Artigo Acesso aberto Revisado por pares

Molecular classification of multiple tumor types

2001; Oxford University Press; Volume: 17; Issue: suppl_1 Linguagem: Inglês

10.1093/bioinformatics/17.suppl_1.s316

ISSN

1367-4811

Autores

Chen‐Hsiang Yeang, Sridhar Ramaswamy, Pablo Tamayo, Sayan Mukherjee, Ryan Rifkin, Michael Angelo, Michael Reich, Eric S. Lander, Jill P. Mesirov, Todd Golub,

Tópico(s)

Genomics and Phylogenetic Studies

Resumo

Abstract Using gene expression data to classify tumor types is a very promising tool in cancer diagnosis. Previous works show several pairs of tumor types can be successfully distinguished by their gene expression patterns (Golub et al. 1999, Ben-Dor et al. 2000, Alizadeh et al. 2000). However, the simultaneous classification across a heterogeneous set of tumor types has not been well studied yet. We obtained 190 samples from 14 tumor classes and generated a combined expression dataset containing 16063 genes for each of those samples. We performed multi-class classification by combining the outputs of binary classifiers. Three binary classifiers (k-nearest neighbors, weighted voting, and support vector machines) were applied in conjunction with three combination scenarios (one-vs-all, all-pairs, hierarchical partitioning). We achieved the best cross validation error rate of 18.75% and the best test error rate of 21.74% by using the one-vs-all support vector machine algorithm. The results demonstrate the feasibility of performing clinically useful classification from samples of multiple tumor types. Contact: chyeang@mit.edu

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