Relationships between Health Education, Health Behaviors, and Health Status among Migrants in China: A Cross-Sectional Study Based on the China Migrant Dynamic Survey
Abstract
:1. Introduction
2. Literature Review
2.1. Limitations of the Previous Studies
2.2. The Impacts of Health Knowledge and Health Behaviors on the Health of Migrants
3. Materials and Methods
3.1. Data Source
3.2. Study Population
3.3. Measures
3.3.1. Dependent Variables
3.3.2. Independent Variables
3.3.3. Mediation Variables and Control Variables
3.4. Estimation Method
4. Results
4.1. Descriptive Analysis
4.2. Regression Results
4.2.1. Effects of Health Education on Migrants’ Health Status
4.2.2. Analysis of Heterogeneity by Gender and Age Sample
4.3. Mediation Model Test
5. Discussion
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Variable | Observation | Mean | Standard Deviation |
---|---|---|---|
Dependent variables | |||
Health status | 169,989 | 0.972 | 0.162 |
Independent variables | |||
Health education | 154,586 | 3.753 | 3.388 |
Occupational disease | 154,586 | 0.333 | 0.471 |
Venereal disease/AIDS | 154,586 | 0.396 | 0.489 |
Reproductive health | 154,586 | 0.504 | 0.499 |
Mental health | 154,586 | 0.357 | 0.479 |
Chronic disease | 154,586 | 0.374 | 0.483 |
Maternal and child health | 154,586 | 0.511 | 0.499 |
Self-rescue in public emergency | 154,586 | 0.422 | 0.493 |
Lecture | 112,987 | 0.446 | 0.497 |
Publicity material | 112,987 | 0.856 | 0.351 |
Bulletin board | 112,987 | 0.748 | 0.434 |
Public consultation | 112,987 | 0.453 | 0.498 |
Online education | 112,987 | 0.301 | 0.458 |
Mediation variables | |||
Medical-seeking behavior | 41,287 | 0.993 | 0.077 |
Hygiene behavior | 169,989 | 0.801 | 0.399 |
Control variables | |||
Gender | 169,989 | 0.516 | 0.500 |
Age | 166,695 | 2.253 | 1.110 |
Education level | 152,210 | 2.209 | 0.837 |
Household registration | 169,989 | 0.779 | 0.414 |
Monthly household income | 169,982 | 2.362 | 1.127 |
Employment status | 169,989 | 0.822 | 0.382 |
Social security card | 159,525 | 0.533 | 0.499 |
Health service publicity | 169,989 | 0.599 | 0.490 |
Basic medical insurance | 167,034 | 0.932 | 0.250 |
Marriage | 163,769 | 0.843 | 0.364 |
Migration range | 139,807 | 1.599 | 0.490 |
Current residence | 162,990 | 1.803 | 0.820 |
Variables | Health Status | ||
---|---|---|---|
(S.E.) | Wald | Exp. () | |
Health education | 0.041 *** (0.008) | 29.245 | 1.042 |
Gender_male | 0.105 * (0.046) | 5.164 | 1.110 |
Age_30–39 | −0.969 *** (0.125) | 60.417 | 0.380 |
Age_40–49 | −1.987 *** (0.120) | 276.119 | 0.137 |
Age_50–59 | −2.596 *** (0.122) | 453.477 | 0.075 |
Age_60–69 | −2.815 *** (0.130) | 466.677 | 0.060 |
Age_70 or older | −3.228 *** (0.155) | 435.298 | 0.040 |
Education level_middle school | 0.643 *** (0.050) | 165.487 | 1.902 |
