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Publication : Statistical Methods for Latent Class Quantitative Trait Loci Mapping.

First Author  Ye S Year  2017
Journal  Genetics Volume  206
Issue  3 Pages  1309-1317
PubMed ID  28550015 Mgi Jnum  J:249460
Mgi Id  MGI:5921370 Doi  10.1534/genetics.117.203885
Citation  Ye S, et al. (2017) Statistical Methods for Latent Class Quantitative Trait Loci Mapping. Genetics 206(3):1309-1317
abstractText  Identifying the genetic basis of complex traits is an important problem with the potential to impact a broad range of biological endeavors. A number of effective statistical methods are available for quantitative trait loci (QTL) mapping that allow for the efficient identification of multiple, potentially interacting, loci under a variety of experimental conditions. Although proven useful in hundreds of studies, the majority of these methods assumes a single model common to each subject, which may reduce power and accuracy when genetically distinct subclasses exist. To address this, we have developed an approach to enable latent class QTL mapping. The approach combines latent class regression with stepwise variable selection and traditional QTL mapping to estimate the number of subclasses in a population, and to identify the genetic model that best describes each subclass. Simulations demonstrate good performance of the method when latent classes are present as well as when they are not, with accurate estimation of QTL. Application of the method to case studies of obesity and diabetes in mouse gives insight into the genetic basis of related complex traits.
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