Multiscale Entropy Analysis of Heart Rate Variability in Neonatal Patients with and without Seizures
Abstract
:1. Introduction
2. Materials and Methods
2.1. Multiscale Analysis
2.2. Approximate Entropy, Sample Entropy, and Generalized Sample Entropy
2.3. Fuzzy Entropy
2.4. Permutation Entropy
2.5. Distribution Entropy
2.6. Statistical Analysis
3. Results
4. Discussion
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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MAE Scale Factor | 0 vs. 1 KW-Test p-Value | int vs. 1 KW-Test p-Value | MW-Test p-Value | STATS 0 MEDIAN (IQR) | STATS 1 MEDIAN (IQR) | STATS INT MEDIAN (IQR) |
---|---|---|---|---|---|---|
1 | 0.4756 | 0.1252 | 0.8048 | 1.01 (0.82–1.07) | 0.92 (0.66–1.04) | 1.01 (0.77–1.16) |
2 | 0.0809 | 0.2318 | 0.2312 | 0.88 (0.83–0.97) | 0.83 (0.72–0.90) | 0.89 (0.77–0.95) |
3 | 0.0129 * | 0.2160 | 0.0549 | 0.83 (0.77–0.88) | 0.73 (0.67–0.81) | 0.80 (0.73–0.84) |
4 | 0.0937 | 0.7387 | 0.2872 | 0.74 (0.69–0.78) | 0.68 (0.65–0.74) | 0.71 (0.66–0.77) |
5 | 0.7395 | 1 | 0.5686 | 0.67 (0.64–0.71) | 0.66 (0.58–0.69) | 0.64 (0.62–0.71) |
6 | 1 | 1 | 0.6620 | 0.61 (0.56–0.64) | 0.59 (0.56–0.65) | 0.59 (0.56–0.64) |
MSE Scale Factor | 0 vs. 1 KW-Test p-Value | int vs. 1 KW-Test p-Value | MW-Test p-Value | STATS 0 MEDIAN (IQR) | STATS 1 MEDIAN (IQR) | STATS INT MEDIAN (IQR) |
---|---|---|---|---|---|---|
1 | 1 | 0.1742 | 0.6213 | 0.96 (0.62–1.11) | 0.85 (0.52–1.15) | 1.05 (0.74–1.24) |
2 | 0.1642 | 0.1733 | 0.3420 | 1.04 (0.80–1.23) | 0.87 (0.63–1.06) | 1.01 (0.79–1.25) |
3 | 0.0054 * | 0.0786 | 0.0503 | 1.16 (0.94–1.40) | 0.88 (0.67–1.11) | 1.02 (0.90–1.24) |
4 | 0.0022 * | 0.0990 | 0.0275 * | 1.25 (1.11–1.49) | 0.94 (0.76–1.24) | 1.13 (0.98–1.34) |
5 | 0.0022 * | 0.0455 * | 0.0318 * | 1.38 (1.16–1.63) | 0.97 (0.86–1.20) | 1.23 (1.06–1.42) |
6 | 0.0064 * | 0.2387 | 0.0440 * | 1.52 (1.21–1.62) | 1.15 (0.94–1.32) | 1.28 (1.07–1.46) |
GSE Scale Factor | 0 vs. 1 KW-Test p-Value | int vs. 1 KW-Test p-Value | MW-Test p-Value | STATS 0 MEDIAN (IQR) | STATS 1 MEDIAN (IQR) | STATS INT MEDIAN (IQR) |
---|---|---|---|---|---|---|
1 | 1 | 0.4084 | 0.9092 | 2.08 (1.58–2.32) | 1.87 (1.47–2.31) | 2.09 (1.66–2.41) |
2 | 0.5154 | 1.0000 | 0.0574 | 0.80 (0.66–1.44) | 1.44 (0.72–1.69) | 1.33 (0.86–1.83) |
3 | 0.2617 | 1.0000 | 0.0166 * | 1.14 (0.77–1.49) | 1.61 (0.86–2.17) | 1.66 (0.85–2.08) |
4 | 0.9657 | 1.0000 | 0.0681 | 1.16 (0.97–1.70) | 1.56 (0.72–2.45) | 1.55 (0.92–2.15) |
5 | 1 | 1.0000 | 0.0908 | 1.41 (1.04–1.66) | 1.50 (0.93–2.00) | 1.33 (0.84–2.04) |
6 | 1 | 1.0000 | 0.1434 | 1.52 (1.03–1.69) | 1.62 (0.82–1.93) | 1.51 (0.97–1.85) |
MFE Scale Factor | 0 vs. 1 KW-Test p-Value | int vs. 1 KW-Test p-Value | MW-Test p-Value | STATS 0 MEDIAN (IQR) | STATS 1 MEDIAN (IQR) | STATS INT MEDIAN (IQR) |
---|---|---|---|---|---|---|
1 | 0.9564 | 0.2411 | 0.8344 | 0.40 (0.32–0.59) | 0.35 (0.19–0.52) | 0.41 (0.25–0.64) |
2 | 0.0316 * | 0.3318 | 0.0526 | 0.51 (0.35–0.68) | 0.36 (0.25–0.46) | 0.43 (0.32–0.57) |
3 | 0.0052 * | 0.2207 | 0.0150 * | 0.63 (0.43–0.76) | 0.42 (0.31–0.50) | 0.47 (0.41–0.58) |
