| Literature DB >> 31788232 |
Fei Xu1, Jicun Zhu1, Nan Sun2, Lu Wang1, Chen Xie1, Qixin Tang1, Xiangjie Mao1, Xianzhi Fu1, Anna Brickell3, Yibin Hao4, Changqing Sun1.
Abstract
BACKGROUND: Various hypertension predictive models have been developed worldwide; however, there is no existing predictive model for hypertension among Chinese rural populations.Entities:
Mesh:
Year: 2019 PMID: 31788232 PMCID: PMC6875679 DOI: 10.7189/jogh.09.020601
Source DB: PubMed Journal: J Glob Health ISSN: 2047-2978 Impact factor: 4.413
Baseline demographic characteristics and biochemical indexes of the training set
| Variables* | Men (n = 1853) | Women (n = 2943) | |
|---|---|---|---|
| 52 (44-59) | 48 (41-56) | <0.0001† | |
| <0.0001‡ | |||
| Illiteracy | 93 (5.02) | 516 (17.53) | |
| Primary school | 511 (27.58) | 1072 (36.43) | |
| Junior high | 951 (51.32) | 1162 (39.48) | |
| High school and above | 298 (16.08) | 193 (6.56) | |
| 0.0463‡ | |||
| Married/cohabitation | 1721 (93.08) | 2782 (94.53) | |
| Others | 128 (6.92) | 161 (5.47) | |
| 0.0014‡ | |||
| <1000 | 1675 (90.59) | 2747 (93.44) | |
| 1000 ~ | 131 (7.08) | 142 (4.83) | |
| ≥3000 | 43 (2.33) | 51 (1.73) | |
| Hypertension paternal history (n, %) | 509 (27.47) | 882 (29.97) | 0.0679‡ |
| High fat diet (n, %) | 144 (7.77) | 43 (1.46) | <0.0001‡ |
| Fruit and vegetable intake (n, %) | 860 (46.41) | 1137 (38.63) | <0.0001‡ |
| General obesity (n, %) | 160 (8.63) | 399 (13.56) | <0.0001‡ |
| Central obesity (n, %) | 420 (22.67) | 1564 (53.14) | <0.0001‡ |
| Current smoking (n, %) | 1143 (61.68) | 9 (0.31) | <0.0001‡ |
| Drink (n, %) | 585 (31.57) | 16 (0.54) | <0.0001‡ |
| T2DM (n, %) | 98 (5.29) | 234 (7.95) | 0.0005‡ |
| Heart rate, bpm | 70 (64-78) | 75 (69-82) | <0.0001† |
| SBP, mm Hg | 118 (110-126) | 115 (107-124) | <0.0001† |
| TC, mmol/L | 4.26 (3.76-4.85) | 4.42 (3.88-5.05) | <0.0001† |
| TG, mmol/L | 1.20 (0.90-1.80) | 1.30 (0.90-1.80) | 0.2300† |
| HDL-c, mmol/L | 1.09 (0.94-1.27) | 1.19 (1.02-1.37) | <0.0001† |
| LDL-c, mmol/L | 2.50 (2.10-3.00) | 2.50 (2.10-3.00) | 0.0860† |
| FPG, mmol/L | 5.30 (4.94-5.71) | 5.33 (4.99-5.75) | 0.0059† |
| DBP, mm Hg | 74.67 (68.67-80.00) | 73.67 (68.67-79.00) | 0.0250† |
| Pulse pressure, mm Hg | 43.67 (38.67-49.00) | 41.00 (35.67-47.00) | <0.0001† |
| BMI, kg/m2 | 23.32 (21.19-25.49) | 24.17 (21.94-26.53) | <0.0001† |
| WC, cm | 81.40 (75.25-89.10) | 80.75 (74.00-87.23) | <0.0001† |
T2DM – type 2 diabetes mellitus, SBP – systolic blood pressure, TC – total cholesterol, TG – triglyceride, HDL-c – high-density lipoprotein cholesterol, LDL-c – low-density lipoprotein cholesterol, FPG – fasting plasma glucose, DBP – diastolic blood pressure, BMI – body mass index, WC – waist circumference, CNY – Chinese Yuan, bpm – beats per minute
*Data are numbers (percent) for categorical variables and median (interquartile range) median (interquartile range) for continuous variables.
†Wilcoxon rank sum test.
‡χ2 test.
§Average monthly income.
