Optimal sample size for estimating the proportion of transgenic plants using the Dorfman model with a random confidence interval
Montesinos-Lopez, O.A.
Optimal sample size for estimating the proportion of transgenic plants using the Dorfman model with a random confidence interval - Cambridge (United Kingdom) : Cambridge University Press, 2011.
Peer review Peer-review: Yes - Open Access: Yes|http://science.thomsonreuters.com/cgi-bin/jrnlst/jlresults.cgi?PC=MASTER&ISSN=0960-2585
Group testing is a procedure in which groups that contain several units (plants) are analysed without having to inspect individual plants, with the purpose of estimating the prevalence of genetically modified plants (adventitious presence of unwanted transgenic plants, AP) in a population at a low cost, without losing precision. When pool (group) testing is used to estimate the proportion of AP (p), there are several procedures that can be used for computing the confidence interval (CI); however, they usually do not ensure precision in the estimation of p. This research proposes a formula for determining the required number of pools (g), given a pool size (k), for estimating the proportion of AP plants using the Dorfman model. The proposed formula ensures precision in the estimated proportion of AP because it guarantees that the width (W) of the CI will be equal to, or narrower than, the desired width (v), with a probability of g. This probability accounts for the stochastic nature of the sample variance of p. We give examples to show how to use the proposed sample size formula. Simulated data were created and tables are presented showing the different scenarios that a researcher may encounter. The Monte Carlo method was used to study the coverage and the level of assurance achieved by the proposed sample sizes. An R program that reproduces the results in the tables and makes it easy for the researcher to create other scenarios is given in the Appendix.
Text in English
1475-2735 (Online) 0960-2585
https://doi.org/10.1017/S0960258511000055
Transgenic plants
Statistical methods
Sampling
Optimal sample size for estimating the proportion of transgenic plants using the Dorfman model with a random confidence interval - Cambridge (United Kingdom) : Cambridge University Press, 2011.
Peer review Peer-review: Yes - Open Access: Yes|http://science.thomsonreuters.com/cgi-bin/jrnlst/jlresults.cgi?PC=MASTER&ISSN=0960-2585
Group testing is a procedure in which groups that contain several units (plants) are analysed without having to inspect individual plants, with the purpose of estimating the prevalence of genetically modified plants (adventitious presence of unwanted transgenic plants, AP) in a population at a low cost, without losing precision. When pool (group) testing is used to estimate the proportion of AP (p), there are several procedures that can be used for computing the confidence interval (CI); however, they usually do not ensure precision in the estimation of p. This research proposes a formula for determining the required number of pools (g), given a pool size (k), for estimating the proportion of AP plants using the Dorfman model. The proposed formula ensures precision in the estimated proportion of AP because it guarantees that the width (W) of the CI will be equal to, or narrower than, the desired width (v), with a probability of g. This probability accounts for the stochastic nature of the sample variance of p. We give examples to show how to use the proposed sample size formula. Simulated data were created and tables are presented showing the different scenarios that a researcher may encounter. The Monte Carlo method was used to study the coverage and the level of assurance achieved by the proposed sample sizes. An R program that reproduces the results in the tables and makes it easy for the researcher to create other scenarios is given in the Appendix.
Text in English
1475-2735 (Online) 0960-2585
https://doi.org/10.1017/S0960258511000055
Transgenic plants
Statistical methods
Sampling