| Literature DB >> 31200482 |
Bocong Yuan1, Jiannan Li2, Lily Wu3, Zhaoguo Wang4.
Abstract
Job tenure has been significantly shortened with the prevalence of the gig economy around the world. Workers are faced with a new age of frequent employment change. This emerging situation is out of expectation of social health insurance policymakers. As the multi-level social health insurance system in China is closely associated with employment status; urban workers cannot enjoy the urban employee basic medical insurance (UEBMI) during the unemployment period. At this time, unemployed rural-to-urban migrant workers can only rely on the new cooperative medical scheme (NCMS) and unemployed urban residents can only rely on the urban resident basic medical insurance (URBMI). This study provides a preliminary analysis on healthcare utilization change triggered by the unemployment-induced social health insurance transition that has never been investigated. Using the data of a nationwide survey, empirical results show that the unemployment-induced social health insurance transition can significantly deteriorate the healthcare utilization of insurance beneficiaries experiencing the transitions from the UEBMI to the NCMS (or from the UEBMI to the URBMI). Specifically, the outpatient service quality and the conventional physical examination become worse, and the out-of-pocket expenditure increases. Therefore, the multi-level social health insurance system currently in effect can expose workers to a high risk of insufficient health security in the age of frequent employment change.Entities:
Keywords: Gig Economy; health insurance transition; healthcare utilization; new cooperative medical scheme (NCMS); unemployment; urban employee basic medical insurance (UEBMI); urban resident basic medical insurance (URBMI)
Year: 2019 PMID: 31200482 PMCID: PMC6627781 DOI: 10.3390/healthcare7020077
Source DB: PubMed Journal: Healthcare (Basel) ISSN: 2227-9032
A summary of differences between UEBMI, URBMI and NCMS.
| Index | Multi-Level Social Health Insurance System in China | Remarks | ||
|---|---|---|---|---|
| UEBMI | URBMI | NCMS | ||
| Target population | Urban employed population, including employed by organizations, self-employed and retirees [ | Unemployed people with urban household registration, including unemployed elderly residents, low-income people living on basic living allowances, severely disabled people, students and children, etc. [ | People with rural household registration, including rural-to-urban migrant workers, and regular rural residents [ | The most generous UEBMI covers 15% and the most straitened NCMS covers over 68% populations [ |
| Funding source | Jointly paid by employers and employees, without government subsidies [ | With support of modest government subsidies on the basis of personal contribution [ | Funded by individuals, collectives and the government [ | |
| Payment requirements | Mandatory [ | Voluntary [ | Voluntary [ | |
| With a minimum length of time for payment (25 years for males and 20 years for females), and there is no need for further payment after retirement if the length of time is reached [ | Without a minimum payment period and paid annually. | Without a minimum payment period and paid annually. | ||
| The level of payment is related to personal wages with the employer and employee undertaking 8% and 2% of the wage level, respectively [ | The level of payment mainly relies on individual contributions, with government subsidies up to 36% [ | The payment is based on the economic level of provinces and cities; some kinds of common payment level are CNY 100, CNY 200, CNY 300, CNY 400, or CNY 500 per year. | The level of payment for UEBMI is generally higher than that for URBMI and NCMS [ | |
| Coverage level of treatment | Its drug coverage is always more extensive, with the drug reimbursement list including all the 307 essential medicines and an increasing number of chemical and biologic medicines and traditional Chinese medicines [ | Its drug coverage is comparatively fragmented and varies across different provinces since many provinces create their own separate and smaller list [ | The drug coverage is comparatively fragmented and varies across different provinces since many provinces create their own separate and smaller list [ | UEBMI’s general level of medical treatment is higher than URBMI and NCMS’s [ |
| Reimbursement level | Higher reimbursement rate and reimbursement cap [ | Relatively lower reimbursement rate and reimbursement cap [ | The lowest reimbursement rate [ | NCMS’s reimbursement rate is higher in rural township hospitals than in municipal hospitals; with 84.04%, 61.25% and 47.71% reimbursement rate respectively at township, county and above medical institutions by the end of 2014 [ |
UEBMI = urban employee basic medical insurance. NCMS = new cooperative medical scheme. URBMI = urban resident basic medical insurance.
