Literature DB >> 35521041

Catastrophic health expenditure in sub-Saharan Africa: systematic review and meta-analysis.

Paul Eze1, Lucky Osaheni Lawani2, Ujunwa Justina Agu3, Yubraj Acharya1.   

Abstract

Objective: To estimate the incidence of, and trends in, catastrophic health expenditure in sub-Saharan Africa.
Methods: We systematically reviewed the scientific and grey literature to identify population-based studies on catastrophic health expenditure in sub-Saharan Africa published between 2000 and 2021. We performed a meta-analysis using two definitions of catastrophic health expenditure: 10% of total household expenditure and 40% of household non-food expenditure. The results of individual studies were pooled by pairwise meta-analysis using the random-effects model. Findings: We identified 111 publications covering a total of 1 040 620 households across 31 sub-Saharan African countries. Overall, the pooled annual incidence of catastrophic health expenditure was 16.5% (95% confidence interval, CI: 12.9-20.4; 50 datapoints; 462 151 households; I 2 = 99.9%) for a threshold of 10% of total household expenditure and 8.7% (95% CI: 7.2-10.3; 84 datapoints; 795 355 households; I 2 = 99.8%) for a threshold of 40% of household non-food expenditure. Countries in central and southern sub-Saharan Africa had the highest and lowest incidence, respectively. A trend analysis found that, after initially declining in the 2000s, the incidence of catastrophic health expenditure in sub-Saharan Africa increased between 2010 and 2020. The incidence among people affected by specific diseases, such as noncommunicable diseases, HIV/AIDS and tuberculosis, was generally higher.
Conclusion: Although data on catastrophic health expenditure for some countries were sparse, the data available suggest that a non-negligible share of households in sub-Saharan Africa experienced catastrophic expenditure when accessing health-care services. Stronger financial protection measures are needed. (c) 2022 The authors; licensee World Health Organization.

Entities:  

Mesh:

Year:  2022        PMID: 35521041      PMCID: PMC9047424          DOI: 10.2471/BLT.21.287673

Source DB:  PubMed          Journal:  Bull World Health Organ        ISSN: 0042-9686            Impact factor:   13.831


Introduction

In 2019, over 930 million people worldwide experienced financial hardship while obtaining health care and, annually, about 100 million people were impoverished. Out-of-pocket payments, the predominant form of health care financing in sub-Saharan Africa, have hindered the region’s drive towards universal health coverage (UHC) and attainment of the sustainable development goals (SDGs).– Moreover, payments affect the poorest households disproportionately, thereby exacerbating inequality., Catastrophic health expenditure has been defined as out-of-pocket payments above a share of total household expenditure or non-food expenditure that forces households to sacrifice other basic needs, sell assets, incur debts or become impoverished., This perpetuates a vicious cycle of poverty for poor households and leads to more illness when households cannot afford out-of-pocket costs., Reducing the incidence of catastrophic health expenditure is a key policy objective of governments in sub-Saharan Africa. However, the design and implementation of appropriate policies requires accurate, up-to-date evidence on the incidence of catastrophic health expenditure, which is scant at present. Our aim was to fill this evidence gap by performing a systematic review of population-based studies of catastrophic health expenditure in sub-Saharan Africa. In particular, we aimed to estimate the magnitude of, and between-country variation in, the annual incidence of catastrophic health expenditure between 2000 and 2021 and to investigate trends over time.

