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BMJ Open logoLink to BMJ Open
. 2021 Dec 22;11(12):e050077. doi: 10.1136/bmjopen-2021-050077

Impact of public-funded health insurances in India on health care utilisation and financial risk protection: a systematic review

Bhageerathy Reshmi 1, Bhaskaran Unnikrishnan 2, Eti Rajwar 3, Shradha S Parsekar 3, Ratheebhai Vijayamma 4, Bhumika Tumkur Venkatesh 3,
PMCID: PMC8704974  PMID: 34937714

Abstract

Objective

Universal Health Coverage aims to address the challenges posed by healthcare inequalities and inequities by increasing the accessibility and affordability of healthcare for the entire population. This review provides information related to impact of public-funded health insurance (PFHI) on financial risk protection and utilisation of healthcare.

Design

Systematic review.

Data sources

Medline (via PubMed, Web of Science), Scopus, Social Science Research Network and 3ie impact evaluation repository were searched from their inception until 15 July 2020, for English-language publications.

Eligibility criteria

Studies giving information about the different PFHI in India, irrespective of population groups (above 18 years), were included. Cross-sectional studies with comparison, impact evaluations, difference-in-difference design based on before and after implementation of the scheme, pre–post, experimental trials and quasi-randomised trials were eligible for inclusion.

Data extraction and synthesis

Data extraction was performed by three reviewers independently. Due to heterogeneity in population and study design, statistical pooling was not possible; therefore, narrative synthesis was performed.

Outcomes

Utilisation of healthcare, willingness-to-pay (WTP), out-of-pocket expenditure (including outpatient and inpatient), catastrophic health expenditure and impoverishment.

Results

The impact of PFHI on financial risk protection reports no conclusive evidence to suggest that the schemes had any impact on financial protection. The impact of PFHIs such as Rashtriya Swasthy Bima Yojana, Vajpayee Arogyashree and Pradhan Mantri Jan Arogya Yojana showed increased access and utilisation of healthcare services. There is a lack of evidence to conclude on WTP an additional amount to the existing monthly financial contribution.

Conclusion

Different central and state PFHIs increased the utilisation of healthcare services by the beneficiaries, but there was no conclusive evidence for reduction in financial risk protection of the beneficiaries.

Registration

Not registered.

Keywords: health policy, health informatics, public health, epidemiology, quality in health care, organisation of health services


Strengths and limitations of this study.

  • Inclusion of all kinds of empirical evidence to answer the research question about impact of public-funded health insurance (PFHI) schemes in India.

  • This is one of the very few reviews that has used a systematic methodology to provide latest evidence on the impact of the newly launched Pradhan Mantri Jan Arogya Yojana scheme in India.

  • Choice of quality appraisal tool, due to unavailability of other tools for this kind of study, was a limitation.

  • Multiple PFHI (state-specific and central) schemes in India (with different benefit packages) and modifications in the schemes due to changes in central/state governments led to high data heterogeneity.

  • Due to heterogeneity in data, we could not provide the pooled estimate via meta-analysis. However, results were explained via a narrative synthesis.

Introduction

India has a complex and mixed healthcare framework with presence of parallel public and private healthcare systems.1 2 There is a stark difference in government spending on both public and private healthcare.3 Health policies in India have been guided by the principle of equity with prioritising the needs of the poor and underprivileged.4 Out-of-pocket expenditure (OOPE) for health is one of the important factors while addressing the inequities in healthcare, and in India, it is an important source of healthcare financing. It is estimated that, in India, around 71% of the healthcare spending is met by OOPE. This not only is an immediate financial burden to the poor households but also pushes the households into a never-ending poverty trap.5 Health-related OOPE poses a threat to the principle of financial risk protection and adds to the unaffordability and inaccessibility of healthcare for the poor. High OOPE also leads to catastrophic health expenditure (CHE), which is the increase in healthcare payment by a household, beyond the threshold, where the threshold is defined as the household’s income or capacity to pay. This is further divided into catastrophe 1, where healthcare OOPE exceeds by 10% of the household’s consumption expenditure, and catastrophe 2, if OOPE exceeds to more than 40% of the household’s non-food expenditure. The increase in OOPE affects the rural population marginally more than the urban population and the effect of OOPE is more pronounced among the people living below the poverty line (BPL) than those above the poverty line (APL), as BPL people are pushed more into poverty than APL, due to the high OOPE, when measured via the increase in poverty head counts.5

Over the years, government of India has rolled out different initiatives to address the healthcare-related inequities in India. The public healthcare system was revised and reframed as the National Rural Health Mission in 2005, later restructured as National Health Mission in 2014.5 6 Other initiatives like Janani Suraksha Yojana and the public funded health insurance (PFHI) schemes such as Rashtriya Swasthya Bima Yojana (RSBY) were also introduced to address the health inequalities, improve health outcomes and provide financial risk protection.6 Many states sponsored health insurance (HI) schemes, viz., the Vajpayee Arogyashree Scheme (VAS) by Karnataka, Comprehensive Health Insurance Scheme (CHIS) by Kerala and Chief Minister Health Insurance Scheme (CMHIS) by Tamil Nadu, which have been introduced for ensuring financial protection of the vulnerable population.

Challenges posed by healthcare inequalities and inequities like OOPE can also be addressed via the Universal Health Coverage (UHC). The UHC, as defined by the WHO, means that all people and communities can use the promotive, preventive, curative, rehabilitative and palliative health services they need, of sufficient quality to be effective, while also ensuring that the use of these services does not expose the user to financial hardship. The UHC aims towards increasing the accessibility and affordability of healthcare for the entire population. The definition of UHC is embodied in its three objectives, that is, equity, quality and financial protection.7

The twelfth 5-year plan of the government of India acknowledges the importance of UHC as it introduces a work plan for achieving UHC for the 1.3 billion population of the country. The agenda for this plan is based on the principle of providing affordable, accessible and good quality healthcare with financial protection to the people of the country.8 The provision of UHC has been included in the National Health Policy of India (2017). To achieve the UHC, government of India announced the ‘Ayushman Bharat’ programme in 2018 with two initiatives, that is, (a) Health and Wellness center and (b) National health protection scheme—Pradhan Mantri Jan Arogya Yojana (PMJAY), that is intended to cover around 500 million beneficiaries (from vulnerable families) and is intended to cover up to Indian National Rupees (INR) 500 000 per family, per year, for secondary and tertiary hospitalisation.9

