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dc.creatorBagos, P. G.en
dc.date.accessioned2015-11-23T10:23:24Z
dc.date.available2015-11-23T10:23:24Z
dc.date.issued2011
dc.identifier10.1186/1471-2156-12-8
dc.identifier.issn1471-2156
dc.identifier.urihttp://hdl.handle.net/11615/26078
dc.description.abstractBackground: Meta-analysis is a popular methodology in several fields of medical research, including genetic association studies. However, the methods used for meta-analysis of association studies that report haplotypes have not been studied in detail. In this work, methods for performing meta-analysis of haplotype association studies are summarized, compared and presented in a unified framework along with an empirical evaluation of the literature. Results: We present multivariate methods that use summary-based data as well as methods that use binary and count data in a generalized linear mixed model framework (logistic regression, multinomial regression and Poisson regression). The methods presented here avoid the inflation of the type I error rate that could be the result of the traditional approach of comparing a haplotype against the remaining ones, whereas, they can be fitted using standard software. Moreover, formal global tests are presented for assessing the statistical significance of the overall association. Although the methods presented here assume that the haplotypes are directly observed, they can be easily extended to allow for such an uncertainty by weighting the haplotypes by their probability. Conclusions: An empirical evaluation of the published literature and a comparison against the meta-analyses that use single nucleotide polymorphisms, suggests that the studies reporting meta-analysis of haplotypes contain approximately half of the included studies and produce significant results twice more often. We show that this excess of statistically significant results, stems from the sub-optimal method of analysis used and, in approximately half of the cases, the statistical significance is refuted if the data are properly re-analyzed. Illustrative examples of code are given in Stata and it is anticipated that the methods developed in this work will be widely applied in the meta-analysis of haplotype association studies.en
dc.sourceBmc Geneticsen
dc.source.uri<Go to ISI>://WOS:000286728300001
dc.subjectMAXIMUM-LIKELIHOOD-ESTIMATIONen
dc.subjectFAMILY-BASED ASSOCIATIONen
dc.subjectENDOMETRIALen
dc.subjectCANCER-RISKen
dc.subjectLOG-LINEAR MODELSen
dc.subjectGENETIC-ASSOCIATIONen
dc.subjectPOOLED ANALYSISen
dc.subjectUNRELATED INDIVIDUALSen
dc.subjectMOLECULAR ASSOCIATIONen
dc.subjectLOGISTIC-REGRESSIONen
dc.subjectPROSTATE-CANCERen
dc.subjectGenetics & Heredityen
dc.titleMeta-analysis of haplotype-association studies: comparison of methods and empirical evaluation of the literatureen
dc.typejournalArticleen


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