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Application of Supervised Self-Organizing Maps in Breast Cancer Diagnosis by Total Synchronous Fluorescence Spectroscopy

机译:监督自组织图在全同步荧光光谱法在乳腺癌诊断中的应用

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摘要

Data from total synchronous fluorescence spectroscopy (TSFS) measurements of normal and malignant breast tissue samples are introduced in supervised self-organizing maps, a type of artificial neural network (ANN), to obtain diagnosis. Three spectral regions in both TSFS patterns and first-derivative TSFS patterns exhibited clear differences between normal and malignant tissue groups, and intensities measured from these regions served as inputs to neural networks. Histology findings are used as the gold standard to train self-organizing maps in a supervised way. Diagnostic accuracy of this procedure is evaluated with sample test groups for two cases, when the neural network uses TSFS data and when the neural network uses data from first-derivative TSFS. In the first case diagnostic sensitivity of 87.1percent and specificity of 91.7percent are found, while in the second case sensitivity of 100percent and specificity of 94.4percent are achieved.
机译:将正常和恶性乳腺组织样品的总同步荧光光谱(TSFS)测量数据引入有监督的自组织图(一种人工神经网络(ANN))中,以进行诊断。 TSFS模式和一阶导数TSFS模式中的三个光谱区域在正常和恶性组织组之间显示出明显的差异,从这些区域测得的强度可作为神经网络的输入。组织学发现被用作监督训练自组织地图的金标准。当神经网络使用TSFS数据并且神经网络使用来自一阶导数TSFS的数据时,将通过样本测试组评估此过程的诊断准确性,这两种情况均适用。在第一种情况下,诊断灵敏度为87.1%,特异性为91.7%,而在第二种情况下,诊断灵敏度为100%,特异性为94.4%。

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