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Erschienen in: BMC Health Services Research 1/2022

Open Access 01.12.2022 | Research

Research on the design of serious illness insurance scheme in Shanghai based on micro-simulation

verfasst von: Yang Li, Guangfeng Duan, Linping Xiong

Erschienen in: BMC Health Services Research | Ausgabe 1/2022

Abstract

Background

Urban and rural residents’ basic medical insurance (URRBMI) is an institutional arrangement for rural residents and unemployed urban residents in China. The serious illness medical insurance system (SIMIS) was established to provide additional medical cover. At present, the SIMIS payment method in China is based on large expenses, and only a few areas, such as Shanghai, pay according to the treatment of serious diseases. This study aims to simulate and analyse the effect of the two payment methods on SIMIS in Shanghai.

Methods

We developed a micro-simulation model to predict the number and characteristics of SIMIS participants among urban and rural residents in Shanghai and to simulate the process of medical treatment, medical consumption, and medical insurance payments for each insured person from 2020 to 2025. We then summarised and analysed the payment compensation effect, and compared it with Shanghai’s current policies.

Results

The payment of SIMIS according to high expenses, the total medical expenses of seriously ill patients show an increasing trend, with an average annual growth rate of 3.56%. The URRBMI fund payment covers 56%–58% of total medical expenses, and the SIMIS fund covers 5%–7% of the total medical expenses. Both cover 62%–63% of total medical expenses. Self-payment under SIMIS covers 22%–23% of the total medical expenses, total self-payment covers 14%–15% of the total medical expenses, and the medical expenses borne by individuals cover 36%–38% of the total medical expenses.The fund expenditure is 213 million yuan and average annual cost borne by individual patients ranges from 40 000 to 60 000 yuan.

Conclusions

The policy of designing SIMIS according to national guidelines does not meet the development needs of Shanghai. Shanghai should take the current policy of paying compensation according to the treatment of serious illness as the policy basis, consider the security needs of patients with large medical expenses outside the scope of protection, and adjust policies appropriately to prevent poverty caused by illness.
Hinweise

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Abkürzungen
UEBMI
Urban Employees Basic Medical Insurance
URRBMI
Urban and Rural Residents Basic Medical Insurance
SIMIS
Serious Illness Medical Insurance System
OOMS
Only Outpatient Medical Services
OIMS
Only Inpatient Medical Services
BOIMS
Both Outpatient and Inpatient Medical Services

Background

After years of development, China’s medical security system has established urban employees’ basic medical insurance (UEBMI) and urban and rural residents’ basic medical insurance (URRBMI). China’s medical security system has also achieved full coverage [1]. There is an institutional arrangement for rural and urban residents who do not participate in UEBMI. Although the system alleviates the burden of residents’ medical expenses, its guarantee is limited due to the high cost of medical expenses [2, 3]. To further improve URRBMI, China established a serious illness medical insurance system (SIMIS) [4]. There are two ways to compensate for medical expenses: the first is to pay for large expenses in proportion to personal contributions after the payment of URRBMI. The second payment method, which is for the treatment of serious diseases, is paid in proportion to personal contributions after the payment of URRBMI. Shanghai’s SIMIS is based on the treatment of serious illnesses [5].
In this study, we attempt to design a SIMIS based on large expense payments on the basis of URRBMI with reference to national guidelines, and to analyse the effect of the designed scheme in Shanghai by using micro-simulation technology. Then, we compare and analyse the implementation effect with the current serious illness insurance policy in Shanghai and discuss the feasible practices of SIMIS in Shanghai.

Methods

The micro-simulation model is a computer program designed to use individual-level data. It is a special type of simulation technology. Through a simulation of each individual’s relevant behaviour (such as medical behaviour), it implements relevant policies on individuals, estimates and predicts the future development trend of a group under certain conditions, judges the impact of policy adjustments on individual distributions, and infers and synthesises the macro effect of policy implementation [69].
The realisation of the micro-simulation model depends on the quality of the data files. The development of database technology directly affects the accuracy, efficiency, and practicability of the model. The idea of modelling is: sampling the individuals to be studied to obtain a micro database, that is, to establish the environment for the model simulation. Then the simulation model is constructed according to the behaviour of individuals in various systems of society, that is, the main behaviour patterns of individuals in the model are constructed. Computer technology is used to simulate the changes in individual characteristics in response to changes in the relevant policy parameters and characteristics, that is, the simulation results are obtained through the operation of the model. Based on the statistics, inferences, analyses, and the synthesis of characteristic indicators, the impact of policy adjustments on individuals on a micro level is obtained, the effect of policy implementation at all levels is analysed, and the simulation results are summarised and analysed.
The application process is as follows. (1) Based on the change law of the relevant characteristics of insured individuals, the number and characteristics of the SIMIS insured population from 2020 to 2025 are estimated. (2) Based on the national guiding policy on serious illness insurance, this study designs the payment policy of SIMIS in Shanghai according to large expenses, and constructs a micro-simulation model. (3) The micro database is used to determine the medical treatment distribution, medical consumption distribution, basic medical insurance payment proportion, and serious illness insurance payment proportion of patients with large expenses. A random method is used to simulate the medical consumption and medical insurance payment process of each insured person, and to summarise and analyse the effect after the implementation of a serious illness insurance policy.