Methods

We searched the PubMed®, African Journals Online, CINAHL, CNKI, African Index Medicus, PsycINFO, SciELO, Scopus and Web of Science databases using terms covering catastrophic health expenditure, financial catastrophe and sub-Saharan Africa (Box 1; available at: https://www.who.int/publications/journals/bulletin/) for studies published between 1 January 2000 and 30 September 2021 in the 48 countries of sub-Saharan Africa (Box 2), as defined by the World Bank. In addition, two authors independently searched the published literature between 2 October and 10 October 2021. We also searched the New York Academy of Medicine Grey Literature and Open Grey, two prepublication server depositories (i.e. medRxIV and bioRxIV) and Google Scholar® for grey literature and followed up citations in studies identified through the database search. We considered studies published in any of the six African Union languages: Arabic, English, French, Kiswahili, Portuguese and Spanish. Studies not in English were translated. The two authors underwent a moderation exercise to ensure that inclusion and exclusion criteria (Box 3) were applied uniformly before independently assessing titles and abstracts. Discrepancies were resolved by discussion. Finally, the full texts of eligible articles were assessed against the inclusion criteria. We registered the study protocol on PROSPERO (CRD42021274830) and findings were reported according to PRISMA guidelines. Search: (((“catastrophe”[All Fields] OR “catastrophes”[All Fields] OR “catastrophic”[All Fields] OR “catastrophically”[All Fields]) AND (“health expenditures”[MeSH Terms] OR (“health”[All Fields] AND “expenditures”[All Fields]) OR “health expenditures”[All Fields] OR (“health”[All Fields] AND “expenditure”[All Fields]) OR “health expenditure”[All Fields])) OR ((“catastrophe”[All Fields] OR “catastrophes”[All Fields] OR “catastrophic”[All Fields] OR “catastrophically”[All Fields]) AND (“health”[MeSH Terms] OR “health”[All Fields] OR “health s”[All Fields] OR “healthful”[All Fields] OR “healthfulness”[All Fields] OR “healths”[All Fields]) AND (“expense”[All Fields] OR “expenses”[All Fields] OR “expensive”[All Fields] OR “expensively”[All Fields])) OR ((“catastrophe”[All Fields] OR “catastrophes”[All Fields] OR “catastrophic”[All Fields] OR “catastrophically”[All Fields]) AND (“health”[MeSH Terms] OR “health”[All Fields] OR “health s”[All Fields] OR “healthful”[All Fields] OR “healthfulness”[All Fields] OR “healths”[All Fields]) AND “expen*”[All Fields]) OR ((“economical”[All Fields] OR “economics”[MeSH Terms] OR “economics”[All Fields] OR “economic”[All Fields] OR “economically”[All Fields] OR “economics”[MeSH Subheading] OR “economization”[All Fields] OR “economize”[All Fields] OR “economized”[All Fields] OR “economizes”[All Fields] OR “economizing”[All Fields]) AND (“impoverish”[All Fields] OR “impoverished”[All Fields] OR “impoverishes”[All Fields] OR “impoverishing”[All Fields] OR “impoverishment”[All Fields])) OR ((“economics”[MeSH Terms] OR “economics”[All Fields] OR “financial”[All Fields] OR “financially”[All Fields] OR “financials”[All Fields] OR “financier”[All Fields] OR “financiers”[All Fields]) AND (“impoverish”[All Fields] OR “impoverished”[All Fields] OR “impoverishes”[All Fields] OR “impoverishing”[All Fields] OR “impoverishment”[All Fields])) AND (“angola”[MeSH Terms] OR “angola”[All Fields] OR “angola s”[All Fields] OR (“benin”[MeSH Terms] OR “benin”[All Fields] OR “benin s”[All Fields]) OR (“botswana”[MeSH Terms] OR “botswana”[All Fields] OR “botswana s”[All Fields]) OR (“burkina faso”[MeSH Terms] OR (“burkina”[All Fields] AND “faso”[All Fields]) OR “burkina faso”[All Fields]) OR (“burundi”[MeSH Terms] OR “burundi”[All Fields]) OR (“cabo verde”[MeSH Terms] OR (“cabo”[All Fields] AND “verde”[All Fields]) OR “cabo verde”[All Fields]) OR (“cameroon”[MeSH Terms] OR “cameroon”[All Fields] OR “cameroons”[All Fields] OR “cameroon s”[All Fields]) OR (“central african republic”[MeSH Terms] OR (“central”[All Fields] AND “african”[All Fields] AND “republic”[All Fields]) OR “central african republic”[All Fields]) OR (“chad”[MeSH Terms] OR “chad”[All Fields]) OR (“comoros”[MeSH Terms] OR “comoros”[All Fields] OR “comoro”[All Fields]) OR “democratic republic congo”[All Fields] OR “republic congo”[All Fields] OR “Cote d'Ivoire”[All Fields] OR (“equatorial guinea”[MeSH Terms] OR (“equatorial”[All Fields] AND “guinea”[All Fields]) OR “equatorial guinea”[All Fields]) OR (“eritrea”[MeSH Terms] OR “eritrea”[All Fields]) OR (“eswatini”[MeSH Terms] OR “eswatini”[All Fields]) OR (“ethiopia”[MeSH Terms] OR “ethiopia”[All Fields] OR “ethiopia s”[All Fields]) OR (“gabon”[MeSH Terms] OR “gabon”[All Fields]) OR (“gambia”[MeSH Terms] OR “gambia”[All Fields] OR “the gambia”[All Fields]) OR (“ghana”[MeSH Terms] OR “ghana”[All Fields] OR “ghana s”[All Fields]) OR (“guinea”[MeSH Terms] OR “guinea”[All Fields] OR “guinea s”[All Fields] OR “guineas”[All Fields]) OR (“guinea bissau”[MeSH Terms] OR “guinea bissau”[All Fields] OR (“guinea”[All Fields] AND “bissau”[All Fields]) OR “guinea bissau”[All Fields]) OR (“kenya”[MeSH Terms] OR “kenya”[All Fields] OR “kenya s”[All Fields]) OR (“lesotho”[MeSH Terms] OR “lesotho”[All Fields]) OR (“liberia”[MeSH Terms] OR “liberia”[All Fields] OR “liberia s”[All Fields]) OR (“madagascar”[MeSH Terms] OR “madagascar”[All Fields] OR “madagascar s”[All Fields]) OR (“malawi”[MeSH Terms] OR “malawi”[All Fields] OR “malawi s”[All Fields]) OR (“mali”[MeSH Terms] OR “mali”[All Fields]) OR (“mauritania”[MeSH Terms] OR “mauritania”[All Fields]) OR (“mauritius”[MeSH Terms] OR “mauritius”[All Fields]) OR (“mozambique”[MeSH Terms] OR “mozambique”[All Fields] OR “mozambique s”[All Fields]) OR (“namibia”[MeSH Terms] OR “namibia”[All Fields]) OR (“niger”[MeSH Terms] OR “niger”[All Fields]) OR (“nigeria”[MeSH Terms] OR “nigeria”[All Fields] OR “nigeria s”[All Fields]) OR (“rwanda”[MeSH Terms] OR “rwanda”[All Fields] OR “rwanda s”[All Fields]) OR “Sao Tome and Principe”[All Fields] OR (“senegal”[MeSH Terms] OR “senegal”[All Fields] OR “senegal s”[All Fields]) OR (“seychelles”[MeSH Terms] OR “seychelles”[All Fields]) OR “Sierra Leone”[All Fields] OR (“somalia”[MeSH Terms] OR “somalia”[All Fields]) OR “South Africa”[All Fields] OR “South Sudan”[All Fields] OR (“sudan”[MeSH Terms] OR “sudan”[All Fields] OR “sudans”[All Fields] OR “sudan s”[All Fields]) OR (“tanzania”[MeSH Terms] OR “tanzania”[All Fields] OR “tanzania s”[All Fields]) OR (“togo”[MeSH Terms] OR “togo”[All Fields]) OR (“uganda”[MeSH Terms] OR “uganda”[All Fields] OR “uganda s”[All Fields]) OR (“zambia”[MeSH Terms] OR “zambia”[All Fields] OR “zambia s”[All Fields]) OR (“zimbabwe”[MeSH Terms] OR “zimbabwe”[All Fields] OR “zimbabwe s”[All Fields]))) Note: Databases were searched for articles published between 2000 and 2021. Central Africa: Burundi, Cameroon, Central African Republic, Chad, Congo, Democratic Republic of the Congo, Equatorial Guinea, Gabon and Sao Tome and Principe. Eastern Africa: Comoros, Djibouti, Eritrea, Ethiopia, Kenya, Madagascar, Mauritius, Rwanda, Seychelles, Somalia, South Sudan, Sudan, Uganda and United Republic of Tanzania. Southern Africa: Angola, Botswana, Eswatini, Lesotho, Malawi, Mozambique, Namibia, South Africa, Zambia and Zimbabwe. Western Africa: Benin, Burkina Faso, Cabo Verde, Côte d’Ivoire, Gambia, Ghana, Guinea, Guinea-Bissau, Liberia, Mali, Niger, Nigeria, Senegal, Sierra Leone and Togo. Notes: The list includes the 48 countries of the sub-Saharan African region, as defined by the World Bank. Countries were grouped into four regions using the African Union classification. Observational or interventional studies (which included data on the pre-intervention period) published between 2000 and 2021 that reported population-level data for any of the 48 sub-Saharan African countries defined by the World Bank (Box 2). Studies reported in the published or unpublished (i.e. grey) literature. Publications that reported the incidence of catastrophic health expenditure for all individuals of all ages in the community as identified through household surveys or through studies based in health facilities that were representative of the entire community. Peer-reviewed publications in Arabic, English, French, Portuguese, Spanish or Kiswahili. Publications that estimated catastrophic health expenditure using either total household expenditure or income or non-subsistence expenditure. Publications that reported data on catastrophic health expenditure that could be extracted as an independent outcome along with the study population (i.e. the denominator). Publications that reported the incidence or proportion of catastrophic health expenditure based on a retrospective analysis of patients’ charts, an analysis of hospital or pharmacy revenues, or a national or subnational budget analysis. Publications that reported the incidence of catastrophic health expenditure for all individuals of all ages based on studies carried out in one or several health facilities (e.g. outpatient clinics, hospitals with inpatients, intensive care units, operating theatres, nursing homes or long-term care facilities) that were not representative of the entire community. Interventional studies that reported the incidence of catastrophic health expenditure only after the intervention. Studies that used methods for estimating catastrophic health expenditure that were not clearly reported or defined or that reported catastrophic expenditure using terms such as “excessive out-of-pocket health care” or the multidimensional poverty index. Articles that reported data for a population already included in the systematic review. Case reports, case series, systematic reviews, narrative reviews, letters to editors, commentary pieces and study protocols. Three authors independently extracted data from the included studies on: (i) study countries; (ii) year of publication; (iii) study design; (iv) data sources; (v) year of data collection; (vi) study population; (vii) sample size; and (viii) the incidence of catastrophic health expenditure as determined using a threshold of 10% of total household expenditure or 40% of household non-food expenditure or both. For surveys spanning several years, we regarded the survey’s first year as the date of the survey. We grouped countries into four regions (i.e. central, eastern, southern and western Africa) using the African Union classification (Box 2) and into three income categories (i.e. low, lower middle and upper middle) using the World Bank’s classification., We obtained data on social health insurance programme coverage as a percentage of the country’s population from the World Bank and on the UHC’s service coverage index from the World Health Organization’s (WHO) Global Health Expenditure Database., The service coverage index for 2015 was used for studies whose data were collected before 2016, whereas the index for 2017 was used for all other studies. Although studies have used different thresholds to define catastrophic health expenditure,, the two most widely used are 10% of total household expenditure and 40% of household non-food expenditure., We estimated the annual incidence of catastrophic expenditure from the studies included using these thresholds. If catastrophic expenditure was not reported using either of these two definitions, we contacted the study’s authors for supplementary information. We included catastrophic expenditure estimates based on the medical expenditure incurred only; estimates based on indirect costs, such as transportation, were excluded. We contacted study authors if estimates were missing or reported only monthly or weekly. If two or more studies used the same secondary data to estimate the incidence of catastrophic health expenditure, we used estimates from peer-reviewed studies and from studies that reported catastrophic health expenditure using both definitions. Three authors independently assessed study quality using the appraisal tool for cross-sectional studies (AXIS) – a 20-question checklist designed to assess a study’s risk of bias across five domains: introduction, methods, results, discussion and other information. Each study was scored between 0 and 20, with a high score indicating a low risk of bias. Discrepancies between authors were resolved by discussion.