The addition of PMJAY scheme to the various existing PFHI (central and state) schemes aims to increase the UHC, by increasing the affordability and accessibility of good quality healthcare. It is important to assess whether these schemes (including PMJAY) have been proven to be effective in improving health outcomes and providing financial protection to the vulnerable population. Following the principles of UHC, willingness to pay (WTP) for a particular HI scheme can also be used as an indicator to assess the affordability and effectiveness of a scheme in providing good quality healthcare. Additionally, data on beneficiaries willing to pay more or contribute more for a HI scheme (viz., CGHS) indirectly provide information on their satisfaction with the services provided by the scheme, therefore, making it an indicator to assess effectiveness of the scheme. The previous systematic review10 on assessing the effectiveness of PFHI schemes in India was conducted before complete rolling out of the PMJAY and, therefore, did not include findings on the effectiveness of the scheme (PMJAY). Also, this review10 did not provide information on the WTP component of assessing impact of the HI schemes. The present review was, therefore, conducted with an aim to provide information related to effectiveness of the central and state-funded HI schemes (including the PMJAY scheme) via healthcare utilisation, WTP and financial risk protection of the beneficiaries. This review was planned to answer the following research question: (a) What is the impact of PFHI schemes on access and utilisation of healthcare, willingness-to-pay and financial risk protection in India?

Methods

This systematic review follows the methodology by Cochrane handbook for systematic review of interventions11 and the Preferred Reporting Items for Systematic Reviews and Meta-Analyses checklist was used to report the review.12

Criteria for including studies in the review

  1. Population: population group above 18 years of age enrolled in a PFHI scheme in India.

  2. Intervention: HI schemes funded by either central or state government, and that covers, range of services such as hospitalisation, out-patient charges, medicine costs, treatment procedures, etc. Different PFHI schemes in India, for example, RSBY, VAS, CMHIS and PMJAY were eligible to be included. Private or community-based HIs were not eligible to be included. Mixture of HIs was excluded provided a study carried out subgroup analysis for PFHIs.

  3. Comparison: comparison group comprises of people who did not receive any PFHI services.

  4. Outcomes: this review includes the following outcomes: (a) utilisation of healthcare, (b) WTP, (c) financial risk protection measured in terms of OOPE, CHE and impoverishment.

  5. Study design: cross-sectional studies with comparison, impact evaluations, difference-in-differences design based on before and after implementation of the scheme, pre–post design, experimental trials and quasi-randomised trials were eligible to be included.

Search methods for identification of studies

Electronic databases such as Medline (via PubMed, Web of Science), SCOPUS, Social Science Research Network and International Initiative for impact evaluation (3ie) repository were searched from their inception until 15 July 2020; however, only English publications, published in the last 10 years were considered. References and forward citations of the included studies were scanned through for any additional eligible studies. Keywords were identified before the initiation of the search. The initial search was carried out in PubMed (online supplemental file 1) and was replicated in other databases. Search was conducted by a designated information scientist.

Supplementary data

bmjopen-2021-050077supp001.pdf (768.9KB, pdf)

Data collection

Result of search strategy was imported to Endnote V.X7 reference manager software. Duplicates were removed and the unique citations were exported to Microsoft Excel spreadsheet for screening.

Selection of studies

Unique citations were subjected to title and abstract screening independently by two reviewers. Eligible abstracts of all the relevant studies as per the inclusion criteria were included for full-text screening (by BTV, ER and SSP) and relevant ones from these were included for analysis. Before initiating full-text screening, we tried to retrieve the full-text articles by contacting authors of the respective articles and the full texts that were not retrieved were excluded. Disagreements were resolved by discussion or by a third reviewer.

Data extraction

Data extraction was done (by ER, BTV, SSP) using a predesigned data extraction form. Information on variables such as bibliographic details (author names, publication year, journal name); study details (information about the objectives of the study and research question addressed); study setting (name of the state, rural/urban); participant characteristics (age, gender, socioeconomic status, occupation); intervention details (name and type of HI, mode of delivery of the HI, incentives given, healthcare services covered, time duration of seeking HI, any additional HIs); comparison details; outcome details (information about changes in accessibility of healthcare, utilisation of healthcare services, OOPE, WTP, health outcomes like morbidity and mortality, measurement of the outcomes, method used for measurement, time at which the outcome was measured) and study design details (type of study design and analysis) were extracted.

After pilot testing of the data extraction form, it was revised according to the modifications suggested by the team. Disagreements among the reviewers, during data extraction, were resolved by consensus, if still not resolved, third reviewer was approached for resolving the disagreements. Extracted data from all the included studies were cross-checked and independent extraction was done for one-third randomly selected studies.

Methodological quality

The methodological quality of the included studies was assessed using Effective Public Health Practice Project Quality Assessment Tool (EPHPP).13 This tool assesses methodological quality of the quantitative studies based on questions under the following seven domains, that is, (a) selection bias, (b) study design, (c) confounders, (d) blinding, (e) data collection method, (f) withdrawals and dropouts, (g) intervention integrity and (h) analysis. Quality assessment using this scale was performed independently by reviewers in groups of two. After discussion, global rating for the scale was followed and studies were marked as (1) methodologically strong, if none of the domains had any weak rating, (2) moderate, if at least one domain was marked as weak and (3) weak, if two or more domains were marked as weak. Quality assessment was performed using Microsoft excel spreadsheet.

Data analysis

Due to heterogeneity in data, narrative synthesis was performed to answer the research question. The results are summarised based on outcomes and types of PFHIs. The effect measures of included studies such as mean difference or correlation coefficients with appropriate CI and/or p values are reported.

Public and patient involvement

We did not involve public or patient during the process of this review.

Results

The literature search on electronic databases generated 555 citation yield, out of which 179 were duplicates. Additionally, 17 records were identified from forward and backward reference checking. After title and abstract screening of 393 citations, 157 were included for full-text screening, of which finally 25 articles were included for data synthesis. Schematic representation of the selection process is shown in figure 1.

Figure 1.

Figure 1

PRISMA flow diagram. PFHI, public-funded health insurance; PRISMA, Preferred Reporting Items for Systematic Reviews and Meta-Analyses.

