A New Method for Correcting Verification Bias in Diagnostic Accuracy Studies Using A Bayesian Approach

Background & Objectives: One of the problems of diagnostic accuracy studies is verification bias. It occurs when standard test performed only for non-representative subsample of study subjects that diagnostic test done for them. In this study we extend a Bayesian method to correct this bias. M...

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Bibliographic Details
Main Authors: M Cheharazi, M Shamsipour, M Norouzi, F Jafari, F Ramazan Ali
Format: Article
Language:fas
Published: Tehran University of Medical Sciences 2012-09-01
Series:مجله اپیدمیولوژی ایران
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Online Access:http://irje.tums.ac.ir/browse.php?a_code=A-10-25-5&slc_lang=en&sid=1
Description
Summary:Background & Objectives: One of the problems of diagnostic accuracy studies is verification bias. It occurs when standard test performed only for non-representative subsample of study subjects that diagnostic test done for them. In this study we extend a Bayesian method to correct this bias. Methods: Patients that have had at least twice repeated failures in cycles IVF ICSI were included in this model. Patients were screened by using an ultrasonography and those with polyps recommended for hysteroscopy. A logistic regression with binomial outcome fit to predict the missing values (false and true negative), sensitivity and specificity. Bayesian methods was applied with informative prior on polyp prevalence. False and true negatives were estimated in Bayesian framework.Results: A total of 238 patients were screened and 47 had polyps. Those with polyps are strongly recommended to undergo hysteroscopy, 47/47 decided to have a hysteroscopy and 37/47 were confirmed to have polyps. None of the 191 patients with no polyps in ultrasonography had hysteroscopy. The false negative was obtained 14 and true negative 177, so sensitivity and specificity was estimated easily after estimating missing data. Sensitivity and specificity were equal to 74% and 94% respectively.Conclusion: Bayesian analyses with informative prior seem to be powerful tools in simulation experimental
ISSN:1735-7489
2228-7507