Data analysis

We used descriptive statistics to summarize the studies’ characteristics. Individual results were pooled by pairwise meta-analysis using the random-effects model (DerSimonian-Laird approach) and the MetaProp Stata command with the Freeman-Tukey double arcsine transformation. We conducted separate meta-analyses for the two definitions of catastrophic health expenditure. Between-study heterogeneity was assessed using the χ test with Cochran’s Q statistic and quantified using the I2 statistic. We used Stata v. 17.0 (StataCorp LLC, College Station, United States of America) for all statistical analyses and an α of 0.05 was the cut-off for statistical significance. We assessed the sensitivity of the pooled estimates to sample size by excluding the 10% of studies with the smallest sample size and the 10% with the largest sample size. The robustness of the estimates was assessed by excluding: (i) studies with the largest and smallest sample sizes; (ii) studies using pre-intervention data; (iii) low-quality studies; and (iv) studies that were not peer reviewed. We performed subgroup analyses along multiple dimensions, including: (i) the data collection period (i.e. 2000 to 2004, 2005 to 2009, 2010 to 2014 and 2015 to 2019); (ii) region (i.e. eastern, central, southern or western Africa); (iii) the country’s income status (i.e. low, lower middle or upper middle); (iv) data type (i.e. primary or secondary); (v) publication status (i.e. peer-reviewed or not); (vi) UHC service coverage index (dichotomized to < 45 and ≥ 45, based on the sub-Saharan African average reported by WHO); (vii) the proportion of households with social insurance (i.e. < 10% or ≥ 10%); and (viii) the studies’ risk of bias (i.e. high or low, corresponding to an AXIS score of 0–10 or 11–20, respectively). Finally, we performed a meta-regression analysis to explore factors associated with between-study heterogeneity for all catastrophic health expenditure incidence estimates pooled from 10 or more datapoints. To avoid overfitting the model, we included a limited number of covariates (selected on the basis of previous studies). Covariates fell into two categories: (i) study-level factors, namely study design, study period, data type and study quality based on the AXIS score;, and (ii) country-level factors, namely income status, UHC service coverage index and the proportion of the population with social insurance.,, We also evaluated evidence of publication bias by examining funnel plot symmetry; we performed Egger’s test for small-study effects and used the trim-and-fill method. We assessed overall evidence quality using the Grading of Recommendations, Assessment, Development and Evaluation (GRADE) approach. First, we scored the evidence for each outcome as high and downgraded it by one level if one of the following was present: (i) poor methodological quality (i.e. if 25% or more of the studies in the meta-analysis had a high risk of bias); (ii) imprecision (i.e. if 25% or more of the studies did not have a sample size of at least 385 households – the smallest sample size at the 95% confidence interval [CI] and 5% error margin); (iii) indirectness (i.e. if 25% or more of the studies did not use valid and reliable methods of data collection, such as validated questionnaires that had been trialled, piloted or published previously); and (iv) inconsistency (i.e. if the prediction interval for the outcome had a variation of 10% or more between the upper and lower limits of the 95% CI). These criteria were based on Joanna Briggs guidelines, which correspond to the GRADE system criteria.

Results

Our initial search identified 1623 studies, including 36 from Google Scholar and citation tracking (Fig. 1). After removing duplicates, 1365 titles and abstracts were screened. Of the 159 articles whose full text was assessed, 111 finally met the inclusion criteria (Table 1; available at: https://www.who.int/publications/journals/bulletin/):– 101 peer-reviewed publications, five working papers, four graduate dissertations and one preprint. Details of the 48 articles excluded are available from the data repository. All 111 studies were published between 2005 and 2021, 107 (96.4%) were in English and study data were collected between 2000 and 2019. The studies covered a total of 1 040 620 households across 31 countries in sub-Saharan Africa (Fig. 2) and reported 145 distinct datapoints: 50 derived from primary data and 95 derived from secondary data. Each datapoint represented a value for the annual incidence of catastrophic health expenditure in a specific country in a specific year. Of the 145 datapoints, 6, 53, 32 and 54 related to central, eastern, southern and western Africa, respectively. The countries with the most datapoints were Nigeria (20), Kenya (14), South Africa (12) and Ghana and Ethiopia (11 each). In total, 110 datapoints (75.9%) represented the estimated incidence of catastrophic health expenditure at the population level, whereas 35 (24.1%) represented the disease-specific incidence. Most datapoints (98.6%; 143/145) came from cross-sectional studies and were nationally representative (68.3%; 99/145). The sample size of the studies ranged from 87 to 73 329 households (median: 4165; interquartile range: 8379).
Fig. 1

Selection of publications, systematic review of catastrophic health expenditure, sub-Saharan Africa, 2000–2021

Table 1

Studies included, meta-analysis of catastrophic health expenditure in sub-Saharan Africa, 2000–2021

