TY - JOUR
T1 - Robust consensus clustering for identification of expressed genes linked to malignancy of human colorectal carcinoma
AU - Wahyudi, Gatot
AU - Wasito, Ito
AU - Melia, Tisha
AU - Budi, Indra
PY - 2011/6
Y1 - 2011/6
N2 - Previous studies have been conducted in gene expression profiling to identify groups of genes that characterize the colorectal carcinoma disease. Despite the success of previous attempts to identify groups of genes in the progression of the colorectal carcinoma disease, their methods either require subjective interpretation of the number of clusters, or lack stability during different runs of the algorithms. All of which limits the usefulness of these methods. In this study, we propose an enhanced algorithm that provides stability and robustness in identifying differentially expressed genes in an expression profile analysis. Our proposed algorithm uses multiple clustering algorithms under the consensus clustering framework. The results of the experiment show that the robustness of our method provides a consistent structure of clusters, similar to the structure found in the previous study. Furthermore, our algorithm outperforms any single clustering algorithms in terms of the cluster quality score.
AB - Previous studies have been conducted in gene expression profiling to identify groups of genes that characterize the colorectal carcinoma disease. Despite the success of previous attempts to identify groups of genes in the progression of the colorectal carcinoma disease, their methods either require subjective interpretation of the number of clusters, or lack stability during different runs of the algorithms. All of which limits the usefulness of these methods. In this study, we propose an enhanced algorithm that provides stability and robustness in identifying differentially expressed genes in an expression profile analysis. Our proposed algorithm uses multiple clustering algorithms under the consensus clustering framework. The results of the experiment show that the robustness of our method provides a consistent structure of clusters, similar to the structure found in the previous study. Furthermore, our algorithm outperforms any single clustering algorithms in terms of the cluster quality score.
UR - http://www.bioinformation.net/006/97320630006279.htm
U2 - 10.6026/97320630006279
DO - 10.6026/97320630006279
M3 - Article
SN - 0973-8894
VL - 6
SP - 279
EP - 282
JO - Bioinformation
JF - Bioinformation
IS - 7
ER -