Literature DB >> 12664681

Statistical modeling and visualization of molecular profiles in cancer.

Robert Scharpf1, Elizabeth S Garrett, Jiang Hu, Giovanni Parmigiani.   

Abstract

Current cancer classifications using morphological criteria produce heterogeneous classes with variable prognosis and clinical course. By measuring gene expression for thousands of genes in a single hybridization experiment, microarrays have the potential to contribute to more effective classifications based on molecular information. This gives hope to improve both prognosis and treatment. Statistical methods for molecular classification have focused on using high dimensional representations of molecular profiles to identify subclasses. These can be noisy, unstable, and highly platform-specific. In this article, we emphasize the notion of molecular profiles based on latent categories signifying under-, over-, and baseline expression. Following this approach, we can generate results that are more easily interpretable, more easily translated into clinical tools, more robust to noise, and less platform-dependent. We illustrate both the methods and the associated software for molecular class discovery on a data set of 244 microarrays comprising six known leukemia classes.

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Year:  2003        PMID: 12664681

Source DB:  PubMed          Journal:  Biotechniques        ISSN: 0736-6205            Impact factor:   1.993


  3 in total

1.  Gene network modeling via TopNet reveals functional dependencies between diverse tumor-critical mediator genes.

Authors:  Helene R McMurray; Aslihan Ambeskovic; Laurel A Newman; Jordan Aldersley; Vijaya Balakrishnan; Bradley Smith; Harry A Stern; Hartmut Land; Matthew N McCall
Journal:  Cell Rep       Date:  2021-12-21       Impact factor: 9.423

Review 2.  Gene expression profiles of HIV-1-infected glia and brain: toward better understanding of the role of astrocytes in HIV-1-associated neurocognitive disorders.

Authors:  Alejandra Borjabad; Andrew I Brooks; David J Volsky
Journal:  J Neuroimmune Pharmacol       Date:  2009-08-21       Impact factor: 7.285

3.  Monitoring of technical variation in quantitative high-throughput datasets.

Authors:  Martin Lauss; Ilhami Visne; Albert Kriegner; Markus Ringnér; Göran Jönsson; Mattias Höglund
Journal:  Cancer Inform       Date:  2013-09-23
  3 in total

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