Literature DB >> 25112190

Genetic prediction in the Genetic Analysis Workshop 18 sequencing data.

Andreas Ziegler1, Nora Bohossian, Vincent P Diego, Chen Yao.   

Abstract

High-throughput sequencing data can be used to predict phenotypes from genotypes, and this corresponds to establishing a prognostic model. In extended pedigrees the relatedness of subjects provides additional information so that genetic values, fixed or random genetic components, and heritability can be estimated. At the Genetic Analysis Workshop 18, the working group on genetic prediction dealt with both establishing a prognostic model and, in one contribution, comparing standard logistic regression with robust logistic regression in a sample of unrelated affected or unaffected individuals. Results of both logistic regression approaches were similar. All other contributions to this group used extended family data, in general using the quantitative trait blood pressure. The individual contributions varied in several important aspects, such as the estimation of the kinship matrix and the estimation method. Contributors chose various approaches for model validation, including different versions of cross-validation or within-family validation. Within-family validation included model building in the upper generations and validation in later generations. The choice of the statistical model and the computational algorithm had substantial effects on computation time. If decorrelation approaches were applied, the computational burden was substantially reduced. Some software packages estimated negative eigenvalues, although eigenvalues of correlation matrices should be non-negative. Most statistical models and software packages have been developed for experimental crosses and planned breeding programs. With their specialized pedigree structures, they are not sufficiently flexible to accommodate the variability of human pedigrees in general, and improved implementations are required.
© 2014 WILEY PERIODICALS, INC.

Entities:  

Keywords:  decorrelation; genetic prediction; linear mixed model; next-generation sequencing; personalized medicine; prediction; robust regression

Mesh:

Year:  2014        PMID: 25112190      PMCID: PMC4310867          DOI: 10.1002/gepi.21826

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


  22 in total

1.  Genomewide rapid association using mixed model and regression: a fast and simple method for genomewide pedigree-based quantitative trait loci association analysis.

Authors:  Yurii S Aulchenko; Dirk-Jan de Koning; Chris Haley
Journal:  Genetics       Date:  2007-07-29       Impact factor: 4.562

2.  A common variant on chromosome 9p21 affects the risk of myocardial infarction.

Authors:  Anna Helgadottir; Gudmar Thorleifsson; Andrei Manolescu; Solveig Gretarsdottir; Thorarinn Blondal; Aslaug Jonasdottir; Adalbjorg Jonasdottir; Asgeir Sigurdsson; Adam Baker; Arnar Palsson; Gisli Masson; Daniel F Gudbjartsson; Kristinn P Magnusson; Karl Andersen; Allan I Levey; Valgerdur M Backman; Sigurborg Matthiasdottir; Thorbjorg Jonsdottir; Stefan Palsson; Helga Einarsdottir; Steinunn Gunnarsdottir; Arnaldur Gylfason; Viola Vaccarino; W Craig Hooper; Muredach P Reilly; Christopher B Granger; Harland Austin; Daniel J Rader; Svati H Shah; Arshed A Quyyumi; Jeffrey R Gulcher; Gudmundur Thorgeirsson; Unnur Thorsteinsdottir; Augustine Kong; Kari Stefansson
Journal:  Science       Date:  2007-05-03       Impact factor: 47.728

3.  The importance of assessing the fit of logistic regression models: a case study.

Authors:  D W Hosmer; S Taber; S Lemeshow
Journal:  Am J Public Health       Date:  1991-12       Impact factor: 9.308

4.  Efficient methods to compute genomic predictions.

Authors:  P M VanRaden
Journal:  J Dairy Sci       Date:  2008-11       Impact factor: 4.034

Review 5.  Statistical analysis of rare sequence variants: an overview of collapsing methods.

Authors:  Carmen Dering; Claudia Hemmelmann; Elizabeth Pugh; Andreas Ziegler
Journal:  Genet Epidemiol       Date:  2011       Impact factor: 2.135

6.  Single-marker and multi-marker mixed models for polygenic score analysis in family-based data.

Authors:  Nora Bohossian; Mohamad Saad; Andrés Legarra; Maria Martinez
Journal:  BMC Proc       Date:  2014-06-17

7.  Practical investigation of the performance of robust logistic regression to predict the genetic risk of hypertension.

Authors:  Miriam Kesselmeier; Carine Legrand; Barbara Peil; Maria Kabisch; Christine Fischer; Ute Hamann; Justo Lorenzo Bermejo
Journal:  BMC Proc       Date:  2014-06-17

8.  A penalized linear mixed model for genomic prediction using pedigree structures.

Authors:  Can Yang; Cong Li; Mengjie Chen; Xiaowei Chen; Lin Hou; Hongyu Zhao
Journal:  BMC Proc       Date:  2014-06-17

9.  Evaluation of estimated genetic values and their application to genome-wide investigation of systolic blood pressure.

Authors:  Ellen E Quillen; V Saroja Voruganti; Geetha Chittoor; Rohina Rubicz; Juan M Peralta; Marcio Aa Almeida; Jack W Kent; Vincent P Diego; Thomas D Dyer; Anthony G Comuzzie; Harald Hh Göring; Ravindranath Duggirala; Laura Almasy; John Blangero
Journal:  BMC Proc       Date:  2014-06-17

10.  Prediction of genetic contributions to complex traits using whole genome sequencing data.

Authors:  Chen Yao; Ning Leng; Kent A Weigel; Kristine E Lee; Corinne D Engelman; Kristin J Meyers
Journal:  BMC Proc       Date:  2014-06-17
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