Literature DB >> 28283045

How equitable is the uptake of conditional cash transfers for maternity care in India? Evidence from the Janani Suraksha Yojana scheme in Odisha and Jharkhand.

Nattawut Thongkong1,2, Ellen van de Poel3, Swati Sarbani Roy4, Shibanand Rath4, Tanja A J Houweling5.   

Abstract

BACKGROUND: In 2005, the Indian Government introduced the Janani Suraksha Yojana (JSY) scheme - a conditional cash transfer program that incentivizes women to deliver in a health facility - in order to reduce maternal and neonatal mortality. Our study aimed to measure and explain socioeconomic inequality in the receipt of JSY benefits.
METHODS: We used prospectively collected data on 3,682 births (in 2009-2010) from a demographic surveillance system in five districts in Jharkhand and Odisha state, India. Linear probability models were used to identify the determinants of receipt of JSY benefits. Poor-rich inequality in the receipt of JSY benefits was measured by a corrected concentration index (CI), and the most important drivers of this inequality were identified using decomposition techniques.
RESULTS: While the majority of women had heard of the scheme (94% in Odisha, 85% in Jharkhand), receipt of JSY benefits was comparatively low (62% in Odisha, 20% in Jharkhand). Receipt of the benefits was highly variable by district, especially in Jharkhand, where 5% of women in Godda district received the benefits, compared with 40% of women in Ranchi district. There were substantial pro-rich inequalities in JSY receipt (CI 0.10, standard deviation (SD) 0.03 in Odisha; CI 0.18, SD 0.02 in Jharkhand) and in the institutional delivery rate (CI 0.16, SD 0.03 in Odisha; CI 0.30, SD 0.02 in Jharkhand). Delivery in a public facility was an important determinant of receipt of JSY benefits and explained a substantial part of the observed poor-rich inequalities in receipt of the benefits. Yet, even among public facility births in Jharkhand, pro-rich inequality in JSY receipt was substantial (CI 0.14, SD 0.05). This was largely explained by district-level differences in wealth and JSY receipt. Conversely, in Odisha, poorer women delivering in a government institution were at least as likely to receive JSY benefits as richer women (CI -0.05, SD 0.03).
CONCLUSION: JSY benefits were not equally distributed, favouring wealthier groups. These inequalities in turn reflected pro-rich inequalities in the institutional delivery. The JSY scheme is currently not sufficient to close the poor-rich gap in institutional delivery rate. Important barriers to institutional delivery remain to be addressed and more support is needed for low performing districts and states.

Entities:  

Keywords:  Conditional cash transfers; India; Janani Suraksha Yojana; Maternity care; Socioeconomic inequality

Mesh:

Year:  2017        PMID: 28283045      PMCID: PMC5345245          DOI: 10.1186/s12939-017-0539-5