Data

The individual data (n = 381,363) of medical insurance payments of 2% of the insured population of Shanghai from 2011 to 2016 were randomly selected from the population with basic medical insurance, covering UEBMI and URRBMI. The treatment categories were outpatients and inpatients. The database provides the following information: (1) identification number, (2) age, (3) gender, (4) insurance type: URRBMI or UEBMI, (5) diagnosis of inpatients, (6) total medical expenses, (7) URRBMI or UEBMI fund payment expenses, (8) self-payment expenses under the URRBMI or UEBMI, and (9) total self-payment expenses. The data include information on all personal characteristics and medical insurance payments.

Scheme design and model construction

Payment scheme design

This study is based on the guidelines of SIMIS in China that determine serious illness in patients based on large expenses. The setting of the threshold payment of SIMIS in most parts of China is mainly based on disposable income per capita per year before the implementation of the policy. This study assumes that the SIMIS policy in Shanghai was implemented in 2016. In 2015, the per capita disposable income of rural family residents in Shanghai was 25 520 yuan. Based on this, the threshold payment for SIMIS was 25 000 yuan. In view of the high level of economic development in Shanghai, there is no ceiling limit for the total SIMIS payment and the payment proportion is set at 60% according to the national policy guidelines [1].
SIMIS is a secondary payment based on basic medical insurance. The payment mode is illustrated in Fig. 1, where total medical expenses can be divided into two parts: inside and outside medical insurance.

Inside medical insurance

URRMBI payment
[10] According to the policy, total expenses for an inpatient are split into two tiers: total self-payment and URRBMI payments. The URRBMI payment includes the threshold to trigger the URRBMI fund, self-payment under the URRBMI, and URRBMI fund payments.
SIMIS payment
[10] The expenses described by SIMIS are called serious illness expenses. The SIMIS payment comes from self-payment under the URRBMI and threshold payment. If the annual serious illness expenses of patients exceed 25 000 yuan, the SIMIS fund is paid proportionally without a ceiling limit; if not, the reimbursement scheme falls under URRBMI payments.

Outside medical insurance

Total self-payment
[10] Expenses outside the medical insurance system are called total self-payments, which the medical insurance cannot reimburse.

Construct micro-simulation model

The micro-simulation model (Fig. 2) was constructed according to the designed SIMIS payment system, which was divided into four modules: micro-data, medical service utilisation, policy implementation, and effect analysis module [1114].
The micro-data module was mainly a micro database obtained by a random sampling of 2% of the population with basic medical insurance in Shanghai. To ensure the accuracy of the analysis, this study focused on the medical treatment of patients with serious illness expenses of more than 10 000 yuan, according to the designed serious illness insurance payment scheme, the residents on both sides of the starting line are the focus of the analysis. Taking the sample in 2016 as an example, when the starting line is 15000 yuan, the number of residents of 10,000–15,000 yuan accounts for 40.76% of the total sample, which can meet the requirements of the analysis quantity. The micro database provided the following information: 1) the distribution parameters of the admission rate by age and sex, 2) the distribution parameters of each patient visit type, and 3) the annual medical consumption growth rate parameters and medical insurance payment proportion parameters for individual patients. The micro database was updated to 2025.
The effect analysis module mainly analyzed the effect of policy implementation by summarising the individual medical consumption and SIMIS results for each target year.

Simulation process

The threshold to trigger the designed SIMIS fund is an annual serious illness expense exceeding 25 000 yuan that will be paid again. Therefore, the payment categories can be divided into three: only outpatient medical services (OOMS), only inpatient medical services (OIMS), and both outpatient and inpatient medical services (BOIMS).

