Abstract

The optimal treatment of patients with cancer depends on establishing accurate diagnoses by using a complex combination of clinical and histopathological data. In some instances, this task is difficult or impossible because of atypical clinical presentation or histopathology. To determine whether the diagnosis of multiple common adult malignancies could be achieved purely by molecular classification, we subjected 218 tumor samples, spanning 14 common tumor types, and 90 normal tissue samples to oligonucleotide microarray gene expression analysis. The expression levels of 16,063 genes and expressed sequence tags were used to evaluate the accuracy of a multiclass classifier based on a support vector machine algorithm. Overall classification accuracy was 78%, far exceeding the accuracy of random classification (9%). Poorly differentiated cancers resulted in low-confidence predictions and could not be accurately classified according to their tissue of origin, indicating that they are molecularly distinct entities with dramatically different gene expression patterns compared with their well differentiated counterparts. Taken together, these results demonstrate the feasibility of accurate, multiclass molecular cancer classification and suggest a strategy for future clinical implementation of molecular cancer diagnostics.

Keywords

Multiclass classificationSupport vector machineMedical diagnosisCancerClassifier (UML)Computational biologyDNA microarrayGene expression profilingGeneBiologyGene expressionBioinformaticsPathologyComputer scienceArtificial intelligenceMedicineGenetics

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Year
2001
Type
article
Volume
98
Issue
26
Pages
15149-15154
Citations
2033
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Closed

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Sridhar Ramaswamy, Pablo Tamayo, Ryan Rifkin et al. (2001). Multiclass cancer diagnosis using tumor gene expression signatures. Proceedings of the National Academy of Sciences , 98 (26) , 15149-15154. https://doi.org/10.1073/pnas.211566398

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DOI
10.1073/pnas.211566398