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Common Subcluster Mining in Microarray Data for Molecular Biomarker Discovery.

Arnab Sadhu1, Balaram Bhattacharyya2

  • 1Department of Computer and System Sciences, Visva-Bharati University, Santiniketan, West Bengal, 731235, India.

Interdisciplinary Sciences, Computational Life Sciences
|October 13, 2017
PubMed
Summary
This summary is machine-generated.

This study introduces Common Subcluster Mining (CSM) to identify novel molecular biomarkers for early cancer detection. CSM analyzes gene expression data to find disease-sensitive genes, aiding in the discovery of potential diagnostic tools.

Keywords:
Biomarker discoveryCommon subcluster miningGene expression miningMicroarray miningMolecular biomarker

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Area of Science:

  • Bioinformatics
  • Computational Biology
  • Genomics

Background:

  • Early cancer detection is challenging with conventional biomarkers.
  • Molecular biomarkers offer potential for earlier diagnosis.
  • Gene expression data analysis using computational techniques can reveal disease-related genetic patterns.

Purpose of the Study:

  • To present a data mining method, Common Subcluster Mining (CSM), for discovering highly perturbed genes in diseased conditions.
  • To identify novel molecular biomarkers for early cancer detection.
  • To analyze differential gene expression patterns for disease-sensitive gene identification.

Main Methods:

  • Common Subcluster Mining (CSM) method applied to gene expression data.
  • Building a heap by superposing near-centroid clusters from normal samples.
  • Isolating genes with stable expression in normal samples and drastic changes in diseased samples.

Main Results:

  • CSM successfully identified disease-sensitive genesets in lung, prostate, pancreatic, and breast cancers, as well as leukemia and pulmonary arterial hypertension.
  • The method found new genes in addition to previously reported ones.
  • Genes with significant expression deviations in diseased samples were identified as prospective molecular biomarkers.

Conclusions:

  • CSM is an effective data mining approach for identifying molecular biomarkers from gene expression data.
  • The discovered genes show promise for early cancer detection and diagnosis.
  • This method contributes to advancing computational approaches in cancer research and biomarker discovery.