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      Bayesian evaluation of three serological tests for the diagnosis of bovine brucellosis in Bangladesh

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          Abstract

          We evaluated the performance of three serological tests – an immunoglobulin G indirect enzyme linked immunosorbent assay (iELISA), a Rose Bengal test and a slow agglutination test (SAT) – for the diagnosis of bovine brucellosis in Bangladesh. Cattle sera ( n = 1360) sourced from Mymensingh district (MD) and a Government owned dairy farm (GF) were tested in parallel. We used a Bayesian latent class model that adjusted for the conditional dependence among the three tests and assumed constant diagnostic accuracy of the three tests in both populations. The sensitivity and specificity of the three tests varied from 84.6% to 93.7%, respectively. The true prevalences of bovine brucellosis in MD and the GF were 0.6% and 20.4%, respectively. Parallel interpretation of iELISA and SAT yielded the highest negative predictive values: 99.9% in MD and 99.6% in the GF; whereas serial interpretation of both iELISA and SAT produced the highest positive predictive value (PPV): 99.9% in the GF and also high PPV (98.9%) in MD. We recommend the use of both iELISA and SAT together and serial interpretation for culling and parallel interpretation for import decisions. Removal of brucellosis positive cattle will contribute to the control of brucellosis as a public health risk in Bangladesh.

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          Most cited references39

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          Sample size calculation in medical studies

          Optimum sample size is an essential component of any research. The main purpose of the sample size calculation is to determine the number of samples needed to detect significant changes in clinical parameters, treatment effects or associations after data gathering. It is not uncommon for studies to be underpowered and thereby fail to detect the existing treatment effects due to inadequate sample size. In this paper, we explain briefly the basic principles of sample size calculations in medical studies.
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            Estimating the error rates of diagnostic tests.

            S Hui, S Walter (1980)
            It is often required to evaluate the accuracy of a new diagnostic test against a standard test with unknown error rates. If the two tests are applied simultaneously to the same individuals from two populations with different disease prevalences, then assuming conditional independence of the errors of the two tests, the error rates of both tests and the true prevalences in both populations can be estimated by a maximum likelihood procedure. Generalizations to several tests applied in several populations are also possible.
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              Perspectives for the Treatment of Brucellosis in the 21st Century: The Ioannina Recommendations

              The authors provide evidence-based guidance on treating human brucellosis, and discuss the future clinical trials that would help address the controversies surrounding treatment.
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                Author and article information

                Journal
                Epidemiol Infect
                Epidemiol. Infect
                HYG
                Epidemiology and Infection
                Cambridge University Press (Cambridge, UK )
                0950-2688
                1469-4409
                2019
                25 January 2019
                : 147
                : e73
                Affiliations
                [1 ]Department of Medicine, Bangladesh Agricultural University , Mymensingh-2202, Bangladesh
                [2 ]Department of Biomedical Sciences, Institute of Tropical Medicine , Nationalestraat 155, B-2000 Antwerp, Belgium
                [3 ]Research Unit of Epidemiology and Risk Analysis applied to Veterinary Science (UREAR-ULg), Fundamental and Applied Research for Animals & Health (FARAH) Center, Faculty of Veterinary Medicine, University of Liege , Quartier Vallée 2, Avenue de Cureghem 7A, B42, Sart-Tilman Liege, Belgium
                [4 ]Department of Epidemiology and Public Health, Sciensano, Rue Juliette Wytsmanstraat 14, 1050 Brussels, Belgium
                [5 ]Laboratory of Epidemiology, Biostatistics and Animal Health Economics, School of Health Sciences, Faculty of Veterinary Science, University of Thessaly , Karditsa, 224 Trikalon st. 43100, Greece
                [6 ]Department of Applied Mathematics, Computer Science and Statistics, Faculty of Sciences, Ghent University , 281 Krijgslaan, B-9000, Ghent, Belgium
                [7 ]Department of Surgery and Obstetrics, Bangladesh Agricultural University , Mymensingh-2202, Bangladesh
                [8 ]Sydney School of Veterinary Science, The University of Sydney , 425 Werombi Road, Camden, 2570 NSW, Australia
                Author notes
                Author for correspondence: M. P. Ward, E-mail: michael.ward@ 123456sydney.edu.au
                [*]

                The first four authors contributed equally.

                Author information
                http://orcid.org/0000-0002-2867-6892
                http://orcid.org/0000-0002-9921-4986
                Article
                S0950268818003503 00350
                10.1017/S0950268818003503
                6518595
                30869026
                3f41aa39-cd70-44a7-a5d6-c9fda84e5f7c
                © The Author(s) 2019

                This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence ( http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution, and reproduction in any medium, provided the original work is properly cited.

                History
                : 21 May 2018
                : 07 September 2018
                : 01 December 2018
                Page count
                Figures: 1, Tables: 6, Equations: 4, References: 54, Pages: 9
                Categories
                Original Paper

                Public health
                animal pathogens,bayesian analysis,brucellosis,infectious disease epidemiology,veterinary epidemiology

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