Title
Using emerging pattern based projected clustering and gene expression data for cancer detection
Abstract
Using gene expression data for cancer detection is one of the famous research topics in bioinformatics. Theoretically, gene expression data is capable to detect all types of early cancer development in molecular level. Traditional clustering and pattern mining algorithm are either inadequate to handle high dimensional gene expression data effectively or the results obtained are not easy to understand. We proposed emerging pattern based projected clustering (EPPC) approaches to cope with the cancer detection problem. Previous result shows that easy understandable clusters are obtained. In this paper, the dimension projection process of EPPC is further studied and experimental results showed that the resulting clusters obtained by EPPC give comparable accuracy in classification when compared with ORCLUS.
Year
Venue
Keywords
2004
APBC
cancer detection,pattern mining algorithm,cancer detection problem,dimension projection process,comparable accuracy,traditional clustering,gene expression data,easy understandable cluster,high dimensional gene expression,early cancer development,data mining,bioinformatics
Field
DocType
Citations 
Cancer classification,Data mining,Computer science,Cancer detection,Bioinformatics,Data mining algorithm,Cluster analysis,Cancer
Conference
11
PageRank 
References 
Authors
0.60
9
4
Name
Order
Citations
PageRank
Larry T. H. Yu1110.60
Fu-lai Chung224434.50
Stephen C. F. Chan316815.78
Simon M. C. Yuen4110.93