| Literature DB >> 29914464 |
Shuang Shao1, Meirong Wang1, Guanghui Jin1, Yali Zhao1, Xiaoqin Lu2, Juan Du3.
Abstract
BACKGROUND: Migrants are the unique production of China's urbanization process. They are often excluded from social welfare and security systems of cities, and often exposed to high health risk related closely to their health problems. This research sought to unveil and explore the influencing factors on health services utilization of migrants in Beijing.Entities:
Keywords: Anderson health service utilization model; Health seeking behavior; Influence factors; Migrants
Mesh:
Year: 2018 PMID: 29914464 PMCID: PMC6006712 DOI: 10.1186/s12913-018-3271-y
Source DB: PubMed Journal: BMC Health Serv Res ISSN: 1472-6963 Impact factor: 2.655
Fig. 1The simplified Anderson health service utilization model. Health service seeking behaviors (seek health service or not) is determined by three dynamics: predisposing (demographic and social structure), enabling (individual, family and community resources), and need variances (the degree of symptom, chronic disease and self-evaluation general health)
Fig. 2The map of Beijing (Reproduced by our research group). 16 counties are classified into four areas according to the functions in Beijing
The list of variables for empirical analysis
| Predisposing | Demography | Age | 15~ 24 (Reference group); 25~ 34;35~ 44;45~ 54;> 55 | |
|---|---|---|---|---|
| Gender | Male (Reference group); Female | |||
| Social structure | Marital status | Unmarried (Reference group); married; divorced/widowed | ||
| Education level | Junior high school degree and below (Reference group); High school or secondary; University or college; Master’ degree or above | |||
| Ethnicity | Han ethnic (Reference); Minorities | |||
| Enabling | Individual/family resources | Incoming monthly | < 3000 (Reference group); 3000~ 4999;> 5000 | |
| Employment status | Formal work (Reference group); Retirement; Informal work | |||
| Insurance status | Uninsured (Reference group); Insured | |||
| Housing condition | Housing source | Own house (Reference group); Rent | ||
| Community resources | Residential condition | Distance from residence to nearest medical institution | < 1 km (Reference group):1~;> 2 | |
| Need | Having chronic disease | No (Reference); Yes | ||
| Having symptoms in the past month | Prevalence | No (Reference); Yes | ||
| Severity | Mild (Reference); Moderate; Severe | |||
| Self-evaluation general health status | Good (Reference); General; Poor | |||
The health status of respondents in different age group in the past month
| Age | Migrants (N, %) | Residents with “ | |||||
|---|---|---|---|---|---|---|---|
| Total | Have one or more symptoms | % | Total | Have one or more symptoms | % | ||
| 15~ | 396 | 96 | 24.2 | 456 | 115 | 25.2 | 0.125 |
| 25~ | 859 | 179 | 20.8 | 825 | 217 | 26.3 | 0.005 |
| 35~ | 405 | 110 | 27.2 | 858 | 231 | 26.9 | 0.234 |
| 45~ | 197 | 50 | 25.4 | 960 | 295 | 30.7 | 0.076 |
| 55~ | 157 | 68 | 43.3 | 1479 | 583 | 39.4 | 0.098 |
| Total | 2014 | 504 | 25.0 | 4578 | 1442 | 31.5 | < 0.0001 |
The therapy measures selected by respondents when they have symptoms in the past month
| Migrants | Residents with “ | ||||
|---|---|---|---|---|---|
| NO. | % | NO. | % | ||
| Therapy measures | < 0.0001 | ||||
| Seek health services | 235 | 46.7 | 903 | 62.7 | |
| Self-medication | 122 | 24.3 | 219 | 15.2 | |
| Do nothing | 146 | 29.0 | 319 | 22.1 | |
Information on the health utilization for persons who have symptoms by different characteristic in the past month
| Migrants ( | Residents with “ | |||||||||
|---|---|---|---|---|---|---|---|---|---|---|
| Variances | Seek health services N (%) | Non seek health services N (%) | Total N (%) | χ2 |
| Seek health services N (%) | Non seek health services N (%) | Total | χ2 |
|
| Predisposing variables | ||||||||||