StudyStudy countryStudy designData source and yearStudy populationNo. of householdsNo. of households with catastrophic health expenditurea
AXIS scoreb
Greater than 10% of total household expenditureGreater than 40% of household non-food expenditure
Adesina & Ogaji 202022NigeriaCross-sectionalPrimary data from a cross-sectional household survey, 2017Community5251736715
Adisa 201523NigeriaCross-sectionalNigeria General Household and Population Survey, 2010Households in the community with adults aged ≥ 50 years1 176113ND16
Aidam et al. 201624GhanaCross-sectionalPrimary data from a cross-sectional household survey, 2013Community117ND3811
Ajayi et al. 202125NigeriaCross-sectionalPrimary data from a cross-sectional household survey, 2018Community9711535313
Akalu et al. 201226EthiopiaCross-sectionalPrimary data from a cross-sectional household survey, 2007Households in the community with recent use of reproductive health services1 015ND61910
Akazili et al. 201727GhanaCross-sectionalGhana Living Standard Survey, 2005/2006Community8 68745522915
Akinkugbe et al. 201228Botswana and LesothoCross-sectionalBotswana Household and Expenditure Survey, 2002/2003, and Lesotho Household Budget Survey, 2002/2003Community6 053 (Botswana);6 882 (Lesotho)ND450 (Botswana);86 (Lesotho)13
Aregbesola & Khan 201829NigeriaCross-sectionalHarmonised Nigeria Living Standard Survey, 2009/2010Community38 7006347530215
Arsenault et al. 201330MaliCase–controlProject data on maternal mortality in the Kayes region, 2008–2011Households in the community with recent use of reproductive health services484162ND14
Aryeetey et al. 201631GhanaCross-sectionalPrimary data from a cross-sectional household survey, 2009Community3 300ND89115
Asante et al. 200732GhanaCross-sectionalPrimary data from a population-based cross-sectional household survey, 2005Households in the community with recent use of reproductive health services2 250236ND9
Assebe et al. 202033EthiopiaCross-sectionalEthiopia Health Account and cross-sectional health facility-based survey for tuberculosis, 2016/2017Households in the community containing an individual with an HIV infection or tuberculosis1 006 (HIV);787 (tuberculosis)197 (HIV);315 (tuberculosis)ND18
Ataguba 201234NigeriaCross-sectionalNigerian National Living Standard Survey, 2003/2004Community19 5184606ND10
Atake & Amendah 201835TogoCross-sectionalPrimary data from a population-based cross-sectional household survey, 2016Community1 18039011517
Attia-Konan et al. 201936Côte d’IvoireCross-sectionalCôte d’Ivoire National household living standards survey, 2015Community12 899ND51912
Babikir et al. 201837South AfricaPanel surveyNational Income Dynamics Study, 2013Community10 236ND137215
Bandoh 201638 GhanaCross-sectionalGhana Living Standards Survey (round 6), 2012Community16 77225737515
Barasa et al. 201739KenyaCross-sectionalKenya Household Expenditure and Utilization Survey, 2013Community33 675ND221615
Beaulière et al. 201040Côte d’IvoireCross-sectionalPrimary data from a population-based cross-sectional survey, 2007Households in the community with an HIV patient1 190ND14315
Bermudez-Tamayo et al. 201741MaliCase–controlPrimary data from a population-based cross-sectional survey, 2015Households in the community with a diabetes mellitus patient993332ND14
Bonfrer et al. 201742KenyaCross-sectionalPrimary data from a population-based cross-sectional household survey, 2011Community1 226ND3714
Borde et al. 202043EthiopiaCross-sectionalPrimary data from a population-based and community-based cohort study, 2017Households in the community with recent use of reproductive health services7943629120
Brinda et al. 201444United Republic of TanzaniaCross-sectionalUnited Republic of Tanzania National Panel Survey, 2008/2009Community3 265ND58814
Buigut et al. 201545KenyaCross-sectionalKenya Indicator Development for Surveillance of Urban Emergencies project, 2011Community8 1711863ND15
Castillo-Riquelme et al. 200846Mozambique and South AfricaCross-sectionalPrimary data from a population-based cross-sectional household survey, 2001/2002Community828 (Mozambique);827 (South Africa)351 (Mozambique);64 (South Africa)324 (Mozambique);68 (South Africa)12
Chansa et al. 201847ZambiaCross-sectionalZambia Living Conditions Monitoring Survey, 2010, and Zambia Household Health Expenditure and Utilization Survey, 2014Community20 000 (2010);12 260 (2014)ND768 (2010);220 (2014)16
Chuma et al. 201248 KenyaCross-sectionalKenya Ministry of Health national survey, 2007Community8 4141481213712
Chuma et al. 200749KenyaCross-sectionalPrimary data from a cross-sectional household survey, 2004Community1 924227ND12
Cleary et al. 201350South AfricaCross-sectionalPrimary data from a population-based cross-sectional survey, 2011Households in the community with an HIV or tuberculosis patient or with recent use of reproductive health services1 267 (HIV);1 229 (tuberculosis);1 231 (reproductive health service use)288 (HIV);406 (tuberculosis);814 (reproductive health service use)ND18
Counts & Skordis-Worrall 201651United Republic of TanzaniaPanel surveyKagera Health and Development Surveys, 1991–2010Community900ND17914
Dickerson et al. 202052MalawiCross-sectionalMalawi Integrated Household Surveys, 2004 and 2010Community11 271ND51614
Doamba et al. 201353Burkina FasoCross-sectionalBurkina Faso Enquête Intégrale sur les Conditions de Vie des Ménages, 2009Community8 404ND12110
Ebaidalla 202154SudanCross-sectionalSudan National Baseline Household Surveys, 2009 and 2014Community7 913 (2009);11 953 (2014)4 036 (2009);6 455 (2014)ND10
Edoka et al. 201755Sierra LeoneCross-sectionalSierra Leone Integrated Household Surveys, 2003 and 2011Community6 800 (2003);3 700 (2011)3 407 (2003);1 184 (2011)ND16
Ekirapa-Kiracho et al. 202156UgandaCross-sectionalPrimary data from a population-based cross-sectional survey, 2015Households in the community with a child aged < 5 years with pneumonia69347827018
Etiaba et al. 201657NigeriaCross-sectionalPrimary data from a population-based cross-sectional survey, 2013Households in the community with an HIV patient1 557ND17115
Fink et al. 201358Burkina FasoPre-intervention baseline surveyNouna Health and Demographic Surveillance System survey, 2003Community98382ND16
Frimpong et al. 202159GhanaCross-sectionalGhana Living Standards Survey (round 6), 2013Community9 395ND184716
Gabani & Guinness 201960LiberiaCross-sectionalLiberia Household Income and Expenditure Survey, 2014Community4 085747417
Gunda et al. 201761ZimbabweCross-sectionalPrimary data from a cross-sectional household survey, 2015Community109ND3811
Hailemichael et al. 201962EthiopiaCase–controlPrimary data from a cross-sectional household survey, 2015Community25742ND16
Hailemichael et al. 201963EthiopiaCase–controlPrimary data from a cross-sectional household survey, 2015Community57910414616
Harris et al. 201164South AfricaCross-sectional surveySouth Africa National Household Survey, 2008Community4 668490ND14
Hassen 201965 MauritaniaCross-sectional surveyPermanent Household Living Conditions Survey, 2014Community9 557108137018
Hilaire 201866BeninCross-sectional surveyBenin Integrated Modular Survey on Living Conditions of Households, 2009Community15 4111540ND16
Ibukun & Komolafe 201867NigeriaCross-sectionalNigeria General Household Survey, 2015/2016Community4 581ND164910
Ichoku et al. 200968NigeriaCross-sectionalPrimary data from a cross-sectional household survey, 2004Community1 497326ND11
Ilesanmi et al. 201469NigeriaCross-sectionalPrimary data from a cross-sectional household survey, 2012Community714ND4711
Janssens et al. 201670NigeriaCross-sectionalPrimary data from a cross-sectional household survey, 2012Community1 450ND12814
Kaonga et al. 201971ZambiaCross-sectionalZambian Household Health Expenditure and Utilization Survey, 2014Community12 0001368ND13
Khatry et al. 201372MauritaniaCross-sectionalEnquête Permanente sur les Conditions de Vie des ménages, 2008Community13 705ND56610
Kihaule 201573United Republic of TanzaniaCross-sectional surveyUnited Republic of Tanzania Demographic and Health Survey, 2009Community10 300ND192210
Kihaule et al. 201974United Republic of TanzaniaCase–controlPrimary data from a population-based cross-sectional household survey, 2018Community1 080ND4209
Kimani & Maina 201575 KenyaCross-sectionalKenya Household Health Expenditure and Utilization Survey, 2003Community8 84459391116
Kimani et al. 201676KenyaCross-sectionalKenya Household Expenditure and Utilization Survey, 2007Community8 84412699888
Kiros et al. 202077EthiopiaCross-sectional Ethiopia Household Consumption and Expenditure and Welfare Monitoring Survey, 2015/2016Community30 229635ND14
Kirubi et al. 202178KenyaCross-sectionalKenya National Tuberculosis Programme Patient Cost Survey, 2017Households in the community with a tuberculosis patient1 071171ND19
Koch & Setshegetso 202079South AfricaCross-sectionalSouth African Income and Expenditure Surveys, 2000, 2005/2006 and 2010/2011Community22 437 (2000);20 994 (2005);25 119 (2010)980 (2000);2438 (2005);2505 (2010)254 (2000);570 (2005);499 (2010)13
Kusi et al. 201580GhanaCross-sectionalPrimary data from a population-based cross-sectional household survey, 2011Community2 430ND8713
Kwesiga et al. 202081UgandaCross-sectionalUganda National Household Surveys, 2005/2006, 2009/2010, 2012/2013 and 2016/2017Community7 400 (2005);6 887 (2009);7 500 (2012);17 320 (2016)1658 (2005);1474 (2009);1035 (2012);2459 (2016)ND11
Laisin et al. 202082CameroonCross-sectionalCameroon Household Consumption Survey IV, 2014Community10 3036698ND7
Lamiraud et al. 200583 South AfricaCross-sectionalWorld Health Survey, 2002Community2 602ND27311
Laokri et al. 201884Democratic Republic of the CongoPre-intervention baseline surveyPrimary data from a population-based cross-sectional survey, 2014Community4 120700ND12
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AXIS: appraisal tool for cross-sectional studies; HIV: human immunodeficiency virus; ND: not determined; WHO: World Health Organization.

a The threshold for catastrophic health expenditure was either 10% of total household expenditure or 40% of household non-food expenditure.

b Study quality was assessed using the AXIS tool: an AXIS score of 0–10 indicated a high risk of bias and a score of 11–20 indicated a low risk.

