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1.
Stat Methods Med Res ; 29(4): 1167-1180, 2020 04.
Article in English | MEDLINE | ID: mdl-31172883

ABSTRACT

The mechanistic pathways linking genetic polymorphisms and complex disease traits remain largely uncharacterized. At the same time, expansive new transcriptome data resources offer unprecedented opportunity to unravel the mechanistic underpinnings of complex disease associations. Two-stage strategies involving conditioning on a single, penalized regression imputation for transcriptome association analysis have been described for cross-sectional traits. In this manuscript, we propose an alternative two-stage approach based on stochastic regression imputation that additionally incorporates error in the predictive model. Application of a bootstrap procedure offers flexibility when a closed form predictive distribution is not available. The two-stage strategy is also generalized to longitudinally measured traits, using a linear mixed effects modeling framework and a composite test statistic to evaluate whether the genetic component of gene-level expression modifies the biomarker trajectory over time. Simulations studies are performed to evaluate relative performance with respect to type-1 error rates, coverage, estimation error, and power under a range of conditions. A case study is presented to investigate the association between whole blood expression for each of five inflammasome genes with inflammatory response over time after endotoxin challenge.


Subject(s)
Genome-Wide Association Study , Transcriptome , Cross-Sectional Studies , Gene Expression Profiling , Phenotype , Polymorphism, Single Nucleotide/genetics
2.
Stat Med ; 38(8): 1357-1373, 2019 04 15.
Article in English | MEDLINE | ID: mdl-30515859

ABSTRACT

Elucidating the mechanistic underpinnings of genetic associations with complex traits requires formally characterizing and testing associated cell and tissue-specific expression profiles. New opportunities exist to bolster this investigation with the growing numbers of large publicly available omics level data resources. Herein, we describe a fully likelihood-based strategy to leveraging external resources in the setting that expression profiles are partially or fully unobserved in a genetic association study. A general framework is presented to accommodate multiple data types, and strategies for implementation using existing software packages are described. The method is applied to an investigation of the genetics of evoked inflammatory response in cardiovascular disease research. Simulation studies suggest appropriate type-1 error control and power gains compared to single regression imputation, the most commonly applied practice in this setting.


Subject(s)
Gene Expression Profiling/methods , Likelihood Functions , Cardiovascular Diseases/immunology , Genetic Association Studies , Humans , Inflammation/genetics , Multifactorial Inheritance
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