| Literature DB >> 29879978 |
Juliet Okoroh1,2,3,4, Samuel Essoun5, Anthony Seddoh6, Hobart Harris7, Joel S Weissman8, Lydia Dsane-Selby9, Robert Riviello8.
Abstract
BACKGROUND: Approximately 150 million people suffer from financial catastrophe annually because of out-of-pocket expenditures (OOPEs) on health. Although the National Health Insurance Scheme (NHIS) of Ghana was designed to promote universal health coverage, OOPEs as a proportion of total health expenditures remains elevated at 26%, exceeding the WHO's recommendations of less than 15-20%. To determine whether enrollment in the NHIS reduces the likelihood of OOPEs and catastrophic health expenditures (CHEs) in Ghana, we undertook a systematic review of the published literature.Entities:
Keywords: Catastrophic health expenditures; Health systems strengthening; National health insurance schemes; Out of pocket payments for health in sub-Saharan Africa (SSA); Universal health coverage
Mesh:
Year: 2018 PMID: 29879978 PMCID: PMC5992790 DOI: 10.1186/s12913-018-3249-9
Source DB: PubMed Journal: BMC Health Serv Res ISSN: 1472-6963 Impact factor: 2.655
Data Extraction Form
| General Information | |
| Initials of the reviewer | |
| Date the review was conducted | |
| Citation/Title | |
| Journal/publication body | |
| Publication year | |
| PubMed ID (for referencing only) | |
| Study Characteristics | |
| Objectives of the study | |
| Study design | |
| Data source | |
| Sampling technique | |
| Justification of the sample size | |
| Power calculation | |
| Study setting | |
| Participant Characteristics | |
| Description of the study population | |
| Population size | |
| Description of the control group | |
| Inclusion of socio-economic classification | |
| Description of socio-economic status (variables included) in the analysis | |
| Outcomes Measured | |
| Types of health-care costs measured in the studies (direct and indirect costs such as transportation cost and lost wages) | |
| Measures of financial protection used in the analysis | |
| Reported differences in out of pocket expenditures by insurance status | |
| Reported differences in catastrophic health expenditures by insurance status | |
| Any report of poverty reduction by insurance status | |
| Type of statistical analysis used by the authors | |
| Key findings of the studies | |
| Discussion of generalizability |
Methodological quality of studies on the impact of Ghana’s national health insurance scheme on OOPE(s) and financial catastrophe (1 = Yes; 0 = No)
| Study | Clear study aims | Adequate sample size(justification) | Representative sample(with justification) | Clear inclusion & exclusion criteria | Reliability & validity of measures justified | Adequate description of the data | Appropriate statistical analysis | Discussion of generalizability | a Total score (J.S.O, S.E) | a Quality based on total score (J.S.O) | a Quality based on total score (S.E) | b Quality based on outcomes |
|---|---|---|---|---|---|---|---|---|---|---|---|---|
| Chankova et al., 2008 | 1 | 0 | 0 | 0 | 0 | 1 | 1 | 1 | 4 | Low | Low | Low |
| Nguyen et al., 2011 | 0 | 1 | 1 | 1 | 1 | 1 | 1 | 1 | 7 | High | High | High |
| Dalaba et al., 2014 | 1 | 1 | 1 | 1 | 0 | 1 | 0.5 | 0.5 | 5.5 | Low | Low | Low |
| Abrokwah et al., 2014 | 0.5 | 0.5 | 1 | 1 | 0 | 1 | 1 | 0.5 | 5.5 | Moderate | Moderate | Moderate |
| Abuosi et al., 2015 | 1 | 1 | 1 | 1 | 0 | 1 | 1 | 0 | 6 | Moderate | Low | Low |
| Kusi et al., 2015 | 1 | 1 | 1 | 1 | 1 | 1 | 1 | 1 | 8 | High | High | High |
| Aryeetey et al., 2016 | 1 | 1 | 1 | 1 | 1 | 1 | 1 | 1 | 8 | High | High | High |
aThe total score is the average score for the quality items based on each author’s review. Scores less than 5 were considered low, 5–6 moderate, 7–8 high in quality
bBoth authors agreed on the quality assignments based on the outcomes reported on OOPE, CHE, or poverty reduction
Fig. 1PRISMA flowchart of study selection
Summary of survey methodology and participant characteristics in the included studies
