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Blood hyperviscosity identification with reflective spectroscopy of tongue tip based on principal component analysis combining artificial neural network

机译:基于主成分分析结合人工神经网络的舌尖反射光谱光谱法识别血液高粘度

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With spectral methods, noninvasive determination of blood hyperviscosity in vivo is very potential and meaningful in clinical diagnosis. In this study, 67 male subjects (41 health, and 26 hyperviscosity according to blood sample analysis results) participate. Reflectance spectra of subjects’ tongue tips is measured, and a classification method bases on principal component analysis combined with artificial neural network model is built to identify hyperviscosity. Hold-out and Leave-one-out methods are used to avoid significant bias and lessen overfitting problem, which are widely accepted in the model validation. To measure the performance of the classification, sensitivity, specificity, accuracy and F-measure are calculated, respectively. The accuracies with 100 times Hold-out method and 67 times Leave-one-out method are 88.05% and 97.01%, respectively. Experimental results indicate that the built classification model has certain practical value and proves the feasibility of using spectroscopy to identify hyperviscosity by noninvasive determination.
机译:借助光谱方法,体内无创测定血液中高黏度在临床诊断中具有巨大的潜力和意义。在这项研究中,有67名男性受试者(根据血液样本分析结果为41名健康受试者和26名高粘度受试者)参与了研究。测量受试者舌尖的反射光谱,并建立基于主成分分析和人工神经网络模型的分类方法,以识别高粘度。保留和留一法用于避免重大偏差并减少过拟合问题,这些方法在模型验证中被广泛接受。为了衡量分类的性能,分别计算了敏感性,特异性,准确性和F值。 100倍保留方法和67倍保留方法的准确度分别为88.05%和97.01%。实验结果表明,所建立的分类模型具有一定的实用价值,并证明了利用光谱技术通过无创检测识别高粘度的可行性。

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