Insured population of SIMIS estimation

The target population for SIMIS is the population that does not participate in UEBMI. The estimation process was conducted as follows. (1) Based on the total registered residence population published in Shanghai Statistical Yearbook in 2010–2019 [15], the size of the population with registered residency in Shanghai in 2020–2025 is estimated by fitting an exponential curve. Based on the changing trend in the registered resident population in different age categories, the number of registered residents in Shanghai in 2020–2025 years is estimated. (2) Based on the changes in the composition of the insured population by type and age group [16], it is possible to estimate the target insured population with serious illness insurance before 2025. (3) When the participation rate of basic medical insurance in Shanghai is 97%, the actual participation in URRBMI can be estimated. Table 1 shows the estimation results for the insured SIMIS population.

Population estimation of seriously ill patients

We summarise the total medical expenses, URRBMI fund payment expenses, self-payment under the URRBMI expenses, and total self-payment expenses of the insured in each year according to the ID code of the insured. If the total amount of serious illness expenses exceeds 10 000 yuan, they are screened and the admission rate is calculated. We find the individual consumption data in outpatients and inpatients according to the patient’s ID code, and summarise the number of patients admitted to OOMS, OIMS, and BOIMS from 2011 to 2016 by age and gender, and determine the distribution of patient admission types. During the simulation, the patients in the current year are determined in combination with the distribution of patient admission rates and admission types.
Estimation of admission rate
The actual data show that the admission rate of patients generally increases by a certain amount each year. Therefore, when constructing the admission rate of patients in all the forecast years, a small increase is assumed; for example, rate2017 = rate2016 + (the sum of the added value of admission rate in each year from 2011 to 2015) / 5. The estimated results of the admission rates are given in Table 2.
Table 1
Estimation results of insured population of SIMIS
Year
Insured persons
Uninsured persons
2016
3,370,900
435,000
2017
3,438,500
436,900
2018
3,420,400
439,100
2019
3,486,800
441,300
2020
3,569,900
443,100
2021
3,539,700
444,900
2022
3,516,400
446,600
2023
3,593,800
448,300
2024
3,675,000
450,000
2025
3,648,600
451,700
Table 2
Parameter estimation of patient admission rate from 2011 to 2025 (%)
Gender
Age
2011
2012
2013
2014
2015
2016
2017
2025
1
1
0.1691
0.1782
0.2128
0.1937
0.6576
0.6785
0.6993
0.8455
1
2
5.5039
6.7469
7.1574
9.7208
7.3669
7.4407
7.5145
8.0313
2
1
0.0604
0.1097
0.1401
0.1916
0.4497
0.4653
0.4809
0.5901
2
2
8.4681
8.0847
16.3417
11.8208
7.6279
7.6641
7.7002
7.9532
Note: 1 = male, 2 = female; age 1 < 60 years, age 2 ≥ 60 years
Estimation of admission-type distribution
As there are different types of admissions, patients need to bear different payment percentages of medical service expenses. According to the actual data from 2011 to 2016, the proportion of BOIMS increased slightly, the proportion of OIMS decreased slightly, and the proportion of OOMS increased slightly. In 2017, for example (Table 3), the annual visit types of male patients under the age of 60 were OOMS admission, OIMS admission, and BOIMS admission, with the possibility of 0.113 991, 0.122 510, and 0.763 499, respectively.
Table 3
Distribution of visit types in 2016 and 2017
Gender
Age
A2016
B2016
C2016
A2017
B2017
C2017
1
1
0.115 207
0.124 424
0.760 369
0.113 991
0.122 510
0.763 499
1
2
0.063 366
0.009 901
0.926 733
0.063 580
0.009 231
0.927 189
2
1
0.133 333
0.180 000
0.686 667
0.128 784
0.178 859
0.692 357
2
2
0.036 585
0.006 098
0.957 317
0.036 808
0.005 730
0.957 462
Note: 1 = male, 2 = female; age 1 < 60 years, Age 2 ≥ 60 years; A is OOMS admission, B is OIMS admission, and C is BOIMS admission
OOMS  only outpatient medical services, OIMS  only inpatient medical services, BOIMS   both outpatient and inpatient medical services