Education level_high school | 0.860 *** (0.076) | 128.004 | 2.363 |
Education level_college and above | 1.395 *** (0.206) | 45.755 | 4.036 |
Household registration_agricultural household registration | −0.017 (0.063) | 0.070 | 0.984 |
Household income_CNY 4000–6000 | 0.494 *** (0.053) | 87.995 | 1.639 |
Household income_CNY 6001–8000 | 0.786 *** (0.075) | 110.571 | 2.195 |
Household income_CNY more than 8001 | 1.049 *** (0.075) | 193.893 | 2.855 |
Employment status_yes | 1.333 *** (0.048) | 757.579 | 3.791 |
Social security card_yes | −0.009 (0.046) | 0.039 | 0.991 |
Health service publicity_yes | 0.277 *** (0.047) | 34.370 | 1.319 |
Basic medical insurance_yes | 0.046 (0.078) | 0.339 | 1.047 |
Marriage_yes | −0.111 (0.133) | 0.699 | 0.895 |
Migration range_across province | 0.120 ** (0.047) | 6.470 | 1.128 |
Current residence_middle | −0.361 *** (0.059) | 37.513 | 0.697 |
Current residence_west | −0.395 *** (0.056) | 49.388 | 0.674 |
Constant | 3.379 *** (0.179) | 356.390 | 29.341 |
−2 Log likelihood = 17,644.321 | |||
Model χ2 = 5263.634 *** | |||
Cox and Snell R² = 0.054 | |||
Nagelkerke R² = 0.252 | |||
Hosmer and Lemeshow = 5.159 (p-value = 0.740) | |||
Observation = 94,517 |
Variables | Health Status | ||
---|---|---|---|
(S.E.) | Wald | Exp. () | |
Occupational disease | 0.266 *** (0.072) | 13.758 | 1.305 |
Venereal disease/AIDS | 0.153 * (0.072) | 4.462 | 1.165 |
Reproductive health | 0.022 (0.070) | 0.101 | 1.022 |
Mental health | 0.025 (0.069) | 0.128 | 1.025 |
Chronic disease | −0.268 *** (0.066) | 16.459 | 0.765 |
Maternal child health | 0.111 (0.066) | 2.814 | 1.117 |
Self-rescue in public emergency | 0.125 * (0.062) | 4.111 | 1.133 |
Gender_male | 0.105 * (0.046) | 5.108 | 1.111 |
Age_30–39 | −0.964 *** (0.125) | 59.756 | 0.381 |
Age_40–49 | −1.971 *** (0.120) | 270.627 | 0.139 |
Age_50–59 | −2.565 *** (0.123) | 436.803 | 0.077 |
Age_60–69 | −2.758 *** (0.132) | 436.653 | 0.063 |
Age_70 or older | −3.168 *** (0.156) | 410.497 | 0.042 |
Education level_middle school | 0.636 *** (0.050) | 161.349 | 1.888 |
Education level_high school | 0.851 *** (0.076) | 125.223 | 2.343 |
Education level_college and above | 1.380 *** (0.206) | 44.717 | 3.976 |
Household registration_agricultural household registration | −0.024 (0.063) | 0.143 | 0.977 |
Household income_CNY 4000–6000 | 0.490 *** (0.053) | 86.551 | 1.633 |
Household income_CNY 6001–8000 | 0.778 *** (0.075) | 108.069 | 2.177 |
Household income_more than CNY 8001 | 1.043 *** (0.075) | 191.485 | 2.839 |
Employment status | 1.317 *** (0.049) | 734.136 | 3.734 |
Social security card_yes | −0.008 (0.046) | 0.030 | 0.992 |
Health service publicity_yes | 0.287 *** (0.047) | 36.668 | 1.332 |
Basic medical insurance_yes | 0.048 (0.078) | 0.369 | 1.049 |
Marriage_yes | −0.111 (0.134) | 0.692 | 0.895 |
Migration range_across province | 0.115 * (0.047) | 5.868 | 1.121 |
