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首页> 外文期刊>Photomedicine and Laser Surgery >Autofluorescence of Breast Tissues: Evaluation of Discriminating Algorithms for Diagnosis of Normal, Benign, and Malignant Conditions
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Autofluorescence of Breast Tissues: Evaluation of Discriminating Algorithms for Diagnosis of Normal, Benign, and Malignant Conditions

机译:乳腺组织自发荧光:正常,良性和恶性疾病诊断算法的评价

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摘要

Objective: We evaluated different discriminating algorithms for classifying laser-induced fluorescence spectra of normal, benign, and malignant breast tissues that were obtained with 325-nm excitation. Background Data: Mammography and histopathology are the conventional gold standard methods of screening and diagnosis of breast cancers, respectively. The former is prone to a high rate of false-positive results and poses the risk of repeated exposure to ionizing radiation, whereas the latter suffers from subjective interpretations of morphological features. Thus the development of a more reliable detection and screening methodology is of great interest to those practicing breast cancer management. Several studies have demonstrated the efficacy of optical spectroscopy in diagnosing cancer and other biomedical applications. Materials and Methods: Autofluorescence spectra of normal, benign, and malignant breast tissues, with 325-nm excitation, were recorded. The data were subjected to diverse discriminating algorithms ranging from intensities and ratios of curve-resolved bands to principal components analysis (PCA)-derived parameters. Results: Intensity plots of collagen and NADPH, two known fluorescent biomarkers, yielded accurate classification of the different tissue types. PCA was carried out on both unsupervised and supervised methods, and both approaches yielded accurate classification. In the case of the supervised classification, the developed standard sets were verified and evaluated. The limit test approach provided unambiguous and objective classification, and this method also has the advantage of being user-friendly, so untrained personnel can directly compare unknown spectra against standard sets to make diagnoses instantly, objectively, and unambiguously. Conclusion: The results obtained in this study further support the efficacy of 325-nm-induced autofluorescence, and demonstrate the suitability of limit test analysis as a means of objectively and unambiguously classifying breast tissues.
机译:目的:我们评估了用于区分由325 nm激发获得的正常,良性和恶性乳腺组织的激光诱导荧光光谱的不同区分算法。背景资料:乳房X线照相术和组织病理学分别是筛查和诊断乳腺癌的常规金标准方法。前者容易产生较高的假阳性结果,并具有重复暴露于电离辐射的风险,而后者则遭受形态特征的主观解释。因此,开发更可靠的检测和筛查方法对于从事乳腺癌管理的人们非常感兴趣。几项研究证明了光谱学在诊断癌症和其他生物医学应用中的功效。材料与方法:记录正常,良性和恶性乳腺组织在325 nm激发下的自发荧光光谱。数据经过各种区分算法,范围从曲线分辨谱带的强度和比率到主成分分析(PCA)得出的参数。结果:胶原蛋白和NADPH(两种已知的荧光生物标记)的强度图可对不同组织类型进行准确分类。 PCA是在无监督方法和有监督方法两者上进行的,并且两种方法都能产生准确的分类。在监督分类的情况下,对开发的标准集进行验证和评估。极限测试方法提供了明确而客观的分类,并且该方法还具有用户友好的优势,因此,未经培训的人员可以直接将未知光谱与标准集进行比较,从而立即,客观,明确地进行诊断。结论:本研究获得的结果进一步支持了325 nm诱导的自发荧光的功效,并证明了极限测试分析作为客观和明确分类乳房组织的一种方法的适用性。

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  • 来源
    《Photomedicine and Laser Surgery》 |2009年第2期|241-252|共12页
  • 作者单位

    Division of Laser Spectroscopy, Manipal Life Science Centre/Department of Surgical Oncology, Shirdi Sai Baba Cancer Hospital, Manipal University, Manipal, Karnataka, India.;

    Division of Laser Spectroscopy, Manipal Life Science Centre, Manipal University, Manipal, Karnataka, India.;

    Division of Laser Spectroscopy, Manipal Life Science Centre/Department of Surgical Oncology, Shirdi Sai Baba Cancer Hospital, Manipal University, Manipal, Karnataka, India.;

    Department of General Surgery, Kasturba Hospital, Manipal University, Manipal, Karnataka, India.;

    Department of Pathology, Kasturba Hospital, Manipal University, Manipal, Karnataka, India.;

    Division of Laser Spectroscopy, Manipal Life Science Centre, Manipal University, Manipal, Karnataka, India.;

    Department of Surgical Oncology, Shirdi Sai Baba Cancer Hospital, Manipal University, Manipal, Karnataka, India.;

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