Characteristics of included studies

The summary of study characteristics is given in table 1 and the detailed characteristics of included studies are given in online supplemental file 1.

Table 1.

Summary characteristics of included studies

Serial number Study characteristic Summary
1. Geographical location Out of the 25 included studies, 10 studies were conducted nationally,14 16 18–22 24 28 35 and one was conducted in 12 cities—Bhubaneshwar, Thiruvananthapuram, Ahmedabad, Chandigarh, Meerut, Patna, Jabalpur, Lucknow, Hyderabad, Kolkata, Mumbai and Delhi.38 Other studies were conducted in different states. Studies covering northern region of India were conducted in Uttar Pradesh,23 30 Haryana34 and Punjab.34 Studies covering southern region of India were undertaken in Karnataka,17 31 36 37 Andhra Pradesh,15 17 27 32 Kerala33 and Tamil Nadu.17 Remaining studies were carried out in eastern region, viz., Jharkhand,25 Bihar,23 Chhattisgarh26 29 and western region, viz., Maharashtra.27 30 32
2. Population Population among the included studies differed in characteristics. General population was included in nine studies.14–16 20 25–27 29 31 Around seven studies comprised of below poverty line (BPL) households.17–19 22 24 33 35 A mixed population from rural and urban households was considered in three studies.21 28 32 One study comprised of patients selected from Rashtriya Swasthya Bima Yojana (RSBY) empaneled hospitals and key stakeholders.34 One study included Self-help group members or head of the households.23 One study comprised of socially excluded households focusing on Scheduled Castes, Muslims and upper caste poor.30 Two studies comprised of a mix population of BPL and above poverty line households.36 37 One study comprised of Central Government Health Scheme (CGHS) and Ex-servicemen Contributory Health Scheme (ECHS) principal beneficiaries, empaneled private healthcare providers and officials of the schemes across 12 Indian cities.38
3. Type of Insurance Central government-funded health insurance (HI): about 14 studies were conducted on central government-funded HI schemes, that is, RSBY.14 18 19 22–28 30 32 34 35 One study was conducted on Pradhan Mantri Jan Arogya Yojana (PMJAY).29 Three studies were conducted on CGHS.16 24 38 Two studies were conducted on Employee State Insurance Scheme.16 24 State government funded HI: three studies each were conducted on Vajpayee Arogyashree Scheme (VAS) in Karnataka31 36 37 and Rajiv Arogya Shree (RAS) in Andhra Pradesh.15 27 32 One study each reported on CHIS33 (Philip et al) and ECHS.38 Any government-funded HI: remaining other studies were generally all PFHI.17 20–22 24 28
4. Study design Impact evaluation including quasi-randomised designs was used in eight studies.15 16 19 29 30 32 36 37 Observational study design was used in five studies.23 25 31 33 38 Secondary data analysis was performed in 11 studies.14 17 18 20–22 24 26–28 35 Mixed method approach was used in one study.34
5. Outcomes
  1. Financial risk protection: the impact of RSBY on financial protection was reported by nine studies.14 16 18 19 23 25 30 32 34 The impact of different PFHI schemes (including state insurance schemes) on financial risk protection were reported by 13 studies.15 17 20–22 24 26–29 31–33

  2. Access and utilisation of healthcare: the impact of PFHI on healthcare utilisation was reported by 16 studies, out of these eight studies assessed the impact of RSBY on healthcare utilisation.14 16 23 26 27 30 32 35 Impact of RAS was assessed by single study.32 Five studies assessed the impact of CHIS on utilisation of healthcare.20 21 24 26 33 One study evaluated the impact of PMJAY on healthcare utilisation.29 Hospitalisation rate was reported in two studies with the implementation of RAS.17 27 Two studies reported hospital utilisation rate with implementation of VAS.36 37

  3. Willingness to pay and reduction of financial burden were reported in one study.38

6. Methodological quality Out of 25 studies, 3 were of moderate quality,31–33 2 weak methodological quality34 35 and remaining others were of high quality.

Impact of PFHI on financial risk protection, utilisation of healthcare and WTP

This systematic review provides evidence on the impact of different PFHI schemes that have been operational in India. These schemes are funded by the central government, viz., RSBY, CGHS, Employee State Insurance Scheme, Swavlamban, Nirmaya-Disability Health Insurance Scheme and PMJAY and by the state governments like VAS (Karnataka), Rajiv Arogya Shree (Andhra Pradesh) and CHIS (Tamil Nadu). The eligibility criteria and benefits offered under each scheme vary according to different state governments. More information on these PFHI schemes is given in box 1.

Box 1. Central and state-sponsored PFHI schemes in India.

Central-funded health insurance schemes

  1. Rashtriya Swasthya Bima Yojana—RSBY (2008) is a central-funded health insurance scheme in which 75% of the annual premium is provided by the central government and rest 25% by the state governments. In-patient expenditure of upto Indian National Rupees (INR) 30 000 per family per annum is insured for below poverty line families. Unorganised sector is also covered under this scheme.

  2. Prime Minister’s Jan Arogya Yojana—PMJAY (2018) is a fully government sponsored scheme, which provides a cover of INR 500 000 per family per year in government empanelled public and private hospitals of India, for secondary and tertiary-level hospitalisation. Vulnerable and below the poverty line (BPL) families are eligible to avail the services under this scheme.

  3. Central Government Health Scheme (1954) is eligible for central government employees and pensioners enrolled under the scheme. According to this scheme, inpatient services at the government empanelled hospitals, outpatient services including medicines, consultation by experts, maternity and child health services (family welfare) and medical consultation for alternative system of medicines are covered.

  4. Swavlamban (2015), this is a central-funded health insurance scheme for people with disabilities. Eligible population includes BPL and differently abled people with blindness, hearing impairment, leprosy-cured, locomotor disability, mental illness, etc. A sum of INR 200 000 per annum is covered and treatment of pre-existing illness is covered under the scheme.

  5. Nirmaya-Disability Health Insurance Scheme (2008), this central-funded health insurance scheme is specifically for people with Cerebral Palsy, autism, multiple disabilities and mental retardation. Services of upto INR 100 000 are covered under this scheme.