Current residence_the central | −0.352 *** (0.059) | 35.472 | 0.703 |
Current residence_the west | −0.389 *** (0.056) | 47.546 | 0.678 |
Constant | 3.373 *** (0.179) | 354.139 | 29.171 |
−2 Log likelihood = 17,608.477 | |||
Model χ2 = 5299.478 *** | |||
Cox and Snell R² = 0.055 | |||
Nagelkerke R² = 0.253 | |||
Hosmer and Lemeshow = 4.113 (p-value = 0.847) | |||
Observation = 94,517 |
Variables | Health Status | ||
---|---|---|---|
(S.E.) | Wald | Exp. () | |
Lecture | 0.285 *** (0.065) | 19.138 | 1.330 |
Publicity material | 0.136 (0.074) | 3.383 | 1.146 |
Bulletin board | 0.154 * (0.065) | 5.661 | 1.167 |
Public consultation | 0.042 (0.069) | 0.371 | 1.043 |
Online education | −0.174 * (0.069) | 6.428 | 0.841 |
Gender_male | 0.105 (0.059) | 3.177 | 1.111 |
Age_30–39 | −0.939 *** (0.154) | 37.167 | 0.391 |
Age_40–49 | −2.008 *** (0.148) | 184.422 | 0.134 |
Age_50–59 | −2.644 *** (0.152) | 303.511 | 0.071 |
Age_60–69 | −2.774 *** (0.166) | 280.192 | 0.062 |
Age_70 or older | −3.236 *** (0.201) | 259.698 | 0.039 |
Education level_middle school | 0.647 *** (0.063) | 104.293 | 1.910 |
Education level_high school | 0.896 *** (0.097) | 84.755 | 2.450 |
Education level_college and above | 1.615 *** (0.293) | 30.464 | 5.029 |
Household registration_agricultural household registration | 0.018 (0.079) | 0.054 | 1.019 |
Household income_CNY 4000–6000 | 0.601 *** (0.067) | 79.424 | 1.823 |
Household income_CNY 6001–8000 | 0.778 *** (0.092) | 70.777 | 2.177 |
Household income_more than CNY 8001 | 1.133 *** (0.099) | 131.062 | 3.103 |
Employment status | 1.310 *** (0.062) | 450.634 | 3.707 |
Social security card_yes | −0.035 (0.058) | 0.356 | 0.966 |
Health service publicity_yes | 0.286 *** (0.060) | 22.776 | 1.331 |
Basic medical insurance_yes | −0.022 (0.107) | 0.044 | 0.978 |
Marriage_yes | −0.342 (0.187) | 3.355 | 0.710 |
Migration range_across province | 0.117 * (0.059) | 3.893 | 1.124 |
Current residence_the central | −0.342 *** (0.077) | 19.500 | 0.710 |
Current residence_the west | −0.390 *** (0.072) | 29.673 | 0.677 |
Constant | 3.529 *** (0.250) | 199.892 | 34.099 |
−2 Log likelihood = 11,121.878 | |||
Model χ2 = 3174.642 *** | |||
Cox and Snell R² = 0.045 | |||
Nagelkerke R² = 0.240 | |||
Hosmer and Lemeshow = 8.753 (p value = 0.364) | |||
Observation = 77,156 |
Variables | Male | Female | ||||
---|---|---|---|---|---|---|
(S.E.) | Wald | Exp. () | (S.E.) | Wald | Exp. () | |
Health education | 0.031 ** (0.011) | 8.427 | 1.032 | 0.051 *** (0.011) | 22.498 | 1.052 |
Age_30–39 | −0.662 *** (0.201) | 10.848 | 0.516 | −1.093 *** (0.161) | 46.184 | 0.335 |
Age_40–49 | −1.704 *** (0.191) | 79.254 | 0.182 | −2.049 *** (0.156) | 172.786 | 0.129 |
Age_50–59 | −2.282 *** (0.194) | 138.095 | 0.102 | −2.691 *** (0.159) | 284.774 | 0.068 |
