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Featured researches published by Anna L. Tyler.
PLOS Computational Biology | 2013
Anna L. Tyler; Wei Lu; Justin J. Hendrick; Vivek M. Philip; Gregory W. Carter
Contemporary genetic studies are revealing the genetic complexity of many traits in humans and model organisms. Two hallmarks of this complexity are epistasis, meaning gene-gene interaction, and pleiotropy, in which one gene affects multiple phenotypes. Understanding the genetic architecture of complex traits requires addressing these phenomena, but interpreting the biological significance of epistasis and pleiotropy is often difficult. While epistasis reveals dependencies between genetic variants, it is often unclear how the activity of one variant is specifically modifying the other. Epistasis found in one phenotypic context may disappear in another context, rendering the genetic interaction ambiguous. Pleiotropy can suggest either redundant phenotype measures or gene variants that affect multiple biological processes. Here we present an R package, R/cape, which addresses these interpretation ambiguities by implementing a novel method to generate predictive and interpretable genetic networks that influence quantitative phenotypes. R/cape integrates information from multiple related phenotypes to constrain models of epistasis, thereby enhancing the detection of interactions that simultaneously describe all phenotypes. The networks inferred by R/cape are readily interpretable in terms of directed influences that indicate suppressive and enhancing effects of individual genetic variants on other variants, which in turn account for the variance in quantitative traits. We demonstrate the utility of R/cape by analyzing a mouse backcross, thereby discovering novel epistatic interactions influencing phenotypes related to obesity and diabetes. R/cape is an easy-to-use, platform-independent R package and can be applied to data from both genetic screens and a variety of segregating populations including backcrosses, intercrosses, and natural populations. The package is freely available under the GPL-3 license at http://cran.r-project.org/web/packages/cape.
Genetics | 2017
Anna L. Tyler; Bo Ji; Daniel M. Gatti; Steven C. Munger; Gary A. Churchill; Karen L. Svenson; Gregory W. Carter
In this study, Tyler et al. analyzed the complex genetic architecture of metabolic disease-related traits using the Diversity Outbred mouse population Genetic studies of multidimensional phenotypes can potentially link genetic variation, gene expression, and physiological data to create multi-scale models of complex traits. The challenge of reducing these data to specific hypotheses has become increasingly acute with the advent of genome-scale data resources. Multi-parent populations derived from model organisms provide a resource for developing methods to understand this complexity. In this study, we simultaneously modeled body composition, serum biomarkers, and liver transcript abundances from 474 Diversity Outbred mice. This population contained both sexes and two dietary cohorts. Transcript data were reduced to functional gene modules with weighted gene coexpression network analysis (WGCNA), which were used as summary phenotypes representing enriched biological processes. These module phenotypes were jointly analyzed with body composition and serum biomarkers in a combined analysis of pleiotropy and epistasis (CAPE), which inferred networks of epistatic interactions between quantitative trait loci that affect one or more traits. This network frequently mapped interactions between alleles of different ancestries, providing evidence of both genetic synergy and redundancy between haplotypes. Furthermore, a number of loci interacted with sex and diet to yield sex-specific genetic effects and alleles that potentially protect individuals from the effects of a high-fat diet. Although the epistatic interactions explained small amounts of trait variance, the combination of directional interactions, allelic specificity, and high genomic resolution provided context to generate hypotheses for the roles of specific genes in complex traits. Our approach moves beyond the cataloging of single loci to infer genetic networks that map genetic etiology by simultaneously modeling all phenotypes.
Briefings in Bioinformatics | 2016
Anna L. Tyler; Dana C. Crawford; Sarah A. Pendergrass
The impact of a single genetic locus on multiple phenotypes, or pleiotropy, is an important area of research. Biological systems are dynamic complex networks, and these networks exist within and between cells. In humans, the consideration of multiple phenotypes such as physiological traits, clinical outcomes and drug response, in the context of genetic variation, can provide ways of developing a more complete understanding of the complex relationships between genetic architecture and how biological systems function in health and disease. In this article, we describe recent studies exploring the relationships between genetic loci and more than one phenotype. We also cover methodological developments incorporating pleiotropy applied to model organisms as well as humans, and discuss how stepping beyond the analysis of a single phenotype leads to a deeper understanding of complex genetic architecture.
Genes, Brain and Behavior | 2014
Anna L. Tyler; Tracy C. McGarr; Barbara Beyer; Wayne N. Frankel; Gregory W. Carter
Absence epilepsy (AE) is a complex, heritable disease characterized by a brief disruption of normal behavior and accompanying spike‐wave discharges (SWD) on the electroencephalogram. Only a handful of genes has been definitively associated with AE in humans and rodent models. Most studies suggest that genetic interactions play a large role in the etiology and severity of AE, but mapping and understanding their architecture remains a challenge, requiring new computational approaches. Here we use combined analysis of pleiotropy and epistasis (CAPE) to detect and interpret genetic interactions in a meta‐population derived from three C3H × B6J strain crosses, each of which is fixed for a different SWD‐causing mutation. Although each mutation causes SWD through a different molecular mechanism, the phenotypes caused by each mutation are exacerbated on the C3H genetic background compared with B6J, suggesting common modifiers. By combining information across two phenotypic measures – SWD duration and frequency – CAPE showed a large, directed genetic network consisting of suppressive and enhancing interactions between loci on 10 chromosomes. These results illustrate the power of CAPE in identifying novel modifier loci and interactions in a complex neurological disease, toward a more comprehensive view of its underlying genetic architecture.
