Ulrich Bodenhofer, Sepp Hochreiter,
"PODKAT: a software package implementing the position-dependent kernel association test"
: ASHG 2015 Proceedings, 2015
Original Titel:
PODKAT: a software package implementing the position-dependent kernel association test
Sprache des Titels:
Englisch
Original Buchtitel:
ASHG 2015 Proceedings
Original Kurzfassung:
High-throughput sequencing technologies have facilitated the identification of large numbers of single-nucleotide variations (SNVs), many of which have already been proven to be associated with diseases or other complex traits. Several large sequencing studies, such as, the 1000 Genomes Project, the UK10K project, or the NHLBI-Exome Sequencing Project, have consistently reported a large proportion of private SNVs, that is, variants that are unique to a family or even a single individual. The role of private SNVs in diseases is poorly understood, largely due to the fact that it is statistically very challenging to consider private SNVs in association testing. While it is generally impossible to make use of private SNVs in single-marker tests or in correlation-based tests like the popular SNP-set (Sequence) Kernel Association Test (SKAT), also burden tests are facing serious statistical issues.We have proposed the Position-Dependent Kernel Association Test, which is designed for detecting associations of very rare and private SNVs with the trait under consideration even if the burden scores are not correlated with the trait. The test assumes that, the closer two SNVs are on the genome, the more likely they have similar effects on the trait under consideration. This assumption is fulfilled as long as deleterious, neutral, and protective variants are grouped sufficiently well along the genome.This contribution highlights a recently released software package, PODKAT, that implements the position-dependent kernel association test along with the popular SKAT test and all necessary tools for defining regions of interest, multiple testing correction, filtering, and visualization of results. For whole abstract see http://www.bioinf.jku.at/publications/2015/ASHG2015_Bodenhofer.pdf