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卢旺达医疗保险参保的障碍:一项全国性横断面调查。

Barriers to health insurance uptake in Rwanda: a nationwide cross-sectional survey.

作者信息

Muremyi Roger, Migisha Leon Benoit, Munezero Marx Louis Pasteur, Mumararungu Shallon, Niyigena Ebenezer, Mpabuka Gasafari Willy, Batamuliza Jennifer, Ruranga Charles

机构信息

Department of Applied Statistics, University of Rwanda, Kigali, Rwanda.

Department of Information Technology, University of Rwanda, Kigali, Rwanda.

出版信息

Pan Afr Med J. 2025 May 8;51:8. doi: 10.11604/pamj.2025.51.8.45920. eCollection 2025.

Abstract

INTRODUCTION

achieving universal health coverage by 2030 is a key objective for Rwanda, ensuring equitable access to health insurance. However, approximately 10% of the population remains uninsured. This study aims to identify socio-economic and demographic factors associated with health insurance uptake in Rwanda.

METHODS

we analyzed secondary data from the Fifth Integrated Household Living Conditions Survey (EICV 5), comprising 14,580 households. Multivariable logistic regression was performed to assess factors associated with health insurance uptake. Descriptive statistics were used to summarize the characteristics of the surveyed households.

RESULTS

the study population had a mean household size of 4.8 individuals, with 62% residing in rural areas. Among household heads, 56% were male, 44% were female, 38% had no formal education, and 64% were employed. Multivariable logistic regression analysis revealed that household heads in the highest wealth quantile had higher odds of being insured (aOR: 3.82, 95% CI: 3.37-4.33; p < 0.001) compared to those in the lowest quintile. Those with no formal education had lower odds of being insured (aOR: 0.57, 95% CI: 0.46-0.71; p < 0.001) than those with higher education. Residents of Kigali City had greater odds of being insured (aOR: 1.52, 95% CI: 1.31-1.75; p < 0.001) compared to residents in other regions. Females were more likely to be insured than males (aOR: 1.21, 95% CI: 1.11-1.34; p < 0.001), while single household heads had lower odds of insurance uptake (aOR: 0.61, 95% CI: 0.60-0.74; p < 0.001) compared to married counterparts. Younger individuals were less likely to be insured (aOR: 0.32, 95% CI: 0.29-0.49; p < 0.001) compared to older adults.

CONCLUSION

health insurance uptake in Rwanda is significantly influenced by socio-economic and demographic factors, including wealth status, education level, geographic location, gender, marital status, and age. Targeted interventions should prioritize vulnerable groups, such as low-income and less-educated individuals, young adults, and rural residents, to improve insurance coverage.

摘要

引言

到2030年实现全民健康覆盖是卢旺达的一项关键目标,确保公平获得医疗保险。然而,约10%的人口仍未参保。本研究旨在确定卢旺达与医疗保险参保情况相关的社会经济和人口因素。

方法

我们分析了来自第五次综合家庭生活条件调查(EICV 5)的二手数据,该调查涵盖14,580户家庭。进行多变量逻辑回归以评估与医疗保险参保情况相关的因素。描述性统计用于总结被调查家庭的特征。

结果

研究人群的家庭平均规模为4.8人,62%居住在农村地区。在户主中,56%为男性,44%为女性,38%未接受过正规教育,64%有工作。多变量逻辑回归分析显示,与最贫困五分位数的户主相比,最富有五分位数的户主参保几率更高(调整后比值比:3.82,95%置信区间:3.37 - 4.33;p < 0.001)。未接受过正规教育的人参保几率低于受过高等教育的人(调整后比值比:0.57,95%置信区间:0.46 - 0.71;p < 0.001)。基加利市的居民参保几率高于其他地区的居民(调整后比值比:1.52,95%置信区间:1.31 - 1.75;p < 0.001)。女性比男性更有可能参保(调整后比值比:1.21,95%置信区间:1.11 - 1.34;p < 0.001),而单身户主的参保几率低于已婚户主(调整后比值比:0.61,95%置信区间:0.60 - 0.74;p < 0.001)。与老年人相比,年轻人参保的可能性较小(调整后比值比:0.32,95%置信区间:0.29 - 0.49;p < 0.001)。

结论

卢旺达的医疗保险参保情况受到社会经济和人口因素的显著影响,包括财富状况、教育水平、地理位置、性别、婚姻状况和年龄。有针对性的干预措施应优先考虑弱势群体,如低收入和受教育程度较低的个人、年轻人和农村居民,以提高保险覆盖率。

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