PLOS Genetics | 2016
Anna L. Tyler; Leah Rae Donahue; Gary A. Churchill; Gregory W. Carter
The extent and strength of epistasis is commonly unresolved in genetic studies, and observed epistasis is often difficult to interpret in terms of biological consequences or overall genetic architecture. We investigated the prevalence and consequences of epistasis by analyzing four body composition phenotypes—body weight, body fat percentage, femoral density, and femoral circumference—in a large F2 intercross of B6-lit/lit and C3.B6-lit/lit mice. We used Combined Analysis of Pleiotropy and Epistasis (CAPE) to examine interactions for the four phenotypes simultaneously, which revealed an extensive directed network of genetic loci interacting with each other, circulating IGF1, and sex to influence these phenotypes. The majority of epistatic interactions had small effects relative to additive effects of individual loci, and tended to stabilize phenotypes towards the mean of the population rather than extremes. Interactive effects of two alleles inherited from one parental strain commonly resulted in phenotypes closer to the population mean than the additive effects from the two loci, and often much closer to the mean than either single-locus model. Alternatively, combinations of alleles inherited from different parent strains contribute to more extreme phenotypes not observed in either parental strain. This class of phenotype-stabilizing interactions has effects that are close to additive and are thus difficult to detect except in very large intercrosses. Nevertheless, we found these interactions to be useful in generating hypotheses for functional relationships between genetic loci. Our findings suggest that while epistasis is often weak and unlikely to account for a large proportion of heritable variance, even small-effect genetic interactions can facilitate hypotheses of underlying biology in well-powered studies.
pacific symposium on biocomputing | 2013
Anna L. Tyler; Dana C. Crawford; Sarah A. Pendergrass
Pleiotropy, the phenomenon in which one gene influences more than one phenotype, was first defined over 100 years ago by Ludwig Plate.1 Since that time our understanding of pleiotropy has changed and expanded to incorporate knowledge of molecular genetics. With this increase in knowledge has come an increase in an appreciation for the importance of pleiotropy in human health and evolutionary dynamics, but also a corresponding increase in confusion about how pleiotropy should be measured, and how the context in which pleiotropy is measured affects its interpretation. The purpose of this session is to offer a general view of pleiotropy and of the different approaches used to study this phenomenon. During the session, we will be examining a series of questions that are currently being discussed in the literature: Which genetic elements can be defined as pleiotropic? How are phenotypes defined and counted? How prevalent is pleiotropy? Does every gene affect every phenotype, or is pleiotropy more limited? How does pleiotropy influence, and how is it influenced by, evolution? How does an understanding of pleiotropy improve our understanding of human health? Defining Genetic Elements Pleiotropy requires defining a genetic element that affects multiple phenotypes. But which genetic element is appropriate? A gene, a chromosomal segment with high linkage disequilibrium, a mutation? Plates original definition of pleiotropy came long before the discovery of DNA, and referred to a “unit of inheritance”.1 A unit of inheritance may refer to a single nucleotide polymorphism (SNP), or a gene, or a large segment of the genome containing multiple genes. Individual mutations may affect a single gene, or multiple genes.2,3 In this session, the problem is addressed in a variety of ways. Darabos et al. use SNPs and genes, while Philip et al. use expression quantitative trait loci (eQTL) as genetic elements. The choices made in different experiments clearly have implications for the interpretation of pleiotropy, although the implications of these choices is still being debated.
pacific symposium on biocomputing | 2013
Vivek M. Philip; Anna L. Tyler; Gregory W. Carter
Global transcript expression experiments are commonly used to investigate the biological processes that underlie complex traits. These studies can exhibit complex patterns of pleiotropy when trans-acting genetic factors influence overlapping sets of multiple transcripts. Dissecting these patterns into biological modules with distinct genetic etiology can provide models of how genetic variants affect specific processes that contribute to a trait. Here we identify transcript modules associated with pleiotropic genetic factors and apply genetic interaction analysis to disentangle the regulatory architecture in a mouse intercross study of kidney function. The method, called the combined analysis of pleiotropy and epistasis (CAPE), has been previously used to model genetic networks for multiple physiological traits. It simultaneously models multiple phenotypes to identify direct genetic influences as well as influences mediated through genetic interactions. We first identify candidate trans expression quantitative trait loci (eQTL) and the transcripts potentially affected. We then clustered the transcripts into modules of co-expressed genes, from which we compute summary module phenotypes. Finally, we applied CAPE to map the network of interacting module QTL (modQTL) affecting the gene modules. The resulting network mapped how multiple modQTL both directly and indirectly affect modules associated with metabolic functions and biosynthetic processes. This work demonstrates how the integration of pleiotropic signals in gene expression data can be used to infer a complex hypothesis of how multiple loci interact to co-regulate transcription programs, thereby providing additional constraints to prioritize validation experiments.
Nature Genetics | 2017
Anna L. Tyler; Gregory W. Carter
A study of genetic variation in yeast has identified key quantitative trait loci (QTLs) that suppress the effects of variation at multiple other loci. These loci prove essential to accurately modeling yeast growth in response to different environments.
Experimental Hematology | 2017
Jennifer J. Trowbridge; Rebecca Bell; Catrina Spruce; Anna L. Tyler; Robyn L. Ball; Vivek M. Philip; Dan Gatti; Narayanan Raghupathy; Romy Kurasawe; Kira Young; Mary Ann Handel; Michael Stitzel; Gary A. Churchill; Kenneth Paigen; Petko M. Petkov; Gregory W. Carter
pacific symposium on biocomputing | 2014
Anna L. Tyler; Dana C. Crawford; Sarah A. Pendergrass