Age_60–69 | −2.487 *** (0.206) | 145.976 | 0.083 | −2.898 *** (0.172) | 283.568 | 0.055 |
Age_70 or older | −2.921 *** (0.228) | 163.501 | 0.054 | −3.189 *** (0.227) | 197.641 | 0.041 |
Education level_middle school | 0.508 *** (0.072) | 49.998 | 1.662 | 0.762 *** (0.071) | 115.497 | 2.142 |
Education level_high school | 0.697 *** (0.103) | 46.174 | 2.009 | 1.021 *** (0.116) | 78.080 | 2.776 |
Education level_college and above | 1.281 *** (0.280) | 20.980 | 3.600 | 1.512 *** (0.308) | 24.192 | 4.538 |
Household registration_agricultural household registration | −0.075 (0.090) | 0.692 | 0.928 | 0.033 (0.087) | 0.139 | 1.033 |
Household income_CNY 4001–6000 | 0.446 *** (0.077) | 33.995 | 1.562 | 0.528 *** (0.073) | 52.739 | 1.696 |
Household income_CNY 6001–8000 | 0.820 *** (0.111) | 54.693 | 2.271 | 0.758 *** (0.101) | 55.837 | 2.135 |
Household income_more than CNY 8001 | 1.032 *** (0.111) | 86.615 | 2.806 | 1.058 *** (0.103) | 105.743 | 2.881 |
Employment status_yes | 1.577 *** (0.073) | 469.649 | 4.841 | 1.149 *** (0.064) | 319.835 | 3.154 |
Social security card_yes | 0.026 (0.067) | 0.153 | 1.026 | −0.036 (0.063) | 0.320 | 0.965 |
Health service publicity_yes | 0.293 *** (0.068) | 18.300 | 1.340 | 0.254 *** (0.065) | 15.133 | 1.289 |
Basic medical insurance_yes | −0.004 (0.118) | 0.001 | 0.996 | 0.081 (0.105) | 0.590 | 1.084 |
Marriage_yes | −0.150 (0.166) | 0.820 | 0.860 | −0.199 ** (0.239) | 0.697 | 0.819 |
Migration range_across province | 0.128 (0.069) | 3.465 | 1.136 | 0.119 (0.065) | 3.312 | 1.126 |
Current residence_the central | −0.379 *** (0.086) | 19.435 | 0.685 | −0.347 *** (0.081) | 18.182 | 0.707 |
Current residence_the west | −0.335 *** (0.082) | 16.543 | 0.716 | −0.437 *** (0.077) | 32.112 | 0.646 |
Constant | 3.250 *** (0.248) | 172.135 | 25.780 | 3.493 *** (0.283) | 152.829 | 32.883 |
−2 Log likelihood | 8576.983 | 9028.597 | ||||
Model χ2 | 2461.923 *** | 2802.214 *** | ||||
Cox and Snell R² | 0.048 | 0.061 | ||||
Nagelkerke R² | 0.242 | 0.261 | ||||
Hosmer and Lemeshow | 5.720 (p-value = 0.679) | 9.949 (p-value = 0.269) | ||||
Observation | 50,149 | 44,368 |
Variables | 20 to 29 | 30 to 39 | 40 to 59 | 60 and above | ||||
---|---|---|---|---|---|---|---|---|
(S.E.) | Exp. () | (S.E.) | Exp. () | (S.E.) | Exp. () | (S.E.) | Exp. () | |
Health education | 0.036 (0.036) | 1.037 | 0.029 (0.020) | 1.030 | 0.034 *** (0.010) | 1.035 | 0.093 *** (0.019) | 1.097 |
Gender_male | −0.137 (0.238) | 0.872 | 0.207 (0.127) | 1.230 | 0.102 (0.058) | 1.107 | 0.028 (0.102) | 1.028 |
Middle school | 1.708 *** (0.266) | 5.517 | 1.083 *** (0.133) | 2.953 | 0.611 *** (0.061) | 1.843 | 0.467 *** (0.121) | 1.596 |
High school | 1.749 *** (0.305) | 5.751 | 1.652 *** (0.203) | 5.216 | 0.743 *** (0.100) | 2.102 | 0.548 *** (0.163) | 1.731 |
