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用于癌症激光诱导荧光诊断的非线性模式识别

Nonlinear pattern recognition for laser-induced fluorescence diagnosis of cancer.

作者信息

Majumder Shovan K, Ghosh Nirmalya, Kataria Sudhir, Gupta Pradeep K

机构信息

Biomedical Applications Section, Centre for Advanced Technology, Indore 452013, India.

出版信息

Lasers Surg Med. 2003;33(1):48-56. doi: 10.1002/lsm.10191.

Abstract

BACKGROUND AND OBJECTIVES

Use of laser induced fluorescence (LIF) spectroscopy for the diagnosis of cancer requires an appropriate diagnostic algorithm for spectral pattern recognition. While most of the diagnostic algorithms reported in the literature use standard linear feature extraction techniques like principal component analysis (PCA), partial least square (PLS) analysis etc., use of nonlinear techniques is expected to provide improved discrimination. We report here the performance of an algorithm based on nonlinear Maximum Representation and Discrimination Feature (MRDF) method for diagnosis of early stage cancer of human oral cavity. The diagnostic efficacy of the algorithm has been compared with a linear PCA based algorithm.

STUDY DESIGN/MATERIALS AND METHODS: The diagnostic algorithms were developed based on spectral data acquired in an in-vivo LIF study, at the outpatient department (OPD) of the Government Cancer Hospital, Indore, involving 16 patients with cancer of oral cavity and 13 normal volunteers with healthy oral cavity. In-vivo autofluorescence spectra were recorded using a N(2) laser based portable fluorimeter. The patients had no prior confirmed malignancy, were suspected on visual examination of having early cancer of the oral cavity and were diagnosed of squamous cell carcinoma (SCC) on the basis of histopathology of biopsy taken from abnormal site subsequent to acquisition of spectra. The spectra were acquired from a total of 171 tissue sites from patients, of which 83 were from SCC and 88 were from uninvolved squamous tissue, and 154 sites from healthy squamous tissue from normal volunteers. In each patient, the normal tissue sites interrogated were from the adjacent apparently uninvolved region of the oral cavity. Each site was treated separately and classified via the diagnostic algorithm developed. Instead of the spectral data from uninvolved sites of patients, the data from normal volunteers were used as the normal database for the development of diagnostic algorithms.

RESULTS

The nonlinear diagnostic algorithm based on MRDF provided a sensitivity of 93% and a specificity of 96% towards cancer for the training set data and a sensitivity of 95% and a specificity of 96% towards cancer for the validation set data. When implemented on the spectral data of the uninvolved oral cavity sites from the patients it yielded a specificity of 96%. On the other hand, the linear PCA based algorithm provided a sensitivity of 83% and a specificity of 66% towards cancer for the training set data and a sensitivity of 80% and a specificity of 58% towards cancer for the validation set data. When spectral data of the uninvolved oral cavity sites from the patients were considered as the unknown data set, it resulted in a specificity value of 56%.

CONCLUSIONS

The nonlinear MRDF algorithm provided significantly improved diagnostic performance as compared to the linear PCA based algorithm in discriminating the cancerous tissue sites of the oral cancer patients from the healthy squamous tissue sites of normal volunteers as well as the uninvolved tissue sites of the oral cavity of the patients with cancer.

摘要

背景与目的

利用激光诱导荧光(LIF)光谱诊断癌症需要一种合适的光谱模式识别诊断算法。虽然文献中报道的大多数诊断算法使用主成分分析(PCA)、偏最小二乘(PLS)分析等标准线性特征提取技术,但使用非线性技术有望提供更好的辨别能力。我们在此报告一种基于非线性最大表征与辨别特征(MRDF)方法的算法在诊断人类口腔早期癌症方面的性能。已将该算法的诊断效能与基于线性PCA的算法进行了比较。

研究设计/材料与方法:基于在印度印多尔政府癌症医院门诊部进行的一项体内LIF研究中获取的光谱数据开发诊断算法,该研究涉及16例口腔癌患者和13名口腔健康的正常志愿者。使用基于N(2)激光的便携式荧光计记录体内自发荧光光谱。这些患者之前未确诊患有恶性肿瘤,经目视检查怀疑患有口腔早期癌症,并在获取光谱后根据从异常部位采集的活检组织病理学诊断为鳞状细胞癌(SCC)。共从患者的171个组织部位获取了光谱,其中83个来自SCC,88个来自未受累的鳞状组织,以及从正常志愿者的154个健康鳞状组织部位获取了光谱。在每位患者中,所询问的正常组织部位来自口腔相邻的明显未受累区域。每个部位单独处理,并通过所开发的诊断算法进行分类。诊断算法开发过程中,未使用患者未受累部位的光谱数据,而是将正常志愿者的数据用作正常数据库。

结果

基于MRDF的非线性诊断算法对训练集数据诊断癌症的灵敏度为93%,特异性为96%;对验证集数据诊断癌症的灵敏度为95%,特异性为96%。当应用于患者未受累口腔部位的光谱数据时,其特异性为96%。另一方面,基于线性PCA的算法对训练集数据诊断癌症的灵敏度为83%,特异性为66%;对验证集数据诊断癌症的灵敏度为80%,特异性为58%。当将患者未受累口腔部位的光谱数据视为未知数据集时,其特异性值为56%。

结论

与基于线性PCA的算法相比,非线性MRDF算法在区分口腔癌患者的癌组织部位与正常志愿者的健康鳞状组织部位以及癌症患者口腔的未受累组织部位方面,提供了显著改善的诊断性能。

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