| General Information | Study Characteristics | Participant Characteristics | |||||||||
|---|---|---|---|---|---|---|---|---|---|---|---|
| First Author | Publication Year | Citation/Title | Study Objectives/Aims | Study Design | Data Source | Sampling Technique | Recall Period | Settinga | Study Population | SESb | Population Size |
| Chankova | 2008 | Chankova S, Sulzbach S, Diop F. Impact of mutual health organizations: evidence from West Africa. Health Policy and Planning. 2008;23(4):264–276. | To answer the following questions: (1) Do MHOs include vulnerable populations. (2) Do they have an impact on the utilization of curative services. (3) On out-of-pocket expenditures | Cross-sectional | 1° | NRc | Twelve months | Household | Three country comparisons; Ghana, Mali, Senegal. (Nkoranza and Offinso districts in Ghana) | SES wealth quintiles, household head, education, occupation, residence(urban-rural), house-hold size | 1806 households (34% NHIS, 66% uninsured) |
| Nguyen | 2011 | Nguyen HT, Rajkotia Y, Wang H. The financial protection effect of Ghana National Health Insurance Scheme: evidence from a study in two rural districts. International Journal for Equity in Health. 2011, 10: 4–10.1186/1475-9276-10-4. | Not clearly stated but evaluated the impact of NHIS on health service utilization and OOPE(s) | Cross-sectional | 1° | Two-stage cluster & random sampling | Two weeks (injury recall period) to twelve months | Household | Households in two districts (Offinso and Nkoranza) in Ghana | SES wealth quintiles, household head, employment status, house-hold size, ethnicity, residence(urban-rural) | 11,617 individuals (35% NHIS, 65% uninsured) |
| Dalaba | 2014 | Dalaba M, Akweongo P, Aborigo R, Awine T, Azongo D, Asaana P et al. Does the national health insurance scheme in Ghana reduce household cost of treating malaria in the Kassena-Nankana districts? Global Health Action. 2014;7(1):23848. | To examine the effect of NHIS in reducing household cost of treating malaria | Cross-sectional | 1° | Convenience random sampling | NRc | Household | Households in the Kassena-Nankana district | SES wealth quintiles, age, occupation | 4226 households (49.1% NHIS, 50.9% uninsured) |
| Abrokwah | 2014 | Abrokwah SO, Moser CM, Norton EC. The effect of social health insurance on prenatal care: the case of Ghana. Int J Health Care Finance Econ. 2014;14(4):385–406. | To describe how Ghana’s health insurance scheme affects prenatal care and out-of-pocket expenditures | Cross-sectional | 2° GLS5 2005–2006 | Random stratified sampling | Twelve months | Household | Women of child bearing age (15–49 years) | SES wealth quintiles, age, education, region, marital status, occupation, employment status, house-hold size | 1032 women from the GLS5 (36% NHIS, 64% uninsured) |
|
| 2015 | Abuosi A, Adzei F, Anarfi J, Badasu D, Atobrah D, Yawson A. Investigating parents/caregivers financial burden of care for children with non-communicable diseases in Ghana. BMC Pediatrics. 2015;15(1). | To assess the extent to which parents/caregivers of children with NCDs experience financial burden in caring for them | Cross-sectional | 1° | Convenience random sampling | NRc | Inpatient | Parents/caregivers of children hospitalized with NCDs at hospitals in Greater Accra, Ashanti, and the Volta region | Parents’ age, education, income, marital status, religion, residence (urban-rural) | 225 parents/caregivers (87% NHIS 13% uninsured) |
| Kusi | 2015 | Kusi A, Hansen K, Asante F, Enemark U. Does the National Health Insurance Scheme provide financial protection to households in Ghana? BMC Health Services Research. 2015;15(1). | To assess the effect of NHIS on household OOPE(s) and CHE(s) | Cross-sectional | 1° | Random stratified Sampling | Four weeks | Household | Households in three districts in the three ecological zones of Southern (Kwaebibrirem), Middle (Asutifi), and Northern (Savelugu-Nanton) | SES wealth quintiles household size, household head, marital status, residence (urban-rural), education, distance to the nearest facility, mode of transportation | 2430 households (28% NHIS, 46% uninsured, & 26% partially insured) |