Overview of dependent and independent variables.
| Variables | Description | Mean | S.D. | Non-Missing Obs. |
|---|---|---|---|---|
| Outpatient service quality | Which type of medical facilities have you visited in the last month for outpatient treatment? | 4.8083 | 2.4687 | 4376 |
| Conventional physical examination | How many items as follows do you take in the conventional checkup? | 6.2154 | 4.3910 | 9040 |
| Out-of-pocket expenditure | [The self-pay out-of-pocket expenditure for the medication in this visit]/[The total medication cost in this visit] | 0.8162 | 0.6314 | 3854 |
| [UEBMI: Yes→No and NCMS: Yes→Yes] | 1 = if the insured person of UEBMI in 2013 turned out to be uninsured during 2013–2015, and meanwhile, this person participated in NCMS both in 2013 and during 2013–2015; | 0.2790 | 0.4486 | 6143 |
| [UEBMI: Yes→No and NCMS: Yes→No] | 1 = if the insured person of UEBMI in 2013 turned out to be uninsured during 2013–2015, and meanwhile, this person participated in NCMS in 2013 but did not during 2013–2015; | 0.5152 | 0.4998 | 6143 |
| [UEBMI: Yes→No and NCMS: No→Yes] | 1 = if the insured person of UEBMI in 2013 turned out to be uninsured during 2013–2015, and meanwhile, this person did not participate in NCMS in 2013 but did during 2013–2015; | 0.0493 | 0.2166 | 6143 |
| [UEBMI: Yes→No and NCMS: No→No] | 1 = if the insured person of UEBMI in 2013 turned out to be uninsured during 2013–2015, and meanwhile, this person did not participate in NCMS both in 2013 and during 2013–2015; | 0.0656 | 0.2476 | 6143 |
| [UEBMI: Yes→No and URBMI: Yes→Yes] | 1 = if the insured person of UEBMI in 2013 turned out to be uninsured during 2013–2015, and meanwhile, this person participated in URBMI both in 2013 and during 2013–2015; | 0.0143 | 0.1189 | 17511 |
| [UEBMI: Yes→No and URBMI: Yes→No] | 1 = if the insured person of UEBMI in 2013 turned out to be uninsured during 2013–2015, and meanwhile, this person participated in URBMI in 2013 but did not during 2013–2015; | 0.9476 | 0.2228 | 17511 |
| [UEBMI: Yes→No and URBMI: No→Yes] | 1 = if the insured person of UEBMI in 2013 turned out to be uninsured during 2013–2015, and meanwhile, this person did not participate in URBMI in 2013 but did during 2013–2015; | 0.0012 | 0.0346 | 17511 |
| [UEBMI: Yes→No and URBMI: No→No] | 1 = if the insured person of UEBMI in 2013 turned out to be uninsured during 2013–2015, and meanwhile, this person did not participate in URBMI both in 2013 and during 2013–2015 | 0.0037 | 0.0608 | 17511 |
UEBMI = urban employee basic medical insurance. NCMS = new cooperative medical scheme. URBMI = urban resident basic medical insurance. Equal signs (=) indicate assigning scores to the respective variables.
Overviews of demographic variables and the chronic diseases history.
