Bayesian latent class analysis when the reference test is imperfect.

IF 1.9 4区 农林科学 Q2 VETERINARY SCIENCES Revue Scientifique et Technique-Office International Des Epizooties Pub Date : 2021-06-01 DOI:10.20506/rst.40.1.3224
A Cheung, S Dufour, G Jones, P Kostoulas, M A Stevenson, N B Singanallur, S M Firestone
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引用次数: 29

Abstract

Latent class analysis (LCA) has allowed epidemiologists to overcome the practical constraints faced by traditional diagnostic test evaluation methods, which require both a gold standard diagnostic test and ample numbers of appropriate reference samples. Over the past four decades, LCA methods have expanded to allow epidemiologists to evaluate diagnostic tests and estimate true prevalence using imperfect tests over a variety of complex data structures and scenarios, including during the emergence of novel infectious diseases. The objective of this review is to provide an overview of recent developments in LCA methods, as well as a practical guide to applying Bayesian LCA (BLCA) to the evaluation of diagnostic tests. Before conducting a BLCA, the suitability of BLCA for the pathogen of interest, the availability of appropriate samples, the number of diagnostic tests, and the structure of the data should be carefully considered. While formulating the model, the model's structure and specification of informative priors will affect the likelihood that useful inferences can be drawn. With the growing need for advanced analytical methods to evaluate diagnostic tests for newly emerging diseases, LCA is a promising field of research for both the veterinary and medical disciplines.

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参考检验不完善时的贝叶斯潜类分析。
潜在类分析(LCA)使流行病学家克服了传统诊断测试评估方法所面临的实际限制,传统诊断测试既需要金标准诊断测试,又需要大量适当的参考样本。在过去的四十年中,LCA方法已经扩展到允许流行病学家对各种复杂数据结构和情景(包括在新型传染病出现期间)使用不完善的测试来评估诊断测试和估计真实流行率。本综述的目的是概述LCA方法的最新发展,以及将贝叶斯LCA (BLCA)应用于诊断测试评估的实用指南。在进行BLCA之前,应仔细考虑BLCA对目标病原体的适用性、适当样本的可用性、诊断测试的数量和数据结构。在制定模型时,模型的结构和信息先验的规范将影响得出有用推断的可能性。随着越来越需要先进的分析方法来评估新出现疾病的诊断测试,LCA是兽医和医学学科的一个有前途的研究领域。
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来源期刊
CiteScore
2.40
自引率
0.00%
发文量
22
审稿时长
>24 weeks
期刊介绍: The Scientific and Technical Review is a periodical publication containing scientific information that is updated constantly. The Review plays a significant role in fulfilling some of the priority functions of the OIE. This peer-reviewed journal contains in-depth studies devoted to current scientific and technical developments in animal health and veterinary public health worldwide, food safety and animal welfare. The Review benefits from the advice of an Advisory Editorial Board and a Scientific and Technical Committee composed of top scientists from across the globe.
期刊最新文献
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