| Gender | 0.017 | 0.927 | 6.659 | 0.011 | ||||||
| Male | 89 (47.1) | 100 (52.9) | 189 (100) | 276 (58.0) | 200 (42.0) | 476 (100) | ||||
| Female | 146 (46.5) | 168 (53.5) | 314 (100) | 627 (65.0) | 338 (35.0) | 965 (100) | ||||
| Age | 14.937 | 0.005 | 69.937 | 0.000 | ||||||
| 15~ | 40 (41.7) | 56 (58.3) | 96 (100) | 56 (48.7) | 59 (51.3) | 115 (100) | ||||
| 25~ | 78 (43.6) | 101(56.4) | 179 (100) | 107 (49.3) | 110 (50.7) | 217 (100) | ||||
| 35~ | 46 (41.8) | 64 (58.2) | 110 (100) | 126 (54.5) | 105 (44.5) | 231 (100) | ||||
| 45~ | 25 (50.0) | 25 (50.0) | 50 (100) | 178 (60.3) | 117 (39.7) | 295 (100) | ||||
| 55~ | 46 (67.6) | 22 (32.4) | 68 (100) | 436 (74.8) | 147 (25.2) | 583 (100) | ||||
| Ethnicity | 11.001 | 0.001 | 0.007 | 1.000 | ||||||
| Han | 226 (48.9) | 236 (51.1) | 462 (100) | 850 (62.6) | 507 (37.4) | 1357 (100) | ||||
| Minority | 9 (22.0) | 32 (78.0) | 41 (100) | 53 (63.1) | 31 (36.9) | 84 (100) | ||||
| Marital status | 3.347 | 0.188 | 24.090 | 0.000 | ||||||
| No married | 70 (41.8) | 100 (58.2) | 170 (100) | 96 (51.6) | 90 (48.4) | 186 (100) | ||||
| Married | 156 (49.8) | 157 (50.2) | 313 (100) | 711 (62.7) | 423 (37.3) | 1134 (100) | ||||
| Divorced/Widowed | 9 (45.0) | 11 (55.0) | 20 (100) | 96 (79.3) | 25 (20.7) | 121 (100) | ||||
| Education level | 0.833 | 0.842 | 22.931 | 0.000 | ||||||
| Junior high school and below | 56 (50.0) | 56 (50.0) | 112 (100) | 263 (71.9) | 103 (28.1) | 366 (100) | ||||
| High school or secondary | 66 (46.5) | 76 (53.5) | 142 (100) | 291(62.3) | 176(37.7) | 467(100) | ||||
| University or college | 96 (44.9) | 118 (55.1) | 214 (100) | 292 (58.9) | 204 (41.1) | 496 (100) | ||||
| Master’ degree or above | 17 (48.6) | 18 (51.4) | 35 (100) | 57 (50.9) | 55 (49.1) | 112 (100) | ||||
| Enabling variables | ||||||||||
| Incoming | 5.753 | 0.056 | 10.931 | 0.004 | ||||||
| < 3000 | 135 (48.7) | 142 (51.3) | 277 (100) | 589 (65.3) | 313 (34.7) | 902 (100) | ||||
| 3000–4999 | 61 (39.4) | 94 (60.6) | 155 (100) | 220 (61.1) | 140 (38.9) | 360 (100) | ||||
| > 5000 | 39 (54.9) | 32 (45.1) | 71 (100) | 94 (52.5) | 85 (47.5) | 179 (100) | ||||
| Housing source | 0.806 | 0.421 | 0.872 | 0.352 | ||||||
| Own house | 68 (50.0) | 68 (50.0) | 136 (100) | 619 (63.5) | 356 (36.5) | 975 (100) | ||||
| Rent | 167 (45.5) | 200 (54.5) | 367 (100) | 284 (60.9) | 182 (39.1) | 466 (100) | ||||
| Employment status | 6.365 | 0.041 | 46.566 | 0.000 | ||||||
| Formal work | 127 (48.8) | 133 (51.2) | 260 (100) | 410 (59.7) | 277 (40.3) | 687 (100) | ||||
| Retirement | 26 (60.5) | 17 (39.5) | 43 (100) | 328 (75.1) | 109 (24.9) | 437 (100) | ||||
| Informal work | 82 (41.0) | 118 (59.0) | 200 (100) | 165 (52.1) | 152 (47.9) | 317 (100) | ||||
| Insurance | 0.820 | 0.199 | 1.691 | 0.199 | ||||||
| Uninsured | 108 (44.6) | 134(55.4) | 242(100) | 68 (57.1) | 51 (42.9) | 119 (100) | ||||
| Insured | 127 (48.7) | 134(51.3) | 261(100) | 835 (63.2) | 487 (36.8) | 1322 (100) | ||||
| Distance from residence to nearest medical institution | 2.229 | 0.328 | 5.099 | 0.078 | ||||||
| 0~ | 85 (46.2) | 99 (53.8) | 184 (100) | 391 (66.0) | 201 (34.0) | 592 (100) | ||||
| 1~ | 31 (39.7) | 47 (60.3) | 78 (100) | 182 (61.3) | 115 (38.7) | 297 (100) | ||||
| 2~ | 119 (49.4) | 122 (50.6) | 241 (100) | 330 (59.8) | 222 (40.2) | 552 (100) | ||||
| Need variables | ||||||||||
| Having chronic disease | 7.625 | 0.006 | 72.114 | 0.000 | ||||||
| No | 125 (41.7) | 175 (65.3) | 300 (100) | 248 (48.2) | 267 (51.8) | 515 (100) | ||||
| Yes | 110 (54.2) | 93 (45.8) | 203 (100) | 655 (70.7) | 271 (29.3) | 926 (100) | ||||
| Self-evaluation general health status | 4.840 | 0.089 | 8.213 | 0.016 | ||||||
| Good | 82 (42.3) | 112 (57.7) | 194 (100) | 275 (62.4) | 166 (37.6) | 441 (100) | ||||
| Moderate | 126 (47.7) | 138 (52.3) | 264 (100) | 475 (60.5) | 310 (39.5) | 785 (100) | ||||
