2001
DOI: 10.1073/pnas.211566398
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Multiclass cancer diagnosis using tumor gene expression signatures

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… Show more

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Cited by 1,743 publications
(1,218 citation statements)
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References 27 publications
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“…6 As a new and powerful modeling tool, support vector machine (SVM) has gained much interest in pattern recognition and function approximation applications recently. In bioinformatics, SVMs have been successfully used to solve classification and correlation problems, such as cancer diagnosis, [7][8][9][10] identification of HIV protease cleavage sites, 11 protein class prediction, 12 etc. SVMs have also been applied in chemistry, for example, the prediction of retention index of protein, and other QSAR studies.…”
Section: Introductionmentioning
confidence: 99%
“…6 As a new and powerful modeling tool, support vector machine (SVM) has gained much interest in pattern recognition and function approximation applications recently. In bioinformatics, SVMs have been successfully used to solve classification and correlation problems, such as cancer diagnosis, [7][8][9][10] identification of HIV protease cleavage sites, 11 protein class prediction, 12 etc. SVMs have also been applied in chemistry, for example, the prediction of retention index of protein, and other QSAR studies.…”
Section: Introductionmentioning
confidence: 99%
“…Expression-based classification schemes have been applied to distinguish ovarian cancers from other tumour types Ross et al, 2000;Ramaswamy et al, 2001), but rarely to distinguish normal samples from ovarian cancers. A recent study classified pooled normal epithelial samples from ovarian tumours based on the gene expression of CLDN3 and VEGF (Lu et al, 2004).…”
mentioning
confidence: 99%
“…Another approach is to apply support vector machines (SVMs), which attempt to avoid overfitting by finding a linear discriminant function (or generalised linear discriminant) that maximises the margin (the minimum distance of any sample point to the decision boundary) (Vapnik, 1998). The number of free parameters in SVMs is not a function of the dimensionality, but instead is upper-bounded by the number of samples, which for microarrays is much smaller (Ramaswamy et al, 2001). However, whether using linear or nonlinear kernels, SVMs are not immune to the curse of dimensionality.…”
Section: Predictive Classificationmentioning
confidence: 99%
“…In microarray data analysis, unsupervised clustering must be cautiously applied and may be unnecessary when samples come with appropriate and reliable supervising labels (Ramaswamy et al, 2001;Clarke et al, 2008). However, unsupervised clustering constitutes an important tool for discovering underlying cancer subtypes or gene modules (Frey and Dueck, 2007;Miller et al, 2008).…”
Section: Unsupervised Clusteringmentioning
confidence: 99%
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