The Scientific World Journal (Jan 2013)

Identification of Biomarkers for Esophageal Squamous Cell Carcinoma Using Feature Selection and Decision Tree Methods

  • Chun-Wei Tung,
  • Ming-Tsang Wu,
  • Yu-Kuei Chen,
  • Chun-Chieh Wu,
  • Wei-Chung Chen,
  • Hsien-Pin Li,
  • Shah-Hwa Chou,
  • Deng-Chyang Wu,
  • I-Chen Wu

DOI
https://doi.org/10.1155/2013/782031
Journal volume & issue
Vol. 2013

Abstract

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Esophageal squamous cell cancer (ESCC) is one of the most common fatal human cancers. The identification of biomarkers for early detection could be a promising strategy to decrease mortality. Previous studies utilized microarray techniques to identify more than one hundred genes; however, it is desirable to identify a small set of biomarkers for clinical use. This study proposes a sequential forward feature selection algorithm to design decision tree models for discriminating ESCC from normal tissues. Two potential biomarkers of RUVBL1 and CNIH were identified and validated based on two public available microarray datasets. To test the discrimination ability of the two biomarkers, 17 pairs of expression profiles of ESCC and normal tissues from Taiwanese male patients were measured by using microarray techniques. The classification accuracies of the two biomarkers in all three datasets were higher than 90%. Interpretable decision tree models were constructed to analyze expression patterns of the two biomarkers. RUVBL1 was consistently overexpressed in all three datasets, although we found inconsistent CNIH expression possibly affected by the diverse major risk factors for ESCC across different areas.