  6. Employee State insurance Scheme—Employee State Insurance Scheme(1952), this scheme is funded by the employers and staff contributions and is applicable to employees of factories and establishments drawing wages upto INR 15 000 a month. Under this scheme, a number of benefits to protect the employees or workers from illness, disability and death are paid to the beneficiaries. Benefits such as sickness benefit (70% of wages), temporary disablement benefit (90% of last wage), permanent disability benefit (90% of wage), maternity benefit (100% of wage), dependent benefit (90% of wage), INR 10000 to dependents for funeral expenses in case of death of the employees and other benefits like vocational and physical rehabilitation are given to the beneficiaries.

State government-funded health insurance schemes

  1. Aarogyasri Scheme (2007), this scheme is by the Telangana state and BPL families belonging to the state are eligible. Benefits include cashless transactions for treatment of extreme illness, for up to INR 200 000 per year, covered under the scheme.

  2. Ayushman Bharat—Mahatma Gandhi Rajasthan Swasthya Bima Yojana (2019), this scheme is by the government of Rajasthan and is formed by merging PMJAY scheme and Bhamashah Swasthya Bima Yojana. All the Rajasthani families belonging to BPL category are covered under this scheme. Under this scheme, an insured amount of INR 50 000and INR 450 000 are provided for secondary and tertiary illness, respectively.

  3. Chief Minister’s Comprehensive Health Insurance Scheme (2012), this is a state-funded HI scheme by government of Tamil Nadu. People belonging to families of less than INR 72 000 are annual earning or less and members of unorganised labour welfare boards, including their families are eligible. Services and benefits of up to INR 500 000 per family per year are covered under the scheme.

  4. Deen Dayal Swasthaya Seva Yojana (2016), by Goa government, for residents of Goa (residing for at least 5 years), central and state government employees already covered under other government health insurance benefits are eligible. Benefits include cashless inpatient services under government empanelled services. Annual coverage of upto INR 250 000 for a family of three and INR 400 000 for a family of four or more is given. Beneficiaries have to provide an annual premium of INR 200–300 to avail the benefits of the scheme.

  5. Dr YSR Aarogyasri Scheme (Formerly called Rajiv Arogyasri Community Health Insurance Scheme)−2007, by the Andhra Pradesh government, this scheme covers BPL families from Andhra Pradesh. Under this scheme, free end-to-end cashless services are provided for patients undergoing treatment for therapies listed by the network hospitals. Free outpatient assessments are done for patients not undergoing treatment under the sited therapies.

  6. Vajpayee Arogaya Shree (2009), this scheme is funded by the government of Karnataka and is applicable for BPL families from rural and urban areas of Karnataka. A total of INR 150 000 is reimbursed for services provided to five members of the beneficiary family, an extra sum of INR 50 000 per annum is provided in case-to-case basis.

  7. West Bengal Health for All Employees and Pensioners Cashless Medical Treatment Scheme (2014), previously known as ‘West Bengal Health Scheme’, by the government of West Bengal, this scheme is for West Bengal government employees, pensioners and their family members. Benefits include reimbursement for in-patient services in the state empaneled hospitals and outpatient services for 15 diseases mentioned in the scheme. Cashless medical treatment for up to INR 100 000 is provided for inpatient treatment.

  8. Yeshasvini co-operative farmer’s healthcare scheme (2003), by government of Karnataka, this scheme is for farmers who are members of the cooperative societies. According to this scheme, beneficiaries from the rural areas have to contribute INR 250 (for general category) and INR 50 (for SC/ST families) per annum. Beneficiaries from the urban areas have to contribute INR 710 (for general category) and INR 110 (for SC/ST) per annum. Benefits include inpatient services, discount rates for lab investigations, tests, outpatient services and medical emergency services due to mishaps during farming or any other agriculture related work.

Summary of the impact findings of RSBY and other PFHIs is given in tables 2 and 3, respectively, and the detailed synthesis is provided in online supplemental file 1.

Table 2.

Impact of RSBY on financial risk protection and healthcare utilisation

Outcome Findings
Out of Pocket health Expenditure (OOPE)
  1. Inpatient OOPE: RSBY-influenced reduction in inpatient OOPE. The evidence is generated from three high methodological studies.14 18 30 The per-capita inpatient expenditure for RSBY-treated households, decreased in both rural and urban areas.14 The impact of RSBY on inpatient expenditure was reduced for unmatched and matched samples, when RSBY was implemented for a minimum of 2 months duration. After removing Uttar Pradesh (UP) and Haryana from the analysis, the triple difference findings (ie, with a second control of non-BPL households) showed a reduction in inpatient expenditure, but the double difference analysis showed an increase in inpatient expenditure due to RSBY. However, none of these findings was statistically significant.18 Both the studies included NSSO data from Andhra Pradesh, Karnataka and Tamil Nadu and used matching and DID methodology for analysis. Sabharwal et al,30 used PSM impact analysis to report that average annual household expenditure on inpatient care was significantly less for RSBY beneficiary households when compared with non-beneficiary households. This study also reported that average annual household expenditure spent on inpatient was higher for RSBY beneficiaries who used the smart card for inpatient expenses than the RSBY beneficiaries who did not use the RSBY smart card. However, a low methodological study32 reported a significant increase in inpatient expenditure for both public and private healthcare, in the state of Maharashtra. This difference was calculated using DID method for the years 2004 and 2012 (after implementation of RSBY in the state). The scheme did not have a significant effect on the OOPE expenditure for inpatient visits.16 19 A good methodological study16 applied the coarsened exact matching and linear and logit regression to report the impact of RSBY on OOPE for inpatient visits, among insured households. No statistically significant difference was reported between RSBY-insured and uninsured households. Another good methodological study,19 applied PSM and DID approach, to find the impact of RSBY on inpatient OOPE in total household expenditure, by dividing treatment districts into Treatment 1 (TT1), ie, March 2010 and Treatment 2 (TT2) group, ie, April 2010 to March 2012. No impact of RSBY on the inpatient OOPE as share of total household expenditure was observed. The probability of incurring 0 OOPE inpatient expenditure was not significantly different for RSBY and non-RSBY families. RSBY increased the probability of incurring inpatient OOPE by 22% (TT1) and 28% (TT2), respectively. However, these findings were not significant.19

  2. Outpatient OOPE: five studies14 16 18 19 30 provided inconclusive information on the effect of RSBY on outpatient OOPE. RSBY had a negative impact on the outpatient expenditure.14 18 According to Azam,14 implementation of RSBY reduced the per capita outpatient expenditure for both rural and urban areas. The outpatient expenditure reduced for RSBY households for the overall matched sample and for the matched sample minus UP and Haryana.18 There was no statistically significant difference between RSBY-insured and uninsured households in terms of OOPE on outpatient visits.16 30 RSBY increased the probability of incurring outpatient OOPE for households participating in RSBY before March 2010, by 23%; however, there was no significant effect on the scheme on outpatient OOPE for the RSBY households between April 2010 and March 2012.19

  3. Total OOPE spending: four studies provided information on total OOPE spending after RSBY implementation.14 16 19 23 RSBY resulted in reduction of total OOPE of the households. The findings of these studies were mostly not significant. Two studies used matching and DID for analysis and two used matching and regression.