Fig. 2

Geographical distribution of studies, meta-analysis of catastrophic health expenditure, sub-Saharan Africa, 2000–2021

Selection of publications, systematic review of catastrophic health expenditure, sub-Saharan Africa, 2000–2021 AXIS: appraisal tool for cross-sectional studies; HIV: human immunodeficiency virus; ND: not determined; WHO: World Health Organization. a The threshold for catastrophic health expenditure was either 10% of total household expenditure or 40% of household non-food expenditure. b Study quality was assessed using the AXIS tool: an AXIS score of 0–10 indicated a high risk of bias and a score of 11–20 indicated a low risk. Geographical distribution of studies, meta-analysis of catastrophic health expenditure, sub-Saharan Africa, 2000–2021 Note: The 111 studies identified in the systematic review included 145 datapoints on the annual incidence of catastrophic health expenditure in a specific country in a specific year. The quality of 95 of the 111 included studies (85.6%) was rated as high (AXIS score: 11–20), whereas the quality of the remaining 16 (14.4%) was rated as low (AXIS score: 0–10). When the risk of bias was weighted according to each study’s sample size, studies covering 88.6% (921 704/1 040 620) of households included were rated as having a low risk of bias, whereas those covering 11.4% (118 916/1 040 620) were judged to have some quality concerns or were rated as having a high risk of bias. Of note, all studies included used sample frames and sampling techniques that closely represented the underlying population (as assessed using AXIS tool items 5 and 6).

Household expenditure threshold

When the threshold for catastrophic health expenditure was defined as 10% of total household expenditure, the pooled annual incidence across 50 datapoints, which covered 462 151 households, was 16.5% (95% CI: 12.9–20.4; Table 2). Further details are available in the data repository. In the sensitivity analyses, excluding the 10% of studies with the smallest sample sizes yielded a slightly lower pooled incidence of 15.0% (95% CI: 11.4–19.0; 45 datapoints; 459 989 households), whereas excluding the 10% of studies with the largest sample sizes yielded a slightly higher pooled incidence of 17.8% (95% CI: 13.8–22.3; 45 datapoints; 317 634 households). The difference was not great. When poor-quality studies were excluded, the estimated pooled incidence was 15.4% (95% CI: 12.2–19.0; 46 datapoints; 441 233 households). Between 2000 and 2019, the pooled incidence initially declined but increased between 2005–2009 and 2015–2019 (Fig. 3).
Table 2

Characteristics of subgroups of studies that defined catastrophic health expenditure as 10% of total household expenditure, sub-Saharan Africa, 2000–2021

Study subgroup definitionNo. of countries in subgroupNo. of incidence datapoints in subgroup (%)No. of households in subgroup (%)Study sample size, rangePooled incidence of catastrophic health expenditurea, % (95% CI)Between-study heterogeneity, I2 %
All studies 2250 (100)462 151 (100)274–38 70016.5 (12.9–20.4)99.9
Study period
2000–20091121 (42.0)209 028 (45.2)983–38 70015.6 (11.1–20.7)99.9
2010–20191929 (58.0)253 123 (54.8)274–30 22917.1 (11.9–23.1)99.9
Sub-Saharan African regionb
Central22 (4.0)14 423 (3.1)4120–10 30350.6 (49.8–51.4)NA
Eastern617 (34.0)173 865 (37.6)274–30 22916.0 (9.4–23.9)99.8
Southern510 (20.0)132 085 (28.6)3167–25 1198.4 (6.0–11.1)99.7
Western921 (42.0)141 778 (30.7)411–38 70019.6 (14.8–24.9)99.8
Country income statusc
Low1018 (36.0)175 523 (38.0)983–30 22922.0 (12.4–33.5)99.9
Lower middle1025 (50.0)193 250 (41.8)274–38 70015.4 (12.9–18.0)99.6
Upper middle27 (14.0)93 378 (20.2)4668–25 1198.0 (5.8–10.6)99.4
Social health insurance coverage
< 10%2248 (96.0)438 659 (94.9)274–38 70016.7 (12.9–20.8)99.9
≥ 10%22 (4.0)23 492 (5.1)6720–16 77213.3 (12.9–13.8)NA
UHC service coverage index
< 451530 (60.0)258 021 (55.8)274–38 70022.0 (15.6–29.1)99.9
≥ 45820 (40.0)204 130 (44.2)1924–25 1199.6 (7.6–11.8)99.6
Data source
Primary49 (18.0)11 250 (2.4)274–4 12022.7 (12.8–34.3)99.4
Secondary2041 (82.0)450 901 (97.6)983–38 70015.3 (11.5–19.5)99.9
Sample size
< 1000 households37 (14.0)4 116 (0.9)411–98331.3 (19.0–45.2)98.8
≥ 1000 households2043 (86.0)458 035 (99.1)1176–38 70014.5 (10.9–18.5)99.9
Study design
Observational2149 (98.0)461 168 (99.8)274–38 70016.0 (12.5–19.9)99.9
Pre-interventional11 (2.0)983 (0.2)NA45.3 (42.2–48.4)NA
Representativeness of study sample
Regionally representative612 (24.0)19 388 (4.2)274–8 17124.7 (16.3–34.2)99.5
Nationally representative2038 (76.0)442 763 (95.8)1176–38 70014.2 (10.4–18.5)99.9
Publication status
Not peer reviewed55 (10.0)65 605 (14.2)2400–28 03210.9 (5.8–17.5)99.8
Peer reviewed2145 (90.0)396 546 (85.8)274–38 70017.2 (13.2–21.6)99.9
Study qualityd
Low risk of bias2046 (92.0)441 233 (95.5)411–38 70015.4 (12.2–19.0)99.9
High risk of bias44 (8.0)20 918 (4.5)274–10 30330.8 (5.7–64.8)99.9

CI: confidence interval; NA: not applicable; UHC: universal health coverage.

a The threshold for catastrophic health expenditure was defined as 10% of total household expenditure.

b Countries in sub-Saharan Africa were grouped into four regions using the African Union classification.

c Countries’ income status was classified as low, lower middle or upper middle using the World Bank’s classification.

d Study quality was assessed using the appraisal tool for cross-sectional studies (AXIS) score: an AXIS score of 0–10 indicated a high risk of bias and a score of 11–20 indicated a low risk.

Fig. 3

Trends in the incidence of catastrophic health expenditure in sub-Saharan Africa, 2000–2019

CI: confidence interval; NA: not applicable; UHC: universal health coverage. a The threshold for catastrophic health expenditure was defined as 10% of total household expenditure. b Countries in sub-Saharan Africa were grouped into four regions using the African Union classification. c Countries’ income status was classified as low, lower middle or upper middle using the World Bank’s classification. d Study quality was assessed using the appraisal tool for cross-sectional studies (AXIS) score: an AXIS score of 0–10 indicated a high risk of bias and a score of 11–20 indicated a low risk. Trends in the incidence of catastrophic health expenditure in sub-Saharan Africa, 2000–2019 At the country level, Cameroon and Sudan had the highest and second highest incidence, at 65.0% (95% CI: 64.1–65.9) and 52.8% (95% CI: 52.1–53.5), respectively (details available in the data repository). Regionally, the pooled incidence for countries in central and western Africa was higher than that for the whole of sub-Saharan Africa (Table 2). The incidence was highest for countries in central Africa, at 50.6% (95% CI: 49.8–51.4; two datapoints; 14 423 households), and lowest for countries in southern Africa, at 8.4% (95% CI: 6.0–11.1; 10 datapoints; 132 085 households). Univariate meta-regression analysis indicated that the between-study variation in the pooled incidence was associated with: (i) study quality as assessed using the AXIS score (P-value 0.005); (ii) the country’s income status (P-value  0.005); and (iii) the country’s UHC service coverage index (P-value 0.005). Full details are available in the data repository. However, multivariable meta-regression analysis indicated that no variable was independently associated with between-study differences in the estimated pooled incidence.

