Sample size estimation to substantiate freedom from disease for clustered binary data with a specific risk profile

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Standard

Sample size estimation to substantiate freedom from disease for clustered binary data with a specific risk profile. / Kostoulas, P.; Nielsen, Søren Saxmose; Browne, W. J.; Leontides, L.

In: Epidemiology and Infection, Vol. 141, No. 6, 2013, p. 1318-1327.

Research output: Contribution to journalJournal articleResearchpeer-review

Harvard

Kostoulas, P, Nielsen, SS, Browne, WJ & Leontides, L 2013, 'Sample size estimation to substantiate freedom from disease for clustered binary data with a specific risk profile', Epidemiology and Infection, vol. 141, no. 6, pp. 1318-1327. https://doi.org/10.1017/S0950268812001938

APA

Kostoulas, P., Nielsen, S. S., Browne, W. J., & Leontides, L. (2013). Sample size estimation to substantiate freedom from disease for clustered binary data with a specific risk profile. Epidemiology and Infection, 141(6), 1318-1327. https://doi.org/10.1017/S0950268812001938

Vancouver

Kostoulas P, Nielsen SS, Browne WJ, Leontides L. Sample size estimation to substantiate freedom from disease for clustered binary data with a specific risk profile. Epidemiology and Infection. 2013;141(6):1318-1327. https://doi.org/10.1017/S0950268812001938

Author

Kostoulas, P. ; Nielsen, Søren Saxmose ; Browne, W. J. ; Leontides, L. / Sample size estimation to substantiate freedom from disease for clustered binary data with a specific risk profile. In: Epidemiology and Infection. 2013 ; Vol. 141, No. 6. pp. 1318-1327.

Bibtex

@article{09930f98203a4dc6b052fd6bcd1e6808,
title = "Sample size estimation to substantiate freedom from disease for clustered binary data with a specific risk profile",
abstract = "SUMMARY Disease cases are often clustered within herds or generally groups that share common characteristics. Sample size formulae must adjust for the within-cluster correlation of the primary sampling units. Traditionally, the intra-cluster correlation coefficient (ICC), which is an average measure of the data heterogeneity, has been used to modify formulae for individual sample size estimation. However, subgroups of animals sharing common characteristics, may exhibit excessively less or more heterogeneity. Hence, sample size estimates based on the ICC may not achieve the desired precision and power when applied to these groups. We propose the use of the variance partition coefficient (VPC), which measures the clustering of infection/disease for individuals with a common risk profile. Sample size estimates are obtained separately for those groups that exhibit markedly different heterogeneity, thus, optimizing resource allocation. A VPC-based predictive simulation method for sample size estimation to substantiate freedom from disease is presented. To illustrate the benefits of the proposed approach we give two examples with the analysis of data from a risk factor study on Mycobacterium avium subsp. paratuberculosis infection, in Danish dairy cattle and a study on critical control points for Salmonella cross-contamination of pork, in Greek slaughterhouses.",
author = "P. Kostoulas and Nielsen, {S{\o}ren Saxmose} and Browne, {W. J.} and L. Leontides",
year = "2013",
doi = "10.1017/S0950268812001938",
language = "English",
volume = "141",
pages = "1318--1327",
journal = "Epidemiology and Infection",
issn = "0950-2688",
publisher = "Cambridge University Press",
number = "6",

}

RIS

TY - JOUR

T1 - Sample size estimation to substantiate freedom from disease for clustered binary data with a specific risk profile

AU - Kostoulas, P.

AU - Nielsen, Søren Saxmose

AU - Browne, W. J.

AU - Leontides, L.

PY - 2013

Y1 - 2013

N2 - SUMMARY Disease cases are often clustered within herds or generally groups that share common characteristics. Sample size formulae must adjust for the within-cluster correlation of the primary sampling units. Traditionally, the intra-cluster correlation coefficient (ICC), which is an average measure of the data heterogeneity, has been used to modify formulae for individual sample size estimation. However, subgroups of animals sharing common characteristics, may exhibit excessively less or more heterogeneity. Hence, sample size estimates based on the ICC may not achieve the desired precision and power when applied to these groups. We propose the use of the variance partition coefficient (VPC), which measures the clustering of infection/disease for individuals with a common risk profile. Sample size estimates are obtained separately for those groups that exhibit markedly different heterogeneity, thus, optimizing resource allocation. A VPC-based predictive simulation method for sample size estimation to substantiate freedom from disease is presented. To illustrate the benefits of the proposed approach we give two examples with the analysis of data from a risk factor study on Mycobacterium avium subsp. paratuberculosis infection, in Danish dairy cattle and a study on critical control points for Salmonella cross-contamination of pork, in Greek slaughterhouses.

AB - SUMMARY Disease cases are often clustered within herds or generally groups that share common characteristics. Sample size formulae must adjust for the within-cluster correlation of the primary sampling units. Traditionally, the intra-cluster correlation coefficient (ICC), which is an average measure of the data heterogeneity, has been used to modify formulae for individual sample size estimation. However, subgroups of animals sharing common characteristics, may exhibit excessively less or more heterogeneity. Hence, sample size estimates based on the ICC may not achieve the desired precision and power when applied to these groups. We propose the use of the variance partition coefficient (VPC), which measures the clustering of infection/disease for individuals with a common risk profile. Sample size estimates are obtained separately for those groups that exhibit markedly different heterogeneity, thus, optimizing resource allocation. A VPC-based predictive simulation method for sample size estimation to substantiate freedom from disease is presented. To illustrate the benefits of the proposed approach we give two examples with the analysis of data from a risk factor study on Mycobacterium avium subsp. paratuberculosis infection, in Danish dairy cattle and a study on critical control points for Salmonella cross-contamination of pork, in Greek slaughterhouses.

U2 - 10.1017/S0950268812001938

DO - 10.1017/S0950268812001938

M3 - Journal article

C2 - 22954371

VL - 141

SP - 1318

EP - 1327

JO - Epidemiology and Infection

JF - Epidemiology and Infection

SN - 0950-2688

IS - 6

ER -

ID: 45675388