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Development and evaluation of pattern recognition techniques for fluorescence diagnosis of atherosclerosis

机译:用于动脉粥样硬化荧光诊断的模式识别技术的开发和评估

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Abstract: A field where fluorescence spectroscopy might be of great interest for diagnosis, is coronary atherosclerosis and therefore spectroscopic characterization of cardiovascular tissues has been extensively studied. Nevertheless there are several limitations in the precise interpretation of the spectroscopic differences, between normal and atherosclerotic arteries since the tissue is a complex and multilayer structure. Therefore the spectra of individual chromophores could overlap and re-absorption phenomena could occur, too. Another major difficulty arises from the necessity of convenient classification algorithms and the assessment of their feasibility to use fluorescence information, for accurate diagnosis. As a result in order to assess the feasibility of utilizing spectral information to discriminate arterial tissue type several classification algorithms were developed and evaluated. In this work the following pattern recognition techniques have been tested and evaluated: (1) Distance measure (or norm, or metric) based pattern recognition techniques. Methodologically speaking, based on the histopathological diagnosis, a training set of spectra has been classified into four different categories (healthy, fibrous, calcified, heavy calcified) and in each of these four training groups a representative spectrum has been recorded. (2) A pattern recognition method based on statistical considerations. Discrimination between either the four aforementioned classes (categories) or pairs of them is achieved since peak intensities in appropriate wavelengths appear to correlate efficiently with tissue type. The difference of each training set member from the corresponding representative has been defined by using various appropriate distance measures and the sample statistical properties for each category of the training group has been found. Appropriate statistical analysis has been performed in order to deduce the distribution of the distance measures and of the coefficients of the whole population for each one of the four categories, with at least 99% confidence interval. A validation set of samples has been used in order to test and compare the aforementioned pattern recognition algorithms. A performance comparison of the aforementioned algorithms has been undertaken. !14
机译:摘要:荧光光谱法可能是诊断的一个重要领域,它是冠状动脉粥样硬化,因此对心血管组织的光谱特征进行了广泛的研究。然而,由于组织是复杂的多层结构,因此在正常动脉和动脉粥样硬化动脉之间对光谱差异的精确解释中存在一些限制。因此,各个发色团的光谱可能会重叠,也会发生重吸收现象。另一个主要困难来自于方便的分类算法的必要性以及对使用荧光信息进行准确诊断的可行性的评估。结果,为了评估利用光谱信息来区分动脉组织类型的可行性,开发并评估了几种分类算法。在这项工作中,以下模式识别技术已经过测试和评估:(1)基于距离度量(或范数或度量)的模式识别技术。从方法上讲,基于组织病理学诊断,一组训练光谱已分为四个不同类别(健康,纤维,钙化,重钙化),并且在这四个训练组的每组中都记录了一个代表性光谱。 (2)一种基于统计考虑的模式识别方法。因为在适当波长下的峰值强度似乎与组织类型有效相关,所以实现了上述四个类别(类别)或成对的类别之间的区分。通过使用各种适当的距离度量来定义每个训练集成员与相应代表的区别,并且已找到训练组每个类别的样本统计属性。为了得出距离类别的分布以及四个类别中的每一个类别的总体人口系数的分布,已经进行了适当的统计分析,且置信区间至少为99%。为了测试和比较上述模式识别算法,已经使用了一组有效的样本。已经进行了前述算法的性能比较。 !14

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