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| Age | 59.4039 | 10.6551 | 20301 |
| Gender [1 = Male, 2 = Female] | 1.5241 | 0.4994 | 20899 |
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| Hypertension [1 = Yes, 0 = No] | 4190 | 20.04 | |
| Dyslipidemia [1 = Yes, 0 = No] | 1770 | 8.47 | |
| Diabetes [1 = Yes, 0 = No] | 1031 | 4.93 | |
| Cancer [1 = Yes, 0 = No] | 198 | 0.95 | |
| Chronic lung diseases [1 = Yes, 0 = No] | 1945 | 9.30 | |
| Liver disease [1 = Yes, 0 = No] | 785 | 3.75 | |
| Heart disease [1 = Yes, 0 = No] | 2155 | 10.31 | |
| Stroke [1 = Yes, 0 = No] | 429 | 2.05 | |
| Kidney disease [1 = Yes, 0 = No] | 1225 | 5.86 | |
| Stomach, or other digestive disease [1 = Yes, 0 = No] | 4479 | 21.42 | |
| Emotional, nervous or psychiatric problem [1 = Yes, 0 = No] | 265 | 1.27 | |
| Memory related disease [1 = Yes, 0 = No] | 294 | 1.41 | |
| Arthritis or rheumatism [1 = Yes, 0 = No] | 6507 | 31.12 | |
| Asthma [1 = Yes, 0 = No] | 740 | 3.54 | |
Equal signs (=) indicate assigning scores to the respective variables.
The influence of urban unemployment-induced social health insurance transition (from UEBMI to NCMS) on healthcare utilization.
| Variables | Dependent Variable: Healthcare Utilization | ||||||||
|---|---|---|---|---|---|---|---|---|---|
| Outpatient Service Quality | Conventional Physical Examination | Out-of-Pocket Expenditure | |||||||
| Coef. | S.E.C | S.E.H | Coef. | S.E.C | S.E.H | Coef. | S.E.C | S.E.H | |
| Unemployment-induced social health insurance transition | |||||||||
| [UEBMI: Yes→No and NCMS: Yes→Yes] | −1.1027 ** | [0.2724] | [0.2665] | −3.3827 ** | [0.3213] | [0.2867] | 0.1596 ** | [0.0469] | [0.0447] |
| [UEBMI: Yes→No and NCMS: Yes→No] | −0.2953 | [0.2504] | [0.2498] | −1.6985 ** | [0.3027] | [0.2668] | 0.1015 * | [0.0446] | [0.0444] |
| [UEBMI: Yes→No and NCMS: No→Yes] | −0.8709 * | [0.3847] | [0.3884] | −2.1574 ** | [0.4987] | [0.4677] | 0.1448 * | [0.0573] | [0.0557] |
| [UEBMI: Yes→No and NCMS: No→No] | −0.8658 * | [0.3543] | [0.3599] | −2.9250 ** | [0.4772] | [0.4269] | 0.1011 † | [0.0586] | [0.0581] |
| Demographic variables | |||||||||
| Gender | −0.4927 ** | [0.1423] | [0.1500] | −0.7701 ** | [0.1562] | [0.1574] | 0.0197 | [0.0218] | [0.0230] |
| Age | −0.0143 † | [0.0074] | [0.0072] | −0.0182 * | [0.0086] | [0.0084] | −0.0063 ** | [0.0011] | [0.0011] |
| The chronic disease history | |||||||||
| Hypertension | 0.5042 ** | [0.1761] | [0.1803] | 0.0592 | [0.2074] | [0.2021] | −0.0249 | [0.0293] | [0.0292] |
| Dyslipidemia | 0.4413 † | [0.2289] | [0.2392] | 0.5750 * | [0.2766] | [0.2711] | −0.0062 | [0.0416] | [0.0382] |
| Diabetes | 0.2175 | [0.3084] | [0.2883] | 0.6885 * | [0.3156] | [0.3224] | −0.0425 | [0.0507] | [0.0483] |
| Cancer | −0.9128 | [0.7573] | [0.7426] | −1.2926 † | [0.6663] | [0.6998] | −0.0084 | [0.0883] | [0.0907] |
