Literature DB >> 20606457

A cost-effective statistical method to correct for differential genotype misclassification when performing case-control genetic association.

Douglas Londono1, Chad Haynes, Francisco M De La Vega, Stephen J Finch, Derek Gordon.   

Abstract

BACKGROUND/AIMS: There is a growing interest regarding the effect of differential misclassification on power and type I error rate in genome-wide association studies. We present an extension of a previously published test statistic: the likelihood ratio test allowing for errors (LRTAE). This test uses double-sample information on a subset of individuals to increase power for genetic association in the presence of nondifferential misclassification.
METHODS: We extend the original LRTAE by allowing for differential genotype misclassification between case and control populations. We label this new statistic as LRT(D)A(M)E . We test the performance of this statistic with data simulated under differential misclassification specifications and two different types of genetic models: null and power. For simulations using the null model, we specify that there is no difference between case and control genotype frequencies before the introduction of errors. For simulations under power, we consider three modes of inheritance: dominant, multiplicative, and recessive.
RESULTS: We show that the LRT(D)A(M)E , with p values computed using permutation, maintains a correct type I error rate under the null model after the introduction of differential genotyping errors. Also, we find that as little as 10 to 15% of double-sampled genotype data is needed to achieve this effect. Aside from a few situations (particularly recessive mode of inheritance simulations) the LRT(D)A(M)E version that calculates p values through permutation requires 15 to 20% double sampling to maintain an 80% power for a 0.05 significance level and approximately 20% double sampling for a 0.01 significance level.
Copyright © 2010 S. Karger AG, Basel.

Mesh:

Year:  2010        PMID: 20606457     DOI: 10.1159/000314470

Source DB:  PubMed          Journal:  Hum Hered        ISSN: 0001-5652            Impact factor:   0.444


  3 in total

1.  Single-variant and multi-variant trend tests for genetic association with next-generation sequencing that are robust to sequencing error.

Authors:  Wonkuk Kim; Douglas Londono; Lisheng Zhou; Jinchuan Xing; Alejandro Q Nato; Anthony Musolf; Tara C Matise; Stephen J Finch; Derek Gordon
Journal:  Hum Hered       Date:  2013-04-11       Impact factor: 0.444

2.  ETHNOPRED: a novel machine learning method for accurate continental and sub-continental ancestry identification and population stratification correction.

Authors:  Mohsen Hajiloo; Yadav Sapkota; John R Mackey; Paula Robson; Russell Greiner; Sambasivarao Damaraju
Journal:  BMC Bioinformatics       Date:  2013-02-22       Impact factor: 3.169

3.  Enhancing the power of genetic association studies through the use of silver standard cases derived from electronic medical records.

Authors:  Andrew McDavid; Paul K Crane; Katherine M Newton; David R Crosslin; Wayne McCormick; Noah Weston; Kelly Ehrlich; Eugene Hart; Robert Harrison; Walter A Kukull; Carla Rottscheit; Peggy Peissig; Elisha Stefanski; Catherine A McCarty; Rebecca Lynn Zuvich; Marylyn D Ritchie; Jonathan L Haines; Joshua C Denny; Gerard D Schellenberg; Mariza de Andrade; Iftikhar Kullo; Rongling Li; Daniel Mirel; Andrew Crenshaw; James D Bowen; Ge Li; Debby Tsuang; Susan McCurry; Linda Teri; Eric B Larson; Gail P Jarvik; Chris S Carlson
Journal:  PLoS One       Date:  2013-06-10       Impact factor: 3.240

  3 in total

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