Εμφάνιση απλής εγγραφής

dc.creatorZintzaras, E.en
dc.creatorIoannidis, J. P. A.en
dc.date.accessioned2015-11-23T10:55:11Z
dc.date.available2015-11-23T10:55:11Z
dc.date.issued2005
dc.identifier10.1002/gepi.20048
dc.identifier.issn0741-0395
dc.identifier.urihttp://hdl.handle.net/11615/34951
dc.description.abstractGenome searches for identifying susceptibility loci for the same complex disease often give inconclusive or inconsistent results. Genome Search Meta-analysis (GSMA) is an established non-parametric method to identify genetic regions that rank high on average in terms of linkage statistics (e.g., led scores) across studies. Meta-analysis typically aims not only to obtain average estimates, but also to quantify heterogeneity. However, heterogeneity testing between studies included in GSMA has not been developed yet. Heterogeneity may be produced by differences in study designs, study populations, and chance, and the extent of heterogeneity might influence the conclusions of a meta-analysis. Here, we propose and explore metrics that indicate the extent of heterogeneity for specific loci in GSMA based on Monte Carlo permutation tests. We have also developed software that performs both the GSMA and the heterogeneity testing. To illustrate the concept, the proposed methodology was applied to published data from meta-analyses of rheumatoid arthritis (4 scans) and schizophrenia (20 scans). In the first meta-analysis, we identified 11 bins with statistically low heterogeneity and 8 with statistically high heterogeneity. The respective numbers were 9 and 6 for the schizophrenia meta-analysis. For rheumatoid arthritis bins 6.2 (the HLA region that is a well-documented susceptibility locus for the disease) and 16.3 (16q12.2-q23.1) had both high average ranks and low between-study heterogeneity. For schizophrenia, this was seen for bin 3.2 (3p25.3-p22.1) and heterogeneity was still significantly low after adjusting for its high average rank. Concordance was high between the proposed metrics and between weighted and unweighted analyses. Data from genome searches should be synthesized and interpreted considering both average ranks and heterogeneity between studies. (C) 2004 Wiley-Liss, Inc.en
dc.sourceGenetic Epidemiologyen
dc.source.uri<Go to ISI>://WOS:000226568200003
dc.subjectgenome searchen
dc.subjectgenome-wide scanen
dc.subjectheterogeneityen
dc.subjectmeta-analysisen
dc.subjectGSMAen
dc.subjectMonte Carloen
dc.subjectlinkageen
dc.subjectrheumatoid arthritisen
dc.subjectschizophreniaen
dc.subjectAFFECTED RELATIVE PAIRSen
dc.subjectRHEUMATOID-ARTHRITISen
dc.subjectSUSCEPTIBILITY LOCIen
dc.subjectSCANen
dc.subjectMETAANALYSISen
dc.subjectMULTIPLE-SCLEROSISen
dc.subjectBIPOLAR DISORDERen
dc.subjectWIDE LINKAGEen
dc.subjectAUTOIMMUNE-DISEASESen
dc.subjectSCHIZOPHRENIAen
dc.subjectCOMPLEXen
dc.subjectGenetics & Heredityen
dc.subjectPublic, Environmental & Occupational Healthen
dc.titleHeterogeneity testing in meta-analysis of genome searchesen
dc.typejournalArticleen


Αρχεία σε αυτό το τεκμήριο

ΑρχείαΜέγεθοςΤύποςΠροβολή

Δεν υπάρχουν αρχεία που να σχετίζονται με αυτό το τεκμήριο.

Αυτό το τεκμήριο εμφανίζεται στις ακόλουθες συλλογές

Εμφάνιση απλής εγγραφής