| Chronic lung diseases | 0.0373 | [0.2396] | [0.2395] | 0.6541 * | [0.3026] | [0.3052] | −0.0256 | [0.0371] | [0.0384] |
| Liver disease | 0.0143 | [0.3170] | [0.3121] | 0.0301 | [0.3568] | [0.3861] | 0.0435 | [0.0379] | [0.0438] |
| Heart disease | 0.5230 * | [0.2051] | [0.2121] | 0.3443 | [0.2717] | [0.2498] | −0.0087 | [0.0367] | [0.0355] |
| Stroke | 0.0805 | [0.4144] | [0.4250] | −0.1345 | [0.4838] | [0.4830] | −0.0243 | [0.0653] | [0.0662] |
| Kidney disease | −0.1865 | [0.3146] | [0.3025] | −0.2494 | [0.3633] | [0.3813] | −0.0176 | [0.0434] | [0.0404] |
| Stomach, or other digestive disease | −0.3369 * | [0.1710] | [0.1679] | −0.0624 | [0.2067] | [0.2142] | 0.0098 | [0.0244] | [0.0250] |
| Emotional, nervous or psychiatric problem | 0.6676 | [0.5067] | [0.5112] | −1.7936 * | [0.8463] | [0.8513] | −0.0358 | [0.0842] | [0.0871] |
| Memory related disease | 0.5388 | [0.4942] | [0.4798] | 0.4220 | [0.6039] | [0.5722] | −0.1012 | [0.0814] | [0.0810] |
| Arthritis or rheumatism | −0.3152 † | [0.1689] | [0.1684] | −0.8047 ** | [0.1975] | [0.1941] | 0.0533 * | [0.0255] | [0.0238] |
| Asthma | −0.3985 | [0.3057] | [0.3217] | −0.2563 | [0.4548] | [0.4798] | 0.0238 | [0.0472] | [0.0480] |
| Intercept term | 7.2509 ** | [0.5397] | [0.5418] | 10.6938 ** | [0.6196] | [0.6014] | 1.0380 ** | [0.0805] | [0.0827] |
| Observation size | 1134 | 1134 | 2656 | 2656 | 1011 | 1011 | |||
| Number of clusters that S.E. adjusted on | 380 | 1075 | 431 | 2284 | 367 | 963 | |||
| F statistics ( | 5.8300 (0.0000) | 5.9600 (0.0000) | 10.7300 (0.0000) | 13.9400 (0.0000) | 3.7300 (0.0000) | 3.6300 (0.0000) | |||
Robust standard errors (S.E.) have been clustered at community level and household level respectively (reported in the brackets). Coef. = estimated coefficient; S.E.C = robust S.E. on community level; S.E.H = robust S.E. on household level. UEBMI = urban employee basic medical insurance; NCMS = new cooperative medical scheme. † p < 0.10, * p < 0.05, ** p < 0.01.
The influence of urban unemployment-induced social health insurance transition (from UEBMI to URBMI) on healthcare utilization.
| Dependent Variable: Healthcare Utilization | |||||||||
|---|---|---|---|---|---|---|---|---|---|
| Outpatient Service Quality | Conventional Physical Examination | Out-of-Pocket Expenditure | |||||||
| Coef. | S.E.C | S.E.H | Coef. | S.E.C | S.E.H | Coef. | S.E.C | S.E.H | |
| Unemployment-induced social health insurance transition | |||||||||
| [UEBMI: Yes→No and URBMI: Yes→Yes] | −1.2598 ** | [0.4250] | [0.3868] | −2.2398 ** | [0.4928] | [0.4719] | 0.1952 ** | [0.0524] | [0.0532] |
| [UEBMI: Yes→No and URBMI: Yes→No] | −1.2437 ** | [0.2225] | [0.2232] | −2.9109 ** | [0.2784] | [0.2354] | 0.1588 ** | [0.0438] | [0.0424] |
| [UEBMI: Yes→No and URBMI: No→Yes] | −1.3386 | [0.9677] | [0.9706] | −0.9875 | [1.8091] | [1.7795] | 0.2712 * | [0.0450] | [0.0433] |
