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VizEpis : A visualization and mapping tool for interpreting epistasis.

, , , and . BIBM, page 1363-1366. IEEE Computer Society, (2015)

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VizEpis : A visualization and mapping tool for interpreting epistasis., , , and . BIBM, page 1363-1366. IEEE Computer Society, (2015)GxG-Viztool: A program for visualizing gene-gene interactions in genetic association analysis., , , , , and . BIBM Workshops, page 838-843. IEEE Computer Society, (2012)Gene-gene interaction analysis for the survival phenotype based on the standardized residuals from parametric regression models., , , and . BIBM Workshops, page 725-729. IEEE Computer Society, (2011)Efficient and Fast Analysis for Detecting High Order Gene-by-Gene Interactions in a Genome-Wide Association Study., , , , and . BIBM, page 83-88. IEEE Computer Society, (2011)GWAS-GMDR: A program package for genome-wide scan of gene-gene interactions with covariate adjustment based on multifactor dimensionality reduction., , , , , , and . BIBM Workshops, page 703-707. IEEE Computer Society, (2011)Enhanced peptide quantification using spectral count clustering and cluster abundance., , , , , , and . BMC Bioinformatics, (2011)A novel method to identify high order gene-gene interactions in genome-wide association studies: Gene-based MDR., , , , , and . BMC Bioinformatics, 13 (S-9): S5 (2012)New evaluation measures for multifactor dimensionality reduction classifiers in gene-gene interaction analysis., , , , , and . Bioinformatics, 25 (3): 338-345 (2009)CUDA-LR: CUDA-accelerated logistic regression analysis tool for gene-gene interaction for genome-wide association study., , , and . BIBM Workshops, page 691-695. IEEE Computer Society, (2011)Developing cancer prediction model based on stepwise selection by AUC measure for proteomics data., , , , , , , , , and 4 other author(s). BIBM, page 1345-1350. IEEE Computer Society, (2015)