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Regression models for disease prevalence with diagnostic tests on pools of serum samples.

机译:疾病流行率回归模型,对血清样本库进行诊断测试。

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摘要

Whether the aim is to diagnose individuals or estimate prevalence, many epidemiological studies have demonstrated the successful use of tests on pooled sera. These tests detect whether at least one sample in the pool is positive. Although originally designed to reduce diagnostic costs, testing pools also lowers false positive and negative rates in low prevalence settings and yields more precise prevalence estimates. Current methods are aimed at estimating the average population risk from diagnostic tests on pools. In this article, we extend the original class of risk estimators to adjust for covariates recorded on individual pool members. Maximum likelihood theory provides a flexible estimation method that handles different covariate values in the pool, different pool sizes, and errors in test results. In special cases, software for generalized linear models can be used. Pool design has a strong impact on precision and cost efficiency, with covariate-homogeneous pools carrying the largest amount of information. We perform joint pool and sample size calculations using information from individual contributors to the pool and show that a good design can severely reduce cost and yet increase precision. The methods are illustrated using data from a Kenyan surveillance study of HIV. Compared to individual testing, age-homogeneous, optimal-sized pools of average size seven reduce cost to 44% of the original price with virtually no loss in precision.
机译:无论目的是诊断个体还是估计患病率,许多流行病学研究都证明对合并血清的检测已成功使用。这些测试可检测池中是否至少有一个样本为阳性。尽管最初旨在降低诊断成本,但测试池还可以降低低患病率情况下的假阳性率和阴性率,并得出更精确的患病率估计值。当前的方法旨在通过对池的诊断测试来估计平均人口风险。在本文中,我们扩展了风险估计器的原始类别,以针对记录在单个集合成员上的协变量进行调整。最大似然理论提供了一种灵活的估计方法,该方法可以处理池中不同的协变量值,不同的池大小以及测试结果中的错误。在特殊情况下,可以使用用于广义线性模型的软件。池设计对精度和成本效率有很大影响,协变量同质池承载的信息量最大。我们使用各个贡献者提供的信息进行联合池和样本量计算,结果表明,好的设计可以大大降低成本,但仍可以提高精度。肯尼亚的一项HIV监测研究数据说明了这些方法。与单独测试相比,年龄均匀的最佳大小的平均大小为7的池将成本降低到原始价格的44%,而精度几乎没有损失。

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