Sciweavers

BIBE
2007
IEEE

HICCUP: Hierarchical Clustering Based Value Imputation using Heterogeneous Gene Expression Microarray Datasets

13 years 10 months ago
HICCUP: Hierarchical Clustering Based Value Imputation using Heterogeneous Gene Expression Microarray Datasets
Abstract—A novel microarray value imputation method, HICCUP1 , is presented. HICCUP improves upon existing value imputation methods in the several ways. (1) By judiciously integrating heterogeneous microarray datasets using hierarchical clustering, HICCUP overcomes the limitation of using only single dataset with limited number of samples; (2) Unlike local or global value imputation methods, by mining association rules, HICCUP selects appropriate subsets of the most relevant samples for better value imputation; and (3) by exploiting relationship among the sample space (e.g., cancer vs. non-cancer samples), HICCUP improves the accuracy of value imputation. Experiments with a real prostate cancer microarray dataset verify that HICCUP outperforms existing approaches.
Qiankun Zhao, Prasenjit Mitra, Dongwon Lee, Jaewoo
Added 02 Jun 2010
Updated 02 Jun 2010
Type Conference
Year 2007
Where BIBE
Authors Qiankun Zhao, Prasenjit Mitra, Dongwon Lee, Jaewoo Kang
Comments (0)