| Literature DB >> 30805022 |
Hongbo Ni1, Ying Wang1, Guoxing Xu1, Ziqiang Shao1, Wei Zhang1, Xingshe Zhou1.
Abstract
Hypertension is a common and chronic disease and causes severe damage to patients' health. Blood pressure of a human being is controlled by the autonomic nervous system. Heart rate variability (HRV) is an impact of the autonomic nervous system and an indicator of the balance of the cardiac sympathetic nerve and vagus nerve. HRV is a good method to recognize the severity of hypertension due to the specificity for prediction. In this paper, we proposed a novel fine-grained HRV analysis method to enhance the precision of recognition. In order to analyze the HRV of the patient, we segment the overnight electrocardiogram (ECG) into various scales. 18 HRV multidimensional features in the time, frequency, and nonlinear domain are extracted, and then the temporal pyramid pooling method is designed to reduce feature dimensions. Multifactor analysis of variance (MANOVA) is applied to filter the related features and establish the hypertension recognizing model with relevant features to efficiently recognize the patients' severity. In this paper, 139 hypertension patients' real clinical ECG data are applied, and the overall precision is 95.1%. The experimental results validate the effectiveness and reliability of the proposed recognition method in the work.Entities:
Mesh:
Year: 2019 PMID: 30805022 PMCID: PMC6362500 DOI: 10.1155/2019/4936179
Source DB: PubMed Journal: Comput Math Methods Med ISSN: 1748-670X Impact factor: 2.238
Figure 1Analysis flow of the research.
Severity of hypertension.
| Classes | SBP (mmHg) | DBP (mmHg) | TAGS |
|---|---|---|---|
| Normal | <120 | <80 | Mild |
| Normal hypertension | 120–139 | 80–89 | Moderate |
| Level I hypertension | 140–159 | 90–99 | |
|
| |||
| Level II hypertension | 160–180 | 100–109 | Severe |
| Level III hypertension | ≥180 | ≥110 | |
Feature dimension of different time scales.
| Time scales | Feature dimension |
|---|---|
| 5 min | 96 |
| 20 min | 24 |
| 30 min | 16 |
| 1 hour | 8 |
| 2 hours | 4 |
| 4 hours | 2 |
| 8 hours | 1 |
Feature dimensions of temporal pyramid data pooling.
| Time scale | 5 min | 20 min | 30 min | 1 hour | 2 hours | 4 hours | 8 hours | Multiscale |
|---|---|---|---|---|---|---|---|---|
| Feature | 96 | 24 | 16 | 8 | 4 | 2 | 1 | 151 |
Figure 2Temporal pyramid data pooling.
Maximum information entropy and k value.
| Feature |
| Information entropy |
|---|---|---|
| CV | 31 | 1.4631 |
| MAX | 148 | 1.4131 |
| MEAN | 133 | 1.5476 |
| MIN | 123 | 1.5379 |
| PNN50 | 134 | 1.4468 |
| RMSSD | 57 | 1.4547 |
| SDNN | 10 | 1.5056 |
| SDSD | 21 | 1.3938 |
| VAR | 11 | 1.5400 |
| HF | 150 | 1.4131 |
| LF | 23 | 1.5608 |
| VP | 16 | 1.4814 |
| LF/HF | 2 | 1.3257 |
| VHF | 15 | 1.4388 |
| VLF | 55 | 1.5520 |
| DFA | 7 | 1.5060 |
| Sample entropy | 7 | 1.3647 |
| Renyi entropy | 14 | 1.5362 |
Figure 3Basic framework of feature selection.
MANOVA of single-scale data pooling.
| Features | 5 min | 20 min | 30 min | 1 hour |
|---|---|---|---|---|
| CV | 0.211 | 0.864 | 0.094 | 0.923 |
| MAX | 2.694 | 1.293 | 1.62 | 1.69 |
| MEAN | 1.206 | 1.368 | 1.05 | 1.391 |
| MIN | 2.614 | 0.865 | 0.986 | 0.413 |
| PNN50 | 0.641 | 0.891 | 0.124 | 0.679 |
| RMSSD | 0.223 | 0.779 | 0.63 | 1.942 |
| SDNN | 0.572 | 0.671 | 0.245 | 0.122 |
| SDSD | 0.411 | 1.307 | 1.043 | 1.8 |
| VAR | 0.6 | 0.743 | 0.303 | 0.125 |
| HF | 0.228 | 0.432 | 0.474 | 1.445 |
| LF | 0.965 | 1.737 | 0.973 | 0.702 |
| VP | 0.533 | 0.936 | 0.338 | 0.209 |
| LF/HF | 2.242 | 3.562 | 4.184 | 2.992 |
| VHF | 0.835 | 1.191 | 1.319 | 2.46 |
| VLF | 0.884 | 0.829 | 0.677 | 0.57 |
| DFA | 0.445 | 0.046 | 0.322 | 0.018 |
| Sample entropy | 0.675 | 0.291 | 0.444 | 0.092 |
| Renyi entropy | 0.239 | 0.26 | 0.117 | 0.243 |
MANOVA of temporal pyramid pooling.
| Feature | DOF | F-measure | Feature | DOF | F-measure |
|---|---|---|---|---|---|
| CV | 2 | 0.365 | HF | 2 | 1.270 |
| MAX | 2 | 1.850 | LF | 2 | 1.112 |
| MEAN | 2 | 1.248 | VP | 2 | 0.611 |
| MIN | 2 | 0.475 | LF/HF | 2 | 3.051 |
| PNN50 | 2 | 0.936 | VHF | 2 | 1.619 |
| RMSSD | 2 | 1.100 | VLF | 2 | 1.760 |
| SDNN | 2 | 0.365 | DFA | 2 | 0.160 |
| SDSD | 2 | 1.457 | Sample entropy | 2 | 0.920 |
| VAR | 2 | 0.349 | Renyi entropy | 2 | 0.558 |
Figure 4The result of classifiers.
Results of different classifiers for three datasets.
| Classifier | Naïve Bayes | SVM | BPNN | RF |
|---|---|---|---|---|
| Mild | 0.255 | 0 | 0.680 | 0.919 |
| Moderate | 0.588 | 0.559 | 0.913 | 0.959 |
| Severe | 0.240 | 0 | 0.655 | 0.952 |
Figure 5The result of different time scales.
Figure 6The result of feature selection.
Figure 7The comparison of PCA and TPP.