College and above | 1.661 *** (0.483) | 5.266 | 1.987 *** (0.366) | 7.292 | 2.089 *** (0.587) | 8.078 | 0.749 (0.396) | 2.115 |
Agricultural household registration | −1.856 * (0.730) | 0.156 | 0.161 (0.179) | 1.174 | 0.088 (0.082) | 1.092 | −0.131 (0.124) | 0.878 |
Income_CNY 4001–6000 | 0.300 (0.261) | 1.349 | 0.596 *** (0.141) | 1.814 | 0.524 *** (0.066) | 1.689 | 0.420 ** (0.129) | 1.522 |
Income_CNY 6001–8000 | 0.612 (0.385) | 1.844 | 0.835 *** (0.183) | 2.305 | 0.789 *** (0.092) | 2.202 | 0.991 *** (0.208) | 2.694 |
Income_more than CNY 8001 | 0.213 (0.320) | 1.237 | 1.139 *** (0.201) | 3.122 | 1.179 *** (0.101) | 3.251 | 0.850 *** (0.159) | 2.339 |
Employment status_yes | 1.112 *** (0.236) | 3.041 | 0.958 *** (0.131) | 2.607 | 1.532 *** (0.058) | 4.629 | 1.244 *** (0.126) | 3.471 |
Social security card_yes | 0.162 (0.226) | 1.176 | −0.166 (0.123) | 0.847 | −0.035 (0.058) | 0.966 | 0.133 (0.107) | 1.142 |
Health service publicity_yes | 0.131 (0.231) | 1.140 | 0.656 *** (0.127) | 1.928 | 0.275 *** (0.060) | 1.317 | 0.064 (0.104) | 1.067 |
Basic medical insurance_yes | −0.901 (0.521) | 0.406 | 0.315 (0.190) | 1.371 | 0.070 (0.098) | 1.073 | −0.193 (0.188) | 0.825 |
Marriage_yes | 0.285 (0.249) | 1.329 | −0.749 * (0.346) | 0.473 | −0.048 (0.206) | 0.953 | −1.184 (0.759) | 0.306 |
Migration range_across province | −0.149 (0.232) | 0.861 | 0.124 (0.125) | 1.132 | 0.177 ** (0.060) | 1.193 | −0.029 (0.108) | 0.972 |
Current residence_the central | −0.263 (0.320) | 0.769 | −0.376 * (0.156) | 0.686 | −0.281 *** (0.075) | 0.755 | −0.667 *** (0.133) | 0.513 |
Current residence_the west | −0.611 * (0.270) | 0.543 | −0.159 (0.153) | 0.853 | −0.355 *** (0.070) | 0.701 | −0.607 *** (0.135) | 0.545 |
Constant | 5.635 *** (0.947) | 280.053 | 2.267 *** (0.428) | 9.649 | 0.835 *** (0.238) | 2.304 | 2.174 ** (0.782) | 8.794 |
−2 Log likelihood | 1072.090 | 3098.415 | 10,696.870 | 2754.352 | ||||
Model χ2 | 124.053 *** | 384.129 *** | 1585.087 *** | 345.006 *** | ||||
Cox and Snell R² | 0.005 | 0.012 | 0.045 | 0.097 | ||||
Nagelkerke R² | 0.106 | 0.116 | 0.150 | 0.162 | ||||
Hosmer and Lemeshow | 2.738 (p-value = 0.950) | 10.264 (p-value = 0.247) | 12.924 (p-value = 0.114) | 8.959 (p-value = 0.346) | ||||
Observation | 23,980 | 32,972 | 34,192 | 3373 |
Variables | Medical-Seeking Behavior | ||
---|---|---|---|
(S.E.) | Wald | Exp. () | |
Health education | 0.072 * (0.030) | 5.597 | 1.074 |
Gender_male | −0.152 (0.181) | 0.699 | 0.859 |
Age_30–39 | −0.150 (0.285) | 0.276 | 0.861 |
Age_40–49 | −0.620 * (0.296) | 4.385 | 0.538 |
Age_50–59 | −0.755 * (0.346) | 4.776 | 0.470 |
Age_60–69 | −0.970 * (0.426) | 5.189 | 0.379 |
Age_70 or older | −0.219 (0.789) | 0.077 | 0.803 |
Education level_middle school | 0.311 (0.221) | 1.975 | 1.365 |
Education level_high school | 0.333 (0.280) | 1.416 | 1.395 |
