首页> 外文期刊>The Annals of applied statistics >ESTIMATION AND EXTRAPOLATION OF TIME TRENDS IN REGISTRY DATA—BORROWING STRENGTH FROM RELATED POPULATIONS
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ESTIMATION AND EXTRAPOLATION OF TIME TRENDS IN REGISTRY DATA—BORROWING STRENGTH FROM RELATED POPULATIONS

机译:注册数据中时间趋势的估计和外推-相关人口的借贷强度

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To analyze and project age-specific mortality or morbidity rates ageperiod-cohort (APC) models are very popular. Bayesian approaches facilitate estimation and improve predictions by assigning smoothing priors to age, period and cohort effects. Adjustments for overdispersion are straightforward using additional random effects. When rates are further stratified, for example, by countries, multivariate APC models can be used, where differences of stratum-specific effects are interpretable as log relative risks. Here, we incorporate correlated stratum-specific smoothing priors and correlated overdispersion parameters into the multivariate APC model, and use Markov chain Monte Carlo and integrated nested Laplace approximations for inference. Compared to a model without correlation, the new approach may lead to more precise relative risk estimates, as shown in an application to chronic obstructive pulmonary disease mortality in three regions of England and Wales. Furthermore, the imputation of missing data for one particular stratum may be improved, since the new approach takes advantage of the remaining strata if the corresponding observations are available there. This is shown in an application to female mortality in Denmark, Sweden and Norway from the 20th century, where we treat for each country in turn either the first or second half of the observations as missing and then impute the omitted data. The projections are compared to those obtained from a univariate APC model and an extended Lee—Carter demographic forecasting approach using the proper Dawid—Sebastiani scoring rule.
机译:为了分析和预测特定年龄的死亡率或发病率,年龄组(APC)模型非常受欢迎。贝叶斯方法通过为年龄,时期和队列效应分配平滑先验,从而有助于估计并改进预测。使用其他随机效果,可以直接调整过度分散。例如,当按国家进一步对费率进行分层时,可以使用多元APC模型,其中特定于层次的效应的差异可以解释为对数相对风险。在这里,我们将相关的特定于层的平滑先验和相关的超分散参数合并到多元APC模型中,并使用马尔可夫链蒙特卡罗和集成的嵌套拉普拉斯近似进行推理。与没有相关性的模型相比,新方法可能会导致更精确的相对风险估计,如在英格兰和威尔士三个地区对慢性阻塞性肺疾病死亡率的应用中所示。此外,可以改善针对一个特定层的缺失数据的插补,因为如果在那里有相应的观测值,则新方法将利用剩余层的优势。这在20世纪丹麦,瑞典和挪威对女性死亡率的应用中得到了证明,在这些应用中,我们依次针对每个国家/地区将观测值的前半部分或后半部分视作缺失,然后估算出省略的数据。使用适当的Dawid-Sebastiani评分规则,将预测与从单变量APC模型和扩展的Lee-Carter人口预测方法获得的预测进行比较。

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