| Literature DB >> 28288635 |
Jiajia Li1, Leiyu Shi2, Shixue Li1, Lingzhong Xu1, Wen Qin3, Heng Wang4.
Abstract
BACKGROUND: China has experienced a rapid increase in hypertension over the past decade, especially in rural. Therefore, the aim of this research is to examine the dynamic trends in urban-rural disparities in hypertension prevalence, detection, and medication use among Chinese adults from 1993 to 2011.Entities:
Keywords: China; Dynamic trends; Hypertension; Urban/rural; hukou system
Mesh:
Substances:
Year: 2017 PMID: 28288635 PMCID: PMC5348878 DOI: 10.1186/s12939-017-0545-7
Source DB: PubMed Journal: Int J Equity Health ISSN: 1475-9276
Descriptive statistics
| Variables | All | Rural | Urban |
|
|---|---|---|---|---|
| Prevalence, n (%) | 0.000 | |||
| No | 44,614 (75.99) | 27,473 (78.35) | 17,141 (72.49) | |
| Yes | 14,099 (24.01) | 7593 (21.65) | 6506 (27.51) | |
| Detection, n (%) | 0.000 | |||
| No | 8525 (60.47) | 5236 (68.96) | 3289 (50.55) | |
| Yes | 5574 (39.53) | 2357 (31.04) | 3217 (49.45) | |
| Medication Use, n (%) | 0.000 | |||
| No | 1289 (23.13) | 731 (31.01) | 558 (17.35) | |
| Yes | 4285 (76.87) | 1626 (68.99) | 2659 (82.65) | |
| Control variables | ||||
| Age, mean (SD) | 47.59 (15.62) | 46.57 (15.20) | 49.11 (16.12) | 0.000 |
| Sex, n (%) | 0.000 | |||
| Male (Ref.) | 27,591 (46.99) | 16,174 (46.12) | 11,417 (48.28) | |
| Female | 31,122 (53.01) | 18,892 (53.88) | 12,230 (51.72) | |
| Marital status, n (%) | 0.000 | |||
| Married (Ref.) | 48,275 (82.22) | 29,244 (83.40) | 19,031 (80.48) | |
| Others | 10,438 (17.78) | 5822 (16.60) | 4616 (19.52) | |
| Education, mean (SD) | 7.13 (4.33) | 5.92 (3.83) | 8.93 (4.40) | 0.000 |
| Income (RMB in 2011 value), mean (SD) | 8765.63 | 6555.21 | 12043.44 | 0.000 |
| Types of medical insurance, n (%) | 0.000 | |||
| None (Ref.) | 29,488 (50.22) | 19,956 (56.91) | 9532 (40.31) | |
| NCMS | 15,056 (25.64) | 13,728 (39.15) | 1328 (5.62) | |
| URBMI | 2707 (4.61) | 233 (0.66) | 2474 (10.46) | |
| UEBMI | 4728 (8.05) | 251 (0.72) | 4477 (18.93) | |
| Others | 6734 (11.47) | 898 (2.56) | 5836 (24.68) | |
| Smoking, n (%) | 0.000 | |||
| Never | 40,235 (68.53) | 23,635 (67.40) | 16,600 (70.20) | |
| Ever | 1487 (2.53) | 706 (2.01) | 781 (3.30) | |
| Current | 16,991 (28.94) | 10,725 (30.59) | 6266 (26.50) | |
| Drinking, n (%) | 0.000 | |||
| Never (Ref.) | 38,910 (66.27) | 23,476 (66.95) | 15,434 (65.27) | |
| ≤ 3 drinks/month | 6272 (10.68) | 3515 (10.02) | 2757 (11.66) | |
| 1–2 drink/week | 4863 (8.28) | 2804 (8.00) | 2059 (8.71) | |
| ≥ 3 drinks/week | 8668 (14.76) | 5271 (15.03) | 3397 (14.37) | |
| BMI, n (%) | 0.000 | |||
| Underweight (Ref.) | 3917 (6.67) | 2646 (7.55) | 1271 (5.37) | |
| Normal | 34,384 (58.56) | 21,889 (62.42) | 12,495 (52.84) | |
| Overweight | 15,730 (26.79) | 8267 (23.58) | 7463 (31.56) | |
| Obese | 4682 (7.97) | 2264 (6.46) | 2418 (10.23) | |
| Area, n (%) | 0.000 | |||
| Western (Ref.) | 15,065 (25.66) | 10,112 (28.84) | 4953 (20.95) | |
| Northeastern | 18,208 (31.01) | 11,578 (33.02) | 6630 (28.04) | |
| Central | 10,745 (18.30) | 6360 (18.14) | 4385 (18.54) | |
| Eastern | 14,695 (25.03) | 7016 (20.01) | 7679 (32.47) | |
| Wave, n (%) | 0.000 | |||
| 1993 (Ref.) | 6644 (11.32) | 4287 (12.23) | 2357 (9.97) | |
| 1997 | 7347 (12.51) | 4660 (13.29) | 2687 (11.36) | |
| 2000 | 7704 (13.12) | 4618 (13.17) | 3086 (13.05) | |
| 2004 | 7952 (13.54) | 4917 (14.02)) | 3035 (12.83) | |
| 2006 | 7425 (12.65) | 5007 (14.28) | 2418 (10.23) | |
| 2009 | 9303 (15.84) | 5498 (15.68) | 3805 (16.09) | |
| 2011 | 12,338 (21.01) | 6079 (17.34) | 6259 (26.47) | |
| observations | 58,713 | 35,066 (59.72) | 23,647 (40.28) |
a χ2 tests for dichotomous variables and t-tests for continuous variables
Fig. 1Hypertension prevalence, detection and medication use among urban and rural adults in China (1993–2011)
Logistic regressions reporting urban-rural disparities of hypertension prevalence, detection, and medication use
