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Analysis of case–control association studies with known risk variants
Author(s) -
Noah Zaitlen,
Bogdan Paşaniuc,
HonCheong So,
Samuela Pollack,
Benjamin F. Voight,
Leif Groop,
David Altshuler,
Brian E. Henderson,
Laurence N. Kolonel,
Loı̈c Le Marchand,
Kevin Waters,
Christopher A. Haiman,
Barbara E. Stranger,
Emmanouil T. Dermitzakis,
Peter Kraft,
Alkes L. Price
Publication year - 2012
Publication title -
bioinformatics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 3.599
H-Index - 390
eISSN - 1367-4811
pISSN - 1367-4803
DOI - 10.1093/bioinformatics/bts259
Subject(s) - false discovery rate , covariate , logistic regression , computer science , multiple comparisons problem , association test , disease , statistics , genetic association , correlation , single nucleotide polymorphism , econometrics , machine learning , biology , medicine , mathematics , genetics , genotype , gene , geometry , pathology
The question of how to best use information from known associated variants when conducting disease association studies has yet to be answered. Some studies compute a marginal P-value for each Several Nucleotide Polymorphisms independently, ignoring previously discovered variants. Other studies include known variants as covariates in logistic regression, but a weakness of this standard conditioning strategy is that it does not account for disease prevalence and non-random ascertainment, which can induce a correlation structure between candidate variants and known associated variants even if the variants lie on different chromosomes. Here, we propose a new conditioning approach, which is based in part on the classical technique of liability threshold modeling. Roughly, this method estimates model parameters for each known variant while accounting for the published disease prevalence from the epidemiological literature.

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