Estimating the Underlying Death Rate of a Small Population: A Case Study of Counties in Kansas, Nebraska, North Dakota, and South Dakota

D. Swanson, A. Kposowa, Jack D Baker
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Abstract

While the crude death rate has well-known drawbacks, it remains a population health statistic of interest. One of its drawbacks is found exclusively in the context of a small population, where the number of deaths is subject to a high level of stochastic uncertainty. This can lead to dramatic variations in the crude death rate from year to year even though there is neither a corresponding change in the population nor its mortality regime. A simple method is presented for estimating the “underlying” mortality rates of areas with small populations where the number of deaths is subject to a high level of stochastic uncertainty. The idea is that the underlying rates generated by the estimation method should better reflect the mortality regimes of these small populations. The method is described and illustrated in a case study by estimating crude death rates for the 88 “small population” counties, representing approximately the first quartile of the 317 counties found in four Great Plains states, Kansas, Nebraska, North Dakota, and South Dakota. The method's validity is tested using a synthetic population in the form of a simulated data set generated from a model stable population with a crude death rate of 0.0194, representing Level 23 of the West Family Model Life Table for males. This synthetic population similar to the study population in that it has a slightly negative rate of population growth, with relatively high life expectancy (71.2) and mean age (43.1). The test indicates that the method is capable of producing estimates that represent underlying rates that reflect mortality regimes. Results shown here support the argument that the method can produce reasonable estimates of the underlying crude death rates for small populations subject to high levels of stochastic uncertainty.
估算一小部分人口的潜在死亡率:以堪萨斯州、内布拉斯加州、北达科他州和南达科他州为例
虽然粗死亡率有众所周知的缺点,但它仍然是一项令人感兴趣的人口健康统计数据。它的一个缺点是专门在人口较少的情况下发现的,在这种情况下,死亡人数受到高度随机不确定性的影响。这可能导致每年粗死亡率的巨大变化,即使人口及其死亡率制度都没有相应的变化。本文提出了一种简单的方法,用于估计人口较少地区的"潜在"死亡率,这些地区的死亡人数具有高度的随机不确定性。这个想法是,由估计方法产生的基本比率应该更好地反映这些小人口的死亡率制度。该方法在一个案例研究中进行了描述和说明,通过估计88个“人口少”县的粗死亡率,这些县大约代表了大平原四个州(堪萨斯州、内布拉斯加州、北达科他州和南达科他州)317个县的前四分之一。该方法的有效性测试使用合成种群的模拟数据集形式,该模拟数据集来自一个模型稳定种群,其粗死亡率为0.0194,代表男性West家庭模型生命表的第23级。这个合成人口与研究人口相似,人口增长率略为负,预期寿命(71.2岁)和平均年龄(43.1岁)相对较高。试验表明,该方法能够产生反映死亡率制度的基本比率的估计数。这里显示的结果支持这样的论点,即该方法可以对受高度随机不确定性影响的小群体的潜在粗死亡率产生合理的估计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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