Gene-based Higher Criticism methods for large-scale exonic single-nucleotide polymorphism data

In genome-wide association studies, gene-based methods measure potential joint genetic effects of loci within genes and are promising for detecting causative genetic variations. Following recent theoretical research in statistical multiple-hypothesis testing, we propose to adapt the Higher Criticism procedures to develop novel gene-based methods that use the information of linkage disequilibrium for detecting weak and sparse genetic signals. With the large-scale exonic single-nucleotide polymorphism data from Genetic Analysis Workshop 17, we show that the new Higher-Criticism-type gene-based methods have higher statistical power to detect causative genes than the minimal P-value method, ridge regression, and the prototypes of Higher Criticism do.

[1]  Anbupalam Thalamuthu,et al.  Association tests using kernel‐based measures of multi‐locus genotype similarity between individuals , 2009, Genetic epidemiology.

[2]  D. Donoho,et al.  Higher criticism for detecting sparse heterogeneous mixtures , 2004, math/0410072.

[3]  S. R. Driver The Higher Criticism , 1912 .

[4]  Liang Chen,et al.  Considering dependence among genes and markers for false discovery control in eQTL mapping , 2008, Bioinform..

[5]  P. Hall,et al.  Innovated Higher Criticism for Detecting Sparse Signals in Correlated Noise , 2009, 0902.3837.

[6]  Yijun Zuo,et al.  Two-Stage Designs in Case–Control Association Analysis , 2006, Genetics.

[7]  Kai Wang,et al.  ATOM: a powerful gene-based association test by combining optimally weighted markers , 2009, Bioinform..

[8]  Claudia Hemmelmann,et al.  Statistical analysis of rare sequence variants: an overview of collapsing methods , 2011, Genetic epidemiology.

[9]  P. Sham,et al.  The future of association studies: gene-based analysis and replication. , 2004, American journal of human genetics.

[10]  J. Ott,et al.  Trimming, weighting, and grouping SNPs in human case-control association studies. , 2001, Genome research.

[11]  Kai Wang,et al.  Pathway-based approaches for analysis of genomewide association studies. , 2007, American journal of human genetics.

[12]  Hsin-Chou Yang,et al.  Kernel-Based Association Test , 2008, Genetics.

[13]  The Higher Criticism: An Inaugural. , 1904 .

[14]  M. Xiong,et al.  Genome-wide gene and pathway analysis , 2010, European Journal of Human Genetics.

[15]  Judy H. Cho,et al.  Comparisons of multi‐marker association methods to detect association between a candidate region and disease , 2010, Genetic epidemiology.

[16]  Kai Wang,et al.  A principal components regression approach to multilocus genetic association studies , 2008, Genetic epidemiology.

[17]  S. Browning,et al.  A Groupwise Association Test for Rare Mutations Using a Weighted Sum Statistic , 2009, PLoS genetics.

[18]  Momiao Xiong,et al.  Gene and pathway-based second-wave analysis of genome-wide association studies , 2010, European Journal of Human Genetics.