Catastrophic Health Expenditure (CHE) Four studies14 16 19 25 provided information on the effect of RSBY on CHE, the RSBY households were less likely to incur CHE for outpatient care, inpatient care and overall CHE. It was observed that beneficiaries of the scheme reported a reduction in CHE; however, one study25 reported that there was no effect of RSBY on CHE. According to Azam,14 the effect was same for both rural and urban households. RSBY increased the likelihood of CHE 25.14 All these findings about the impact of RSBY on CHE were not significant. However, incidence of CHE was significantly reduced for RSBY households with childbirth in last 1 year of data collection.25 Two studies14 19 performed matching and analysed using DID analysis, and other studies16 25 performed matching and linear and logistic regression. The cost of medicines was significantly reduced by 22 INR for RSBY households in the rural areas; however, it increased for the urban households by 28 INR, but this result was not significant.14
Impoverishment The effect of RSBY on impoverishment was not clear. One study16 reported that RSBY had no effect on impoverishment due to OOP on inpatient care and on the total overall probability of impoverishment. However, in another study25 among RSBY enrolled APL households, the incidence of health expenditure induced poverty was significantly increased, that is, APL households were pushed to BPL because of healthcare expenditure. Both the studies performed matching and used regression analysis, linear and logistic regression.
Utilisation of healthcare Around eight studies14 16 23 26 27 30 32 35 looked at the impact of RSBY on healthcare utilisation. The outcomes assessed by these studies include reporting of illness, hospitalisation rate, outpatient care and inpatient care utilisation and utilisation of hospital services. The impact of RSBY on hospitalisation was assessed by six studies14 23 26 27 32 35; all the studies showed increase in the hospitalisation, of which three studies showed significant increase in hospitalisation among female heads, scheduled tribes and for poorest.27 For women seeking treatment in obstetrics department.26 The studies16 30 suggested increase in both, inpatient and outpatient services. However, the results were significant for inpatient care for one of the studies.16 A study14 assessed the impact of health insurance on reporting morbidity and seeking treatment for illness in both rural and urban areas. The ATT analysis suggested increase in reporting of morbidity, seeking treatment for short-term and long-term illnesses and long-term morbidity in rural India compared with urban India. The increased value ranges from 0.7% to 3.2%. In urban India, the increase in reporting illness by RSBY holders varied from 2.3% to 2.4%, which was not statistically significant.14

APL, Above poverty line; ATT, Average Treatment Effect on Treated; DID, Difference in Differences; NSSO, National Sample Survey Office; OOPE, out-of-pocket expenditure; PSM, Propensity Score Matching; RSBY, Rashtriya Swasthya Bima Yojana.

Table 3.

Impact of other public-funded health insurance (PFHI) schemes on financial risk protection and healthcare utilisation

