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Application of Microarray Technology and softcomputing in cancer Biology
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International Journal of Biometrics and Bioinformatics (IJBB)
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Volume:  5    Issue:  4
Pages:  NULL
Publication Date:   September / October 2011
ISSN (Online): 1985-2347
Pages 
225 - 233
Author(s)  
K.Vaishali - India
A.VinayaBabu - India
 
Published Date   
05-10-2011 
Publisher 
CSC Journals, Kuala Lumpur, Malaysia
ADDITIONAL INFORMATION
Keywords   Abstract   References   Cited by   Related Articles   Collaborative Colleague
 
KEYWORDS:   DNA Microarray, Classification, Soft Computing, Gene Expression, Data Mining 
 
 
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DNA microarray technology has emerged as a boon to the scientific community in understanding the growth and development of life as well as in widening their knowledge in exploring the genetic causes of anomalies occurring in the working of the human body. microarray technology makes biologists be capable of monitoring expression of thousands of genes in a single experiment on a small chip. Extracting useful knowledge and info from these microarray has attracted the attention of many biologists and computer scientists. Knowledge engineering has revolutionalized the way in which the medical data is being looked at. Soft computing is a branch of computer science capable of analyzing complex medical data. Advances in the area of microarray –based expression analysis have led to the promise of cancer diagnosis using new molecular based approaches. Many studies and methodologies have come up which analyszes the gene espression data by using the techniques in data mining such as feature selection, classification, clustering etc. emboiding the soft computing methods for more accuracy. This review is an attempt to look at the recent advances in cancer research with DNA microarray technology , data mining and soft computing techniques. 
 
 
 
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K.Vaishali : Colleagues
A.VinayaBabu : Colleagues  
 
 
 
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