| [UEBMI: Yes→No and URBMI: No→No] | −1.2307 | [1.4300] | [1.4249] | −1.3627 † | [0.7117] | [0.7116] | 0.1087 | [0.1810] | [0.1776] |
| Demographic variables | |||||||||
| Gender | −0.3295 ** | [0.0795] | [0.0816] | −0.8673 ** | [0.0907] | [0.0904] | 0.0245 | [0.0251] | [0.0256] |
| Age | −0.0077 † | [0.0044] | [0.0041] | −0.0088 | [0.0058] | [0.0052] | −0.0030 | [0.0018] | [0.0018] |
| The chronic disease history | |||||||||
| Hypertension | 0.3891 ** | [0.1040] | [0.1049] | −0.0893 | [0.1127] | [0.1214] | −0.0320 | [0.0220] | [0.0213] |
| Dyslipidemia | 0.1994 | [0.1477] | [0.1445] | 0.6669 ** | [0.1882] | [0.1712] | 0.0076 | [0.0330] | [0.0326] |
| Diabetes | 0.1604 | [0.1721] | [0.1682] | 0.8714 ** | [0.2104] | [0.2086] | −0.0390 | [0.0290] | [0.0295] |
| Cancer | −0.1235 | [0.3527] | [0.3639] | −0.1945 | [0.4518] | [0.4740] | −0.0142 | [0.0480] | [0.0476] |
| Chronic lung diseases | −0.2556 † | [0.1300] | [0.1284] | 0.1564 | [0.1664] | [0.1782] | 0.0125 | [0.0385] | [0.0382] |
| Liver disease | −0.0646 | [0.1926] | [0.1881] | 0.0062 | [0.2518] | [0.2554] | 0.0046 | [0.0270] | [0.0270] |
| Heart disease | 0.2736 * | [0.1160] | [0.1281] | 0.5098 ** | [0.1797] | [0.1602] | −0.0199 | [0.0239] | [0.0242] |
| Stroke | −0.0730 | [0.2595] | [0.2592] | −0.2960 | [0.3167] | [0.3056] | −0.0477 | [0.0421] | [0.0426] |
| Kidney disease | 0.0222 | [0.1484] | [0.1456] | −0.2423 | [0.2114] | [0.2045] | −0.0288 | [0.0237] | [0.0230] |
| Stomach, or other digestive disease | −0.1505 † | [0.0848] | [0.0913] | −0.1323 | [0.1247] | [0.1198] | 0.0021 | [0.0215] | [0.0207] |
| Emotional, nervous or psychiatric problem | 0.0691 | [0.3196] | [0.3132] | −0.7203 | [0.4382] | [0.3994] | −0.0428 | [0.0510] | [0.0496] |
| Memory related disease | −0.0748 | [0.3124] | [0.3032] | −0.0887 | [0.4175] | [0.3875] | −0.0611 | [0.0532] | [0.0547] |
| Arthritis or rheumatism | −0.2742 ** | [0.0865] | [0.0884] | −0.5043 ** | [0.1245] | [0.1122] | 0.0310 | [0.0284] | [0.0281] |
| Asthma | 0.0058 | [0.1878] | [0.1862] | −0.1565 | [0.2856] | [0.2831] | −0.0381 | [0.0353] | [0.0372] |
| Intercept term | 6. 8319 ** | [0.3654] | [0.3566] | 10.2305 ** | [0.4634] | [0.4088] | 0.8313 ** | [0.1306] | [0.1320] |
| Observation size | 3552 | 3552 | 6778 | 6778 | 3142 | 3142 | |||
| Number of clusters that S.E. adjusted on | 429 | 3155 | 445 | 5313 | 426 | 2822 | |||
| F statistics ( | 5.89 (0.0000) | 5.90 (0.0000) | 15.30 (0.0000) | 19.49 (0.0000) | 13.76 (0.0000) | 15.16 (0.0000) | |||
Robust standard errors (S.E.) have been clustered at community level and household level respectively (reported in the brackets). Coef. = estimated coefficient; S.E.C = robust S.E. on community level; S.E.H = robust S.E. on household level. UEBMI = urban employee basic medical insurance. URBMI = urban resident basic medical insurance. † p < 0.10, * p < 0.05, ** p < 0.01.