Parsing the Effects of Individual SNPs in Candidate Genes with Family Data
Author(s) -
Thomas J. Hoffmann,
Christoph Lange,
Stijn Vansteelandt,
Benjamin A. Raby,
Dawn L. DeMeo,
Edwin K. Silverman,
Scott T. Weiss,
Nan M. Laird
Publication year - 2009
Publication title -
human heredity
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.423
H-Index - 62
eISSN - 1423-0062
pISSN - 0001-5652
DOI - 10.1159/000264447
Subject(s) - set (abstract data type) , population , computer science , population stratification , parsing , single nucleotide polymorphism , biology , artificial intelligence , genetics , gene , medicine , environmental health , genotype , programming language
We introduce a stepwise approach for family-based designs for selecting a set of markers in a gene that are independently associated with the disease. The approach is based on testing the effect of a set of markers conditional on another set of markers. Several likelihood-based approaches have been proposed for special cases, but no model-free based tests have been proposed. We propose two types of tests in a family-based framework that are applicable to arbitrary family structures and completely robust to population stratification. We propose methods for ascertained dichotomous traits and unascertained quantitative traits. We first propose a completely model-free extension of the FBAT main genetic effect test. Then, for power issues, we introduce two model-based tests, one for dichotomous traits and one for continuous traits. Lastly, we utilize these tests to analyze a continuous lung function phenotype as a proxy for asthma in the Childhood Asthma Management Program. The methods are implemented in the free R package fbati.
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