Classification of terahertz data as a tool for the detection of cancer

Date

2006

Authors

Berryman, M.
Rainsford, T.

Editors

Nicolau, D.

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Conference paper

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Biomedical Applications of Micro- and Nanoengineering III / Dan V. Nicolau (ed.)

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Biomedical Applications of Micro- and Nanoengineering (3rd : 2006 : Adelaide, Australia)

Abstract

The early detection of cancers is critical with respect to treatment and patient survival. Biopsy techniques that are currently employed for such diagnoses are invasive, time consuming and costly. A Terahertz (THz) imaging system potentially provides a fast and non-invasive way to detect and diagnose cancer. While there is proof of concept that THz can distinguish cancerous and normal tissue, the mechanisms underlying this differentiation are not well understood. A better understanding of THz spectral data can be gained through computational pattern recognition and related multivariate statistical tools. These allow for the differentiation of data into discrete and disjoint groups. Such separation of THz spectral data can provide complex information about diseased tissue, which can be used as a tool for distinguishing cancerous from non-cancerous cells as well as, discriminating between cancers at various developmental stages and, between different types of cancer.

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Copyright © 2006 SPIE--The International Society for Optical Engineering

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