Paper Title
A Hybrid Approach Towards Classification Of Schizophrenia Microarray Data Along With Extraction With The Most Responsible Genes For The Disease
Abstract
Analysis of microarray data for determination of the genes which are responsible for any genetic disease need
effective computational techniques. As the human body consists of thousands of genes, the microarray data containing the
information of the genes are tremendously huge. In this paper, we have presented a combined approach for revealing the
gene pattern which may be associated with even a quite poor prognosis Schizophrenia disease. We have filtered the dataset
using Gabor filter and the filtered output is then passed to a random forest classifier. The maximum achievable accuracy
attained here for the diagnosis purpose is quite satisfactory. Also the gene pattern has been verified from DAVID ontological
website where most of the genes extracted computationally are really associated with Schizophrenia Disease.
Keywords— Schizophrenia Disease; Microarray Data;Gene;Gene Signature;Disease Diagnosis.