| Variables | Prevalence Odds ratio | Detection Odds ratio | Medication Use Odds ratio |
|---|---|---|---|
|
| 1.245*** | 1.494*** | 1.895** |
| (0.099) | (0.232) | (0.536) | |
| Types of medical insurance: NCMS | 1.008 | 0.880* | 0.924 |
| (0.041) | (0.062) | (0.123) | |
| Types of medical insurance: URBMI | 1.096 | 1.117 | 1.521** |
| (0.073) | (0.117) | (0.301) | |
| Types of medical insurance: UEBMI | 1.139** | 1.259** | 1.455** |
| (0.069) | (0.121) | (0.255) | |
| Types of medical insurance: others | 1.069 | 1.209*** | 1.106 |
| (0.044) | (0.082) | (0.133) | |
| Age | 1.065*** | 1.038*** | 1.033*** |
| (0.0011) | (0.002) | (0.004) | |
| Sex: male | 0.735*** | 1.469*** | 0.983 |
| (0.023) | (0.077) | (0.095) | |
| Marital status: married | 1.077** | 0.803*** | 0.947 |
| (0.034) | (0.042) | (0.095) | |
| Education | 0.983*** | 1.024*** | 1.014 |
| (0.003) | (0.006) | (0.010) | |
| Income | 1.000 | 1.000*** | 1.000*** |
| (RMB in 2011 value) | (0.000) | (0.000) | (0.000) |
| Smoking: ever | 1.089 | 1.582*** | 0.779 |
| (0.071) | (0.150) | (0.121) | |
| Smoking: current | 1.022 | 0.928 | 0.899 |
| (0.032) | (0.048) | (0.085) | |
| Drinking: ≤3 drinks/month | 1.020 | 0.859** | 0.670*** |
| (0.040) | (0.061) | (0.086) | |
| Drinking: 1–2 drink/week | 1.024 | 0.755*** | 0.567*** |
| (0.045) | (0.062) | (0.086) | |
| Drinking: ≥3 drinks/week | 1.194*** | 0.848*** | 0.524*** |
| (0.041) | (0.050) | (0.056) | |
| BMI: normal | 1.673*** | 1.423*** | 1.566** |
| (0.090) | (0.150) | (0.285) | |
| BMI: overweight | 3.475*** | 2.021*** | 1.890*** |
| (0.193) | (0.217) | (0.350) | |
| BMI: obese | 7.405*** | 2.593*** | 2.601*** |
| (0.460) | (0.293) | (0.509) | |
| Area: central | 1.465*** | 1.185*** | 1.322*** |
| (0.045) | (0.067) | (0.133) | |
| Area: northeastern | 2.012*** | 1.092 | 0.939 |
| (0.071) | (0.069) | (0.103) | |
| Area: eastern | 1.577*** | 1.397*** | 1.461*** |
| (0.052) | (0.080) | (0.150) | |
| Wave: 1997 | 1.285*** | 0.596*** | 1.030 |
| (0.085) | (0.094) | (0.311) | |
| Wave: 2000 | 1.184*** | 1.137 | 1.637* |
| (0.077) | (0.161) | (0.429) | |
| Wave: 2004 | 1.154** | 1.330** | 2.013*** |
| (0.074) | (0.181) | (0.505) | |
| Wave: 2006 | 1.082 | 1.398** | 2.783*** |
| (0.072) | (0.194) | (0.728) | |
| Wave: 2009 | 1.491*** | 1.583*** | 2.859*** |
| (0.107) | (0.228) | (0.773) | |
| Wave: 2011 | 1.277*** | 2.266*** | 3.175*** |
| (0.091) | (0.323) | (0.843) | |
| Urban*1997 | 0.904 | 0.985 | 1.611 |
| (0.092) | (0.205) | (0.636) | |
| Urban*2000 | 0.857 | 1.018 | 0.872 |
| (0.085) | (0.192) | (0.296) | |
| Urban*2004 | 0.908 | 0.810 | 0.796 |
| (0.089) | (0.148) | (0.264) | |
| Urban*2006 | 0.766*** | 1.191 | 0.553* |
| (0.079) | (0.226) | (0.191) | |
| Urban*2009 | 0.741*** | 0.923 | 0.706 |
| (0.074) | (0.170) | (0.237) | |
| Urban*2011 | 0.688*** | 0.996 | 0.662 |
| (0.068) | (0.181) | (0.216) | |
| Constant | 0.004*** | 0.015*** | 0.074*** |
| (0.000) | (0.000) | (0.028) | |
| Observations | 58,713 | 14,099 | 5574 |
Robust standard errors are reported in parenthesis. *** p < 0.01, ** p < 0.05, * p < 0.1
Blinder-Oaxaca decomposition results between urban and rural adults
| Prevalence | Detection | Medication Use | |
|---|---|---|---|
| Predicted probability | |||
| Urban | 27.51%*** | 49.45%*** | 82.65%*** |
| (0.0029) | (0.0062) | (0.0066) | |
| Rural | 21.65%*** | 31.04%*** | 68.99%*** |
| (0.0022) | (0.0053) | (0.0095) | |
| Difference in predicted probability | |||
| Total difference (urban-rural) | 5.86%*** | 18.40%*** | 13.67%*** |
| (0.0036) | (0.0082) | (0.0116) | |
| Difference due to endowments effect | 5.55%*** | 14.21%*** | 10.06%*** |
| (0.0027) | (0.0060) | (0.0082) | |
| Difference due to coefficients effect | 0.31% | 4.20%*** | 3.61%*** |
| (0.0024) | (0.0056) | (0.0082) | |
Robust standard errors are reported in parenthesis. *** p < 0.01, ** p < 0.05, * p < 0.1