Outcome Findings
Out of Pocket health Expenditure (OOPE) The PFHI households were less likely to entail OOPE and there was a significant reduction in OOP for these households.20 21 26 All the studies used regression analysis, linear and logit model for analysis. However, using Tobit regression, it was found that there was no effect of PFHI schemes on OOPE of the households.24 For Vajpayee Arogyashree Scheme (VAS), the OOPE was less for the insured households, when compared with uninsured households; however, the two-stage least squares (2sls) regression model reported no association between VAS enrolment and size of OOPE.17 According to Barnes et al,31 reduction in OOPE increased with increase in quantiles of spending. At the 75th quantile, the significant reduction in OOPE for VAS households was Indian National Rupees (INR) 4485, and at 95th quantile, it was INR 23548.19. There was no association between RAS (Andhra Pradesh- AP) enrolment and size of OOPE, by using 2sls regression model.17 By using difference-in-differences (DID), among phase 1 (2007), for Arogyashree enrolled households (AP), significant reduction in per-capital monthly OOP inpatient expenditure and inpatient drug expenditure was observed15; and an increase in inpatient expenditure for RAS households.27 For Rajiv Arogya Shree (RAS) (AP), Katyal et al32 reported a significant increase in both public and private inpatient expenditure, when calculated for the year 2004 and 2012 via DID analysis. Enrolment in CHIS of Tamil Nadu was not significantly associated with size of OOPE.17 For the CHIS operational in Kerala, the mean OOP expenses for inpatient services among insured participants (INR 448.95) was significantly higher than that of the uninsured households (INR 159.93), using Mann-Whitney U test.33 There was one study29 that reported findings on the effect of Pradhan Mantri Jan Arogya Yojana (PMJAY) on OOPE and CHE. It was reported that enrolment in PMJAY did not decrease the OOPE or CHE. There was statistically insignificant more reduction in OOPE for PMJAY enrolled households than other PFHI enrolled households. Statistical significant reduction in log of OOPE was marginally more for PMJAY-enrolled households than other PFHIs. OLS model was used for calculation of the abovementioned continuous outcome variable. As per the Probit model, there was a significant increase in CHE25 and CHE40 of PMJAY-enrolled households. But not for Propensity Score Matching (PSM) model, wherein reduction in OOPE for PMJAY and other PFHI was significant and CHE10 was not associated with PMJAY and PFHI enrolment according to any of the models. The naïve OLS model showed no association between the size of OOPE and enrolment under PMJAY or any PFHI schemes, these findings did not change under propensity score matching and Instrumental Variable (IV) models.
Catastrophic Health Expenditure (CHE) Six studies15 17 21 22 28 31 reported the effect of PFHI schemes on CHE. The PFHIs led to reduction in CHE; however, the effect was very small.21 28 With PSM, the PFHI-enrolled households were 13% less likely to experience CHE10% and 6% less likely to experience CHE25. For the lowest three quintiles, this effect was even less pronounced as only 0.4% of PFHI households and 1% of PFHI households were likely to experience CHE10 and CHE25.21 There was a consistent increase in the catastrophic headcount threshold 40% of non-food expenditure for treatment, outpatient, inpatient and drugs.22 This increase was even reported in a long-term sample, that is, households that have been enrolled in the PFHI schemes for a year. Two studies22 28 used DID for analysis, whereas another used logistic regression21 for analysis. The VAS scheme had a limited effect on CHE; there was no association between enrolment in VAS and CHE25, CHE40 and CHE10, using two-step IV Probit model.17 In another study,31 the percentage of VAS households borrowing money for health reasons in the past 1 year was significantly lower than non-VAS households. According to Barnes et al,31 there was a marginal reduction in % of CHE (both as % of non-food expenditure and total expenditure) for VAS households than non-VAS households. This finding consists of both non-significant and significant results; however, reduction for 40% and 80% of CHE of the total non-food expenditure and 40% of CHE of the total expenditure was a significant finding. Additionally, money spent by VAS households on CHE was significantly lesser than non-VAS households. For RAS in Andhra Pradesh, there was no association between RAS enrolment and CHE25, CHE40, CHE10, by using two-step IV Probit model.17 There was no clear effect of Arogyashree enrolment on CHE.15 Enrolment in CHIS of Tamil Nadu was not significantly associated with CHE25, CHE40 and CHE10.17
Impoverishment The PFHIs had a marginal effect on the reduction of impoverishment of households.21 22 For the overall sample, the PFHIs led to marginal reduction in overall impoverishment and OOP impoverishment,22 for both short-term and long-term samples (more than a year). However, in the state fixed effect model for overall impoverishment, it was reported that the PFHI schemes had no effect on impoverishment. The state-fixed effect model was used because of the assumption that presence of different state health insurance (HI) schemes alter the findings, and this was analysed using regression analysis.22 There was no significant difference seen among Arogyashree-enrolled households in AP, compared with south India and all India sample on impoverishment and impoverishment due to OOPE.15
Utilisation of healthcare Two studies36 37 exclusively assessed impact of VAS on hospital utilisation rate. There was significant increase in utilisation of healthcare for all tertiary care facilities. The quasi-randomised study36 suggested significant increase in healthcare utilisation with respect to accessing healthcare for any symptoms with adjusted difference of 4.96%. The increase in rate of hospitalisation in primary and tertiary care varied from 4.3% to 12.3%, showing the significant change in healthcare utilisation after the implementation of VAS. The quasi-randomised study37 found significant increase in treatment-seeking behaviour for symptoms associated with cardiac conditions than for non-cardiac symptoms. Eligible households for VAS were 4.4% more likely to seek treatment than non-eligible households. The RAS was assessed by Katyal et al.32 The DID analysis suggested increase in healthcare utilisation in Andhra Pradesh and hospitalisation.27 The five studies20 21 24 26 33 assessed the impact of CHIS and other PFHIs and suggested an increase in inpatient and outpatient services. The matched cross-sectional study33 suggests significant increase in overall utilisation of inpatient services and non-significant results with respect to outpatient services among CHIS insured compared with uninsured. The multivariate analysis24 showed increased hospitalisation, hospitalisation for chronic conditions, hospitalisation among all age groups for PFHI households. It was also observed via Tobit regression model, being enrolled in PFHI was not significantly associated with length of stay during hospitalisation, contradictory to people with chronic illness. Though the association of HI with healthcare utilisation was high, inequality in accessing healthcare was higher among the higher economic people. The naive profit model analysis17 that assessed VAS, RAS and CHIS suggested significant increase in hospitalisation in Karnataka after the implementation of VAS. The only study29 that evaluated PMJAY; the data analysis from NSS data based on PSM and naive models on the hospitalisation did not show any significant difference in hospital care utilisation among both enrolled and non-enrolled population for insurance.

OLS, Ordinary Least Squares.

Financial risk protection

Twenty-one studies measured financial risk protection, of which 17 were of strong methodological quality,14–30 3 of moderate methodological quality31–33 and 1 weak methodological quality.34 Nine studies14 16 18 19 23 25 30 32 34 reported the impact of RSBY alone on financial protection. Thirteen studies15 17 20–22 24 26–29 31–33 provided information on the effect of different PFHI schemes (including state insurance schemes) on financial risk protection.

Three high methodological quality studies reported a reduction in in-patient OOPE for RSBY households;14 18 30 however, the findings were not significant. One low methodological study stated that after implementation of RSBY in Maharashtra state, there was a significant increase in in-patient expenditure for both public and private healthcare.32 RSBY did not have a significant effect on in-patient OOPE as a share of total health expenditure, this was reported by two good methodological studies.16 19 The findings for the impact of RSBY on outpatient OOPE were mixed as out of five good methodological quality studies, two studies mentioned that RSBY led to a reduction in outpatient OOPE,14 18 two studies reported that RSBY did not have any impact on the outpatient OOPE16 30 and one study reported that the probability of incurring increased after implementation of RSBY.19 It was reported that the RSBY households were less likely to incur CHE for outpatient care, in-patient care and overall CHE;14 16 19 however, one high methodological quality study reported that there was no impact of RSBY on CHE.25 All these findings were non-significant. The effect of RSBY on impoverishment was not clear as one study reported that RSBY had no effect on impoversihment,16 whereas another study reported an increase in impoverishment among the Above Poverty Line (APL) housholds.25

For other PFHI schemes, the findings for effect of HI schemes on financial risk protection were mixed. Three studies reported a reduction in OOPE for insured households,20 21 26 whereas another study reported no effect on OOPE.24 For households insured under VAS and RAS, no effect of these schemes was seen on OOPE.17 One study reported a reduction in in-patient drug expenditure for RAS households;15 however, other studies reported an increase in-patient household expenditure.27 32 For CHIS in Tamil Nadu, one study reported no association of CHIS with size of OOPE17 and another study reported an increase in OOPE in-patient expenditure.33 It was reported that CHE was reduced for households enrolled under different PFHI schemes,21 28 however, specifically for VAS, one study reported reduction in CHE,31 and another study reported no association between CHE and insurance.17 For CHIS and RAS, no association was reported for CHE and insurance schemes.15 17 Enrolment in PMJAY did not decrease the OOPE or CHE of the enrolled households.29

Due to mixed evidence reported for the impact of PFHI schemes on different financial risk protection parameters, it is not possible to conclude whether these schemes have proven to be beneficial in reducing financial risk of the beneficiaries. A summary of these findings is given in tables 2 and 3.