Source DB:  PubMed          Journal:  Int J Equity Health        ISSN: 1475-9276


Background

Universal Health Coverage, defined as ensuring that everyone has access to affordable and quality health care, features high on the policy agenda of many low and middle income countries. While the focus on maternal and child health (MCH) in the Millennium Development Goals (MDG) has brought about much progress in the coverage of MCH care, many countries are lagging behind on MDG 4 and 5, in particular with respect to reducing neonatal and maternal mortality [1]. This has much to do with the difficulties of increasing the rate of institutional deliveries, especially among the poorest population groups within countries. Possible barriers for using delivery care can be financial, cultural, or knowledge related. Both demand side programs such as conditional cash transfers, vouchers and user fee removals, and supply side programs such as performance based financing, are increasingly being implemented to increase the coverage of MCH care [2-5]. In India, the bulk of health care is still financed by out-of-pocket payments made at the point of health care use, leading to problems of inaccessibility and lack of financial protection [5]. In India, progress towards MDG4 and 5 has been modest; neonatal mortality has fallen from 44 per 1000 live births in 2001 to 38 per 1000 live births in 2005 and 28 per 1000 live births in 2015. Maternal mortality is still high with 280 per 100,000 and 174 per 100,000 live births in 2005 and 2015, respectively [6]. Data from the latest Demographic Health Survey (2005) indicates that only 40% of women deliver in an institution [7]. Socioeconomic inequalities in MCH have remained high in the past decade [8]. With the aim of reducing neonatal and maternal mortality and reducing out-of-pocket payments associated with institutional delivery, the Indian Government introduced the Janani Suraksha Yojana (JSY) scheme in 2005. JSY is a conditional cash transfer program that financially rewards pregnant women for delivery, and especially for delivery in a facility that is empanelled by JSY. Even though the scheme is centrally sponsored, eligibility criteria vary by state. The poorest (low performing) states target all women, while in high performing (less poor) states, only women holding a Below Poverty Line (BPL) card are eligibility. Some states require that delivery takes place in a public facility, while other states (such as Odisha) also have accredited private providers [9]. Hospital delivery in a government facility should in theory be free of charge. Free transport to facility should also be available for pregnant women and newborns in both states. It is likely however that these services are not always free in practice, and there may still be other costs associated with delivery in a facility. In Jharkhand, during the study period, women also received a small amount of money for home deliveries. With JSY being one of the largest conditional cash transfer programs worldwide [5], a considerable number of studies have sought to establish its impact on the proportion of women delivering in a facility. Most notably, Lim et al. (2010) found JSY to have a large positive impact on the institutional delivery rate (an increase of 43–49% in the probability of women delivering in a facility), leading to important reductions in neonatal mortality (a reduction of 2.3 neonatal deaths per 1,000 live births) [10]. These large effects have, however, been questioned by Powell-Jackson et al. (2015) and Joshi and Sivaram (2014) who suggested that, despite an increase in use of maternity health services, there was no effect of JSY on maternal and neonatal health due to the low quality of care provided in public facilities [11, 12]. Some studies investigating heterogeneity of the effect of JSY on use of maternity care across socioeconomic groups found that poorer, less educated women and those belonging to Scheduled Castes or Tribes (as defined by the Indian Constitution) generally benefit more from JSY [11, 13, 14]. Yet, these studies do not describe and explain socioeconomic inequalities in JSY receipt in detail. In this study, we aimed to measure the magnitude of socioeconomic inequality in the receipt of JSY benefits and explain these inequalities using the decomposition method. We use data that was prospectively collected through a demographic surveillance system in the states of Jharkhand and Odisha.

Methods

Data

We used data from a population surveillance system in five districts in the states of Jharkhand and Odisha, two of the poorest states in India (Godda, Khunti, and Ranchi district in Jharkhand, and Mayurbhanj and Rayagada district in Odisha). Data were only collected in three out of 24 districts in Jharkhand and in two out of 30 districts in Odisha. The surveillance system was set up as part of a scale-up of a community-based women’s group intervention to reduce neonatal mortality and improve maternal and neonatal health. The intervention had proven to be successful in a cluster randomised trial in Jharkhand and Odisha, and had been scaled up to five districts in these states that were not part of the original trial. The ‘scale-up area’ was divided into an intervention area in which women’s groups were set up, and a control area, in which no women’s groups were initially set up (at a later stage, this control area for the scale-up became the site of a new randomised trial with women’s groups facilitated by government community health workers (ASHAs)) [15]. We analysed the data for the control arm of the scale-up area, including births in the period 1 January 2009 (when the surveillance system was set up) until 31 August 2010 (after which women’s groups were set up in the control area as part of the new trial). The control area consisted of 25 clusters in five districts, with a total population of around 35,000 (around 7000 per district). Of the study population, 20,000 were intensively monitored, collecting information on vital outcomes and secondary outcomes including receipt of JSY benefits. For the remaining 15,000 population, only data on vital outcomes and a limited set of secondary outcomes, not including JSY uptake, were collected. We analysed the data for the population that was intensively monitored, which gave us a sample of 3682 births. The main outcome variable of interest reflects whether or not the woman received JSY benefits for her delivery during the study period (1/0) representing the uptake of JSY. Other outcomes include the uptake of at least three antenatal care visits (ANC3) and delivery in a public facility1. Our main socioeconomic variable of interest is economic status, using a wealth index derived from principal component analysis on a range of asset variables as proxy2. Second, we have an indicator for whether the infant’s mother belongs to a Scheduled Tribe or Scheduled Caste (ST/SC), who represent the most socioeconomically disadvantaged groups, recognized by the Constitution of India [16, 17]. Third, we define an indicator for illiteracy reflecting whether or not the infant’s mother can read and write (1/0), as verified by the interviewer. Other covariates include demographics (age, number of previous pregnancies) and geographical characteristics (district indicators).

