肯尼亚各县医疗保险覆盖范围的小面积估算

Noah Cheruiyot Mutai
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摘要

健康保险在疾病管理、获得高质量医疗保健和实现全民医疗保健方面非常重要。制定政策所需的国家和区域医疗保险覆盖率数据大多来自家庭调查;然而,由于样本量较小,肯尼亚县级等较低行政单位的估计值变化很大。小面积估计使用一个模型将调查和人口普查数据结合起来,以增加有效样本量,从而提供更精确的估计。在这项研究中,我们使用二元M分位数小面积模型估计了肯尼亚各县的医疗保险覆盖范围,该模型适用于15至49岁的女性((n=14{,}730))和男性(((n=12{,{007))。这样做的优点是,我们避免了指定随机效应的分布,并且自动实现了分布鲁棒性。响应变量来源于2014年肯尼亚人口与健康调查以及2009年肯尼亚人口和住房普查的辅助数据。我们使用基于泰勒级数线性化的分析方法来估计均方误差。国家直接健康保险覆盖率估计值为女性和男性分别为\(18%)和\(21%)。根据目前的医疗保险计划,47个县的覆盖率仍然很低。这些县级估算有助于制定分散的政策和筹资模式。
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Small area estimation of health insurance coverage for Kenyan counties

Health insurance is important in disease management, access to quality health care and attaining Universal Health Care. National and regional data on health insurance coverage needed for policy making is mostly obtained from household surveys; however, estimates at lower administrative units like at the county level in Kenya are highly variable due to small sample sizes. Small area estimation combines survey and census data using a model to increases the effective sample size and therefore provides more precise estimates. In this study we estimate the health insurance coverage for Kenyan counties using a binary M‑quantile small area model for women \((n=14{,}730)\) and men \((n=12{,}007)\) aged 15 to 49 years old. This has the advantage that we avoid specifying the distribution of the random effects and distributional robustness is automatically achieved. The response variable is derived from the Kenya Demographic and Health Survey 2014 and auxiliary data from the Kenya Population and Housing Census 2009. We estimate the mean squared error using an analytical approach based on Taylor series linearization. The national direct health insurance coverage estimates are \(18\%\) and \(21\%\) for women and men respectively. With the current health insurance schemes, coverage remains low across the 47 counties. These county-level estimates are helpful in formulating decentralized policies and funding models.

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