Access and utilisation of health services

Overall, 16 studies assessed the impact of PFHI on access and utilisation of health services (tables 2 and 3). The HI programmes were RSBY,14 16 23 26 27 30 32 35 VAS36 37 RAS,17 27 32 CHIS20 21 24 26 33 and PMJAY.29 Of the 16 studies, 13 studies14 16 17 20 21 23 24 26 27 29 30 36 37 were assessed to be of strong methodological quality, 32 332 were assessed as of moderate quality and 351 was rated as weak quality. The analysis that was carried out majorly to look at the impact was logistic regression, profit models and other types. The outcomes that were reported include reporting of illness or morbidity, hospitalisation rate, outpatient care and in-patient care utilisation, duration of hospitalisation and utilisation of hospital services. Findings demonstrated increased access, utilisation of healthcare (both in rural and urban areas) and hospitalisation for RSBY.14 16 23 26 27 30 32 35 For other PFHI schemes like VAS, RAS and CHIS, an increase in utilisation of healthcare and in-patient outpatient services was reported.20 21 24 26 32 33 36 37 No significant difference in healthcare utilisation was reported for PMJAY beneficiaries.29

Willingness-to-pay

A high methodological study38 reported WTP for the insurance scheme. A majority (71 per cent) of CGHS beneficiaries considered that their current contribution was low and were willing to contribute more. Only 28 per cent Ex-servicemen Contributory Health Scheme beneficiaries were willing to pay an additional monthly financial contribution for better quality healthcare under the schemes. In comparison to higher employment grade beneficiaries, the CGHS beneficiaries from low employment grade were more willing to pay an additional amount to the existing monthly financial contribution.

Discussion

This review identified and provided information on the impact of different PFHI schemes (operational in India) on healthcare utilisation, WTP and financial risk protection of the beneficiaries. It was observed that although the utilisation of healthcare services via in-patient and outpatient visits increased for insured beneficiaries, there was inconclusive evidence on the impact of different PFHII schemes on financial risk protection.

Our findings report that there is no conclusive evidence to suggest that RSBY reduced the OOPE and CHE or had an impact on financial risk protection. For other PFHIs including the state-sponsored PFHIs, viz., RAS, VAS and CHIS, the findings suggest a mixed impact of these schemes on OOPE, CHE and impoverishment, leading to inconclusive evidence for financial risk protection. Our findings are similar to another systematic review,10 which reported lack of substantial evidence for reduction in OOPE or improvement in financial risk protection by PFHI schemes in India.

For financial risk protection, varying results, from different studies for the same PFHI scheme, resulted in mixed findings for this outcome. Therefore, it was a challenge to pool evidence together and conclude on the impact of PFHI schemes on financial risk protection. One of the plausible reasons for this can be the different study designs and analysis methods used by different studies to assess the impact of financial risk protection. Also, difference in benefits packages and implementation of the scheme by various successive governments might have resulted in these mixed findings for this outcome.

One of the reasons for studies reporting no substantial impact of RSBY on financial risk protection can be the limited insurance cover, for example, INR 30 000 annually under RSBY. As the utilisation of healthcare and hospitalisation under RSBY has increased over the years,10 it is possible that beneficiaries would have been hospitalised for hospital services of more than INR 30 000, leading to additional OOP payment. Hospitalisation for services not offered by the RSBY package and denial of hospitalisation by the empaneled hospitals has also led to an increase in OOPE.39 Another reason for the negligible impact of RSBY in reducing OOPE, as reported in some of the studies, can be the operational or functional error of the scheme. An important component of the scheme is the insurance companies, which are responsible for enrolling beneficiaries, empaneling hospitals, processing claims and reimbursing money. Delayed reimbursement from the insurance companies leads to hospitals asking beneficiaries to buy medicines and other consumables from outside, which results in high OOPE. Additionally, as there is no incentive for the insurance companies to keep a check on the OOPE payments, hospitals might charge patients or deny reimbursement of money on trivial grounds, leading to high OOPE.39 Another reason could be (which is based on personal experience of authors) to get an appointment for the surgery in empenelled hospitals, beneficiaries of the PFHIs usually wait for a longer period of time. Therefore, to avoid the delay in treatment, beneficiaries have to resort to OOP.

The impact of PFHIs (other than RSBY) including the state-sponsored schemes was reported to be mixed and inconclusive, similar to another systematic review that reported lack of substantial evidence of impact on OOPE for PFHI operational in low and middle-income countries (LMICs).40 Additionally, as the functioning of any PFHI scheme depends on the governance, different governance structures and demographic profiles of the states would have led to heterogeneity in results. Poor impact of different PFHIs on financial risk protection (reported in some of the studies) can be attributed to similar factors that affect RSBY, that is, low coverage or benefits offered by the schemes leading to OOPE and CHE even for insured beneficiaries and interference or reimbursement issues due to functioning of insurance companies or ‘trusts’.

This systematic review is the first one that has focused on the impact of PMJAY. Our findings suggest that there is a lack of evidence related to the impact of PMJAY, as only one study reported the poor impact of PMJAY on reduction in OOPE and financial risk protection. The reasons for poor impact can be similar as experienced by the earlier PFHIs schemes that is, problem of ‘double billing’, private providers monopoly and administrative problems. As PMJAY is a relatively new scheme, more evidence is needed to conclude on its impact. Additionally, as the only study included in the review was specifically for the state of Chhattisgarh, availability of evidence from other states is needed to summarise the impact of this scheme.

According to our review, there was an increase in incidence of outpatient and in-patient visits and the utilisation of medical services, however, the healthcare utilisation rate differed between states. The utilisation rate increased both among rural and urban areas for the RSBY and VAS. However, there was one study that assessed healthcare utilisation for PMJAY, and the results reported no significant increase in utilisation of healthcare by the PMJAY enrolees. One plausible reason for these results could be the lack of awareness regarding PMJAY, as it is a relatively new scheme. It is not justified to conclude based on a single study, and at the same time, it is important to look into various other aspects, due to which the results of the PMJAY are insignificant in increasing healthcare utilisation. The healthcare utilisation rate was assessed in terms of reporting morbidity, hospitalisation, utilisation of inpatient and outpatient services.

