| Literature DB >> 29747643 |
Kai Liu1, Chunling Lu2,3,4.
Abstract
BACKGROUND: Ensuring equal access to care and providing financial risk protection are at the center of the global health agenda. While Rwanda has made impressive progress in improving health outcomes, inequalities in medical care utilization and household catastrophic health spending (HCHS) between the impoverished and non-impoverished populations persist. Decomposing inequalities will help us understand the factors contributing to inequalities and design effective policy instruments in reducing inequalities. This study aims to decompose the inequalities in medical care utilization among those reporting illnesses and HCHS between the poverty and non-poverty groups in Rwanda.Entities:
Keywords: Blinder-Oaxaca decomposition; Household catastrophic health spending; Inequality; Medical care utilization; Rwanda
Mesh:
Year: 2018 PMID: 29747643 PMCID: PMC5946429 DOI: 10.1186/s12939-018-0769-1
Source DB: PubMed Journal: Int J Equity Health ISSN: 1475-9276
Fig. 1Decomposing the sources of inequality between poverty and non-poverty groups: an example of medical care utilization. The numerical size of the boxes of the five sub-segments of IOS is not proportional to their calculated size derived from the study findings
Fig. 2Absolute inequalities in medical care utilization and HCHS: Rwanda, 2005, 2010
Estimated relative contribution of covariates to inequalities in medical care utilization and HCHS by poverty status using BO decomposition method: Rwanda, 2005, 2010
| Inequality in medical care utilization | Inequality in HCHS | |||
|---|---|---|---|---|
| 2005 ( | 2010 ( | 2005 ( | 2010 ( | |
| Relative contribution (%) | Relative contribution (%) | Relative contribution (%) | Relative contribution (%) | |
| Compositional effect | ||||
| Total | 23.44*** | 39.27*** | 21.18*** | 17.33** |
| Female | 0.02** | 0.02** | −1.22** | 1.15*** |
| Head: no education | 1.86 | 1.24 | 3.96* | 1.75 |
| Rural | −1.57 | −2.22 | 5.18 | −6.11* |
| Age group < 30 | 0.91*** | 0.35*** | 1.88 | −1.46 |
| Age group 30–50 | 0.10 | 0.27 | 1.97** | 1.30 |
| Age group > 50 | −0.68** | −0.66*** | 0.05 | 0.35 |
| Having severe illnesses | −7.13*** | −2.78*** | ||
| Household having children | 7.54*** | 15.59*** | ||
| Household having disabled people | 1.14*** | 1.81* | ||
| Household size | −3.69*** | −4.94*** | −8.87*** | −6.98 |
| Health insurance | 25.17*** | 45.50*** | 8.45*** | 10.36*** |
| Travel time to health center (> 0.5 h) | 8.36*** | 2.56** | 1.21 | −0.44 |
| Response effect | ||||
| Total | 76.56*** | 60.71*** | 78.82*** | 82.67*** |
| Female | 11.91 | 6.58 | −3.03 | 6.62 |
| Head: no education | −7.03 | −4.39 | −3.37 | 5.61 |
| Rural | −30.18 | −20.24 | 27.72** | 1.19 |
| Age group < 30 | −3.81 | −5.22 | −1.52 | 5.54 |
| Age group 30–50 | 0.23 | 3.17 | 6.70 | 1.30 |
| Age group > 50 | 0.65 | −1.51 | −3.37 | −8.55 |
| Having severe illnesses | −11.66 | −6.85 | ||
| Household having children | −12.89 | −9.01 | ||
| Household having disabled people | 3.41 | −5.01 | ||
| Household size | −39.03* | −32.98* | 32.17 | 87.30*** |
| Health insurance | −16.43* | −33.65*** | 13.20* | 15.28 |
| Travel time to health center (> 0.5 h) | 14.95 | −6.47 | − 1.49 | 3.12 |
| Constant | 156.95*** | 162.30*** | 21.29 | −20.71 |
*: statistically significant at the 0.10 level; **: statistically significant at the 0.05 level; ***: statistically significant at the 0.01 level
Fig. 3Decomposing absolute inequality in medical care utilization and HCHS by poverty status: Rwanda, 2005, 2010. “-Composition” represents compositional effect, and “-Response” represents response effect; the numbers in the bracket are absolute contributions to the inequalities, with the first number being in 2005 and the second in 2010; a negative value of the compositional effect for a covariate indicates the expected increase in the poverty-non-poverty inequality gap if the poverty group was equal to the non-poverty group in the distribution of the covariate; and a negative value of the response effect for a covariate indicates the expected increase in the poverty-non-poverty inequality gap if the poverty group had the same returns or risks to the covariate as did the non-poverty group