Classifying Gene Expression Profiles from Pairwise mRNA Comparisons
- 30 January 2004
- journal article
- Published by Walter de Gruyter GmbH in Statistical Applications in Genetics and Molecular Biology
- Vol. 3 (1) , 1-19
- https://doi.org/10.2202/1544-6115.1071
Abstract
We present a new approach to molecular classification based on mRNA comparisons. Our method, referred to as the top-scoring pair(s) (TSP) classifier, is motivated by current technical and practical limitations in using gene expression microarray data for class prediction, for example to detect disease, identify tumors or predict treatment response. Accurate statistical inference from such data is difficult due to the small number of observations, typically tens, relative to the large number of genes, typically thousands. Moreover, conventional methods from machine learning lead to decisions which are usually very difficult to interpret in simple or biologically meaningful terms. In contrast, the TSP classifier provides decision rules which i) involve very few genes and only relative expression values (e.g., comparing the mRNA counts within a single pair of genes); ii) are both accurate and transparent; and iii) provide specific hypotheses for follow-up studies. In particular, the TSP classifier achieves prediction rates with standard cancer data that are as high as those of previous studies which use considerably more genes and complex procedures. Finally, the TSP classifier is parameter-free, thus avoiding the type of over-fitting and inflated estimates of performance that result when all aspects of learning a predictor are not properly cross-validated.Keywords
This publication has 29 references indexed in Scilit:
- DEVELOPING OPTIMAL PREDICTION MODELS FOR CANCER CLASSIFICATION USING GENE EXPRESSION DATAJournal of Bioinformatics and Computational Biology, 2004
- A CART-based approach to discover emerging patterns in microarray dataBioinformatics, 2003
- Cell and tumor classification using gene expression data: Construction of forestsProceedings of the National Academy of Sciences, 2003
- Pitfalls in the Use of DNA Microarray Data for Diagnostic and Prognostic ClassificationJNCI Journal of the National Cancer Institute, 2003
- New feature subset selection procedures for classification of expression profilesGenome Biology, 2002
- Predicting the clinical status of human breast cancer by using gene expression profilesProceedings of the National Academy of Sciences, 2001
- Molecular classification of multiple tumor typesBioinformatics, 2001
- Multifunctional α-enolase: its role in diseasesCellular and Molecular Life Sciences, 2001
- ComplementNew England Journal of Medicine, 2001
- Making sense of microarrays.2001