Education level_college and above | 0.696 (0.454) | 2.353 | 2.006 |
Household registration_agricultural household registration | 0.734 *** (0.212) | 12.028 | 2.083 |
Household income_CNY 4000–6000 | 0.300 (0.220) | 1.868 | 1.350 |
Household income_CNY 6001–8000 | 0.531 (0.280) | 3.598 | 1.700 |
Household income_more than CNY 8001 | 0.600 * (0.264) | 5.176 | 1.822 |
Employment status_yes | 0.144 (0.227) | 0.400 | 1.154 |
Social security card_yes | 0.010 (0.186) | 0.003 | 1.010 |
Health service publicity_yes | 0.221 (0.185) | 1.428 | 1.247 |
Basic medical insurance_yes | 0.707 ** (0.269) | 6.936 | 2.029 |
Marriage_yes | 0.378 (0.318) | 1.406 | 1.459 |
Migration range_across province | 0.158 (0.189) | 0.701 | 1.171 |
Current residence_middle | −0.400 (0.223) | 3.213 | 0.670 |
Current residence_west | 0.173 (0.233) | 0.549 | 1.189 |
Constant | 2.896 *** (0.492) | 34.692 | 18.097 |
−2 Log likelihood = 1608.801 | |||
Model χ2 = 79.345 *** | |||
Cox and Snell R² = 0.003 | |||
Nagelkerke R² = 0.049 | |||
Hosmer and Lemeshow = 9.541 (p-value = 0.299) | |||
Observation = 23,080 |
Variables | Hygiene Behavior | ||
---|---|---|---|
(S.E.) | Wald | Exp. () | |
Health education | 0.021 *** (0.003) | 59.708 | 1.021 |
Gender_male | −0.045 ** (0.017) | 6.949 | 0.956 |
Age_30–39 | −0.005 (0.024) | 0.051 | 0.995 |
Age_40–49 | −0.089 *** (0.026) | 11.761 | 0.915 |
Age_50–59 | −0.116 *** (0.033) | 12.433 | 0.890 |
Age_60–69 | 0.022 (0.053) | 0.179 | 1.022 |
Age_70 or older | 0.147 (0.104) | 2.009 | 1.158 |
Education level_middle school | 0.292 *** (0.022) | 183.220 | 1.340 |
Education level_high school | 0.543 *** (0.027) | 397.356 | 1.721 |
Education level_college and above | 0.983 *** (0.046) | 465.012 | 2.673 |
Household registration_agricultural household registration | −0.113 *** (0.024) | 21.795 | 0.893 |
Household income_CNY 4000–6000 | 0.074 *** (0.022) | 11.542 | 1.077 |
Household income_CNY 6001–8000 | 0.202 *** (0.026) | 61.809 | 1.224 |
Household income_more than CNY 8001 | 0.268 *** (0.025) | 114.425 | 1.307 |
Employment status_yes | 0.071 ** (0.023) | 9.333 | 1.074 |
Social security card_yes | 0.071 *** (0.017) | 17.192 | 1.074 |
Health service publicity_yes | 0.140 *** (0.018) | 61.860 | 1.150 |
Basic medical insurance_yes | 0.023 (0.032) | 0.522 | 1.023 |
Marriage_yes | 0.060 (0.031) | 3.803 | 1.062 |
Migration range_across province | −0.342 *** (0.018) | 346.788 | 0.710 |
Current residence_middle | 0.060 ** (0.023) | 6.899 | 1.062 |
Current residence_west | −0.337 *** (0.020) | 274.326 | 0.714 |
Constant | 0.998 *** (0.053) | 347.968 | 2.712 |
−2 Log likelihood = 93,839.969 | |||
Model χ2 = 2968.236 *** | |||
Cox and Snell R² = 0.031 | |||
Nagelkerke R² = 0.048 | |||
Hosmer and Lemeshow = 12.363 (p-value = 0.136) | |||
Observation = 94,517 |
Variables | Health Status | ||
---|---|---|---|