| Aryeetey | 2016 | Aryeetey G, Westeneng J, Spaan E, Jehu-Appiah C, Agyepong I, Baltussen R. Can health insurance protect against out-of-pocket and catastrophic expenditures and also support poverty reduction? Evidence from Ghana’s National Health Insurance Scheme. International Journal for Equity in Health. 2016;15(1). | To examine whether Ghana’s health insurance scheme reduces OOPE(s), CHE(s) and poverty at the household level | Cross-sectional | 1° | Random stratified sampling | Four weeks | Household | Households in the Eastern and Central Region. Baseline study conducted in 2009 and follow-up in 2011 | Household size, marital status, religion, education, residence (urban-rural), occupation, household income, household expenditures | In 2009, 3300 households (31% NHIS 69% uninsured); 2011 3152 households (38% NHIS 62% uninsured) |
1° denotes primary data collection by the authors. 2° is secondary analysis of previously collected data. a Study setting denotes where participants were interviewed
bSES wealth quintile refers to the reporting of wealth-specific results using a principal component analysis of dwelling characteristics, access to utilities and ownership of house-hold items. Further description is available at https://www.dhsprogram.com/topics/wealth-index/Wealth-Index-Construction.cfm
cNR not reported by the studies
Summary of Statistical Analysis and Outcomes Reported by the Included Studies
| General Information | Outcomes | Statistical Analysis | ||||||||
|---|---|---|---|---|---|---|---|---|---|---|
| First Author | Publication Year | Citation/Title | Outcomes measured | Measures of financial risk protection | Reduction in out of pocket expenditure (OOPE) | Reduction in catastrophic health expenditure (CHE) | Poverty reduction | Type of statistical analysis | Logistic regression (N) number of variables | Key findings |
|
| 2008 | Chankova S, Sulzbach S, Diop F. Impact of mutual health organizations: evidence from West Africa. Health Policy and Planning. 2008;23(4):264–276. | Direct OOPE(s) for inpatient, outpatient care, & transportation cost | NR1 | OPD3 NS2 | NR1 | NR1 | Descriptive statistics, logistic regression | (8) Independent variables, dependent variable (OOPE) | 1.) Insurance was associated with lower out of pocket payments for inpatient care. |
|
| 2011 | Nguyen HT, Rajkotia Y, Wang H. The financial protection effect of Ghana National Health Insurance Scheme: evidence from a study in two rural districts. International Journal for Equity in Health. 2011, 10: 4–10.1186/1475-9276-10-4. | OOPE(s) & CHE(s) for illness, surgery, ANC & inpatient care | 4 indicators of CHE(s); (5% & 10% of individual income) and (10% & 20% of SE(s)5 | OOPE*** NHIS 21000 GH¢ ($2.3 USD), uninsured 30,000 GH¢ ($ 3.2 USD) | NHIS reduced CHE(s) by 0.5 to 1% depending on the threshold used. | NR1 | Descriptive statistics, logistic regression | (6) Independent variables, dependent variable (OOPE) | NHIS reduces the probability of incurring CHE(s). |
|
| 2014 | Dalaba M, Akweongo P, Aborigo R, Awine T, Azongo D, Asaana P et al. Does the national health insurance scheme in Ghana reduce household cost of treating malaria in the Kassena-Nankana districts? Global Health Action. 2014;7(1):23848. | Direct OOPE(s) for malaria treatment, lost wages & transportation cost | NR1 | NS2 | NR1 | NR1 | Descriptive statistics | NR1 | 1.) NHIS has some protective effect on cost of malaria treatment, however not statistically significant |
|
| 2014 | Abrokwah SO, Moser CM, Norton EC. The effect of social health insurance on prenatal care: the case of Ghana. Int J Health Care Finance Econ. 2014;14(4):385–406. | Prenatal care utilization & OOPE(s) per ANC visit | NR1 | OOPE*** NHIS 3600GH¢ ($0.40 USD), uninsured 21,000 GH¢ ($2.40 USD) for the first ANC visit | NR1 | NR1 | Descriptive statistics, logistic regression | (7) Independent variables, dependent variable (prenatal OOPE) | 1.) Insured women spend less on prenatal care compared to the uninsured. |
