A protocol for building and evaluating predictors of disease state based on microarray data

Journal Article (2005)
Author(s)

L.F.A. Wessels (TU Delft - Multimedia Computing)

MJT Reinders (TU Delft - Multimedia Computing)

AAM Hart (External organisation)

CJ Veenman (TU Delft - Interactive Intelligence)

H Dai (External organisation)

T He (External organisation)

LJ van 't Veer (External organisation)

Multimedia Computing
DOI related publication
https://doi.org/doi:10.1093/bioinformatics/bti429
More Info
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Publication Year
2005
Multimedia Computing
Issue number
19
Volume number
21
Pages (from-to)
3755-3762

Abstract

Motivation: Microarray gene expression data are increasingly employed to identify sets of marker genes that accurately predict disease development and outcome in cancer. Many computational approaches have been proposed to construct such predictors. However, there is, as yet, no objective way to evaluate whether a new approach truly improves on the current state of the art. In addition no `standard¿ computational approach has emerged which enables robust outcome prediction.

Results: An important contribution of this work is the description of a principled training and validation protocol, which allows objective evaluation of the complete methodology for constructing a predictor. We review the possible choices of computational approaches, with specific emphasis on predictor choice and reporter selection strategies. Employing this training-validation protocol, we evaluated different reporter selection strategies and predictors on six gene expression datasets of varying degrees of difficulty. We demonstrate that simple reporter selection strategies (forward filtering and shrunken centroids) work surprisingly well and outperform partial least squares in four of the six datasets. Similarly, simple predictors, such as the nearest mean classifier, outperform more complex classifiers. Our training-validation protocol provides a robust methodology to evaluate the performance of new computational approaches and to objectively compare outcome predictions on different datasets.

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