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Full-Text Articles in Life Sciences

Trio Logic Regression - Detection Of Snp - Snp Interactions In Case-Parent Trios, Qing Li, Thomas A. Louis, M. Daniele Fallin, Ingo Ruczinski Jul 2009

Trio Logic Regression - Detection Of Snp - Snp Interactions In Case-Parent Trios, Qing Li, Thomas A. Louis, M. Daniele Fallin, Ingo Ruczinski

Johns Hopkins University, Dept. of Biostatistics Working Papers

Statistical approaches to evaluate higher order SNP-SNP and SNP-environment interactions are critical in genetic association studies, as susceptibility to complex disease is likely to be related to the interaction of multiple SNPs and environmental factors. Logic regression (Kooperberg et al., 2001; Ruczinski et al., 2003) is one such approach, where interactions between SNPs and environmental variables are assessed in a regression framework, and interactions become part of the model search space. In this manuscript we extend the logic regression methodology, originally developed for cohort and case-control studies, for studies of trios with affected probands. Trio logic regression accounts for the …


Fitting Ace Structural Equation Models To Case-Control Family Data, Kristin N. Javaras, James I. Hudson, Nan M. Laird Mar 2009

Fitting Ace Structural Equation Models To Case-Control Family Data, Kristin N. Javaras, James I. Hudson, Nan M. Laird

COBRA Preprint Series

Investigators interested in whether a disease aggregates in families often collect case-control family data, which consist of disease status and covariate information for families selected via case or control probands. Here, we focus on the use of case-control family data to investigate the relative contributions to the disease of additive genetic effects (A), shared family environment (C), and unique environment (E). To this end, we describe a ACE model for binary family data and then introduce an approach to fitting the model to case-control family data. The structural equation model, which has been described previously, combines a general-family extension of …


Associaton Tests That Accommodate Genotyping Errors, Ingo Ruczinski, Qing Li, Benilton Carvalho, M. Daniele Fallin, Rafael A. Irizarry, Thomas A. Louis Jan 2009

Associaton Tests That Accommodate Genotyping Errors, Ingo Ruczinski, Qing Li, Benilton Carvalho, M. Daniele Fallin, Rafael A. Irizarry, Thomas A. Louis

Johns Hopkins University, Dept. of Biostatistics Working Papers

High-throughput SNP arrays provide estimates of genotypes for up to one million loci, often used in genome-wide association studies. While these estimates are typically very accurate, genotyping errors do occur, which can influence in particular the most extreme test statistics and p-values. Estimates for the genotype uncertainties are also available, although typically ignored. In this manuscript, we develop a framework to incorporate these genotype uncertainties in case-control studies for any genetic model. We verify that using the assumption of a “local alternative” in the score test is very reasonable for effect sizes typically seen in SNP association studies, and show …


Sparse Linear Discriminant Analysis For Simultaneous Testing For The Significance Of A Gene Set/Pathway And Gene Selection, Michael C. Wu, Lingson Zhang, Zhaoxi Wang, David C. Christiani, Xihong Lin Jan 2009

Sparse Linear Discriminant Analysis For Simultaneous Testing For The Significance Of A Gene Set/Pathway And Gene Selection, Michael C. Wu, Lingson Zhang, Zhaoxi Wang, David C. Christiani, Xihong Lin

Harvard University Biostatistics Working Paper Series

No abstract provided.


A Hidden Markov Random Field Model For Genome-Wide Association Studies, Hongzhe Li, Zhi Wei, J M. Maris Jan 2009

A Hidden Markov Random Field Model For Genome-Wide Association Studies, Hongzhe Li, Zhi Wei, J M. Maris

UPenn Biostatistics Working Papers

Genome-wide association studies (GWAS) are increasingly utilized for identifying novel susceptible genetic variants for complex traits, but there is little consensus on analysis methods for such data. Most commonly used methods include single SNP analysis or haplotype analysis with Bonferroni correction for multiple comparisons. Since the SNPs in typical GWAS are often in linkage disequilibrium (LD), at least locally, Bonferonni correction of multiple comparisons often leads to conservative error control and therefore lower statistical power. In this paper, we propose a hidden Markov random field model (HMRF) for GWAS analysis based on a weighted LD graph built from the prior …