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Design and Analysis of Multistage Group Testing Surveys with Application to Detecting and Estimating Prevalence of Transgenic Corn in Mexico.

机译:多阶段小组测试调查的设计和分析,用于检测和估计墨西哥的转基因玉米患病率。

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摘要

Group testing is a cost efficient technique first proposed by Dorfman (1943) to detect soldiers with syphilis during World War II. It is a cost efficient technique since in place of performing a diagnostic test on each individual, the blood of s individuals is pooled and a diagnostic test is applied to each pool. Assuming a perfect diagnostic test, if a pool tests positive, at least one of the s individuals in the pool is positive, while if a pool tests negative, all s individuals in a pool are free of the disease. When a pool tests positive, the blood of each individual is re-tested to identify the individuals with syphilis. However, If the purpose of the analysis is only to estimate prevalence, it is not necessary to re-test the members of a positive group (Remund et al., 2001; Hernandez-Suarez et al., 2008). When a positive individual is rare this method produces a significant saving of time and resources, with reported reductions in the number of required diagnostic tests of more than 80% (Remund et al., 2001).;Group testing has been used to estimate the prevalence of diseases or to classify individual animals, plants or humans (Dodd et al., 2002; Remlinger et al., 2006; Verstraeten et al., 1998; Peck, 2006; Hernandez-Suarez et al., 2008) and has motivated the development of sampling methods and regression models for group testing data. In the case of sampling methods for group testing, only methods for sample size determination under simple random sampling (SRS) have been developed. Group testing regression models have been well developed under SRS and under two stage sampling. However, under two stage sampling these models assume that the sample of clusters (primary sampling units) and individuals (secondary sampling units) are taken under SRS. However, in many applications this assumption is violated since the primary sampling units are selected with probability proportional to size (PPS) as opposed to SRS. An additional problem is that PPS sampling can produce an informative sampling process, where the response variable is correlated with the probability of selection even after conditioning on the model covariates (Pfeffermann, et al., 2006). Informative sampling can produce substantial biases when using traditional estimation methods in either group testing or non-group testing applications.;One recent application of group testing used to estimate the prevalence of rare traits under a complex survey structure was described in Pineyro-Nelson, et al. (2009). They used group testing to estimate the presence of transgenic corn in Mexico. However, due to the lack of an appropriate methodology they analyzed the data ignoring the complex sampling structure with the likely consequences of producing inefficient and possible biased estimates. For this reason, the present work develops sampling designs and regression group testing methods for complex surveys and these methods are used to estimate the prevalence of transgenic corn in Mexico.
机译:团体测试是一种高成本效益的技术,最早由多夫曼(Dorfman,1943年)提出,用于在第二次世界大战期间检测患有梅毒的士兵。这是一种具有成本效益的技术,因为代替了对每个个体执行诊断测试,而是汇集了s个个体的血液并将诊断测试应用于每个集合。假设诊断测试是完美的,如果一个库检测出阳性,则池中至少一个s个体为阳性,而如果一个池检测为阴性,则该池中的所有s个体均无此病。当池测试呈阳性时,将重新测试每个人的血液以识别患有梅毒的人。但是,如果分析的目的只是估计患病率,则不必重新测试阳性组的成员(Remund等,2001; Hernandez-Suarez等,2008)。当很少有阳性个体时,这种方法可以节省大量的时间和资源,据报道所需的诊断检测数量减少了80%以上(Remund等,2001)。疾病的流行或对单个动物,植物或人类进行分类(Dodd等,2002; Remlinger等,2006; Verstraeten等,1998; Peck,2006; Hernandez-Suarez等,2008),并且具有积极性开发用于团体测试数据的抽样方法和回归模型。对于用于集体测试的抽样方法,仅开发了用于在简单随机抽样(SRS)下确定样本量的方法。在SRS和两阶段抽样下,已经很好地开发了群体测试回归模型。但是,在两阶段抽样下,这些模型假设群集(主要抽样单位)和个人(次级抽样单位)的样本是根据SRS进行的。但是,在许多应用中,由于以与SRS相反的概率选择了与大小(PPS)成正比的主要采样单位,因此违反了这一假设。另一个问题是,PPS采样会产生信息量大的采样过程,即使在对模型协变量进行条件处理后,响应变量也与选择的概率相关(Pfeffermann等,2006)。当在群体测试或非群体测试应用中使用传统的估计方法时,信息采样可能会产生很大的偏差。; Pineyro-Nelson等人描述了一种群体测试的最新应用,该应用用于估计复杂调查结构下稀有性状的普遍性。等(2009)。他们使用小组测试来估计墨西哥存在转基因玉米。但是,由于缺乏适当的方法,他们在分析数据时忽略了复杂的抽样结构,从而产生了效率低下和可能产生偏差的估计。因此,本工作开发了用于复杂调查的抽样设计和回归组测试方法,这些方法用于估计墨西哥的转基因玉米患病率。

著录项

  • 作者单位

    The University of Nebraska - Lincoln.;

  • 授予单位 The University of Nebraska - Lincoln.;
  • 学科 Statistics.;Agriculture Agronomy.
  • 学位 Ph.D.
  • 年度 2014
  • 页码 154 p.
  • 总页数 154
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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