Simulation of medical expenses of BOIMS with serious diseases

Total medical expense forecast

The model is based on the level of annual medical expenses (4 groups), gender (2 groups, male = 1; female = 2), age (2 groups, 0–59 years = 1; 60 + years = 2). The influencing factors are classified into 16 groups. The annual average medical expenses for each group are calculated. Since the data from 2013 to 2016 are relatively complete, the average value of the growth rate of medical expenses in 2013–2014, 2014–2015, and 2015–2016 is taken as the estimated growth rate of medical expenses in 2017. Using the growth rate of medical expenses and the distribution of patients’ medical expenses in 2016, we calculate the distribution of patients’ medical expenses in 2017. Using the same method, the distribution of patient medical expenses from 2018 to 2025 is obtained. Table 4 lists some of the estimated results.
Table 4
Growth rate and average cost estimation of BOIMS medical expenses in 2017
Gender
Age
Expense
Corresponding frequency
Average cost in 2016
Growth rate
Average cost in 2017
1
1
1
0.00—
33,194.15
0.011 19
33,565.75
1
1
2
0.25—
45,858.05
0.018 05
46,685.56
1
1
3
0.50—
62,357.56
-0.012 79
61,560.03
1
1
4
0.75—
138,356.19
-0.010 01
136,970.70
1
2
1
0.00—
38,228.55
0.017 82
38,909.90
2
2
4
0.75—
165,315.70
-0.013 38
163,103.52
Note: The corresponding frequency represents the relative frequency of the four medical cost indicators, from low to high
BOIMS  both outpatient and inpatient medical services
When these parameters are used to predict patients’ medical expenses, every seriously ill patient is assigned two uniform random numbers, ran01 and ran02. For example, if a 65-year-old male patient enters the hospital in 2017 and the uniform random number is 0.00 ≤ ran01 < 0.25, the total annual medical costs in the hospital is estimated to be cost17 = (ran02 + 0.5) × 38 909.90 yuan. The random number ran02 is the dispersion of increasing the estimated cost of the same unit, and the number 0.5 ensures that the average cost of this unit is 38 909.90 yuan.

Simulation of URRBMI fund payment and serious illness expenses

Before the payment of SIMIS, total personal medical expenses are divided into three parts: the URRBMI fund payment expenses, the serious illness expenses, and total self-payment expenses. For the simulation of the URRBMI fund payment, according to the BOIMS consumption data from 2011 to 2016, the proportion of URRBMI fund payments in the total medical expenses is analysed. The number of classification factors is consistent with the analysis of total expenses. Based on the actual data, the payment proportion in 2014–2016 is relatively stable, so the average proportion in 2014–2016 is taken as the proportion parameter of URRBMI fund payment expenses in 2017–2025. Some of the estimates are presented in Table 5. The proportion of serious illness expense estimations is consistent with that of the URRBMI fund payment expenses.
Table 5
Proportion of URRBMI fund payment in total medical expenses from 2014 to 2016
Gender
Age
Expense
Corresponding frequency
2014
2015
2016
Means
1
1
1
0.00—
0.5270
0.5785
0.5660
0.5572
1
1
2
0.25—
0.5377
0.5160
0.5822
0.5453
1
1
3
0.50—
0.5438
0.5454
0.5663
0.5518
1
1
4
0.75—
0.5781
0.4848
0.4924
0.5184
1
2
1
0.00—
0.6142
0.6335
0.6435
0.6304
2
2
4
0.75—
0.5750
0.6334
0.5848
0.5978
Note: Simulation of medical expenses of OOMS and OIMS with serious diseases, where OOMS  only outpatient medical services, and OIMS  only inpatient medical services
URRBMI   urban and rural residents’ basic medical insurance
For the simulation of two types of medical treatment of seriously ill patients, OOMS and OIMS, the process is consistent with the simulation of BOIMS. (1) The number of patients is determined based on the distribution of visit types. (2) The growth trend of total medical expenses in each group from 2011 to 2016 is analysed to obtain the distribution of the growth rate of total medical expenses. (3) Using the data from 2011 to 2016, the proportional distribution of URRBMI fund payment expenses and serious illness expenses in the total medical expenses are determined to simulate all kinds of medical expenses. 3) The simulation focuses on the medical behaviour of patients whose annual serious illness expenses are more than 10 000 yuan.