| Poor | 27 (60.0) | 18 (40.0) | 45 (100) | 153 (71.2) | 62 (28.8) | 215 (100) | ||||
| The degree of symptom in the past month | 22.586 | 0.000 | 93.001 | 0.000 | ||||||
| Mild | 72 (36.7) | 124 (63.3) | 196 (100) | 199 (46.9) | 225 (53.1) | 424 (100) | ||||
| Moderate | 127 (49.2) | 131 (50.8) | 258 (100) | 527 (65.1) | 283 (34.9) | 810 (100) | ||||
| Severe | 36 (73.5) | 13 (26.5) | 49 (100) | 177 (85.5) | 30 (14.5) | 207 (100) | ||||
Model summary of health services utilization in the past month for two groups population
| -2Log likelihood | Cox and Snell R Square | Nagelkerke R Square | |
|---|---|---|---|
| Model Ia | 654.081 | 0.078 | 0.105 |
| Model IIb | 1714.070 | 0.124 | 0.169 |
Model I: Binary logistic regression analysis of predictors of health services utilization of migrants in the past month
Model II: Binary logistic regression analysis of predictors of health services utilization of the residents with “Hukou” in the past month
aχ2 = 41.059, P = 0.000
bχ2 = 190.112, P = 0.000
Binary logistic regression analysis of predictors of health services utilization of migrants in the past month
| Variables in the Equation | Model I | |||
|---|---|---|---|---|
| B (SE) | Wald | OR [95%-CI] | ||
| Predisposing variables | ||||
| Minorities | −1.265 (0.403) | 9.871 | 0.282 [0.128, 0.621] | 0.002 |
| Enabling variables | ||||
| Incoming | ||||
| 3000~ 4999 | −0.400 (0.211) | 3.590 | 0.670 [0.443,1.014] | 0.058 |
| > 5000 | 0.322 (0.276) | 0.276 | 1.380 [0.804,2.370] | 0.243 |
| Need variables | ||||
| The degree of the symptom in the past month (Ref = Mild) | ||||
| Moderate | 0.484 (0.197) | 6.029 | 1.623 [1.103, 2.389] | 0.014 |
| Severe | 1.616 (0.364) | 19.739 | 5.035 [2.468, 10.272] | 0.000 |
| Constant | −0.368 (0.176) | 4.349 | 0.615 | 0.058 |
Abbreviation: B: Unstandardized regression coefficient, SE Standard error, OR Odds ratio, CI Confidence interval, Ref Reference category
Model I: Binary logistic regression analysis of predictors of health services utilization of migrants in the past month
Binary logistic regression analysis of predictors of health services utilization of the residents with “Hukou” in the past month
| Variables in the equation | Model II | |||
|---|---|---|---|---|
| B (SE) | Wald | OR [95%-CI] | ||
| Predisposing variables | ||||
| Female (Ref = Male) | 0.273 (0.124) | 4.859 | 1.314 [1.031, 1.674] | 0.028 |
| Age (Ref = 15~ 24) | ||||
| 25 | 0.287 (0.319) | 0.809 | 1.333 [0.713, 2.491] | 0.368 |
| 35 | 0.548 (0.371) | 2.178 | 1.730 [0.835, 3.581] | 0.140 |
| 45 | 0.327 (0.372) | 0.773 | 1.387 [0.669,2.873] | 0.379 |
| > 55 | 0.812 (0.381) | 4.556 | 2.253 [1.069, 4.751] | 0.033 |
| Marital status (Ref = Single) | ||||
| Married | −0.492 (0.285) | 2.976 | 0.611 [0.349, 1.069] | 0.085 |
| Divorced/Widowed | 0.034 (0.375) | 0.008 | 1.035 [0.496, 2.158] | 0.928 |
| Employment status (Ref = Formal work) | ||||
| Retirement | 0.229 (0.169) | 1.827 | 1.257 [0.902, 1.752] | 0.177 |
| Informal work | −0.241 (0.153) | 2.469 | 0.786 [0.582, 1.061] | 0.116 |
| Need variables | ||||
| Having chronic disease (Ref = No) | 0.615 (0.145) | 18.060 | 1.849 [1.393, 2.455] | 0.000 |
| The degree of the symptom in the past month (Ref = Mild) | ||||
| Moderate | 0.709 (0.130) | 29.959 | 2.032 [1.576, 2.619] | 0.000 |
| Severe | 1.755 (0.236) | 55.430 | 5.786 [3.645, 9.184] | 0.000 |
| Self-evaluation general health status (Ref = Good) | ||||
| Moderate | −0.405 (0.135) | 9.095 | 0.667 [0.512, 0.868] | 0.003 |
| Poor | −0.481 (0.207) | 5.409 | 0.618 [0.412, 0.927] | 0.020 |
| Constant | −0.486 (0.256) | 3.602 | 0.692 | 0.037 |
Abbreviation: B: Unstandardized regression coefficient, SE Standard error, OR Odds ratio, CI Confidence interval, Ref Reference category
Model II: Binary logistic regression analysis of predictors of health services utilization of the residents with “Hukou” in the past month