0000000001130000

AUTHOR

Camps-valls Gustavo

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Profiled support vector machines for antisense oligonucleotide efficacy prediction.

2004

Abstract Background This paper presents the use of Support Vector Machines (SVMs) for prediction and analysis of antisense oligonucleotide (AO) efficacy. The collected database comprises 315 AO molecules including 68 features each, inducing a problem well-suited to SVMs. The task of feature selection is crucial given the presence of noisy or redundant features, and the well-known problem of the curse of dimensionality. We propose a two-stage strategy to develop an optimal model: (1) feature selection using correlation analysis, mutual information, and SVM-based recursive feature elimination (SVM-RFE), and (2) AO prediction using standard and profiled SVM formulations. A profiled SVM gives d…

Models GeneticSoftware ValidationGene ExpressionProteinsOligonucleotides Antisenselcsh:Computer applications to medicine. Medical informaticslcsh:Biology (General)Predictive Value of TestsDatabases Geneticlcsh:R858-859.7RNAlcsh:QH301-705.5SoftwareResearch ArticleBMC bioinformatics
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