首页> 外文期刊>Vibrational Spectroscopy: An International Journal devoted to Applications of Infrared and Raman Spectroscopy >Automatic cancer discrimination based on near-infrared spectrum and class-modeling technique
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Automatic cancer discrimination based on near-infrared spectrum and class-modeling technique

机译:基于近红外光谱和课堂建模技术的自动癌症辨别

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摘要

To develop an effective and objective diagnostic method for detecting the malignancy is of great importance. Considering that near-infrared (NIR) spectroscopy has many advantages such as being inexpensive and simple in sample preparation and class-modeling is a rather new strategy, the present paper investigates the feasibility of combining class-modeling technique other than classic classification and NIR spectroscopy for colorectal diagnosis. A total of 162 colorectal tissue slices were prepared and used to collect NIR spectra. A special variable importance (VI) index was defined to pick out 20 most significant variables. The Kennard-Stone (KS) algorithm was used to select representative 57 cancerous samples as the training set for building one-class model and the other samples served as the test set. The results showed that on the independent test set, it can achieve acceptable performance, i.e., the total accuracy of 95.2 %, the sensitivity of 96 %, and the specificity of 94.5 %. It indicates that the combination of NIR spectroscopy and one-class classifier is a potential tool for automatic cancer diagnosis.
机译:制定有效和客观的诊断方法,检测恶性肿瘤具有重要意义。考虑到近红外(NIR)光谱具有许多优点,例如在样品制备和类型号中廉价且简单的优点是一种相当新的策略,本文研究了组合类建模技术的可行性,而不是经典分类和NIR光谱结直肠诊断。制备总共162种结肠切片切片并用于收集NIR光谱。定义了特殊的变量重要性(VI)索引以挑选出20个最重要的变量。 Kennard-Stone(KS)算法用于选择代表57癌癌样本作为构建单级模型的训练集,其他样品用作测试集。结果表明,在独立的试验组上,它可以实现可接受的性能,即95.2%的总精度,灵敏度为96%,特异性为94.5%。它表明NIR光谱和单级分类器的组合是自动癌症诊断的潜在工具。

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