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Classification of Laser Induced Fluorescence Spectra from Normal and Malignant Tissues using Learning Vector Quantization Neural Network in Bladder Cancer Diagnosis

机译:使用学习载体量化神经网络在正常和恶性组织中激光诱导荧光光谱的分类膀胱癌诊断

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In the present work we discuss the potential of recently developed classification algorithm, Learning Vector Quantization (LVQ), for the analysis of Laser Induced Fluorescence (LIF) Spectra, recorded from normal and malignant bladder tissue samples. The algorithm is prototype based and inherently regularizing, which is desirable, for the LIF spectra because of its high dimensionality and features being settled at widely spaced intervals (sparseness). We discuss the effect of different parameters influencing the performance of LVQ in LIF data classification. Further, we compare and cross validate the classification accuracy of LVQ with other classifiers (eg. SVM and Multi Layer Perceptron) for the same data set. Good agreement has been obtained between LVQ based classification of spectroscopy data and histopathology results which demonstrate the use of LVQ classifier in bladder cancer diagnosis.
机译:在本工作中,我们讨论了最近开发的分类算法的潜力,学习矢量量化(LVQ),用于从正常和恶性膀胱组织样品记录的激光诱导荧光(LIF)光谱的分析。该算法是基于原型的,并且本质上是规则的,这是期望的,因为其高维度和具有以广泛间隔的间隔(稀疏性)稳定的特征。我们讨论了影响LVQ在LIF数据分类中的不同参数的影响。此外,我们将LVQ与其他分类器(例如,SVM和多层Perceptron)进行比较和交叉验证LVQ的分类准确性,用于相同的数据集。基于LVQ的光谱数据和组织病理学结果之间已经获得了良好的一致性,其证明了LVQ分类器在膀胱癌诊断中的使用。

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