|
| 2015 | Abuosi A, Adzei F, Anarfi J, Badasu D, Atobrah D, Yawson A. Investigating parents/caregivers financial burden of care for children with non-communicable diseases in Ghana. BMC Pediatrics. 2015;15(1). | Financial burden/ OOPE direct inpatient care & perceived financial difficulties | NR1 used an arbitrary threshold of > 50 GH¢. as expensive or burdensome | NR1 | NR1 | NR1 | Descriptive, logistic regression | (11) Independent variables, dependent variable (financial burden of care) | Uninsured respondents were twenty- three times more likely than the insured to make higher out of pocket payments for hospitalizations and more likely to experience financial burden of care. |
|
| 2015 | Kusi A, Hansen K, Asante F, Enemark U. Does the National Health Insurance Scheme provide financial protection to households in Ghana? BMC Health Services Research. 2015;15(1). | Direct OOPE(s) for inpatient, outpatient care, & transportation cost | 10% of total household expenditures & SE(s)5 at (20% & 40% thresholds) | OOPE*** OPD3; NHIS 6.7 GH¢ uninsured 25.5GH¢. IPD4*** NHIS 44.25GH¢ uninsured 86.73 GH¢. Transportation cost NS2 | 6% of NHIS respondents compared to 23.2% of the uninsured made CHE(s) | NR1 | Descriptive statistics, logistic regression | (6) Independent variables, dependent variable (CHE) | 1.) NHIS significantly reduces the probability of a household incurring CHE(s). |
|
| 2016 | Aryeetey G, Westeneng J, Spaan E, Jehu-Appiah C, Agyepong I, Baltussen R. Can health insurance protect against out-of-pocket and catastrophic expenditures and also support poverty reduction? Evidence from Ghana’s National Health Insurance Scheme. International Journal for Equity in Health. 2016;15(1). | Direct OOPE(s) for inpatient, outpatient care, & transportation cost | SE(s)5 at (40% threshold) | IPD4 NS2 2009 OOPE ***OPD3 NHIS GH¢ 19.8 uninsured GH¢ 27.4. 2011 OOPE*** OPD3 NHIS 26.1GH¢ uninsured 53.2GH¢. Transportation cost NR1 | In 2009, 18.4% of NHIS respondents made CHE(s), compared to 36.1% uninsured. In 2011 7.1% NHIS & 28.7% Uninsured | NHIS households were 7.5% less likely to fall into poverty. | Descriptive statistics, logistic regression | (9) Independent variable Insurance status, dependent variable (OOPE) | 1.) Enrolment in health insurance reduced household OOPE by 86%. |
*** Denotes statistically significant results 1NR Not reported by the studies. 2 NS Non-significant results
3OPD: Out-patient care 4 IPD: Inpatient care
5SE: Subsistence expenditures defined as non- food expenditures (typically set at 40% threshold for health expenditures exceeding this amount i.e. OOPE exceeding 40% of non-food expenditure is considered catastrophic)
Recommendations
| Recommendations for future investigations | |
| • Improved study designs and metrics for measuring healthcare costs and expenditures | |
| • Controlling for confounders in the relationship between health insurance and out of pocket expenditures | |
| • Standardization of measures of affordability and house-hold capacity to pay using WHO methods | |
| • Further studies on how house-holds cope with making out-pocket payments for healthcare | |
| • Adjusting for inflation/deflation to allow for more time specific comparisons in order to provide better descriptions of acceptable health costs and living standards at any given time period | |
| Policy recommendations | |
| • Reducing the risk of OOPEs for medicines with a focus on improving the medical supply chain system | |
| • UHC policies need to clearly articulate the organization and standardization of health services that guarantee a minimum package. | |
| • Monitoring for effectiveness: Robust and sensitive indicators need to be collected routinely to inform timely interventions for the poor. This could include input costs of services, patient perspectives on quality of care, and human resource monitoring |