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Classification of terahertz-pulsed imaging data from excised breast tissue

机译:切除的乳腺组织中太赫兹脉冲成像数据的分类

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摘要

We investigate the efficacy of using data reduction techniques to aid classification of terahertz (THz) pulse data obtained from tumor and normal breast tissue. Fifty-one samples were studied from patients undergoing breast surgery at Addenbrooke's Hospital in Cambridge and Guy's Hospital in London. Three methods of data reduction were used: ten heuristic parameters, principal components of the pulses, and principal components of the ten parameter space. Classification was performed using the support vector machine approach with a radial basis function. The best classification accuracy, when using all ten components, came from using the principal components on the pulses and principal components on the parameter, with an accuracy of 92%. When less than ten components were used, the principal components on the parameter space outperformed the other meth ods. As a visual demonstration of the classification technique, we apply the data reduction/classification to several example images and demonstrate that, aside from some interpatient variability and edge effects, the algorithm gives good classification on terahertz data from breast tissue. The results indicate that under controlled conditions data reduction and SVM classification can be used with good accuracy to classify tumor and normal breast tissue.
机译:我们调查了使用数据缩减技术来辅助对从肿瘤和正常乳腺组织中获得的太赫兹(THz)脉冲数据进行分类的功效。从剑桥的Addenbrooke医院和伦敦的Guy's医院对接受乳房手术的患者进行了51个样本的研究。使用了三种数据缩减方法:十个启发式参数,脉冲的主分量和十个参数空间的主分量。使用具有径向基函数的支持向量机方法进行分类。当使用所有十个分量时,最好的分类精度来自使用脉冲上的主分量和参数上的主分量,精度为92%。当使用少于十个组件时,参数空间上的主组件要优于其他方法。作为分类技术的直观展示,我们将数据缩减/分类应用于几个示例图像,并证明,除了一些患者间的可变性和边缘效应,该算法还对来自乳腺组织的太赫兹数据进行了很好的分类。结果表明,在受控条件下,可以使用数据约简和SVM分类对肿瘤和正常乳腺组织进行准确分类。

著录项

  • 来源
    《Journal of biomedical optics》 |2012年第1期|p.016005.1-016005.10|共10页
  • 作者单位

    University of Western Australia, School of Physics, Crawley 6009, Australia;

    King's College London, Section of Research Oncology, Guy's Hospital, London SE1 9RT, United Kingdom;

    King's College London, Section of Research Oncology, Guy's Hospital, London SE1 9RT, United Kingdom;

    TeraView Ltd., Platinum Building, John's Innovation Park, Cowley Road, Cambridge, CB4 OWS, United Kingdom;

    TeraView Ltd., Platinum Building, John's Innovation Park, Cowley Road, Cambridge, CB4 OWS, United Kingdom,University of Cambridge, Semiconductor Physics Group, Cavendish Laboratory, Cambridge, CB3 OHE, United Kingdom;

    University of Western Australia, School of Physics, Crawley 6009, Australia;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    cancer; terahertz; breast; classification; principal component analysis; support vector machine;

    机译:癌症;太赫兹乳房;分类;主成分分析支持向量机;

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