A semi-supervised hierarchical approach: two-dimensional clustering of microarray gene expression data

被引:0
作者
R. Priscilla
S. Swamynathan
机构
[1] Anna University,Department of Information and Science and Technology, The College of Engineering, Guindy Campus
来源
Frontiers of Computer Science | 2013年 / 7卷
关键词
clustering; hierarchical clustering; supervised clustering; overlapping clustering;
D O I
暂无
中图分类号
学科分类号
摘要
Micro array technologies have become a widespread research technique for biomedical researchers to assess tens of thousands of gene expression values simultaneously in a single experiment. Micro array data analysis for biological discovery requires computational tools. In this research a novel two-dimensional hierarchical clustering is presented. From the review, it is evident that the previous research works have used clustering which have been applied in gene expression data to create only one cluster for a gene that leads to biological complexity. This is mainly because of the nature of proteins and their interactions. Since proteins normally interact with different groups of proteins in order to serve different biological roles, the genes that produce these proteins are therefore expected to co express with more than one group of genes. This constructs that in micro array gene expression data, a gene may makes its presence in more than one cluster. In this research, multi-level micro array clustering, performed in two dimensions by the proposed two-dimensional hierarchical clustering technique can be used to represent the existence of genes in one or more clusters consistent with the nature of the gene and its attributes and prevent biological complexities.
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页码:204 / 213
页数:9
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