Results

When the participation rate of basic medical insurance in Shanghai is 97%, the main simulation results are summarised to analyse the policy effect. Table 6 shows the simulation results of the annual average medical expenses of seriously ill patients from 2020 to 2025.
Table 6
Annual per capita medical expenses of seriously ill patients of various medical types
Year
Number of insured persons
Number of visits
Proportion of visits (%)
Per capita cost
Std
Maximum
minimum
OOMS
  2020
3,569,949
1230
0.0345
97,883
18,923
129,259
57,466
  2021
3,539,690
1523
0.0430
93,226
24,974
135,021
57,576
  2022
3,516,412
1537
0.0437
96,149
26,645
141,059
58,818
  2023
3,593,762
1571
0.0437
99,229
28,424
147,347
60,088
  2024
3,674,969
1604
0.0436
102,317
30,146
153,915
61,384
  2025
3,648,586
1945
0.0533
98,461
33,467
160,775
62,709
OIMS
  2020
3,569,949
819
0.0229
173,194
46,779
197,871
57,195
  2021
3,539,690
1279
0.0361
138,059
68,014
209,616
60,790
  2022
3,516,412
1401
0.0398
137,222
70,560
222,059
64,610
  2023
3,593,762
1512
0.0421
139,710
73,580
235,240
68,671
  2024
3,674,969
1575
0.0429
144,303
76,862
249,204
70,950
  2025
3,648,586
1160
0.0318
124,833
82,382
263,997
71,369
BOIMS
  2020
3,569,949
23,218
0.6504
137,317
31,795
187,985
80,436
  2021
3,539,690
25,405
0.7177
133,027
32,093
187,551
79,487
  2022
3,516,412
26,321
0.7485
132,572
31,117
187,118
78,550
  2023
3,593,762
26,863
0.7475
132,371
30,269
186,686
77,624
  2024
3,674,969
23,940
0.6514
132,318
24,060
156,894
98,159
  2025
3,648,586
24,070
0.6597
132,157
22,761
156,748
79,516
Note: OOMS   only outpatient medical services, OIMS   only inpatient medical services, BOIMS   both outpatient and inpatient medical services
As can be seen from Table 7, the total medical expenses of seriously ill patients show an increasing trend, with an average annual growth rate of 3.56%. The URRBMI fund payment covers 56%–58% of total medical expenses, and the SIMIS fund covers 5%–7% of the total medical expenses. Both cover 62%–63% of total medical expenses. Self-payment under SIMIS covers 22%–23% of the total medical expenses, total self-payment covers 14%–15% of the total medical expenses, and the medical expenses borne by individuals cover 36%–38% of the total medical expenses.
Table 7
Various payments in total medical expenses
Year
URRBMI fund payment
SIMIS fund payment
Self-payment under SIMIS
Total self-payment
Total medical expense
Payment amount (100 million yuan)
  2020
19.47
2.13
7.74
5.16
34.50
  2021
20.94
2.16
8.49
5.40
36.98
  2022
21.70
2.23
8.80
5.57
38.29
  2023
22.18
2.32
9.03
5.70
39.23
  2024
20.30
1.86
8.01
5.26
35.43
  2025
20.31
1.76
7.97
5.13
35.17
Payment proportion (%)
  2020
56.41
6.19
22.43
14.97
100.00
  2021
56.62
5.83
22.95
14.59
100.00
  2022
56.66
5.82
22.98
14.54
100.00
  2023
56.53
5.91
23.03
14.53
100.00
  2024
57.30
5.26
22.60
14.85
100.00
  2025
57.73
5.01
22.66
14.60
100.00
Note: URRBMI   urban and rural residents’ basic medical insurance, SIMIS   serious illness insurance system
As can be seen from Table 8, in 2025 the maximum payment of SIMIS will be 47 449 yuan and the minimum payment will be 2.09 yuan. The results show that the sense of acquisition is not high for seriously ill patients who have just met the threshold payment. When payments are made based on large expenses, the actual burden of individuals significantly exceeds the per capita disposable income of rural residents, indicating that when serious illness insurance is paid according to high expenses, the poverty reduction effect is not obvious.
Table 8
Per capita payment of SIMIS
Year
Number of beneficiaries
SIMIS payment
Self-payment under SIMIS
Maximum payment of SIMIS
Minimum payment of SIMIS
2020
25,267
8449
51,072
33,090
0.02
2021
28,207
7641
49,227
34,585
0.49
2022
29,259
7621
49,106
37,529
0.17
2023
29,946
7749
49,201
40,647
58.36
2024
27,056
6886
49,036
41,546
61.32
2025
27,175
6489
48,220
47,449
2.09
Note: SIMIS  serious illness insurance system

