Abstract
The microarray technique has become a standard means in simultaneously examining expression of all genes measured in different circumstances. As microarray data are typically characterized by high dimensional features with a small number of samples, feature selection needs to be incorporated to identify a subset of genes that are meaningful for biological interpretation and accountable for the sample variation. In this article, we present a simple, yet effective feature selection framework suitable for two-dimensional microarray data. Our correlation-based, nonparametric approach allows compact representation of class-specific properties with a small number of genes. We evaluated our method using publicly available experimental data and obtained favorable results.
Cite
CITATION STYLE
Pok, G., Liu, J.-C. S., & Ryu, K. H. (2010). Effective feature selection framework for cluster analysis of microarray data. Bioinformation, 4(8), 385–389. https://doi.org/10.6026/97320630004385
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