Measuring socioeconomic inequality

Next to summarizing JSY uptake across wealth quintiles, we also measured socioeconomic inequality in the uptake of JSY using a concentration index, which takes into account inequality across the full socioeconomic distribution. Erreygers [18] has argued that the standard concentration index has some shortcomings when applied to bounded variables, most importantly that the bounds of the index are dependent of the mean of the indicator. We therefore applied the corrected concentration index ( ) which, for our binary outcome of JSY receipt ( , is calculated as: where reflects a woman i’s fractional rank in the socioeconomic distribution. This corrected index shares the same interpretation as the standard concentration index. Negative values imply that JSY uptake is more concentrated among poorer women. If all women, irrespective of their socioeconomic status, are equally likely to receive JSY benefits, the index would equal to zero, and (iii) transferring JSY uptake from a richer to a poorer woman reduces the value of the index [18].

Determinants of JSY uptake

To identify the important determinants of JSY uptake, we ran several linear probability models3. First, we ran a model of JSY uptake (y ) only on the wealth quintile indicators (model 1). Next we added household/mother covariates and district indicators (model 2). Thereafter we added an indicator for whether the child was born in a public facility – one of the most important conditions for eligibility for JSY benefits (model 3). Finally we estimated model 2 only on the sample of births that took place in a government facility (model 4).

Decomposition of socioeconomic inequalities in JSY uptake

Having established the determinants of JSY uptake, we wanted to identify the most important drivers of socioeconomic inequality in JSY uptake. If we assume that JSY uptake can be written as a linear function of K determinants , the corrected concentration index can be written as a weighted average of the concentration indices of the covariates ( : Where is the mean of x, and is the generalized concentration index of the residuals. Equation (3) illustrates that for a covariate to contribute to socioeconomic inequality in JSY uptake it needs to be associated with JSY uptake ( and be unequally distributed across socioeconomic status ( [18, 19]. These decompositions were performed for models (2), (3) and (4) as introduced in the previous section. All analyses were performed in Stata 12. Standard errors are adjusted for clustering on the primary sampling unit.

Results

Summary statistics

Table 1 shows the means of our covariates. The characteristics of women were largely similar in the two states, except for a higher percentage of women from Scheduled Castes or Scheduled Tribes in Odisha (86%) than in Jharkhand (62%). In Jharkhand, there were considerable district-level differences in the characteristics of the study participants. The percentage of women from Scheduled Casts or Scheduled Tribes varied from 49% in Godda to 91% in Kunthi, and the number of previous pregnancies varied from 1.4 in Ranchi to 1.9 in Khunti. Between-district differences in literacy rate were large in both states. Poor-rich differences in the above characteristics were also large in both states. Richer women had on average 1 previous pregnancy, compared with 2 pregnancies among poorer women. Furthermore, the illiteracy rate and percentage belonging to a Scheduled Caste or Scheduled Tribe was substantially lower among the richest quintile in both states. Differences in household wealth between districts were especially large in Jharkhand, and much smaller in Odisha (Fig. 1a and b).
Table 1

Summary statistics of covariates and distribution across districts and socioeconomic status

Age (years)Number of previous pregnanciesScheduled tribe / scheduled caste (%)Illiteracy rate (%)
OdishaJharkhandOdishaJharkhandOdishaJharkhandOdishaJharkhand
Total population24.924.91.81.686626969
By district
 Mayurbhanj23.91.79156
 Rayagada26.11.98183
 Godda23.91.64978
 Khunti26.41.99177
 Ranchi24.91.45654
By wealth group
 Poorest quintile25.525.12.41.893688790
 Second poorest quintile25.525.42.11.988708288
 Middle quintile24.525.41.61.892697877
 Second richest quintile24.424.61.41.589576363
 Richest quintile24.223.71.11.168443029
Concentration index (SD)−0.01 (0.00)−0.01 (0.00)−0.16 (0.02)−0.10 (0.01)−0.17 (0.02)−0.21 (0.02)−0.45 (0.03)−0.49 (0.02)