4 | 0.0031 * | 0.1444 | 0.0204 * | 0.71 (0.53–0.83) | 0.47 (0.41–0.59) | 0.57 (0.47–0.68) |
5 | 0.0013 * | 0.0469 * | 0.0194 * | 0.80 (0.62–0.90) | 0.53 (0.46–0.65) | 0.64 (0.56–0.75) |
6 | 0.0011 * | 0.0864 | 0.0083* | 0.87 (0.67–0.96) | 0.59 (0.52–0.73) | 0.70 (0.59–0.80) |
MPE Scale Factor | 0 vs. 1 KW-Test p-Value | int vs. 1 KW-Test p-Value | MW-Test p-Value | STATS 0 MEDIAN (IQR) | STATS 1 MEDIAN (IQR) | STATS INT MEDIAN (IQR) |
---|---|---|---|---|---|---|
1 | 1 | 1 | 0.7323 | 0.6912 (0.6895–0.6921) | 0.6913 (0.6882–0.6925) | 0.6913 (0.6869–0.6925) |
2 | 0.5050 | 0.9519 | 0.3769 | 0.6913 (0.6898–0.6918) | 0.6919 (0.6899–0.6924) | 0.6911 (0.6889–0.6923) |
3 | 1 | 0.3827 | 0.7467 | 0.6915 (0.6896–0.6922) | 0.6917 (0.6890–0.6925) | 0.6902 (0.6890–0.6916) |
4 | 1 | 1 | 0.8792 | 0.6914 (0.6893–0.6918) | 0.6911 (0.6889–0.6916) | 0.6909 (0.6896–0.6921) |
5 | 1 | 1 | 0.4529 | 0.6911 (0.6903–0.6918) | 0.6908 (0.6870–0.6914) | 0.6911 (0.6888–0.6918) |
6 | 1 | 1 | 0.4359 | 0.6909 (0.6897–0.6920) | 0.6905 (0.6880–0.6917) | 0.6901 (0.6888–0.6917) |
MDE Scale Factor | 0 vs. 1 KW-Test p-Value | int vs. 1 KW-Test p-Value | MW-Test p-Value | STATS 0 MEDIAN (IQR) | STATS 1 MEDIAN (IQR) | STATS INT MEDIAN (IQR) |
---|---|---|---|---|---|---|
1 | 0.3664 | 0.2952 | 0.2312 | 0.8931 (0.8681–0.9062) | 0.9057 (0.8859–0.9167) | 0.8932 (0.8706–0.9083) |
2 | 0.8091 | 0.5365 | 0.7323 | 0.9064 (0.9019–0.9168) | 0.9176 (0.8998–0.9269) | 0.9075 (0.8919–0.9211) |
3 | 1 | 0.6727 | 1.0000 | 0.9178 (0.9128–0.9253) | 0.9228 (0.9026–0.9328) | 0.9169 (0.9094–0.9261) |
4 | 1 | 0.2114 | 0.7756 | 0.9200 (0.9149–0.9283) | 0.9269 (0.9125–0.9351) | 0.9183 (0.9114–0.9250) |
5 | 1 | 0.7985 | 0.8942 | 0.9177 (0.9104–0.9300) | 0.9272 (0.9134–0.9347) | 0.9198 (0.9100–0.9263) |
6 | 1 | 0.3935 | 0.9697 | 0.9205 (0.9154–0.9233) | 0.9240 (0.9100–0.9336) | 0.9164 (0.9069–0.9249) |
Multiscale Entropy Index | CI—Median (iqr) Class “0” | CI—Median (iqr) Class “1” | CI—Median (iqr) Class “INT” |
---|---|---|---|
MAE | −3.9 (−4.2: −3.7) | −3.6 (−3.9: −3.1) | −3.8 (−4.0: −3.4) |
MSE * | 6.3 (5.1: 7.2) | 4.2 (2.6: 5.6) | 5.0 (3.3: 6.2) |
MFE * | 3.1 (2.3: 3.7) | 2.3 (1.7: 2.7) | 2.6 (1.6: 3.1) |
GSE | −5.9 (−8.1: −3.1) | −2.1 (−7.0: 9.4) | −5.7 (−8.2: −1.3) |
MPE | −3.4 (−3.5: 3.5) | −3.4 (−3.5: 3.4) | −3.4 (−3.5: 3.4) |
MDE | 4.6 (4.5: 4.6) | 4.6 (4.0: 4.6) | 4.6 (4.5: 4.6) |
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Frassineti, L.; Lanatà, A.; Olmi, B.; Manfredi, C. Multiscale Entropy Analysis of Heart Rate Variability in Neonatal Patients with and without Seizures. Bioengineering 2021, 8, 122. https://doi.org/10.3390/bioengineering8090122
Frassineti L, Lanatà A, Olmi B, Manfredi C. Multiscale Entropy Analysis of Heart Rate Variability in Neonatal Patients with and without Seizures. Bioengineering. 2021; 8(9):122. https://doi.org/10.3390/bioengineering8090122
Chicago/Turabian StyleFrassineti, Lorenzo, Antonio Lanatà, Benedetta Olmi, and Claudia Manfredi. 2021. "Multiscale Entropy Analysis of Heart Rate Variability in Neonatal Patients with and without Seizures" Bioengineering 8, no. 9: 122. https://doi.org/10.3390/bioengineering8090122