Literature DB >> 15340361

Combining the transmission disequilibrium test and case-control methodology using generalized logistic regression.

Nico J D Nagelkerke1, Barbara Hoebee, Peter Teunis, Tjeerd G Kimman.   

Abstract

To study the role of genetic factors in the etiology, susceptibility, or severity of disease, several methods are available. In a transmission disequilibrium test, genotypes of cases are compared to those of their parents to explore whether a specific allele, or marker, at a locus of interest appears to be transmitted in excess of what is expected on the basis of Mendelian inheritance. Such apparent excess transmission indicates that cases are being selected for that allele, thereby providing evidence that this allele is a risk factor for disease. In case-control studies, genotypes of cases are compared to those of controls from the same population to identify whether a specific allele is associated with disease. If so, either the allele at this locus or one in linkage disequilibrium with it may be causally related to the etiology of the disease. Here, we discuss the problem of combining a transmission disequilibrium test and a case-control comparison, in order to integrate all available information, and thereby increase statistical power. As the same cases are used in both approaches, the two results are not independent. However, parents of cases can be independently compared to controls. Both the issue of testing for a genetic effect and the estimation of relative risks under the multiplicative model using generalized logistic regression are discussed.

Mesh:

Year:  2004        PMID: 15340361     DOI: 10.1038/sj.ejhg.5201255

Source DB:  PubMed          Journal:  Eur J Hum Genet        ISSN: 1018-4813            Impact factor:   4.246


  30 in total

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8.  On combining triads and unrelated subjects data in candidate gene studies: an application to data on testicular cancer.

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9.  On combining family and case-control studies.

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10.  Univariate/multivariate genome-wide association scans using data from families and unrelated samples.

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