Multiclass classification of microarray data with repeated measurements: Application to cancer

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Abstract

Prediction of the diagnostic category of a tissue sample from its gene-expression profile and selection of relevant genes for class prediction have important applications in cancer research. We have developed the uncorrelated shrunken centroid (USC) and error-weighted, uncorrelated shrunken centroid (EWUSC) algorithms that are applicable to microarray data with any number of classes. We show that removing highly correlated genes typically improves classification results using a small set of genes.

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APA

Yeung, K. Y., & Bumgarner, R. E. (2003). Multiclass classification of microarray data with repeated measurements: Application to cancer. Genome Biology, 4(12). https://doi.org/10.1186/gb-2003-4-12-r83

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