Comparative study of feature selection method of microarray data for gene classification / Nurulhuda Ghazali … [et al.]

Recent advances in biotechnology such as microarray, offer the ability to measure the levels of expression of thousands of genes in parallel. Analysis of microarray data can provide understanding and insight into gene function and regulatory mechanisms. This analysis is crucial to identify and class...

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Bibliographic Details
Main Authors: Ghazali, Nurulhuda, Hasan, Noraini, Mohd Lip, Norliana, Ghazali, Nur Hafizah, Tajuddin, Mohammad Faridun Naim, Saad, Puteh
Format: Book Section
Language:en
Published: Faculty of Administrative Science and Policy Studies 2012
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Online Access:https://ir.uitm.edu.my/id/eprint/55268/1/55268.pdf
https://ir.uitm.edu.my/id/eprint/55268/
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Summary:Recent advances in biotechnology such as microarray, offer the ability to measure the levels of expression of thousands of genes in parallel. Analysis of microarray data can provide understanding and insight into gene function and regulatory mechanisms. This analysis is crucial to identify and classify cancer diseases. Recent technology in cancer classification is based on gene expression profile rather than on morphological appearance of the tumor. However, this task is made more difficult due to the noisy nature of microarray data and the overwhelming number of genes. Thus, it is an important issue to select a small subset of genes to represent thousands of genes in microarray data which is referred as informative genes. These informative genes will then be classified according to its appropriate classes. To achieve the best solution to the classification issue, we proposed an approach of minimum Redundancy-Maximum Relevance feature selection method together with Probabilistic Neural Network classifier. The minimum Redundancy-Maximum Relevance feature selection method is used to select the informative genes while the Probabilistic Neural Network classifier acts as the classifier. This approach has been tested on a well-known cancer dataset which is Leukemia. The results achieved shows that the gene selected had given high classification accuracy. This reduction of genes helps take out some burdens from biologist and better classification accuracy can be used widely to detect cancer in early stage.