Exact correction factor for estimating the OR in the presence of sparse data with a zero cell in 2 × 2 tables

Author:

Babu Malavika12,Mani Thenmozhi13,Sappani Marimuthu1,George Sebastian4,Bangdiwala Shrikant I.5,Jeyaseelan Lakshmanan6

Affiliation:

1. Department of Biostatistics, Christian Medical College , Vellore , Tamil Nadu , India

2. Centre for Trials Research , Cardiff University , Cardiff , UK

3. Population Health Research Institute , McMaster University , Ontario , Canada

4. Department of Statistical Sciences , Kannur University , Kannur , Kerala , India

5. Department of Health Research Methods, Evidence and Impact , McMaster University Faculty of Health Sciences , Hamilton , ON , Canada

6. College of Medicine , Mohammed Bin Rashid University of Medicine and Health Sciences , Dubai , United Arab Emirates

Abstract

Abstract In case-control studies, odds ratios (OR) are calculated from 2 × 2 tables and in some instances, we observe small cell counts or zero counts in one of the cells. The corrections to calculate the ORs in the presence of empty cells are available in literature. Some of these include Yates continuity correction and Agresti and Coull correction. However, the available methods provided different corrections and the situations where each could be applied are not very apparent. Therefore, the current research proposes an iterative algorithm of estimating an exact (optimum) correction factor for the respective sample size. This was evaluated by simulating data with varying proportions and sample sizes. The estimated correction factor was considered after obtaining the bias, standard error of odds ratio, root mean square error and the coverage probability. Also, we have presented a linear function to identify the exact correction factor using sample size and proportion.

Publisher

Walter de Gruyter GmbH

Subject

Statistics, Probability and Uncertainty,General Medicine,Statistics and Probability

Reference20 articles.

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2. Sangeetha, U, Subbiah, M, Srinivasan, MR. Estimation of confidence intervals for Multinomial proportions of sparse contingency tables using Bayesian methods. Int J Sci Eng Res Pub 2013;3:7.

3. Agresti, A. Introduction to categorical data analysis, 2nd ed. Hoboken: John Wiley & Sons, Inc; 2007:394 p.

4. Sweeting, MJ, Sutton, AJ, Lambert, PC. What to add to nothing? Use and avoidance of continuity corrections in meta-analysis of sparse data. Stat Med 2004;23:1351–75. https://doi.org/10.1002/sim.1761.

5. Yates, F. Contingency tables involving small numbers and the χ 2 test. Supplement to the. J Roy Stat Soc 1934;1:217. https://doi.org/10.2307/2983604.

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