2011
DOI: 10.1002/bimj.201000148
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Bayesian inference for disease prevalence using negative binomial group testing

Abstract: Group testing, also known as pooled testing, and inverse sampling are both widely used methods of data collection when the goal is to estimate a small proportion. Taking a Bayesian approach, we consider the new problem of estimating disease prevalence from group testing when inverse (negative binomial) sampling is used. Using different distributions to incorporate prior knowledge of disease incidence and different loss functions, we derive closed form expressions for posterior distributions and resulting point… Show more

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Cited by 15 publications
(17 citation statements)
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“…Uncertainty about the period prevalence of schizophrenia was estimated with an informative independent beta prior distribution constructed by directly matching the sensitivity from each scenario to the mean of the beta distribution (Joseph, Gyorkos, & Coupal, 1995 ). When there is a priori knowledge that the prevalence, θ, is small, the class of Beta(1,α) prior distributions is considered more appropriate (Pritchard & Tebbs, 2011 ). Period prevalence rates of 0.20%, 0.17%, and 0.15% were examined in this study, exploring the sensitivity of the model to prior beliefs.…”
Section: Methodsmentioning
confidence: 99%
“…Uncertainty about the period prevalence of schizophrenia was estimated with an informative independent beta prior distribution constructed by directly matching the sensitivity from each scenario to the mean of the beta distribution (Joseph, Gyorkos, & Coupal, 1995 ). When there is a priori knowledge that the prevalence, θ, is small, the class of Beta(1,α) prior distributions is considered more appropriate (Pritchard & Tebbs, 2011 ). Period prevalence rates of 0.20%, 0.17%, and 0.15% were examined in this study, exploring the sensitivity of the model to prior beliefs.…”
Section: Methodsmentioning
confidence: 99%
“…If the testing continues until the r th positive pool is found, where r >1, this implies that we will observe data as Y 1 , Y 2 , Y 3 ,…, Y r . Therefore, the total number of pools tested to find r positive pools is equal to (Pritchard and Tebbs, 2010, 2011). We shall denote the size of the pools collected by k , we assume equal pool size, the prevalence of infection is denoted by p , the number of pools tested to find one positive pool is Y i = y i , and the number of times this experiment is carried out is denoted by r .…”
Section: Methodsmentioning
confidence: 99%
“…Most applications for detecting and estimating a proportion are developed using binomial sampling; however, Pritchard and Tebbs [9] have suggested that inverse (negative) binomial pooled sampling may be preferred when prevalence p is known to be small, when sampling and testing occur sequentially, or when positive pool results require immediate analysis—for example, in the case of many rare diseases. Unlike binomial sampling, in this model the number of positive pools to be observed is fixed a priori , and testing is complete when the rth positive pool is reached [10] .…”
Section: Introductionmentioning
confidence: 99%
“…Recently Pritchard and Tebbs [9] used maximum likelihood as a basis for developing three point and interval estimators for p under inverse pooled sampling; they compared its performance with Katholi's [14] proposed point and interval estimators. Pritchard and Tebbs [10] extended their work to Bayesian point and interval estimation of the prevalence under negative binomial group testing. They used different distributions to incorporate prior knowledge of disease incidence and different loss functions, and derived closed-form expressions for posterior distributions and point and credible interval estimators [10] .…”
Section: Introductionmentioning
confidence: 99%
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