Robust signature discovery for affymetrix GeneChip® cancer classification

Conference paper


Lai, H., Albrecht, A. and Steinhofel, K. 2015. Robust signature discovery for affymetrix GeneChip® cancer classification. 6th International Conference on Agents and Artificial Intelligence. Angers, France 06 - 08 Mar 2014 Springer. pp. 329-345 https://doi.org/10.1007/978-3-319-25210-0_20
TypeConference paper
TitleRobust signature discovery for affymetrix GeneChip® cancer classification
AuthorsLai, H., Albrecht, A. and Steinhofel, K.
Abstract

Phenotype prediction is one of the central issues in genetics and medical sciences research. Due to the advent of high-throughput screening technologies, microarray-based cancer classification has become a standard procedure to identify cancer-related gene signatures. Since gene expression profiling in transcriptome is of high dimensionality, it is a challenging task to discover a biologically functional signature over different cell lines. In this article, we present an innovative framework for finding a small portion of discriminative genes for a specific disease phenotype classification by using information theory. The framework is a data-driven approach and considers feature relevance, redundancy, and interdependence in the context of feature pairs. Its effectiveness has been validated by using a brain cancer benchmark, where the gene expression profiling matrix is derived from Affymetrix Human Genome U95Av2 GeneChip®. Three multivariate filters based on information theory have also been used for comparison. To show the strengths of the framework, three performance measures, two sets of enrichment analysis, and a stability index have been used in our experiments. The results show that the framework is robust and able to discover a gene signature having a high level of classification performance and being more statistically significant enriched.

Conference6th International Conference on Agents and Artificial Intelligence
Page range329-345
ISSN0302-9743
ISBN
Hardcover9783319252094
PublisherSpringer
Publication dates
Print25 Sep 2015
Publication process dates
Deposited29 Sep 2015
Accepted31 Aug 2014
Output statusPublished
Additional information

Published in: Agents and Artificial Intelligence, Volume 8946 of the series Lecture Notes in Computer Science pp 329-345

Digital Object Identifier (DOI)https://doi.org/10.1007/978-3-319-25210-0_20
LanguageEnglish
Book titleAgents and Artificial Intelligence: 6th International Conference, ICAART 2014, Angers, France, March 6-8, 2014, Revised Selected Papers
Permalink -

https://repository.mdx.ac.uk/item/85x45

  • 12
    total views
  • 0
    total downloads
  • 2
    views this month
  • 0
    downloads this month

Export as