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首页> 外文期刊>Tropical Medicine and International Health: TM and IH >Estimation after classification using lot quality assurance sampling: Corrections for curtailed sampling with application to evaluating polio vaccination campaigns
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Estimation after classification using lot quality assurance sampling: Corrections for curtailed sampling with application to evaluating polio vaccination campaigns

机译:使用批次质量保证抽样进行分类后的估计:减少抽样的更正,用于评估小儿麻痹症疫苗接种活动

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摘要

Objectives: To assess the bias incurred when curtailment of Lot Quality Assurance Sampling (LQAS) is ignored, to present unbiased estimators, to consider the impact of cluster sampling by simulation and to apply our method to published polio immunization data from Nigeria. Methods: We present estimators of coverage when using two kinds of curtailed LQAS strategies: semicurtailed and curtailed. We study the proposed estimators with independent and clustered data using three field-tested LQAS designs for assessing polio vaccination coverage, with samples of size 60 and decision rules of 9, 21 and 33, and compare them to biased maximum likelihood estimators. Lastly, we present estimates of polio vaccination coverage from previously published data in 20 local government authorities (LGAs) from five Nigerian states. Results: Simulations illustrate substantial bias if one ignores the curtailed sampling design. Proposed estimators show no bias. Clustering does not affect the bias of these estimators. Across simulations, standard errors show signs of inflation as clustering increases. Neither sampling strategy nor LQAS design influences estimates of polio vaccination coverage in 20 Nigerian LGAs. When coverage is low, semicurtailed LQAS strategies considerably reduces the sample size required to make a decision. Curtailed LQAS designs further reduce the sample size when coverage is high. Conclusions: Results presented dispel the misconception that curtailed LQAS data are unsuitable for estimation. These findings augment the utility of LQAS as a tool for monitoring vaccination efforts by demonstrating that unbiased estimation using curtailed designs is not only possible but these designs also reduce the sample size.
机译:目的:评估在忽略减少质量质量保证抽样(LQAS)时产生的偏见,提出无偏估计,通过模拟考虑聚类抽样的影响,并将我们的方法应用于尼日利亚已公布的脊髓灰质炎免疫数据。方法:当使用两种缩减的LQAS策略(半缩减和缩减)时,我们提供了覆盖率估计值。我们使用三个经过现场测试的LQAS设计(具有大小为60的样本以及9、21和33的决策规则)对具有独立和聚类数据的拟议估计量进行研究,以评估脊髓灰质炎疫苗接种覆盖率,并将其与偏倚的最大似然估计量进行比较。最后,我们根据来自尼日利亚五个州的20个地方政府机构(LGA)先前发布的数据,提供了脊髓灰质炎疫苗接种覆盖率的估算值。结果:如果人们忽略了缩减的采样设计,则仿真表明存在很大的偏差。提议的估计量没有偏差。聚类不影响这些估计量的偏差。在所有模拟中,标准误差显示出随着聚类增加而膨胀的迹象。抽样策略和LQAS设计都不会影响20个尼日利亚LGAs中脊髓灰质炎疫苗接种覆盖率的估计。当覆盖率较低时,半缩减LQAS策略会大大减少决策所需的样本量。当覆盖率高时,缩减的LQAS设计可进一步减小样本量。结论:提出的结果消除了误解,即缩减的LQAS数据不适合估算。这些发现表明,使用缩减设计进行无偏估计不仅是可能的,而且这些设计还减少了样本量,从而增强了LQAS作为监测疫苗接种工作的工具的实用性。

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