2008
DOI: 10.1007/978-3-540-88436-1_35
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Discovery of Biomarkers for Hexachlorobenzene Toxicity Using Population Based Methods on Gene Expression Data

Abstract: Abstract. Discovering toxicity biomarkers is important in drug discovery to safely evaluate possible toxic effects of a substance in early phases. We tried evolutionary classification methods for selecting the important classifier genes in hexachlorobenzene toxicity using microarray data. Using modified genetic algorithms for selection of minimum number of features for classification of gene expression data, we discovered a number of gene sets of size 4 that were able to discriminate between the control and th… Show more

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Cited by 2 publications
(1 citation statement)
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“…GAs have been applied to biomarker detection mostly as a wrapper approach. For example in [116], SVMs is wrapped to GAs to discover the biomarkers in gene expression data with the accuracy of SVMs as the fitness function. The algorithm is divided into two phases where the first phase the algorithm runs for a specific number of generations to select features and each feature is assigned a score.…”
Section: Other Evolutionary Algorithms For Biomarker Detectionmentioning
confidence: 99%
“…GAs have been applied to biomarker detection mostly as a wrapper approach. For example in [116], SVMs is wrapped to GAs to discover the biomarkers in gene expression data with the accuracy of SVMs as the fitness function. The algorithm is divided into two phases where the first phase the algorithm runs for a specific number of generations to select features and each feature is assigned a score.…”
Section: Other Evolutionary Algorithms For Biomarker Detectionmentioning
confidence: 99%