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AA9int: SNP interaction pattern search using non-hierarchical additive model set

Authors :
Rosalind A. Eeles
Lisa A. Cannon-Albright
Hermann Brenner
Manuel R. Teixeira
Stephen N. Thibodeau
Fredrik Wiklund
Kenneth Muir
Graham G. Giles
Jong Y. Park
Hui-Yi Lin
Heng-Yuan Tung
Johanna Schleutker
Zsofia Kote-Jarai
Christopher A. Haiman
William J. Blot
Ali Amin Al Olama
Radka Kaneva
Doug Easton
Ruth C. Travis
Sara Benlloch
Jyotsna Batra
Janet L. Stanford
Thomas A. Sellers
Christiane Maier
Kay-Tee Khaw
Dung-Tsa Chen
Henrik Grönberg
Børge G. Nordestgaard
Adam S. Kibel
Freddie C. Hamdy
Cezary Cybulski
Nora Pashayan
Julio M. Pow-Sang
Hardev Pandha
Yong-Jie Lu
Po-Yu Huang
David E. Neal
Source :
Bioinformatics. 34(24):4141-4150
Publication Year :
2018

Abstract

Motivation The use of single nucleotide polymorphism (SNP) interactions to predict complex diseases is getting more attention during the past decade, but related statistical methods are still immature. We previously proposed the SNP Interaction Pattern Identifier (SIPI) approach to evaluate 45 SNP interaction patterns/patterns. SIPI is statistically powerful but suffers from a large computation burden. For large-scale studies, it is necessary to use a powerful and computation-efficient method. The objective of this study is to develop an evidence-based mini-version of SIPI as the screening tool or solitary use and to evaluate the impact of inheritance mode and model structure on detecting SNP–SNP interactions. Results We tested two candidate approaches: the ‘Five-Full’ and ‘AA9int’ method. The Five-Full approach is composed of the five full interaction models considering three inheritance modes (additive, dominant and recessive). The AA9int approach is composed of nine interaction models by considering non-hierarchical model structure and the additive mode. Our simulation results show that AA9int has similar statistical power compared to SIPI and is superior to the Five-Full approach, and the impact of the non-hierarchical model structure is greater than that of the inheritance mode in detecting SNP–SNP interactions. In summary, it is recommended that AA9int is a powerful tool to be used either alone or as the screening stage of a two-stage approach (AA9int+SIPI) for detecting SNP–SNP interactions in large-scale studies. Availability and implementation The ‘AA9int’ and ‘parAA9int’ functions (standard and parallel computing version) are added in the SIPI R package, which is freely available at https://linhuiyi.github.io/LinHY_Software/. Supplementary information Supplementary data are available at Bioinformatics online.

Details

Language :
English
ISSN :
13674803
Volume :
34
Issue :
24
Database :
OpenAIRE
Journal :
Bioinformatics
Accession number :
edsair.doi.dedup.....616c4b44814e26ea3727fd8ab0282535