Notes: Table shows the standard concentration index for continuous variables (age, number of previous pregnancies) and the corrected concentration index for bounded variables (scheduled tribe/scheduled caste, illiteracy rate)

Fig. 1

Distribution of household wealth across districts in Odisha (a) and Jharkhand (b). Notes: Figures show the proportion of children in each wealth quintile in each district, by state

Summary statistics of covariates and distribution across districts and socioeconomic status Notes: Table shows the standard concentration index for continuous variables (age, number of previous pregnancies) and the corrected concentration index for bounded variables (scheduled tribe/scheduled caste, illiteracy rate) Distribution of household wealth across districts in Odisha (a) and Jharkhand (b). Notes: Figures show the proportion of children in each wealth quintile in each district, by state Table 2 shows average awareness and receipt of JSY benefits across the two states and districts within each state, and across wealth quintiles within each state. The vast majority of women had heard of the scheme (94% in Odisha, 85% in Jharkhand). There was some district-level variation in Odisha, where only 62% of women in Khunti had heard of JSY, compared with 97% in Ranchi. While poor-rich inequalities in awareness were small in Odisha, there was some pro-rich inequality in Jharkhand (CI = 0.18, SD 0.02).
Table 2

Summary statistics of JSY-related outcomes and their distribution

Heard (%)Received (%)Total amount (Rs.)
OdishaJharkhandOdishaJharkhandOdishaJharkhand
Total population9485622014021222
By district
 Mayurbhanj95591405
 Rayagada93661400
 Godda875944
 Khunti6213808
 Ranchi97401343
By wealth group
 Poorest quintile9171561113981015
 Second poorest quintile9581621613941101
 Middle quintile9486591513921290
 Second richest quintile9692642514181256
 Richest quintile9692713314081280
Concentration index (SD)0.04 (0.02)0.18 (0.02)0.10 (0.03)0.18 (0.02)0.00 (0.00)0.04 (0.01)
Total sample (N)1345233713452337836470

Notes: Table shows the standard concentration index for continuous variables (amount) and the corrected concentration index for bounded variables (having heard about JSY, having received JSY benefits). Total amount received in Indian Rupee (Rs.) was estimated among women who received JSY benefits

Summary statistics of JSY-related outcomes and their distribution Notes: Table shows the standard concentration index for continuous variables (amount) and the corrected concentration index for bounded variables (having heard about JSY, having received JSY benefits). Total amount received in Indian Rupee (Rs.) was estimated among women who received JSY benefits The percentage of women that received JSY benefits was low in comparison with the percentage of women that had heard of the scheme, especially in Jharkhand. While 62% of women received the benefits in Odisha, only 20% did so in Jharkhand. In the latter state, uptake of JSY benefits ranged from 5% in Godda to 40% in Ranchi, while such regional differences were small in Odisha. In both states, the receipt of JSY benefits was disproportionally concentrated among better-off women (CI: 0.18 in Jharkhand, 0.10 in Odisha). Women who took up the benefits, received about 1400 Rs. on average, but reported amounts were somewhat lower in Jharkhand (1222 Rs.). There was little socioeconomic inequality in the amount received, although in Jharkhand women in the lowest quintile reported receiving on average 265 Rs. less than those in the highest wealth quintile. These lower amounts for Jharkhand are arguably explained by the higher proportion of home births (4% in Jharkhand versus 2% in Odisha) and the small benefits associated with home deliveries. The above patterns of inequality in the receipt of JSY benefits reflect inequalities in uptake of maternity care (Table 3). In Jharkhand, the overall uptake of maternity care was lower, and inequalities between districts and wealth groups were larger, than in Odisha. In Jharkhand, only 26% of women made at least 3 antenatal care visits and 27% of women delivered in a facility. While district level differences were small in Odisha, they were large in in Jharkhand (8–55% for deliveries in government facilities and 17–44% for 3ANC). In both states, the majority of institutional deliveries took place in a public facility. The percentage of private sector deliveries was only substantial for the richest quintile, especially in Jharkhand.
Table 3

