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利用双重登记系统对先天性畸形比例进行最大似然估计。

Maximum likelihood estimation of the proportion of congenital malformations using double registration systems.

作者信息

Lie R T, Heuch I, Irgens L M

机构信息

University of Bergen, Haukeland Hospital, Norway.

出版信息

Biometrics. 1994 Jun;50(2):433-44.

PMID:8068843
Abstract

Since 1970, epidemiological surveillance of congenital malformations has been carried out in Norway on the basis of data in the nationwide Medical Birth Registry. A separate local registry of cases occurring in the county of Hordaland was established in 1985 to clarify problems inherent in the reporting. This paper deals with double sampling estimators of the prevalence at birth of various malformations, utilizing joint data from two such registries. Particular examples include Down's syndrome, malformations of the central nervous system (CNS), cleft lip or cleft palate, and hypospadias. The methods applied also allow estimation of the probabilities of ascertainment of the different malformations in each registry. Expressions are derived for the variances of the asymptotic distributions of the double sampling estimators, and the possibility of using these values to detect true changes in disease prevalence when ascertainment is uncertain is discussed. The merits of double sampling are assessed comparing the crude estimator based on the Medical Birth Registry alone with the double sampling estimators. Finally, some fully parameterized alternatives to the double sampling models are introduced to evaluate some of the assumptions involved.

摘要

自1970年以来,挪威一直基于全国性的医学出生登记处的数据对先天性畸形进行流行病学监测。1985年,在霍达兰郡设立了一个单独的本地病例登记处,以厘清报告中存在的固有问题。本文利用来自这两个登记处的联合数据,探讨了各种畸形出生患病率的双重抽样估计量。具体例子包括唐氏综合征、中枢神经系统(CNS)畸形、唇裂或腭裂以及尿道下裂。所应用的方法还能估计每个登记处中不同畸形的确诊概率。推导了双重抽样估计量渐近分布方差的表达式,并讨论了在确诊情况不确定时利用这些值检测疾病患病率真实变化的可能性。通过将仅基于医学出生登记处的粗略估计量与双重抽样估计量进行比较,评估了双重抽样的优点。最后,引入了一些双重抽样模型的完全参数化替代方案,以评估其中涉及的一些假设。

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