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dc.creatorBagos, P. G.en
dc.creatorDimou, N. L.en
dc.creatorLiakopoulos, T. D.en
dc.creatorNikolopoulos, G. K.en
dc.date.accessioned2015-11-23T10:23:24Z
dc.date.available2015-11-23T10:23:24Z
dc.date.issued2011
dc.identifier10.2202/1544-6115.1640
dc.identifier.issn2194-6302
dc.identifier.urihttp://hdl.handle.net/11615/26081
dc.description.abstractIn many cases in genetic epidemiology, the investigators in an effort to control for different sources of confounding and simultaneously to increase the power perform a family-based and a population-based case-control study within the same population, using the same or largely overlapping, set of cases. Various methods have been proposed for performing a combined analysis, but they all require access to individual data that are difficult to gather in a meta-analysis. Here, we propose a simple and efficient summary-based method for performing the meta-analysis. The key point, contrary to the methods presented earlier that need individual data, is the calculation of the covariance between the study estimates (log-Odds Ratios), using only data derived from the literature in the form of a 2x2 contingency table. Afterwards, the studies can easily be combined either in a two-step procedure using traditional methods for univariate meta-analysis or in a single-step approach using hierarchical models. In any case, the meta-analysis can be performed using standard software and because of the increased sample size the statistical power of the meta-analysis is increased whereas the procedure allows performing several diagnostics (publication bias, cumulative meta-analysis, sensitivity analysis). The method is evaluated on a dataset of 356 Single Nucleotide polymorphisms (SNPs) which were evaluated for their potential association with Respiratory Syncytial Virus Bronchiolitis (RSV) and subsequently is applied in a meta-analysis concerning the association of the 10-Repeat Allele of a VNTR Polymorphism in the 3'-UTR of Dopamine Transporter Gene with Attention Deficit Hyperactivity Disorder (ADHD), as well as in a genome-wide association study for Multiple Sclerosis. Implementation of the method is straightforward and in the Appendix, a Stata program is given for implementing the methods presented here.en
dc.sourceStatistical Applications in Genetics and Molecular Biologyen
dc.source.uri<Go to ISI>://WOS:000290221100003
dc.subjectmeta-analysisen
dc.subjectGWASen
dc.subjectcase-controlen
dc.subjectfamily-baseden
dc.subjectTDTen
dc.subjectHHRRen
dc.subjectrandomen
dc.subjecteffectsen
dc.subjectcovarianceen
dc.subjectGENOME-WIDE ASSOCIATIONen
dc.subjectDEFICIT HYPERACTIVITY DISORDERen
dc.subjectTRANSMISSIONen
dc.subjectDISEQUILIBRIUM TESTen
dc.subjectHARDY-WEINBERG EQUILIBRIUMen
dc.subjectATTENTION-DEFICIT/HYPERACTIVITY DISORDERen
dc.subjectUNMATCHED CASE-CONTROLen
dc.subjectCOMBINING CASE-CONTROLen
dc.subjectPOPULATION STRATIFICATIONen
dc.subjectPUBLICATION BIASen
dc.subjectCANDIDATE-GENEen
dc.subjectBiochemistry & Molecular Biologyen
dc.subjectMathematical & Computational Biologyen
dc.subjectStatistics & Probabilityen
dc.titleMeta-Analysis of Family-Based and Case-Control Genetic Association Studies that Use the Same Casesen
dc.typejournalArticleen


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