, vol. 37, no. 10, pp. 1502-1510, Oct, 2007. Methods We performed a retrospective analysis of two public RR interval databases, to compare values for HRV measure in normal middle-aged subjects and in patients who suffered from chronic heart failure, with NYHA I, II and III. We calculated statistical measures from 5-minute RR interval data using standard methods. Moreover, we estimated short-term frequency domain measures using the Lomb periodogram. Measure SDNN Description Unit Standard deviation of all NN intervals. ms RMSSD The square root of the mean of the sum of the squares of differences between adjacent NN intervals ms AVNN Average of all NN intervals ms pNN50 Percentage of differences between adjacent NN intervals that are > 50 ms This is one member of the larger pNNx family % TOTAL POWER Total spectral power of all NN intervals up to 0.04 Hz. ms2 Total spectral power of all NN intervals between 0 and 0.04 Hz ms2 LF Total spectral power of all NN intervals between 0.04 and 0.15 Hz ms2 HF Total spectral power of all NN intervals between 0.15 and 0.4 Hz ms2 VLF LF/HF Ratio of low to high frequency power Methods For each selected feature and for each NYHA scale, histogram distribution has been computed. Finally, we analyzed how the correlation matrix between features of NN series changes according to the severity of CHF. Results We show the mean and standard deviation of each measure according to NYHA class. VALUE OF NN MEASURES Measure Unit Normal NYHAI NYHAII (mean±SD) (mean±SD) (mean±SD) SDNN RMSSD AVNN pNN50 TOT. POW. VLF LF HF LF/HF ms ms ms % ms2 ms2 ms2 ms2 - 47.4±24.8 50.4±29.6 24.3±17.6 24.8±14.6 25.5±14.2 14.5±8.0 6.2±10.1 7.5±12.3 1.6±4.9 803±156 797±157 639±87 3089±4474 4160±6740 917±1719 2130±3721 2810±5179 670±1290 671±965 806±1301 158±355 287±494 544±770 89±214 3.7±2.9 2.1±1.6 2.2±2.0 NYHAIII (mean±SD) 25.8±16.9 17.0±8.1 2.3±4.6 701±103 968±1599 716±1360 149±244 103±139 1.5±1.4 Results We show the histogram distribution of each measure according to NYHA class. Results We show the histogram distribution of each measure according to NYHA class. Results We show the histogram distribution of each measure according to NYHA class. Results We show the histogram distribution of each measure according to NYHA class. Results We show the histogram distribution of each measure according to NYHA class. Results We show the histogram distribution of each measure according to NYHA class. Results We show the histogram distribution of each measure according to NYHA class. Results Correlation between NN Measures in Normal Subjects We show the correlation matrix between HRV measures CORRELATION BETWEEN NN MEASURES IN NORMAL SUBJECTS AVN SDNN RMSSD pNN50 VLF LF N AVNN 1 0.30 0.50 0.47 0.16 0.35 SDNN 1 0.51 0.48 0.84 0.61 RMSSD 1 0.96 pNN50 1 0.23 0.22 VLF 1 LF HF CORRELATION BETWEEN NN MEASURES IN NYHA I 0.40 0.53 AVNN 0.85 SDNN 0.83 RMSSD 0.45 0.32 pNN50 1 0.61 VLF 0.53 0.51 HF 1 AVNN SDNN RMSSD LF HF 1 0.41 0.75 pNN50 VLF 0.67 0.27 0.39 0.55 1 0.63 0.51 0.88 0.78 0.79 1 0.95 0.42 0.65 0.82 1 0.32 0.55 0.74 1 0.70 0.65 1 0.86 LF HF CORRELATION BETWEEN NN MEASURES IN NYHA II AVNN AVNN SDNN RMSSD pNN50 VLF LF HF 1 SDNN RMSSD pNN50 VLF CORRELATION BETWEEN NN MEASURES IN NYHA III LF HF AVNN 0.46 0.45 0.42 0.34 0.34 0.42 AVNN 1 0.73 0.62 0.88 0.77 0.69 SDNN 1 1 0.89 0.57 0.74 0.86 RMSSD 1 0.52 0.74 0.93 pNN50 1 0.70 0.63 VLF 0.84 LF 1 HF 1 1 SDNN RMSSD pNN50 VLF LF HF 0,43 0,38 0,24 0,31 0,33 0,34 1 0,59 0,44 0,88 0,76 0,64 1 0,89 0,33 0,53 0,78 1 0,24 0,42 0,73 1 0,62 0,44 1 0,72 1 Discussion SDNN, RMSSD and TOTAL POWER has higher values in healthy subjects than in CHF patients. Moreover, VLF, LF and HF seem to be depressed in CHF patient. The other parameters, such as AVNN, did not appear to be different between normal and CHF. The correlations between some features of NN series increase according to the severity of CHF. From the shown results it is possible conclude that there is a variation in HRV features, according to NYHA classification. We suppose that this variation may drive the research of a hierarchic classifier in order to distinguish not only normal versus CHF patient but also mild versus severe CHF.