Non-food expenditure threshold

When the threshold for catastrophic health expenditure was defined as 40% of household non-food expenditure, the pooled annual incidence across 84 datapoints, which covered 795 355 households, was 8.7% (95% CI: 7.2–10.3; Table 3). Further details are available in the data repository. In the sensitivity analyses, excluding the 10% of studies with the smallest sample sizes yielded a slightly lower pooled incidence of 7.9% (95% CI: 6.5–9.5; 75 datapoints; 789 746 households), whereas excluding the 10% of studies with the largest sample sizes yielded a slightly higher pooled incidence of 9.3% (95% CI: 7.5–11.3; 75 datapoints; 480 710 households). The incidence estimates were similar. When poor-quality studies were excluded, the pooled incidence was slightly lower at 7.9% (95% CI: 6.4–9.5; 73 datapoints; 691 778 households). Between 2000 and 2019, the pooled incidence initially decreased but increased between 2010–2014 and 2015–2019 (Fig. 3).
Table 3

Characteristics of subgroups of studies that defined catastrophic health expenditure as 40% of household non-food expenditure, sub-Saharan Africa, 2000–2021

Study subgroup definitionNo. of countries in subgroupNo. of incidence datapoints in subgroup (%)No. of households in subgroup (%)Study sample size, rangePooled incidence of catastrophic health expenditurea, % (95% CI)Between-study heterogeneity, I2 %
All studies 2584 (100)795 355 (100)117–73 3298.7 (7.2–10.3)99.8
Study period
2000–20092347 (56.0)341 950 (43.0)774–38 7009.2 (6.9–11.7)99.8
2010–20191637 (44.0)453 405 (57.0)117–73 3298.1 (6.3–10.0)99.8
Sub-Saharan African regionb
Central22 (2.4)7 945 (1.0)3070–4 87515.6 (14.9–16.5)NA
Eastern630 (35.7)325 837 (41.0)320–37 5008.9 (6.5–11.7)99.9
Southern819 (22.6)192 374 (24.2)2579–25 1194.7 (3.2–6.4)99.7
Western933 (39.3)269 199 (33.8)117–73 32910.8 (8.0–14.0)99.8
Country income statusc
Low923 (27.4)182 466 (22.9)320–28 0327.6 (4.8–11.1)99.8
Lower middle1148 (57.1)487 490 (61.3)117–73 32910.8 (8.8–13.0)99.8
Upper middle513 (15.5)125 399 (15.8)2579–25 1194.1 (2.3–6.3)99.7
Social health insurance coverage
< 10%2576 (90.5)730 022 (91.8)320–73 3299.0 (7.5–10.7)99.8
≥ 10%38 (9.5)65 333 (8.2)117–16 7725.7 (2.0–11.1)99.8
UHC service coverage index
< 451337 (44.0)331 666 (41.7)479–73 32911.7 (8.7–15.1)99.9
≥ 451447 (56.0)463 689 (58.3)117–37 5006.6 (5.2–8.2)99.8
Data source
Primary616 (19.0)24 316 (3.1)117–4 87315.5 (9.3–23.1)98.5
Secondary2568 (81.0)771 039 (96.9)900–73 3297.4 (6.0–8.9)99.8
Sample size
< 1000 households69 (10.7)5 609 (0.7)117–97116.4 (9.9–24.1)98.1
≥ 1000 households2575 (89.3)789 746 (99.3)1080–73 3297.9 (6.5–9.5)99.8
Study design
Observational2583 (98.8)795 035 (99.9)117–73 3298.6 (7.2–10.2)99.8
Pre-interventional11 (1.2)320 (0.1)NA16.2 (12.6–20.6)NA
Representativeness of study sample
Regionally representative718 (21.4)26 396 (3.3)117–4 87315.4 (9.7–22.2)99.5
Nationally representative2566 (78.6)768 959 (96.7)2400–73 3297.2 (5.8–8.8)99.8
Publication status
Not peer reviewed811 (13.1)110 659 (13.9)2400–28 0325.7 (3.1–9.0)99.8
Peer reviewed2573 (86.9)684 696 (86.1)117–73 3299.2 (7.6–10.9)99.8
Study qualityd
Low risk of bias2573 (86.9)691 778 (87.0)117–73 3297.9 (6.4–9.5)99.8
High risk of bias611 (13.1)103 577 (13.0)774–33 67514.7 (8.9–21.7)99.9

CI: confidence interval; NA: not applicable; UHC: universal health coverage.

a The threshold for catastrophic health expenditure was defined as 40% of household non-food expenditure.

b Countries in sub-Saharan Africa were grouped into four regions using the African Union classification.

c Countries’ income status was classified as low, lower middle or upper middle using the World Bank’s classification.

d Study quality was assessed using the appraisal tool for cross-sectional studies (AXIS) score: an AXIS score of 0–10 indicated a high risk of bias and a score of 11–20 indicated a low risk.

CI: confidence interval; NA: not applicable; UHC: universal health coverage. a The threshold for catastrophic health expenditure was defined as 40% of household non-food expenditure. b Countries in sub-Saharan Africa were grouped into four regions using the African Union classification. c Countries’ income status was classified as low, lower middle or upper middle using the World Bank’s classification. d Study quality was assessed using the appraisal tool for cross-sectional studies (AXIS) score: an AXIS score of 0–10 indicated a high risk of bias and a score of 11–20 indicated a low risk. At the country level, the Democratic Republic of the Congo and Mali had the highest and second highest incidence, at 21.9% (95% CI: 20.5–23.4) and 19.1% (95% CI: 18.1–20.2), respectively (details in the data repository). Regionally, the estimated pooled incidence for countries in central, eastern and western Africa were all higher than the pooled incidence for the whole of sub-Saharan Africa (Table 3). The pooled incidence for lower-middle-income countries was higher, at 10.8% (95% CI: 8.8–13.0; 48 datapoints; 487 490 households), than for low-income countries, at 7.6% (95% CI: 4.8–11.1; 23 datapoints; 182 466 households). Univariate meta-regression analysis indicated that the between-study variation in pooled incidence was associated with: (i) whether primary or secondary data had been used (P-value < 0.001); (ii) study quality as assessed using the AXIS score (P-value < 0.001); (iii) the country’s income status (P-value 0.001); and (iv) the country’s UHC service coverage index (P-value 0.001). Full details are available in the data repository. However, multivariable meta-regression analysis indicated that only study data type (P-value 0.024) and study quality (P-value 0.009) were independently associated with between-study differences in estimated pooled incidence. On average, studies that used secondary data reported a lower incidence of catastrophic health expenditure than those using primary data.

