Clinical trial design for microarray predictive marker discovery and assessment
- 1 December 2004
- journal article
- review article
- Published by Elsevier in Annals of Oncology
- Vol. 15 (12) , 1731-1737
- https://doi.org/10.1093/annonc/mdh466
Abstract
Transcriptional profiling technologies that simultaneously measure the expression of thousands of mRNA species represent a powerful new clinical research tool. Similar to previous laboratory analytical methods including immunohistochemistry, PCR and in situ hybridization, this new technology may also find its niche in routine diagnostics. Outcome predictors discovered by these methods may be quite different from previous single-gene markers. These novel tests will probably combine the information embedded in the expression of multiple genes with mathematical prediction algorithms to formulate classification rules and predict outcome. The performance of machine learning-algorithm-based diagnostic tests may improve as they are trained on larger and larger sets of samples, and several generations of tests with improving accuracy may be introduced sequentially. Several gene-expression profiling–technology platforms are mature enough for clinical testing. The most important next step that is needed for further progress is the development and validation of multigene predictors in prospectively designed clinical trials to determine the true accuracy and clinical value of this new technology. This manuscript reviews methodological and statistical issues relevant to clinical trial design to discover and validate multigene predictors of response to therapy.Keywords
This publication has 34 references indexed in Scilit:
- Prediction of Survival in Diffuse Large-B-Cell Lymphoma Based on the Expression of Six GenesNew England Journal of Medicine, 2004
- Estimating the occurrence of false positives and false negatives in microarray studies by approximating and partitioning the empirical distribution of p-valuesBioinformatics, 2003
- Molecular Oncodiagnostics: Where We Are and Where We Need to GoJournal of Clinical Oncology, 2003
- Estimating Dataset Size Requirements for Classifying DNA Microarray DataJournal of Computational Biology, 2003
- Determination of minimum sample size and discriminatory expression patterns in microarray dataBioinformatics, 2002
- Evaluation of HER-2/neu Immunohistochemical Assay Sensitivity and Scoring on Formalin-Fixed and Paraffin-Processed Cell Lines and Breast TumorsAmerican Journal of Clinical Pathology, 2002
- Incorporating genomics into the cancer clinical trial processSeminars in Oncology, 2001
- Quantitative Assessment of DNA Microarrays—Comparison with Northern Blot AnalysesGenomics, 2001
- Distinct types of diffuse large B-cell lymphoma identified by gene expression profilingNature, 2000
- Linear Model Selection by Cross-validationJournal of the American Statistical Association, 1993