Monday, October 22, 2012

Abstract-Optimizing multi-dimensional terahertz imaging analysis for colon cancer diagnosis




http://www.sciencedirect.com/science/article/pii/S0957417412011335

Leila H. Eadie

  • Centre for Computational Intelligence, De Montfort University, The Gateway, Leicester, UK
  •  Centre for Rural Health, Aberdeen University, Centre for Health Science, Old Perth Road, Inverness, UK

  • Terahertz reflection imaging (at frequencies ∼0.1–10 THz/1012Hz) is non-ionizing and has potential as a medical imaging technique; however, there is currently no consensus on the optimum imaging parameters to use and the procedure for data analysis. This may be holding back the progress of the technique. This article describes the use of various intelligent analysis methods to choose relevant imaging parameters and optimize the processing of terahertz data in the diagnosis of ex vivo colon cancer samples. Decision trees were used to find important parameters, and neural networks and support vector machines were used to classify the terahertz data as indicating normal or abnormal samples. This work reanalyzes the data described in Reid et al. (Physics in Medicine and Biology, 2011, 56, 4333–4353), and improves on their reported diagnostic accuracy, finding sensitivities of 90–100% and specificities of 86–90%. This optimization of the analysis of terahertz data allows certain recommendations to be suggested concerning terahertz reflection imaging of colon cancer samples.

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