(S.E.) | Wald | Exp. () | |
Health education | 0.050 *** (0.012) | 16.051 | 1.051 |
Medical-seeking behavior | 0.956 *** (0.273) | 12.260 | 2.602 |
Gender_male | 0.168 * (0.076) | 4.949 | 1.183 |
Age_30–39 | −1.122 *** (0.198) | 31.953 | 0.326 |
Age_40–49 | −2.106 *** (0.193) | 119.382 | 0.122 |
Age_50–59 | −2.806 *** (0.197) | 202.357 | 0.060 |
Age_60–69 | −3.040 *** (0.214) | 201.278 | 0.048 |
Age_70 or older | −3.573 *** (0.254) | 198.315 | 0.028 |
Education level_middle school | 0.675 *** (0.082) | 68.397 | 1.964 |
Education level_high school | 1.038 *** (0.134) | 59.604 | 2.822 |
Education level_college and above | 1.157 *** (0.316) | 13.453 | 3.182 |
Household registration_agricultural household registration | −0.086 (0.109) | 0.618 | 0.918 |
Household income_CNY 4000–6000 | 0.435 *** (0.085) | 25.886 | 1.545 |
Household income_CNY 6001–8000 | 0.915 *** (0.124) | 54.655 | 2.497 |
Household income_more than CNY 8001 | 1.189 *** (0.121) | 97.342 | 3.284 |
Employment status_yes | 1.159 *** (0.079) | 213.317 | 3.186 |
Social security card_yes | 0.040 (0.075) | 0.282 | 1.041 |
Health service publicity_yes | 0.296 *** (0.077) | 14.655 | 1.345 |
Basic medical insurance_yes | 0.030 (0.139) | 0.045 | 1.030 |
Marriage_yes | −0.339 (0.236) | 2.067 | 0.712 |
Migration range_across province | 0.022 (0.079) | 0.081 | 1.023 |
Current residence_middle | −0.466 *** (0.101) | 21.268 | 0.628 |
Current residence_west | −0.272 ** (0.091) | 8.997 | 0.762 |
Constant | 2.261 *** (0.406) | 31.071 | 9.594 |
−2 Log likelihood = 6011.141 | |||
Model χ2 = 2241.384 *** | |||
Cox and Snell R² = 0.093 | |||
Nagelkerke R² = 0.308 | |||
Hosmer and Lemeshow = 7.122 (p-value = 0.524) | |||
Observation = 23,080 |
Variables | Health Status | ||
---|---|---|---|
(S.E.) | Wald | Exp. () | |
Health education | 0.041 *** (0.008) | 29.160 | 1.042 |
Hygiene behavior | 0.013 (0.050) | 0.064 | 1.013 |
Gender_male | 0.105 * (0.046) | 5.183 | 1.111 |
Age_30–39 | −0.968 *** (0.125) | 60.365 | 0.380 |
Age_40–49 | −1.986 *** (0.120) | 275.901 | 0.137 |
Age_50–59 | −2.595 *** (0.122) | 453.199 | 0.075 |
Age_60–69 | −2.814 *** (0.130) | 466.623 | 0.060 |
Age_70 or older | −3.227 *** (0.155) | 435.310 | 0.040 |
Education level_middle school | 0.642 *** (0.050) | 164.930 | 1.901 |
Education level_high school | 0.859 *** (0.076) | 127.460 | 2.361 |
Education level_college and above | 1.394 *** (0.206) | 45.608 | 4.030 |
Household registration_agricultural household registration | −0.016 (0.063) | 0.068 | 0.984 |
Household income_CNY 4000–6000 | 0.494 *** (0.053) | 87.856 | 1.638 |
Household income_CNY 6001–8000 | 0.786 *** (0.075) | 110.382 | 2.194 |
Household income_more than CNY 8001 | 1.048 *** (0.075) | 193.469 | 2.853 |
Employment status_yes | 1.332 *** (0.048) | 757.369 | 3.790 |
Social security card_yes | −0.009 (0.046) | 0.042 | 0.991 |
