首页> 外文会议>Conference on Diagnostic Optical Spectroscopy in Biomedicine II Jun 24-25, 2003 Munich, Germany >Combined classifier for discriminating cancerous tissue from normal tissue using light-induced autofluorescence
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Combined classifier for discriminating cancerous tissue from normal tissue using light-induced autofluorescence

机译:组合分类器,通过光诱导自发荧光将癌组织与正常组织区分开

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摘要

We investigated a novel method combining principal component analysis (PCA) and supervised learning technique, support vector machine (SVM), for classifying carcinoma lesion from normal tissue with light-induced autofluorescence. The autofluorescence spectral signals were collected in vivo from 85 nasopharyngeal carcinoma lesions and 131 normal tissue sites from 59 subjects during routine nasal endoscopy. With the combined PCA and SVM classifying algorithm, the achieved overall accuracy is over 97%, companied with 95% sensitivity and 99% specificity for discriminating carcinoma from normal tissue. In comparison with the previously developed algorithms based on PCA method, this new method outperforms threshold- and probability-based PCA algorithms in all instances. The experimental results indicate great promise for autofluorescence spectroscopy based detection of small carcinoma lesion in the nasopharynx and other tissues.
机译:我们研究了一种结合主成分分析(PCA)和监督学习技术,支持向量机(SVM)的新颖方法,用于通过光诱导的自发荧光对正常组织的癌灶进行分类。在常规鼻内窥镜检查期间,从59位受试者的85个鼻咽癌病变和131个正常组织部位体内收集了自身荧光光谱信号。结合使用PCA和SVM分类算法,可将总体准确性提高到97%以上,同时具有95%的敏感性和99%的特异性,可将癌与正常组织区分开。与先前基于PCA方法开发的算法相比,该新方法在所有情况下均优于基于阈值和概率的PCA算法。实验结果表明,基于自发荧光光谱技术检测鼻咽和其他组织中的小癌病变具有广阔的前景。

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