Literature DB >> 25712081

GWAS with longitudinal phenotypes: performance of approximate procedures.

Karolina Sikorska1,2, Nahid Mostafavi Montazeri1,3, André Uitterlinden2, Fernando Rivadeneira2, Paul Hc Eilers1, Emmanuel Lesaffre1,4.   

Abstract

Analysis of genome-wide association studies with longitudinal data using standard procedures, such as linear mixed model (LMM) fitting, leads to discouragingly long computation times. There is a need to speed up the computations significantly. In our previous work (Sikorska et al: Fast linear mixed model computations for genome-wide association studies with longitudinal data. Stat Med 2012; 32.1: 165-180), we proposed the conditional two-step (CTS) approach as a fast method providing an approximation to the P-value for the longitudinal single-nucleotide polymorphism (SNP) effect. In the first step a reduced conditional LMM is fit, omitting all the SNP terms. In the second step, the estimated random slopes are regressed on SNPs. The CTS has been applied to the bone mineral density data from the Rotterdam Study and proved to work very well even in unbalanced situations. In another article (Sikorska et al: GWAS on your notebook: fast semi-parallel linear and logistic regression for genome-wide association studies. BMC Bioinformatics 2013; 14: 166), we suggested semi-parallel computations, greatly speeding up fitting many linear regressions. Combining CTS with fast linear regression reduces the computation time from several weeks to a few minutes on a single computer. Here, we explore further the properties of the CTS both analytically and by simulations. We investigate the performance of our proposal in comparison with a related but different approach, the two-step procedure. It is analytically shown that for the balanced case, under mild assumptions, the P-value provided by the CTS is the same as from the LMM. For unbalanced data and in realistic situations, simulations show that the CTS method does not inflate the type I error rate and implies only a minimal loss of power.

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Year:  2015        PMID: 25712081      PMCID: PMC4592098          DOI: 10.1038/ejhg.2015.1

Source DB:  PubMed          Journal:  Eur J Hum Genet        ISSN: 1018-4813            Impact factor:   4.246


  7 in total

1.  The effect of miss-specified baseline characteristics on inference for longitudinal trends in linear mixed models.

Authors:  Geert Verbeke; Steffen Fieuws
Journal:  Biostatistics       Date:  2007-03-23       Impact factor: 5.899

2.  The Rotterdam Study: 2014 objectives and design update.

Authors:  Albert Hofman; Sarwa Darwish Murad; Cornelia M van Duijn; Oscar H Franco; André Goedegebure; M Arfan Ikram; Caroline C W Klaver; Tamar E C Nijsten; Robin P Peeters; Bruno H Ch Stricker; Henning W Tiemeier; André G Uitterlinden; Meike W Vernooij
Journal:  Eur J Epidemiol       Date:  2013-11-21       Impact factor: 8.082

3.  FaST linear mixed models for genome-wide association studies.

Authors:  Christoph Lippert; Jennifer Listgarten; Ying Liu; Carl M Kadie; Robert I Davidson; David Heckerman
Journal:  Nat Methods       Date:  2011-09-04       Impact factor: 28.547

4.  Fast linear mixed model computations for genome-wide association studies with longitudinal data.

Authors:  Karolina Sikorska; Fernando Rivadeneira; Patrick J F Groenen; Albert Hofman; André G Uitterlinden; Paul H C Eilers; Emmanuel Lesaffre
Journal:  Stat Med       Date:  2012-08-22       Impact factor: 2.373

5.  Genome-wide efficient mixed-model analysis for association studies.

Authors:  Xiang Zhou; Matthew Stephens
Journal:  Nat Genet       Date:  2012-06-17       Impact factor: 38.330

6.  Twenty bone-mineral-density loci identified by large-scale meta-analysis of genome-wide association studies.

Authors:  Fernando Rivadeneira; Unnur Styrkársdottir; Karol Estrada; Bjarni V Halldórsson; Yi-Hsiang Hsu; J Brent Richards; M Carola Zillikens; Fotini K Kavvoura; Najaf Amin; Yurii S Aulchenko; L Adrienne Cupples; Panagiotis Deloukas; Serkalem Demissie; Elin Grundberg; Albert Hofman; Augustine Kong; David Karasik; Joyce B van Meurs; Ben Oostra; Tomi Pastinen; Huibert A P Pols; Gunnar Sigurdsson; Nicole Soranzo; Gudmar Thorleifsson; Unnur Thorsteinsdottir; Frances M K Williams; Scott G Wilson; Yanhua Zhou; Stuart H Ralston; Cornelia M van Duijn; Timothy Spector; Douglas P Kiel; Kari Stefansson; John P A Ioannidis; André G Uitterlinden
Journal:  Nat Genet       Date:  2009-10-04       Impact factor: 38.330

7.  GWAS on your notebook: fast semi-parallel linear and logistic regression for genome-wide association studies.

Authors:  Karolina Sikorska; Emmanuel Lesaffre; Patrick F J Groenen; Paul H C Eilers
Journal:  BMC Bioinformatics       Date:  2013-05-28       Impact factor: 3.169

  7 in total
  9 in total

1.  The emerging landscape of health research based on biobanks linked to electronic health records: Existing resources, statistical challenges, and potential opportunities.

