Literature DB >> 24272946

Genetic prediction of quantitative lipid traits: comparing shrinkage models to gene scores.

Helen Warren1, Juan-Pablo Casas, Aroon Hingorani, Frank Dudbridge, John Whittaker.   

Abstract

Accurate genetic prediction of quantitative traits related to complex disease risk would have potential clinical impact, so investigation of statistical methodology to improve predictive performance is important. We compare a simple approach of polygenic scores using top ranking single nucleotide polymorphisms (SNPs) to a set of shrinkage models, namely Ridge Regression, Lasso and Hyper-Lasso. These penalised regression methods analyse all genotyped SNPs simultaneously, potentially including much larger sets of SNPs in the models, not only those with the smallest P values. We compare the accuracy of these models for predicting low-density lipoprotein (LDL) and high-density lipoprotein (HDL) cholesterol, two lipid traits of clinical relevance, in the Whitehall II and British Women's Health and Heart Study cohorts, using SNPs from the HumanCVD BeadChip. For gene scores, the most accurate predictions arise from multivariate weighted scores and include only a small number of SNPs, identified as top hits by the HumanCVD BeadChip. Furthermore, there was little benefit from including external results from published sets of SNPs. We found that shrinkage approaches rarely improved significantly on gene score results. Genetic predictive performance is trait specific, depending on the heritability and genetic architecture of the trait, and is limited by the training data sample size. Our results for lipid traits suggest no current benefit of more complex methods over existing gene score methods. Instead, the most important choice for the prediction model is the number of SNPs and selection of the most predictive SNPs to include. However further comparisons, in larger samples and for other phenotypes, would still be of interest.
© 2013 WILEY PERIODICALS, INC.

Entities:  

Keywords:  SNP selection; lipids; penalised regression; polygenic score; prediction

Mesh:

Substances:

Year:  2013        PMID: 24272946     DOI: 10.1002/gepi.21777

Source DB:  PubMed          Journal:  Genet Epidemiol        ISSN: 0741-0395            Impact factor:   2.135


  16 in total

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4.  Smooth-Threshold Multivariate Genetic Prediction with Unbiased Model Selection.

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5.  Analysis with the exome array identifies multiple new independent variants in lipid loci.

Authors:  Stavroula Kanoni; Nicholas G D Masca; Kathleen E Stirrups; Tibor V Varga; Helen R Warren; Robert A Scott; Lorraine Southam; Weihua Zhang; Hanieh Yaghootkar; Martina Müller-Nurasyid; Alexessander Couto Alves; Rona J Strawbridge; Lazaros Lataniotis; Nikman An Hashim; Céline Besse; Anne Boland; Peter S Braund; John M Connell; Anna Dominiczak; Aliki-Eleni Farmaki; Stephen Franks; Harald Grallert; Jan-Håkan Jansson; Maria Karaleftheri; Sirkka Keinänen-Kiukaanniemi; Angela Matchan; Dorota Pasko; Annette Peters; Neil Poulter; Nigel W Rayner; Frida Renström; Olov Rolandsson; Maria Sabater-Lleal; Bengt Sennblad; Peter Sever; Denis Shields; Angela Silveira; Alice V Stanton; Konstantin Strauch; Maciej Tomaszewski; Emmanouil Tsafantakis; Melanie Waldenberger; Alexandra I F Blakemore; George Dedoussis; Stefan A Escher; Jaspal S Kooner; Mark I McCarthy; Colin N A Palmer; Anders Hamsten; Mark J Caulfield; Timothy M Frayling; Martin D Tobin; Marjo-Riitta Jarvelin; Eleftheria Zeggini; Christian Gieger; John C Chambers; Nick J Wareham; Patricia B Munroe; Paul W Franks; Nilesh J Samani; Panos Deloukas
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Review 6.  The Current and Future Use of Ridge Regression for Prediction in Quantitative Genetics.

Authors:  Ronald de Vlaming; Patrick J F Groenen
Journal:  Biomed Res Int       Date:  2015-07-26       Impact factor: 3.411

7.  Regularized machine learning in the genetic prediction of complex traits.

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8.  Genomic prediction of complex human traits: relatedness, trait architecture and predictive meta-models.

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Review 9.  Genetic-based prediction of disease traits: prediction is very difficult, especially about the future.

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Review 10.  Multivariate Methods for Genetic Variants Selection and Risk Prediction in Cardiovascular Diseases.

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