Overall, majority of the evidence suggests that implementation of PFHI has increased hospitalisation and the utilisation of outpatient care. Our findings are consistent with other systematic reviews,10 40 that is, PFHIs had a positive influence on utilisation of healthcare and hospitalisation in India and other LMICs. Although there is substantial evidence on the impact of PFHI on healthcare utilisation, more rigorous evaluation studies are required to evaluate the impact of health insurance schemes and especially the newly launched PMJAY.

It was reported that although the participants were willing to pay more, the findings for WTP are inconclusive, because the evidence is generated from a single study and the focus of the insurance was limited.

Strengths and limitations

Our review is the first comprehensive review, which has summarised the impact of PFHI schemes in India (including the new scheme of PMJAY under the Ayushman Bharat) on utilisation of healthcare and financial risk protection. One of the limitations of the review is the choice of quality assessment tool used for critical appraisal of included studies due to absence of any other valid tool for secondary data analysis. Responses to some of the questions and individual domain ratings for the EPHPP tool were subjective, although, before finalising the rating, we had a substantial discussion on every domain rating score. Additionally, the tool is used to assess quality of all the quantitative studies, which makes it very vague. Also, due to heterogeneity in methods, population and types of insurances, we could not perform meta-analysis.

Implications of practice and research

Our systematic review has vast policy and practice implications. Since UHC is one of the important components to achieve the sustainable development goals, the role of PFHI becomes even more important in providing equitable and affordable healthcare access to everyone. Financial risk protection is one of the key components of any PFHI scheme that ensures affordable healthcare for everyone. Poor impact of PFHIs on financial risk protection also indicates failure of the PFHI schemes. More research on PFHIs, especially PMJAY and its effect on financial risk protection and healthcare utilisation, are needed as this scheme is an important component of the Ayushman Bharat scheme under the UHC. Similarly, future studies can consider studying the effect of some of the state-funded insurances such as by the government of Goa and West Bengal, which also includes APL households, for which, currently, there is no evidence.

State and central governments could consider including APL households, especially middle-income group under the purview of PMJAY. There should be mechanisms to check corruption in the process of PFHI enrolment and focus could be provided to ease out the administrative difficulties faced by people at the time of claiming insurance. Future research in form of rigorous qualitative research, formative evaluations and process evaluations should be directed towards the reasons for the failure of different PFHIs in improving financial risk protection of the beneficiaries and demand-side and supply-side barriers to implementation and uptake of PFHI. Research reporting reasons for failure of the PFHIs, in improving financial protection, will help in revising and modifying the functioning and implementation of the PFHI schemes for benefit of the consumers.

Conclusion

PFHI schemes, viz, RSBY, VAS, RAS and CHIS have been operational in India since 2008. These schemes have been impactful in increasing healthcare utilisation in terms of outpatient and in-patient care in both rural and urban areas. However, evidence related to financial risk protection was mixed and inconclusive. The new scheme of Pradhan Mantri Jan Arogya Yojana or PMJAY has incorporated administrative and strategic changes, which were based on the shortcomings of earlier PFHIs, viz., provision of a 24-hour inquiry helpline and increased coverage of healthcare services and benefit package. However, limited evidence available on the impact of PMJAY suggests no improvement in healthcare utilisation and financial risk protection of the beneficiaries. Future research on the impact of PMJAY and reasons for failure of other PFHIs on financial risk protection need to be explored.

Supplementary Material

Reviewer comments
Author's manuscript

Acknowledgments

We acknowledge PHRI-RESEARCH grant by Public Health Foundation of India, with the financial support of Department of Science and Technology to partially support authors to carry out this research. We would like to acknowledge the technical support provided by Public Health Evidence South Asia (PHESA), Prasanna School of Public Health (PSPH), Manipal Academy of Higher Education (MAHE), Manipal. We would like to thank Dr. Jisha B Krishnan, Research Assistant, PHESA, PSPH, MAHE, Manipal for supporting us in the title/abstract screening and quality assessment of the included studies and Dr. Vijay Shree Dhyani, Research Assistant, PHESA, PSPH, MAHE, Manipal, for supporting us in title abstract screening.

Footnotes

Twitter: @ParsekarShrads

Contributors: RB is the guarantor of the review. BTV, ER, RB and SSP conceptualised the topic. RV developed search strategy and conducted the search. SSP carried out title/abstract screening and BTV, ER, SSP carried out full text screening. BTV, ER and SSP extracted first round of data extraction, analysed and synthesised the data for the review. Extracted data from all the included studies was cross-checked and independent extraction was done for one third randomly selected studies by BTV, ER, SSP. Quality assessment was performed by BTV, ER, SSP. BTV, ER, SSP drafted the first version of report, which was further edited by RB, BTV, ER, RV, BU and SSP. All the authors read, provided feedback and approved the final report.

Funding: The authors have not declared a specific grant for this research from any funding agency in the public, commercial or not-for-profit sectors.

Competing interests: None declared.

Provenance and peer review: Not commissioned; externally peer reviewed.

Supplemental material: This content has been supplied by the author(s). It has not been vetted by BMJ Publishing Group Limited (BMJ) and may not have been peer-reviewed. Any opinions or recommendations discussed are solely those of the author(s) and are not endorsed by BMJ. BMJ disclaims all liability and responsibility arising from any reliance placed on the content. Where the content includes any translated material, BMJ does not warrant the accuracy and reliability of the translations (including but not limited to local regulations, clinical guidelines, terminology, drug names and drug dosages), and is not responsible for any error and/or omissions arising from translation and adaptation or otherwise.

Data availability statement

Data are available upon reasonable request. All data relevant to the study are included in the article or uploaded as supplementary information. The datasets used and/or analysed during the current study are available from the corresponding author on request.

Ethics statements

Patient consent for publication

Not applicable.

Ethics approval

This study does not involve human participants.

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Supplementary Materials

Supplementary data

bmjopen-2021-050077supp001.pdf (768.9KB, pdf)

Reviewer comments
Author's manuscript

Data Availability Statement

Data are available upon reasonable request. All data relevant to the study are included in the article or uploaded as supplementary information. The datasets used and/or analysed during the current study are available from the corresponding author on request.


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