Suite of decision tree-based classification algorithms on cancer gene expression data

One of the major challenges in microarray analysis, especially in cancer gene expression profiles, is to determine genes or groups of genes that are highly expressed in cancer cells but not in normal cells. Supervised machine learning techniques are used with microarray datasets to build classificat...

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Veröffentlicht in:Egyptian informatics journal 2011-07, Vol.12 (2), p.73-82
Hauptverfasser: Snousy, Mohmad Badr Al, El-Deeb, Hesham Mohamed, Badran, Khaled, Khlil, Ibrahim Ali Al
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Sprache:eng
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Zusammenfassung:One of the major challenges in microarray analysis, especially in cancer gene expression profiles, is to determine genes or groups of genes that are highly expressed in cancer cells but not in normal cells. Supervised machine learning techniques are used with microarray datasets to build classification models that improve the diagnostic of different diseases. In this study, we compare the classification accuracy among nine decision tree methods; which are divided into two main categories; the first is single decision tree C4.5, CART, Decision Stump, Random Tree and REPTree. The second category is ensample decision tree such Bagging (C4.5 and REPTree), AdaBoost (C4.5 and REPTree), ADTree, and Random Forests. In addition to the previous comparative analyses, we evaluate the behaviors of these methods with/without applying attribute selection (A.S.) techniques such as Chi-square attribute selection and Gain Ratio attribute selection. Usually, the ensembles learning methods: bagging, boosting, and Random Forest; enhanced classification accuracy of single decision tree due to the natures of its mechanism which generate several classifiers from one dataset and vote for their classification decision. The values of enhancement fluctuate between (4.99–6.19%). In majority of datasets and classification methods, Gain ratio attribute selection slightly enhanced the classification accuracy (∼1.05%) due to the concentration on the most promising genes having the effective information gain that discriminate the dataset. Also, Chi-square attributes evaluation for ensemble classifiers slightly decreased the classification accuracy due to the elimination of some informative genes.
ISSN:1110-8665
2090-4754
DOI:10.1016/j.eij.2011.04.003