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pHCR: a Parallel Haplotype Configuration Reduction algorithm for haplotype interaction analysis
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Metadata
Document Title
pHCR: a Parallel Haplotype Configuration Reduction algorithm for haplotype interaction analysis
Author
Makarasara W, Kumasaka N, Assawamakin A, Takahashi A, Intarapanich A, Ngamphiw C, Kulawonganunchai S, Ruangrit U, Fucharoen S, Kamatani N, Tongsima S
Name from Authors Collection
Scopus Author ID
7801321390
Affiliations
National Science & Technology Development Agency - Thailand; National Center Genetic Engineering & Biotechnology (BIOTEC); Mahidol University; Mahidol University; RIKEN; Mahidol University; National Science & Technology Development Agency - Thailand; National Electronics & Computer Technology Center (NECTEC)
Type
Article
Source Title
JOURNAL OF HUMAN GENETICS
ISSN
1434-5161
Year
2009
Volume
54
Issue
11
Page
634-641
Open Access
Bronze
Publisher
NATURE PUBLISHING GROUP
DOI
10.1038/jhg.2009.85
Format
Abstract
Finding gene interaction models is one of the most important issues in genotype-phenotype association studies. This paper presents a model-free nonparametric statistical interaction analysis known as Parallel Haplotype Configuration Reduction (pHCR). This technique extends the original Multifactor Dimensionality Reduction (MDR) algorithm by using haplotype contribution values (c-values) and a haplotype interaction scheme instead of analyzing interactions among single-nucleotide polymorphisms. The proposed algorithm uses the statistical power of haplotypes to obtain a gene-gene interaction model. pHCR computes a statistical value for each haplotype, which contributes to the phenotype, and then performs haplotype interaction analysis on the basis of the cumulative c-value of each individual haplotype. To address the high computational complexity of pHCR, this paper also presents a scalable parallel computing solution. Nine common two-locus disease models were used to evaluate the algorithm performance under different scenarios. The results from all cases showed that pHCR shows higher power to detect gene-gene interaction in comparison with the results obtained from running MDR on the same data set. We also compared pHCR with FAMHAP, which mainly considers haplotype in the association analysis. For every experiment on the simulated data set, pHCR correctly produced haplotype interactions with much fewer false positives. We also challenged pHCR with a real data set input of beta-thalassemia/Hemoglobin E (HbE) disease. The result suggested the interaction between two previously reported quantitative trait loci of the fetal hemoglobin level, which is a major modifying factor, and disease severity of beta-thalassemia/HbE disease. Journal of Human Genetics (2009) 54, 634-641; doi:10.1038/jhg.2009.85; published online 20 November 2009
Keyword
Industrial Classification
Knowledge Taxonomy Level 1
Knowledge Taxonomy Level 2
Funding Sponsor
Thailand Research Fund (TRF); Medical Scholar Program; Mahidol University; National Center for Genetic Engineering and Biotechnology (BIOTEC); National Science and Technology Development Agency (NSTDA); Department of Medical Sciences
License
Copyright
Rights
The Japan Society of Human Genetics
Publication Source
WOS