Disease-specific catastrophic expenditure

Estimates of the pooled incidence of catastrophic health expenditure for different disease groups (Table 4) were generally higher than estimates for the whole population (Table 2 and Table 3).
Table 4

Characteristics of disease-specific subgroups of studies, meta-analysis of catastrophic health expenditure in sub-Saharan Africa, 2000–2021

Catastrophic health expenditure threshold and study subgroupNo. of countries in subgroupNo. of incidence datapoints in subgroupNo. of households in subgroupStudy sample size, rangePooled incidence of catastrophic health expenditurea, % (95% CI)Between-study heterogeneity, I2 %
10% of total household expenditure
Noncommunicable diseases352 50587–99326.0 (18.7–34.1)94.3
Maternal, neonatal and child health776 766411–2 25037.2 (18.4–58.2)99.6
    Emergency obstetric surgery553 431120–1 23155.9 (26.5–83.2)99.7
HIV/AIDS and tuberculosis688 638691–1 40929.9 (17.4–44.2)99.5
    HIV/AIDS333 6821006–1 40927.1 (15.6–40.5)98.7
    Tuberculosis666 365691–1 40933.0 (16.1–52.7)99.6
Acute childhood illnesses444 512693–2 16431.6 (9.9–58.8)99.7
40% of household non-food expenditure
Noncommunicable diseases4549 151579–37 50011.8 (6.9–17.8)99.4
Maternal, neonatal and child health233 436794–1 62727.5 (4.8–59.5)99.7
    Emergency obstetric surgery12317120–19767.6 (62.3–72.7)NA
HIV/AIDS and tuberculosis4518 3961190–11 2718.1 (5.4–11.3)94.0
    HIV/AIDS4518 3961190–11 2718.2 (5.0–12.1)99.7
    Tuberculosis111 409NA7.7 (6.4–9.2)NA
Acute childhood illnesses442 457109–82828.7 (12.0–49.6)99.1

CI: confidence interval; HIV/AIDS: human immunodeficiency virus/acquired immunodeficiency syndrome; NA: not applicable.

a The threshold for catastrophic health expenditure was defined as 10% of total household expenditure or 40% of household non-food expenditure, as indicated.

CI: confidence interval; HIV/AIDS: human immunodeficiency virus/acquired immunodeficiency syndrome; NA: not applicable. a The threshold for catastrophic health expenditure was defined as 10% of total household expenditure or 40% of household non-food expenditure, as indicated.

Publication bias

For the population-level meta-analyses, visual inspection of funnel plots suggested there was no publication bias. However, Egger’s test for small-study effects gave a significant result (P-value 0.003 when the threshold was 10% of total household expenditure and P-value < 0.001 when it was 40% of household non-food expenditure). We were unable to determine whether the small-study effect was driven by publication bias because there was substantial heterogeneity in the data. For both thresholds, trim-and-fill analysis suggested that publication bias was absent (details available in the data repository). Similar assessments performed for the disease-specific meta-analyses also suggested that publication bias was absent.

Evidence quality

The quality of the evidence used for estimating the incidence of catastrophic health expenditure at the population level with both thresholds was graded as high as there was no serious risk of bias, imprecision, indirectness or inconsistency (Table 5) . However, the quality of the evidence used for estimating the incidence of disease-specific catastrophic expenditure varied from low to high because, for some disease groups, there was serious imprecision, a serious risk of bias and serious inconsistency across the studies.
Table 5

Evidence quality, by study subgroup, meta-analysis of catastrophic health expenditure, sub-Saharan Africa, 2000–2021

Meta-analysis outcomeNo. of households in analysisEvidence quality criteriona
GRADE evidence qualityb
Risk of biascImprecisiondIndirectnesseInconsistencyf
Incidence of catastrophic health expenditure in community studies
With a threshold of 10% of total household expenditure462 151Not seriousNot seriousNot seriousNot seriousHigh
With a threshold of 40% of household non-food expenditure795 355Not seriousNot seriousNot seriousNot seriousHigh
Incidence of catastrophic health expenditure in studies of specific disease groups
Noncommunicable diseases
    With a threshold of 10% of total household expenditure1 669Not seriousSeriousNot seriousSeriousLow
    With a threshold of 40% of household non-food expenditure48 572Not seriousNot seriousNot seriousSeriousModerate
Maternal, neonatal and child health
    With a threshold of 10% of total household expenditure6 766Not seriousNot seriousNot seriousSeriousModerate
    With a threshold of 40% of household non-food expenditure3 436SeriousNot seriousNot seriousSeriousLow
HIV/AIDS and tuberculosis
    With a threshold of 10% of total household expenditure8 638Not seriousNot seriousNot seriousSeriousModerate
    With a threshold of 40% of household non-food expenditure18 396Not seriousNot seriousNot seriousNot seriousHigh
Acute childhood illnesses
    With a threshold of 10% of total household expenditure4 512Not seriousNot seriousNot seriousSeriousModerate
    With a threshold of 40% of household non-food expenditure2 457Not seriousNot seriousNot seriousSeriousModerate

GRADE: Grading of Recommendations, Assessment, Development and Evaluation; HIV/AIDS: human immunodeficiency virus/acquired immunodeficiency syndrome.

a The quality of the evidence was assessed using the Grading of Recommendations, Assessment, Development and Evaluation (GRADE) approach.

b The GRADE evidence quality refers to the systematic and explicit consideration of study design, study quality, consistency and directness of evidence in judgements.

c There was a serious risk of bias if ≥ 25% of studies had a risk of bias (i.e. an inappropriate sampling method or statistical analysis).

d There was imprecision if ≥ 25% of studies had a small sample size.

e There was indirectness if≥ 25% of studies did not use valid and reliable methods of data collection.

f There was inconsistency if there was heterogeneity between the studies (i.e. the difference between the upper and lower limits of the 95% confidence interval was ≥ 10%).

GRADE: Grading of Recommendations, Assessment, Development and Evaluation; HIV/AIDS: human immunodeficiency virus/acquired immunodeficiency syndrome. a The quality of the evidence was assessed using the Grading of Recommendations, Assessment, Development and Evaluation (GRADE) approach. b The GRADE evidence quality refers to the systematic and explicit consideration of study design, study quality, consistency and directness of evidence in judgements. c There was a serious risk of bias if ≥ 25% of studies had a risk of bias (i.e. an inappropriate sampling method or statistical analysis). d There was imprecision if ≥ 25% of studies had a small sample size. e There was indirectness if≥ 25% of studies did not use valid and reliable methods of data collection. f There was inconsistency if there was heterogeneity between the studies (i.e. the difference between the upper and lower limits of the 95% confidence interval was ≥ 10%).

