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Identifying rare and common disease associated variants in genomic data using Parkinson's disease as a model.

Authors :
Ying-Chao Lin
Ai-Ru Hsieh
Ching-Lin Hsiao
Shang-Jung Wu
Hui-Min Wang
Ie-Bin Lian
Fann, Cathy S. J.
Source :
Journal of Biomedical Science. 2014, Vol. 21 Issue 1, p1-24. 24p. 2 Charts, 2 Graphs.
Publication Year :
2014

Abstract

Background Genome-wide association studies have been successful in identifying common genetic variants for human diseases. However, much of the heritable variation associated with diseases such as Parkinson's disease remains unknown suggesting that many more risk loci are yet to be identified. Rare variants have become important in disease association studies for explaining missing heritability. Methods for detecting this type of association require prior knowledge on candidate genes and combining variants within the region. These methods may suffer from power loss in situations with many neutral variants or causal variants with opposite effects. Results We propose a method capable of scanning genetic variants to identify the region most likely harbouring disease gene with rare and/or common causal variants. Our method assigns a score at each individual variant based on our scoring system. It uses aggregate scores to identify the region with disease association. We evaluate performance by simulation based on 1000 Genomes sequencing data and compare with three commonly used methods. We use a Parkinson's disease case-control dataset as a model to demonstrate the application of our method. Our method has better power than CMC and WSS and similar power to SKAT-O with wellcontrolled type I error under simulation based on 1000 Genomes sequencing data. In real data analysis, we confirm the association of α-synuclein gene (SNCA) with Parkinson's disease (p = 0.005). We further identify association with hyaluronan synthase 2 (HAS2, p = 0.028) and kringle containing transmembrane protein 1 (KREMEN1, p = 0.006). KREMEN1 is associated with Wnt signalling pathway which has been shown to play an important role for neurodegeneration in Parkinson's disease. Conclusions Our method is time efficient and less sensitive to inclusion of neutral variants and direction effect of causal variants. It can narrow down a genomic region or a chromosome to a disease associated region. Using Parkinson's disease as a model, our method not only confirms association for a known gene but also identifies two genes previously found by other studies. In spite of many existing methods, we conclude that our method serves as an efficient alternative for exploring genomic data containing both rare and common variants. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
10217770
Volume :
21
Issue :
1
Database :
Academic Search Index
Journal :
Journal of Biomedical Science
Publication Type :
Academic Journal
Accession number :
97923241
Full Text :
https://doi.org/10.1186/s12929-014-0088-9