Discussion

Unlike other places, the current SIMIS policy in Shanghai is to pay according to the treatment of diseases after the payment of URRBMI, with no threshold and ceiling. The scope includes dialysis treatment for severe uraemia, anti-rejection treatment in renal transplants, the partial treatment of malignant tumours, and the partial treatment of mental diseases, with a payment proportion of 60% [1]. Relevant research shows that SIMIS pays for treatment according to disease type, with a good cost control effect and higher accuracy, but it cannot pay for high medical expenses outside the scope of protection; SIMIS payment is based on large expenses and covers a wider range of diseases [1, 17, 18]. As long as it exceeds the threshold, patients can obtain payment compensation, but its cost control effect is limited and the guarantee accuracy is insufficient.
From the perspective of the sustainability of the SIMIS fund, in 2020, when SIMIS is paid according to large expenses, the simulation results show that there are 25 000 beneficiaries of serious illness insurance and the fund expenditure is 213 million yuan. When paying according to the current disease treatment, there are 18 000 beneficiaries of SIMIS and the fund expenditure is approximately 126 million yuan. The financing amount of SIMIS funds is 190 million yuan [1720], indicating that according to the current financing standard, the SIMIS fund pays according to the treatment of diseases, has a balance, and can maintain the normal operation of the fund.
From the aspect of serious illness insurance payments, the simulation results show that the actual payment proportion of SIMIS remains between 5 and 7% when the SIMIS is paid according to large expenses. The proportion of the total medical expenses covered by the payment amount of SIMIS is lower than the amount covered by self-payment in SIMIS and total self-payment, which indicates that the payment intensity of the designed scheme is insufficient. When paying for SIMIS according to the current treatment of serious diseases, the actual payment proportion of SIMIS is about 20%, and the overall payment proportion of medical insurance is about 80% [18], indicating that the payment intensity of SIMIS according to the current policy is higher.
In terms of the poverty reduction effect of serious illness insurance, after the payment of SIMIS, the simulation results show that the average annual cost borne by individual patients ranges from 40 000 to 60 000 yuan, which is higher than the per capita disposable income of rural households, indicating that the medical expenses borne by individuals are still high after the SIMIS payment, and the poverty reduction effect of the designed SIMIS policy is not obvious. After SIMIS is paid according to the current policy, the per capita burden is about 8 000 yuan [18], indicating that the personal burden is relatively low after payment according to disease treatment.
From the application effect of micro-simulation technology on the premise of high quality and the quantity of micro database data, micro-simulation technology has a better evaluation effect on the short-term effect after policy adjustment by mining database information and fully considering the heterogeneity characteristics of seriously ill patients. However, the whole simulation process requires a basic micro database of a high quality, as the quality of the data can affect the model simulation results.The deficiency of this study is that it does not consider the impact of relevant policies and environmental changes on patients' medical behavior. At the same time, because there are few patients with high cost, only the medical characteristics of different ages and genders are considered in the analysis of patients' medical behavior. Next, we will further use relevant theories to analyze the impact of environmental and policy changes on patients' medical behavior.

Conclusion

SIMIS can further alleviate the economic burden of patients with serious illnesses. Compared with the SIMIS policy scheme required by the national guidance, the current SIMIS payment according to disease treatment in Shanghai is better. The SIMIS fund can maintain normal operation, has certain sustainability, and can further improve the payment proportion of SIMIS. However, we should focus on the economic burden of patients with high expenses outside the scope of payment, and further improve the policy on this basis. Under the framework of the national multi-level medical security system, the positioning of SIMIS should be clearer, which can effectively reduce the risk of serious illness patients returning to poverty due to illness.

Acknowledgements

We are grateful for the enthusiastic cooperation of the Shanghai Medical Insurance Bureau.

Declarations

This study did not involve a personal data survey; the analysis data related to reimbursement were obtained from the Shanghai Medical Insurance Bureau. The design of the study and the use of data were agreed by Shanghai Medical Security Bureau. The data used in this study were only on the medical consumption of patients and the data collected were anonymous.
Not applicable.

Competing interests

The authors declare that they have no competing interests.
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Metadaten
Titel
Research on the design of serious illness insurance scheme in Shanghai based on micro-simulation
verfasst von
Yang Li
Guangfeng Duan
Linping Xiong
Publikationsdatum
01.12.2022
Verlag
BioMed Central
Erschienen in
BMC Health Services Research / Ausgabe 1/2022
Elektronische ISSN: 1472-6963
DOI
https://doi.org/10.1186/s12913-022-07783-z

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