Health service publicity_yes | 0.276 *** (0.047) | 34.222 | 1.318 |
Basic medical insurance_yes | 0.045 (0.078) | 0.335 | 1.046 |
Marriage_yes | −0.112 (0.133) | 0.710 | 0.894 |
Migration range_across province | 0.121 * (0.047) | 6.519 | 1.128 |
Current residence_middle | −0.362 *** (0.059) | 37.548 | 0.697 |
Current residence_west | −0.394 *** (0.056) | 49.150 | 0.674 |
Constant | 3.371 *** (0.182) | 342.900 | 29.097 |
−2 Log likelihood = 17,644.257 | |||
Model χ2 = 5263.697 *** | |||
Cox and Snell R² = 0.054 | |||
Nagelkerke R² = 0.252 | |||
Hosmer and Lemeshow = 6.112 (p-value = 0.635) | |||
Observation = 94,517 |
Effect | S.E. | C.I | ||
---|---|---|---|---|
Health education → hygiene behavior | Direct | 0.055 ** | 0.002 | 0.050~0.059 |
Indirect | 0.000 | 0.000 | 0.000~0.000 | |
Total | 0.055 ** | 0.002 | 0.050~0.059 | |
Health education → health status | Direct | 0.047 ** | 0.002 | 0.042~0.052 |
Indirect | 0.005 ** | 0.000 | 0.004~0.005 | |
Total | 0.052 ** | 0.002 | 0.047~0.056 | |
Hygiene behavior → health status | Direct | 0.022 ** | 0.003 | 0.016~0.027 |
Indirect | 0.000 | 0.000 | 0.000~0.000 | |
Total | 0.009 ** | 0.003 | 0.016~0.027 | |
Health education → medical-seeking behavior | Direct | 0.048 ** | 0.002 | 0.043~0.053 |
Indirect | 0.000 | 0.000 | 0.000~0.000 | |
Total | 0.048 ** | 0.002 | 0.043~0.053 | |
Health education → health status | Direct | 0.047 ** | 0.002 | 0.042~0.052 |
Indirect | 0.005 ** | 0.000 | 0.004~0.005 | |
Total | 0.052 ** | 0.002 | 0.047~0.056 | |
Medical-seeking behavior → health status | Direct | 0.072 ** | 0.006 | 0.062~0.084 |
Indirect | 0.000 | 0.000 | 0.000~0.000 | |
Total | 0.073 ** | 0.006 | 0.062~0.083 |
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Kim, M.; Gu, H. Relationships between Health Education, Health Behaviors, and Health Status among Migrants in China: A Cross-Sectional Study Based on the China Migrant Dynamic Survey. Healthcare 2023, 11, 1768. https://doi.org/10.3390/healthcare11121768
Kim M, Gu H. Relationships between Health Education, Health Behaviors, and Health Status among Migrants in China: A Cross-Sectional Study Based on the China Migrant Dynamic Survey. Healthcare. 2023; 11(12):1768. https://doi.org/10.3390/healthcare11121768
Chicago/Turabian StyleKim, Minji, and Hai Gu. 2023. "Relationships between Health Education, Health Behaviors, and Health Status among Migrants in China: A Cross-Sectional Study Based on the China Migrant Dynamic Survey" Healthcare 11, no. 12: 1768. https://doi.org/10.3390/healthcare11121768
APA StyleKim, M., & Gu, H. (2023). Relationships between Health Education, Health Behaviors, and Health Status among Migrants in China: A Cross-Sectional Study Based on the China Migrant Dynamic Survey. Healthcare, 11(12), 1768. https://doi.org/10.3390/healthcare11121768