Summary statistics of maternity care-related outcomes and their distribution

ANC3 (%)Institutional delivery (%)
OdishaJharkhandAllPublicPrivate
OdishaJharkhandOdishaJharkhandOdishaJharkhand
Total population49267327642097
By district
 Mayurbhanj4475742
 Rayagada54715317
 Godda1017125
 Khunti817125
 Ranchi55443410
By wealth group
 Poorest quintile36116517601364
 Second poorest quintile43157017601493
 Middle quintile49156817621463
 Second richest quintile52337632672795
 Richest quintile6757875373341420
Concentration index (SD)0.25 (0.03)0.37 (0.02)0.16 (0.03)0.30 (0.02)0.11 (0.03)0.19 (0.02)0.05 (0.02)0.11 (0.01)
Total sample (N)13452337134523371345233713452337

Notes: Table shows the corrected concentration index

Summary statistics of maternity care-related outcomes and their distribution Notes: Table shows the corrected concentration index Table 4 presents the regression results of the different models used to identify the determinants of JSY uptake. Model (1) confirms the earlier described patterns of pro-rich receipt of JSY benefits. These poor-rich inequalities were largely explained by district-level differences in JSY uptake and by characteristics of the mother (Model 2). In Jharkhand, the probability of receiving JSY benefits was highest in Ranchi (33 percentage points (PP) higher than in the reference district Godda) and five PP lower for illiterate women than for literate women. In Odisha, there were no statistically significant district level differences in JSY receipt, but women who had had more previous pregnancies were less likely to receive JSY benefits (4 PP).
Table 4

Determinants of JSY uptake

OdishaJharkhand
[1][2][3][4][1][2][3][4]
Household wealth
 Poorest (ref.)
 2nd poorest0.06b 0.040.020.010.04b 0.000.01−0.03
 Middle0.03−0.00−0.01−0.010.04−0.03−0.02−0.00
 2nd richest0.08a 0.040.02−0.020.14a 0.01−0.01−0.01
 Richest0.15c 0.090.04−0.050.22c 0.04a 0.01−0.06
Region
 Mayurbhanj (ref.)
 Rayagada0.070.21c 0.14b
 Godda (ref.)
 Khunti0.080.06a 0.27c
 Ranchi0.33c 0.26c 0.48c
Age0.010.000.01−0.00−0.00−0.00
Previous pregnancy−0.04b −0.01−0.000.000.000.02
ST/SC−0.020.02−0.020.010.02a −0.03
Illiterate−0.03−0.03−0.02−0.05b −0.03a −0.04
Public-institutional delivery0.64c 0.37c
Observations134513441342860233523292315469

Note: Table shows coefficients from linear probability models with JSY uptake as dependent variable. The fourth [4] model is only estimated on the sample of women who delivered in a public facility

asignificant at 10% level, bsignificant at 5% level, csignificant at 1% level

Determinants of JSY uptake Note: Table shows coefficients from linear probability models with JSY uptake as dependent variable. The fourth [4] model is only estimated on the sample of women who delivered in a public facility asignificant at 10% level, bsignificant at 5% level, csignificant at 1% level In Model 3, we added an indicator for government facility delivery to the covariates. As delivery in a facility was a condition for receiving JSY benefits, and there are few private hospitals empanelled in JSY. Delivery in government facility was strongly associated with JSY receipt in both states, although more so in Odisha (64 PP, versus 37 PP in Jharkhand). In this model, poor-rich inequalities in JSY receipt disappeared, but there still was substantial district level heterogeneity. In Odisha, women from Rayagada were 21 PP more likely to receive JSY benefits than women from Mayurbhanj; in Jharkhand, women from Ranchi were 26 PP more likely to receive JSY benefits than women from Godda. Model (4) is similar to model (2) but only included births in government facilities. Within this sample, the probability of receiving JSY benefits only varied by district.

