4.0 Article

Microarray Analysis of Autoimmune Diseases by Machine Learning Procedures

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TITB.2008.2011984

关键词

Antiphospholipid syndrome; DNA microarrays; gene profiling; machine learning; systemic lupus erythematosus

资金

  1. Basque Government [Etortek-IE019, Saiotek-SA-2005/00093, BF105.430]
  2. Spanish Ministry of Science and Innovation [TIN2008-06815-C02-01]
  3. Spanish Ministry of Health [P1050475]
  4. Fundacion Marques de Valdecilla [API 06105]
  5. Fundacion Mutua Madrilena

向作者/读者索取更多资源

Microarray-based global gene expression profiling, with the use of sophisticated statistical algorithms is providing new insights into the pathogenesis of autoimmune diseases. We have applied a novel statistical technique for gene selection based on machine learning approaches to analyze microarray expression data gathered from patients with systemic lupus erythematosus (SLE) and primary antiphospholipid syndrome (PAPS), two autoimmune diseases of unknown genetic origin that share many common features. The methodology included a combination of three data discretization policies, a consensus gene selection method, and a multivariate correlation measurement. A set of 150 genes was found to discriminate SLE and PAPS patients from healthy individuals. Statistical validations demonstrate the relevance of this gene set from an univariate and multivariate perspective. Moreover, functional characterization of these genes identified an interferon-regulated gene signature, consistent with previous reports. It also revealed the existence of other regulatory pathways, including those regulated by PTEN, TNF, and BCL-2, which are altered in SLE and PAPS. Remarkably, a significant number of these genes carry E2F binding motifs in their promoters, projecting a role for E2F in the regulation of autoimmunity.

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