2013
DOI: 10.1186/1755-8794-6-s1-s3
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TSG: a new algorithm for binary and multi-class cancer classification and informative genes selection

Abstract: BackgroundOne of the challenges in classification of cancer tissue samples based on gene expression data is to establish an effective method that can select a parsimonious set of informative genes. The Top Scoring Pair (TSP), k-Top Scoring Pairs (k-TSP), Support Vector Machines (SVM), and prediction analysis of microarrays (PAM) are four popular classifiers that have comparable performance on multiple cancer datasets. SVM and PAM tend to use a large number of genes and TSP, k-TSP always use even number of gene… Show more

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Cited by 40 publications
(44 citation statements)
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“…The sum of r × ( r − 1)/2 chi-square values was set as χ ( C k ) 2   ( k = 1,…, m ). We assign the test sample to the class with the largest chi-square value: class of testing sample = arg max⁡ k =1,…, m χ ( C k ) 2 [31]. …”
Section: Methodsmentioning
confidence: 99%
“…The sum of r × ( r − 1)/2 chi-square values was set as χ ( C k ) 2   ( k = 1,…, m ). We assign the test sample to the class with the largest chi-square value: class of testing sample = arg max⁡ k =1,…, m χ ( C k ) 2 [31]. …”
Section: Methodsmentioning
confidence: 99%
“…The supervised classifier models based on support vector machine, artificial neural networks, and random forest have been developed to address the cancer sub-type classification problem [7075]. The unsupervised classifiers based on hierarchical clustering and k-means clustering have also been developed to produce accurate classification results with limited knowledge about the cancer sub-types [7].…”
Section: Insilico Approaches To Study the Role Of Mirna In Human Camentioning
confidence: 99%
“…Hard problems like drug repositioning and rare variant interpretation can be successfully addressed by systematically borrowing the power of biomedical knowledge assembly. Cheung et al (University of British Columbia, Canada) predicted drug-disease associations by evaluating the over-representation of Medical Subject Heading (MeSH) terms for chemical compounds assigned to diseases- or symptom-related research publications in the MEDLINE database [8]. …”
Section: Knowledge Assembly For Drug Repositioning and Rare Variant Imentioning
confidence: 99%