Decomposition of socioeconomic inequality in JSY uptake

Figure 2a and b graphically illustrate the results of the decomposition of poor-rich inequality in JSY receipt as measured by the concentration index, for models (2), (3) and (4) in Table 4 (detailed results are available in the Appendix). The total height of the bar represents the magnitude of poor-rich inequalities (CI of JSY receipt). Note that a variable contributes to the CI both through its association with JSY receipt (Table 4) and the extent to which it is unequally distributed by household wealth (Table 1). As model (2) and model (3) were estimated on the same sample, the bars are equally high. The decomposition using model (4) only included births in a government facility.
Fig. 2

Decomposition of socioeconomic inequality in JSY uptake in Odisha (a) and Jharkhand (b). Notes: The bars in each figure reflect absolute contributions to inequality in JSY uptake using model [2], [3] and [4] in Table 4, respectively. In Odisha, CI of JSY uptake equals 0.10 the full sample (model 2 and 3), and −0.05 for the sample of public deliveries (model 4). In Jharkhand, CI equals 0.18 and 0.14, respectively

Decomposition of socioeconomic inequality in JSY uptake in Odisha (a) and Jharkhand (b). Notes: The bars in each figure reflect absolute contributions to inequality in JSY uptake using model [2], [3] and [4] in Table 4, respectively. In Odisha, CI of JSY uptake equals 0.10 the full sample (model 2 and 3), and −0.05 for the sample of public deliveries (model 4). In Jharkhand, CI equals 0.18 and 0.14, respectively Looking at Fig. 2a for Odisha, we see in the first bar that household wealth was the most important driver (43%) of poor-rich inequality in JSY uptake; the second most important driver was the number of previous pregnancies (34%). The latter contribution was driven by the higher number of previous pregnancies among poorer women and the negative association between the number of pregnancies and JSY uptake. These contributions reduced substantially after adding government facility delivery to the model (second bar). Within the sample of government facility deliveries (third bar), receipt of JSY benefits was pro-poor (CI = −0.05, SD 0.03); poor women were slightly more likely to obtain JSY benefits than richer women. In Jharkhand (Fig. 2b), we get quite a different story, with district level differences explaining most of the poor-rich inequalities in each of the decomposition models (63, 47 and 60% in models (2), (3) and (4) respectively). Even within the sample of government facility deliveries, there was considerable pro-rich inequality in JSY receipt (CI = 0.14 SD 0.05), which was also driven by district level differences. This can be explained by the fact that in Ranchi, the richest district, women were far more likely to obtain JSY benefits than in the other districts. Once these district level differences were taken into account, JSY uptake was more concentrated among the poor, which explains the negative contribution of wealth to the poor-rich inequalities in JSY uptake (−19%).

Discussion

Our analysis shows that inequalities in JSY receipt are substantial in Jharkhand and Odisha, both between wealth groups and between districts within states. In Jharkhand, these inequalities to some extent reflected differences in awareness of the scheme. Nevertheless, the discrepancy between awareness and receipt of benefits was very large in both states, especially in Jharkhand. Poor-rich inequalities in JSY receipt reflected substantial pro-rich inequalities in the institutional delivery rate. Yet, even among government facility deliveries there were considerable pro-rich inequalities in JSY receipt in Jharkhand, which were explained by district level differences in poverty and receipt of JSY benefits. Conversely, in Odisha, poorer women delivering in a government institution were at least as likely to receive JSY benefits as richer women. There are some limitations to this study. First, the data were not collected with the aim of evaluating JSY, so we could not exactly identify whether women had fulfilled all the necessary conditions to be eligible for JSY benefits. We used delivery in a government facility as a proxy, as this is the most important requirement. Second, the data were only collected in a small number of districts in both states. The large district level inequalities in Jharkhand may reflect the fact that data were collected in Ranchi district – the capital district- and two rural districts, while in Odisha the capital city district was not included. Third, our data relates to births in 2009 and 2010. While the implementation of the JSY program may have improved in the mean-time, our paper provides one of the most recent estimates available for JSY uptake across socioeconomic strata. Fourth, given the cross sectional nature of our data, our models only allow the identification of associations between covariates and JSY uptake, and should not be interpreted as causal effects. Our findings correspond with DLHS evidence that the odds of receiving JSY benefits were not always highest among the poor. Yet, the poor-rich inequalities in JSY receipt that we report for Odisha and Jharkhand were much larger than in these national level studies [5, 10]. Our finding of large between-state differences in JSY uptake reflects a broader pattern of a highly variable implementation process and substantial differences in JSY uptake across states in the country. Interestingly, Odisha was the next-highest performing state in terms of JSY receipt in the country, and Jharkhand one of the lowest performing states, based on 2007–2009 DLHS data. We found that even within states, indicators of JSY success were highly variable between districts. Such differences could be due to differences in accessible health infrastructure for facility delivery, but could also highlight differences in state-level government capacity to implement national level policies [10].

