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Genes Analysis of Data by Using Hierarchical Quality Threshold Clustering


Affiliations
1 Technocrat Institute of Technology-Bhopal (M.P.), India
2 Department of Information Technology at Technocrat Institute of Technology-Bhopal (M.P.), India
3 Technocrats Institute of Technology, Bhopal, India
4 Department of CSE/IT at Technocrat Institute of Technology-Bhopal (M.P.), India
5 Gandhi Technical University, Bhopal(M.P.), India
     

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In this paper “Genes Analysis of Data by Using Hierarchical Quality Threshold Clustering” is an approach which proposed dynamically Growing Hierarchical Self Organizing Map (DGHSOM) with Nano array to identify co-expressed genes. The DGHSOM overcomes the problem of specifying the number of clusters and total number of iteration before the processing now, we are using QT (quality threshold) clustering is a method of partitioning data, which is invented for gene clustering. It requires more computing power than k- means, but does not require specifying the number of clusters. DNA Nano array technology is a challenging area in bioinformatics research, as we have to monitor millions of genes simultaneously. The expression profile of the gene can be useful in cancer disease analysis and its diagnosis. Gene expression data is very voluminous and very difficult to analyze. Several clustering algorithm have been proposed to identify co expressed genes. The Self-organizing-maps (SOM) is a powerful tool for recognizing and classifying features in complex, micro array data. But the interpretation of co- expression of genes are heavily depends on domain knowledge and SOM lacks since the number of clusters must be determined before training.

Keywords

Gene Expression Profile, Image Processing, Dynamically Growing Self Organizing Map, Nano Array, Qt Clustering.
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  • Genes Analysis of Data by Using Hierarchical Quality Threshold Clustering

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Authors

Shiv Kumar
Technocrat Institute of Technology-Bhopal (M.P.), India
Vijay K. Chaudhari
Department of Information Technology at Technocrat Institute of Technology-Bhopal (M.P.), India
Md. Ilyas Khan
Technocrats Institute of Technology, Bhopal, India
Neetesh Gupta
Department of CSE/IT at Technocrat Institute of Technology-Bhopal (M.P.), India
Bupendra Verma
Gandhi Technical University, Bhopal(M.P.), India

Abstract


In this paper “Genes Analysis of Data by Using Hierarchical Quality Threshold Clustering” is an approach which proposed dynamically Growing Hierarchical Self Organizing Map (DGHSOM) with Nano array to identify co-expressed genes. The DGHSOM overcomes the problem of specifying the number of clusters and total number of iteration before the processing now, we are using QT (quality threshold) clustering is a method of partitioning data, which is invented for gene clustering. It requires more computing power than k- means, but does not require specifying the number of clusters. DNA Nano array technology is a challenging area in bioinformatics research, as we have to monitor millions of genes simultaneously. The expression profile of the gene can be useful in cancer disease analysis and its diagnosis. Gene expression data is very voluminous and very difficult to analyze. Several clustering algorithm have been proposed to identify co expressed genes. The Self-organizing-maps (SOM) is a powerful tool for recognizing and classifying features in complex, micro array data. But the interpretation of co- expression of genes are heavily depends on domain knowledge and SOM lacks since the number of clusters must be determined before training.

Keywords


Gene Expression Profile, Image Processing, Dynamically Growing Self Organizing Map, Nano Array, Qt Clustering.