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带删失的血清学数据的回归模型。

Regression models for censored serological data.

机构信息

Department of Mathematics and Statistics, The Open University, Milton Keynes MK7 6AA, UK.

Department of Statistics, Modelling and Economics, Health Protection Agency, 61 Colindale Avenue, London NW9 5EQ, UK.

出版信息

J Med Microbiol. 2013 Jan;62(Pt 1):93-100. doi: 10.1099/jmm.0.050062-0. Epub 2012 Sep 20.

Abstract

The impact was assessed of censored serological measurements on regression equations fitted to data from panels of sera tested by different laboratories, for the purpose of standardizing serosurvey results to common units. Several methods that adjust for censoring were compared, such as deletion, simple substitution, multiple imputation and censored regression. Simulations were generated from different scenarios for varying proportions of data censored. The scenarios were based on serological panel comparisons tested by different national laboratories and assays as part of the European Sero-Epidemiology Network 2 project. The results showed that the simple substitution and deletion methods worked reasonably well for low proportions of data censored (<20 %). However, in general, the censored regression method gave estimates closer to the truth than the other methods examined under different scenarios, such as types of equations used and violation of regression assumptions. Interval-censored regression produced the least biased estimates for assay data resulting from dilution series. Censored regression produced the least biased estimates in comparison with the other methods examined. Moreover, the results suggest using interval-censored regression methods for assay data resulting from dilution series.

摘要

为了将血清学调查结果标准化到通用单位,评估了对不同实验室检测的血清学面板数据进行回归方程拟合时,删失的血清学测量值的影响。比较了几种调整删失的方法,如删除、简单替换、多重插补和删失回归。模拟是根据不同比例的数据删失生成的。这些场景基于作为欧洲血清流行病学网络 2 项目一部分的不同国家实验室和检测方法进行的血清学面板比较。结果表明,对于数据删失比例较低(<20%),简单替换和删除方法的效果相当好。然而,一般来说,在不同情况下,如使用的方程类型和回归假设的违反,删失回归方法比其他检查方法更能给出接近真实情况的估计。对于来自稀释系列的检测数据,区间删失回归产生的估计值偏差最小。与其他检查方法相比,删失回归产生的估计值偏差最小。此外,结果表明,对于来自稀释系列的检测数据,应使用区间删失回归方法。

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