Discussion

Our findings suggest that one in six households in sub-Saharan Africa experienced a financial catastrophe when seeking health care between 2000 and 2019. Our review also indicates that the incidence of catastrophic health expenditure increased between 2010–2014 and 2015–2019. This increase could be due to the higher cost of health care, of both medications and medical consultations.,, The result is financial difficulty for households, and exerts fiscal pressure on the strained health budget of many countries. Over the last two decades, rapid population growth, ageing, urbanization and a sedentary lifestyle have increased the incidence of noncommunicable diseases in sub-Saharan Africa. Catastrophic health expenditure is unlikely to fall in the near future unless drastic measures are taken to counter this rise. In addition, the coronavirus disease 2019 pandemic affected livelihoods and reduced household incomes, thereby further exposing households to medical impoverishment. The incidence of catastrophic health expenditure we found in sub-Saharan Africa was lower than in China in the last decade, but higher than in Europe,– Asia,,, and South America,, irrespective of the definition used. The incidence may be higher than in Europe and South America because of slow progress in developing a health financing system in sub-Saharan Africa that encourages risk pooling and prepayment contributions and because of continuing overreliance on out-of-pocket payments., The high incidence of catastrophic health expenditure we found for specific diseases suggests that health-care costs are driven not just by the cost of treatment for acute, life-threatening health shocks, such as emergency surgery or intensive care, but also by the relatively small – but recurrent – cost of chronic illness. We found that about a quarter of households affected by a noncommunicable disease incurred catastrophic health-care costs (when defined as 10% of total household expenditure), a substantially higher figure than for the general population. This result is consistent with growing evidence that noncommunicable disease is a major driver of health-care costs for households.,– In sub-Saharan Africa, the rising burden of noncommunicable diseases has not been matched by measures to curb health-care costs. Policies that simultaneously tackle these diseases and protect households affected by them are urgently needed if the region is to achieve SDG 3.4.1 (i.e. to reduce premature deaths from noncommunicable disease by 25% by 2025) or 1.1.1 (to eradicate extreme poverty). Most sub-Saharan African countries are also burdened by epidemics of infectious diseases, including human immunodeficiency virus/acquired immunodeficiency syndrome (HIV/AIDS), tuberculosis, malaria and pneumonia. We found that the incidence of catastrophic health expenditure was generally higher among households with a patient with HIV/AIDS or tuberculosis than in the rest of the population. This finding suggests that, despite out-of-pocket payment exemptions for people with these conditions, affected households still experience catastrophic health expenditure. The reason could be the high cost of treatment before diagnosis (e.g. from inappropriate care-seeking or irrational drug use), lost income due to prolonged hospitalization, or non-medical expenditure (e.g. for travel or nutritional supplements)., Because the rapid expansion of free antiretroviral therapy and tuberculosis treatment has helped increase life expectancy, financial protection must be extended beyond exemptions for out-of-pocket payments for direct treatment costs. Our study also showed that the incidence of catastrophic health expenditure was high among people using maternal, neonatal and child health care services. Vulnerable families in most sub-Saharan African countries who require health care for severe obstetric complications, neonatal admission, or paediatric hospitalization or surgery are particularly at risk. The sub-Saharan African region alone accounts for two thirds of maternal deaths globally each year. Substantial progress in reducing maternal, neonatal and child mortality is unlikely before countries act to protect households from catastrophic out-of-pocket expenditure when accessing maternal, neonatal and child health-care services., The elimination of user fees, for example, could increase access to these services while shielding households from impoverishment. Our study has several strengths. The study is a methodological improvement on previous studies as we used several measures of catastrophic health expenditure.,,, As payment for health care can crowd out both food and non-food expenditure, it was important to examine health expenditures using the two thresholds of 10% of total household expenditure and 40% of household non-food expenditure. Also, as we included only population-based studies, our findings are more generalizable to the whole population than those of previous studies. There are also some limitations. First, survey-based evaluations of catastrophic health expenditure understate the risk faced by poorer households that are unable to seek care because of costs and thus report zero health expenditure. Consequently, our estimates should be taken as lower bounds of the true incidence of catastrophic health expenditure in sub-Saharan Africa. Second, in the absence of a universal definition, we defined catastrophic health expenditure using the thresholds of 10% of total household expenditure and 40% of non-food expenditure, as did 96% of eligible studies. A different definition could have given different pooled incidences. Finally, information on the UHC service coverage index was available only for 2015 and 2017 and data on social insurance coverage were sparse,, which limited confidence in findings related to those two variables. Despite these limitations, our study provides important evidence for discussions on policy and health financing reform. By demonstrating that a substantial portion of the sub-Saharan African population experience catastrophic costs when accessing health care, our study underscores the urgency of designing effective and inclusive social protection mechanisms. Although identifying interventions was not a study objective, our findings highlight the need for measures such as insurance premium exceptions, co-payment exceptions, free medications and free diagnostic tests for households at most risk. Developing a social insurance system is the preferred long-term solution to catastrophic health expenditure and impoverishment in the region. In the short-term, increased donor funding for both public health care services and country-specific social safety nets are needed to ensure access for poor people. In addition, country-specific, targeted programmes can help reduce health inequity. Regular, nationally representative surveys remain critical tools for tracking health expenditure and for identifying the individuals, households and disease populations most at risk. The catastrophic health expenses experienced by many people in sub-Saharan Africa threaten poverty alleviation efforts. Stronger financial protection is critically needed in the region if continued progress is to be made towards achieving UHC and meeting the attendant SDGs.
  107 in total

Review 1.  The global impact of non-communicable diseases on households and impoverishment: a systematic review.

Authors:  Loes Jaspers; Veronica Colpani; Layal Chaker; Sven J van der Lee; Taulant Muka; David Imo; Shanthi Mendis; Rajiv Chowdhury; Wichor M Bramer; Abby Falla; Raha Pazoki; Oscar H Franco
Journal:  Eur J Epidemiol       Date:  2014-12-21       Impact factor: 8.082

2.  Investigating determinants of catastrophic health spending among poorly insured elderly households in urban Nigeria.

Authors:  Olumide Adisa
Journal:  Int J Equity Health       Date:  2015-09-15

3.  Development of a critical appraisal tool to assess the quality of cross-sectional studies (AXIS).

Authors:  Martin J Downes; Marnie L Brennan; Hywel C Williams; Rachel S Dean
Journal:  BMJ Open       Date:  2016-12-08       Impact factor: 2.692

4.  Catastrophic expenditure and impoverishment after caesarean section in Sierra Leone: An evaluation of the free health care initiative.

Authors:  Alex J van Duinen; Josien Westendorp; Thomas Ashley; Lars Hagander; Hampus Holmer; Alimamy P Koroma; Andrew J M Leather; Mark G Shrime; Arne Wibe; Håkon A Bolkan
Journal:  PLoS One       Date:  2021-10-15       Impact factor: 3.240

Review 5.  The household financial burden of non-communicable diseases in low- and middle-income countries: a systematic review.

Authors:  Joseph Kazibwe; Phuong Bich Tran; Kristi Sidney Annerstedt
Journal:  Health Res Policy Syst       Date:  2021-06-21

6.  Economic status and catastrophic health expenditures in China in the last decade of health reform: a systematic review and meta-analysis.

Authors:  Qingqing Yuan; Yuxuan Wu; Furong Li; Min Yang; Dandi Chen; Kun Zou
Journal:  BMC Health Serv Res       Date:  2021-06-24       Impact factor: 2.655

7.  Assessing out-of-pocket expenditures for primary health care: how responsive is the Democratic Republic of Congo health system to providing financial risk protection?

Authors:  Samia Laokri; Rieza Soelaeman; David R Hotchkiss
Journal:  BMC Health Serv Res       Date:  2018-06-15       Impact factor: 2.655

8.  Impact of out of pocket payments on financial risk protection indicators in a setting with no user fees: the case of Mauritius.

Authors:  Ajoy Nundoochan; Yusuf Thorabally; Sooneeraz Monohur; Justine Hsu
Journal:  Int J Equity Health       Date:  2019-05-03

9.  The burden of household out-of-pocket health expenditures in Ethiopia: estimates from a nationally representative survey (2015-16).

Authors:  Mizan Kiros; Ermias Dessie; Abdulrahman Jbaily; Mieraf Taddesse Tolla; Kjell Arne Johansson; Ole F Norheim; Solomon Tessema Memirie; Stéphane Verguet
Journal:  Health Policy Plan       Date:  2020-10-01       Impact factor: 3.344

10.  An Alternative Approach to Decomposing the Redistributive Effect of Health Financing Between and Within Groups Using the Gini Index: The Case of Out-of-Pocket Payments in Nigeria.

Authors:  John E Ataguba; Hyacinth E Ichoku; Chijioke O Nwosu; James Akazili
Journal:  Appl Health Econ Health Policy       Date:  2020-12       Impact factor: 2.561

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  1 in total

1.  Factors associated with catastrophic health expenditure in sub-Saharan Africa: A systematic review.

Authors:  Paul Eze; Lucky Osaheni Lawani; Ujunwa Justina Agu; Linda Uzo Amara; Cassandra Anurika Okorie; Yubraj Acharya
Journal:  PLoS One       Date:  2022-10-20       Impact factor: 3.752

  1 in total

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