Cox regression models for hypertension in men and women
| Variables | β | HR (95% CI) | |
|---|---|---|---|
| Age, years | 0.2650 | 1.3035 (1.1597, 1.4651) | <0.0001 |
| SBP, mmHg | 0.0554 | 1.0570 (1.0429, 1.0712) | <0.0001 |
| DBP, mmHg | 0.1300 | 1.1388 (1.0532, 1.2314) | 0.0011 |
| WC, cm | 0.0626 | 1.0646 (1.0095, 1.1228) | 0.0209 |
| hypertension paternal history (Yes vs No) | 0.3441 | 1.4107 (1.1463, 1.7361) | 0.0012 |
| Age × WC* | -0.0011 | 0.9989 (0.9980, 0.9999) | 0.0264 |
| Age × DBP† | -0.0019 | 0.9981 (0.9967, 0.9995) | 0.0067 |
| Age, years | 0.3430 | 1.4092 (1.2722, 1.5608) | <0.0001 |
| SBP, mmHg | 0.0525 | 1.0539 (1.0425, 1.0654) | <0.0001 |
| DBP, mmHg | 0.1956 | 1.2161 (1.1356, 1.3023) | <0.0001 |
| WC, cm | 0.0807 | 1.0840 (1.0347, 1.1357) | 0.0007 |
| Higher vegetables and fruit intake (Yes vs No) | -0.1345 | 0.8742 (0.7375, 1.0363) | 0.1212 |
| hypertension paternal history (Yes vs No) | 0.2189 | 1.2447 (1.0417, 1.4872) | 0.0159 |
| Age × WC* | -0.0013 | 0.9987 (0.9978, 0.9995) | 0.0020 |
| Age × DBP† | -0.0026 | 0.9974 (0.9962, 0.9986) | <0.0001 |
| Age, years | 0.3413 | 1.4068 (1.2703, 1.5579) | <0.0001 |
| SBP, mmHg | 0.0525 | 1.0539 (1.0425, 1.0654) | <0.0001 |
| DBP, mmHg | 0.1943 | 1.2144 (1.1340, 1.3005) | <0.0001 |
| WC, cm | 0.0799 | 1.0832 (1.0338, 1.1349) | 0.0008 |
| Higher vegetables and fruit intake (Yes vs No) | -0.1356 | 0.8732 (0.7366, 1.0351) | 0.1181 |
| hypertension paternal history (Yes vs No) | 0.2094 | 1.2330 (1.0318, 1.4734) | 0.0212 |
| Age × WC* | -0.0014 | 0.9986 (0.9977, 0.9995) | 0.0018 |
| Age × DBP† | -0.0026 | 0.9974 (0.9962, 0.9986) | <0.0001 |
| HDL-c, mmol/L | -0.2807 | 0.7752 (0.5822, 0.9796) | 0.0344 |
SBP – systolic blood pressure, DBP – diastolic blood pressure, HDL-c – high-density lipoprotein cholesterol, WC – waist circumference, HR – hazard ratio, M1 – men office-based model, W1 – women office-based model, W2 – women laboratory-based model, CI – confidence interval
*Interaction item of age with WC.
†Interaction item of age with DBP.
Figure 1ROC curves of different models for prediction of hypertension incidence in the training and testing set. Panel A shows ROC curves of different models for prediction of hypertension incidence for men in training set. Panel B shows ROC curves of different models for prediction of hypertension incidence for women in training set. Panel C shows ROC curves of different models for prediction of hypertension incidence for men in testing set. Panel D shows ROC curves of different models for prediction of hypertension incidence for women in testing set.
Discriminative ability and calibration of the different 6-year hypertension incident risk models for both genders in training and testing set, respectively
| Models | Cut-off | AUC (95% CI) | Calibration χ2 | |
|---|---|---|---|---|
| M1 | 0.1926 | 0.765 (0.745, 0.784) | 4.91334 | 0.84180 |
| ANN | 0.2305 | 0.767 (0.747, 0.786) | 24.54347 | 0.00352 |
| NBC | 0.2205 | 0.751 (0.730, 0.770) | 105.88180 | <0.00001 |
| CART | 0.0994 | 0.720 (0.699, 0.741) | 4.56824 | 0.10186 |
| W1 | 0.1920 | 0.806 (0.791, 0.820) | 4.72712 | 0.31645 |
| W2 | 0.1922 | 0.806 (0.791, 0.820) | 1.18206 | 0.88104 |
| ANN | 0.2512 | 0.809 (0.795, 0.823) | 5.44370 | 0.24472 |
| NBC | 0.2588 | 0.796 (0.780, 0.810) | 193.18980 | <0.00001 |
| CART | 0.0909 | 0.740 (0.724, 0.756) | 17.95192 | 0.00012 |
| M1 | 0.1745 | 0.771 (0.750, 0.791) | 6.30570 | 0.70898 |
| ANN | 0.2799 | 0.773 (0.752, 0.793) | 29.27430 | 0.00058 |
| NBC | 0.2205 | 0.760 (0.738, 0.781) | 82.26996 | <0.00001 |
| CART | 0.0994 | 0.722 (0.699, 0.743) | 5.249259 | 0.07247 |
| W1 | 0.1798 | 0.765 (0.746, 0.783) | 6.78323 | 0.14780 |
| W2 | 0.1446 | 0.764 (0.746, 0.783) | 7.40462 | 0.11599 |
| ANN | 0.2022 | 0.756 (0.737, 0.775) | 4.74466 | 0.31451 |
| NBC | 0.1860 | 0.761 (0.742, 0.779) | 189.75400 | <0.00001 |
| CART | 0.0909 | 0.698 (0.677, 0.717) | 19.73303 | 0.00005 |
AUC – area under the receiver operating characteristic curve, CI – confidence interval, M1 – men office-based model, ANN – Artificial Neural Network, NBC – Naive Bayes Classifier, CART – Classification and Regression Tree, W1 – women office-based model, W2 – women laboratory-based model