Implications

Our findings imply that the JSY scheme is currently not sufficient to close the poor-rich gap in institutional delivery rate. Low uptake is not so much related to low awareness of the scheme per se, but rather with remaining barriers to institutional delivery and, in Jharkhand, to district-level differences in performance of the JSY scheme. This corresponds with findings from another study, which reported that despite receiving JSY benefits, many families still have to borrow money to cover out of pocket expenditures. Furthermore, non-monetary demand and supply side barriers, including quality of care, distance, and a tradition of home delivery remain [5]. The large differences in receipt of JSY and uptake of maternity care between Jharkhand and Odisha and between districts within Jharkhand, suggest that more support is needed for low performing districts and states. Women giving birth in government facilities in Ranchi, the richest district, were much more likely to receive benefits as compared to those giving birth in government facilities in other districts. This might reflect a better administration of the scheme in districts with more resources. It is reassuring, though, that we found that poor women were as likely to receive JSY benefits as richer women when delivering in a government facility, after taking such district-level differences into account. Our findings are in line with results from other evidence looking at the equity in the uptake of cash incentive schemes in neighboring countries of India. A review of the evidence has revealed that the Safe Delivery Incentive Programme in Nepal and the Maternal Health Voucher scheme in Bangladesh failed to target poorer households. The uptake of those schemes was more concentrated among the better-off [20].

Conclusions

JSY benefits were not equally distributed, favouring wealthier groups. These inequalities in turn reflected pro-rich inequalities in the institutional delivery. The JSY scheme is currently not sufficient to close the poor-rich gap in institutional delivery rate. Important barriers to institutional delivery remain to be addressed and more support is needed for low performing district and states.
Table 5

Decomposition of socioeconomic inequality in JSY uptake in Odisha and Jharkhand

Odisha (%)Jharkhand (%)
[2][3][4][2][3][4]
Household wealth42.7815.05−55.0114.682.14−19.10
Region−0.30−0.84−11.5063.1746.9259.83
Age−5.59−2.96−5.792.390.370.63
Previous pregnancy34.3410.312.91−1.28−1.47−3.10
ST/SC2.01−1.865.36−0.86−2.412.51
Illiterate8.4710.6410.9511.897.568.23
Public-insitutional delivery0.0050.270.000.0034.950.00
Error−6.51−8.07−8.485.724.186.60

In Jharkhand, women received JSY payments in installments. However, women received 500 Rs. for home delivery event. This was continued during the data collection period. Number of home delivery might have some influence in reducing the average

  12 in total

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6.  Community mobilisation with women's groups facilitated by Accredited Social Health Activists (ASHAs) to improve maternal and newborn health in underserved areas of Jharkhand and Orissa: study protocol for a cluster-randomised controlled trial.

Authors:  Prasanta Tripathy; Nirmala Nair; Rajendra Mahapatra; Shibanand Rath; Raj Kumar Gope; Suchitra Rath; Aparna Bajpai; Vijay Singh; Vikash Nath; Sarfraz Ali; Alok Kumar Kundu; Dibarkar Choudhury; Sanjib Ghosh; Swati Sarbani; Rajesh Sinha; Christina Pagel; Anthony Costello; Tanja Aj Houweling; Audrey Prost
Journal:  Trials       Date:  2011-07-25       Impact factor: 2.279

7.  Economic inequalities in maternal health care: prenatal care and skilled birth attendance in India, 1992-2006.

Authors:  Praveen Kumar Pathak; Abhishek Singh; S V Subramanian
Journal:  PLoS One       Date:  2010-10-27       Impact factor: 3.240

8.  State and socio-demographic group variation in out-of-pocket expenditure, borrowings and Janani Suraksha Yojana (JSY) programme use for birth deliveries in India.