Authors:  Lauren J Beesley; Maxwell Salvatore; Lars G Fritsche; Anita Pandit; Arvind Rao; Chad Brummett; Cristen J Willer; Lynda D Lisabeth; Bhramar Mukherjee
Journal:  Stat Med       Date:  2019-12-20       Impact factor: 2.373

2.  A score test for genetic class-level association with nonlinear biomarker trajectories.

Authors:  Jing Qian; Sara Nunez; Soohyun Kim; Muredach P Reilly; Andrea S Foulkes
Journal:  Stat Med       Date:  2017-05-23       Impact factor: 2.373

3.  GWAS of longitudinal trajectories at biobank scale.

Authors:  Seyoon Ko; Christopher A German; Aubrey Jensen; Judong Shen; Anran Wang; Devan V Mehrotra; Yan V Sun; Janet S Sinsheimer; Hua Zhou; Jin J Zhou
Journal:  Am J Hum Genet       Date:  2022-02-22       Impact factor: 11.043

4.  Predicting Reading and Spelling Disorders: A 4-Year Prospective Cohort Study.

Authors:  Lucia Bigozzi; Christian Tarchi; Corrado Caudek; Giuliana Pinto
Journal:  Front Psychol       Date:  2016-03-09

5.  genipe: an automated genome-wide imputation pipeline with automatic reporting and statistical tools.

Authors:  Louis-Philippe Lemieux Perreault; Marc-André Legault; Géraldine Asselin; Marie-Pierre Dubé
Journal:  Bioinformatics       Date:  2016-08-06       Impact factor: 6.937

6.  Longitudinal analysis strategies for modelling epigenetic trajectories.

Authors:  James R Staley; Matthew Suderman; Andrew J Simpkin; Tom R Gaunt; Jon Heron; Caroline L Relton; Kate Tilling
Journal:  Int J Epidemiol       Date:  2018-04-01       Impact factor: 7.196

7.  A genome-wide association study of the longitudinal course of executive functions.

Authors:  Bernadette Wendel; Sergi Papiol; Till F M Andlauer; Jörg Zimmermann; Jens Wiltfang; Carsten Spitzer; Fanny Senner; Eva C Schulte; Max Schmauß; Sabrina K Schaupp; Jonathan Repple; Eva Reininghaus; Jens Reimer; Daniela Reich-Erkelenz; Nils Opel; Igor Nenadić; Susanne Meinert; Carsten Konrad; Farahnaz Klöhn-Saghatolislam; Tilo Kircher; Janos L Kalman; Georg Juckel; Andreas Jansen; Markus Jäger; Maria Heilbronner; Martin von Hagen; Katrin Gade; Christian Figge; Andreas J Fallgatter; Detlef E Dietrich; Udo Dannlowski; Ashley L Comes; Monika Budde; Bernhard T Baune; Volker Arolt; Ion-George Anghelescu; Heike Anderson-Schmidt; Kristina Adorjan; Peter Falkai; Thomas G Schulze; Heike Bickeböller; Urs Heilbronner
Journal:  Transl Psychiatry       Date:  2021-07-10       Impact factor: 6.222

8.  Comparing Analytic Methods for Longitudinal GWAS and a Case-Study Evaluating Chemotherapy Course Length in Pediatric AML. A Report from the Children's Oncology Group.

Authors:  Marijana Vujkovic; Richard Aplenc; Todd A Alonzo; Alan S Gamis; Yimei Li
Journal:  Front Genet       Date:  2016-08-05       Impact factor: 4.599

9.  Genome-wide Analysis of Large-scale Longitudinal Outcomes using Penalization -GALLOP algorithm.

Authors:  Karolina Sikorska; Emmanuel Lesaffre; Patrick J F Groenen; Fernando Rivadeneira; Paul H C Eilers
Journal:  Sci Rep       Date:  2018-05-01       Impact factor: 4.379

  9 in total

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