Authors:  Hanimi Reddy Modugu; Manish Kumar; Ashok Kumar; Christopher Millett
Journal:  BMC Public Health       Date:  2012-12-05       Impact factor: 3.295

9.  Impact of Janani Suraksha Yojana on institutional delivery rate and maternal morbidity and mortality: an observational study in India.

Authors:  Sanjeev K Gupta; Dinesh K Pal; Rajesh Tiwari; Rajesh Garg; Ashish K Shrivastava; Radha Sarawagi; Rajkumar Patil; Lokesh Agarwal; Prashant Gupta; Chandrakant Lahariya
Journal:  J Health Popul Nutr       Date:  2012-12       Impact factor: 2.000

Review 10.  Lessons from sexual and reproductive health voucher program design and function: a comprehensive review.

Authors:  Corinne Grainger; Anna Gorter; Jerry Okal; Ben Bellows
Journal:  Int J Equity Health       Date:  2014-04-29
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  13 in total

1.  Unintended effects of Janani Suraksha Yojana on maternal care in India.

Authors:  Soumendu Sen; Sayantani Chatterjee; Pijush Kanti Khan; Sanjay K Mohanty
Journal:  SSM Popul Health       Date:  2020-06-25

2.  Women's knowledge about the conditional cash incentive program and its association with institutional delivery in Nepal.

Authors:  Shanta Pandey
Journal:  PLoS One       Date:  2018-06-21       Impact factor: 3.752

3.  Evaluating a Conditional Cash Transfer Scheme in a Maternal Health Care Utilization Program Among Rural Pregnant Women in Mysore District, India.

Authors:  Sandra Kiplagat; Makella S Coudray; Kavitha Ravi; Poornima Jayakrishna; Karl Krupp; Anjali Arun; Purnima Madhivanan
Journal:  Womens Health Rep (New Rochelle)       Date:  2020-06-10

4.  Has the Public Health System Provided Adequate Financial Risk Protection for Child Birth Conditions - Evidences From an Eastern Indian State.

Authors:  Sarit Kumar Rout; Sandeep Mahapatra
Journal:  Int J Health Policy Manag       Date:  2019-03-01

5.  Distinct mortality patterns at 0-2 days versus the remaining neonatal period: results from population-based assessment in the Indian state of Bihar.

Authors:  Rakhi Dandona; G Anil Kumar; Debarshi Bhattacharya; Md Akbar; Yamini Atmavilas; Priya Nanda; Lalit Dandona
Journal:  BMC Med       Date:  2019-07-19       Impact factor: 8.775

6.  Regular Antenatal Care Visits Predict Good Knowledge Among Post-natal Mothers Regarding Entitlements of Health Programs in Western India.

Authors:  Mihir P Rupani; Pathik M Patel; Pooja R Meena; Pooja P Patel; Priskila A Patel; Priya K Paragda
Journal:  Int J Health Policy Manag       Date:  2019-08-01

7.  Universalisation versus targeting in maternal and child health care provisioning: Evidence from India.

Authors:  Sohini Paul; Sourabh Paul; K S James
Journal:  SSM Popul Health       Date:  2019-10-17

8.  Linking household and health facility surveys to assess obstetric service availability, readiness and coverage: evidence from 17 low- and middle-income countries.

Authors:  Mufaro Kanyangarara; Victoria B Chou; Andreea A Creanga; Neff Walker
Journal:  J Glob Health       Date:  2018-06       Impact factor: 4.413

9.  Subnational mapping of under-5 and neonatal mortality trends in India: the Global Burden of Disease Study 2000-17.

Authors: 
Journal:  Lancet       Date:  2020-05-12       Impact factor: 79.321

10.  Dietary Intakes, Patterns, and Determinants of Children Under 5 Years from Marginalized Communities in Odisha: A Cross-sectional Study.

Authors:  Shantanu Sharma; Faiyaz Akhtar; Rajesh Kumar Singh; Sunil Mehra
Journal:  J Epidemiol Glob Health       Date:  2020-05-25
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