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Diagnosis of Breast Cancer Tissues Using 785 nm Miniature Raman Spectrometer and Pattern Regression

机译:使用785 nm微型拉曼光谱仪和模式回归诊断乳腺癌组织

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For achieving the development of a portable, low-cost and in vivo cancer diagnosis instrument, a laser 785 nm miniature Raman spectrometer was used to acquire the Raman spectra for breast cancer detection in this paper. However, because of the low spectral signal-to-noise ratio, it is difficult to achieve high discrimination accuracy by using the miniature Raman spectrometer. Therefore, a pattern recognition method of the adaptive net analyte signal (NAS) weight k-local hyperplane (ANWKH) is proposed to increase the classification accuracy. ANWKH is an extension and improvement of K-local hyperplane distance nearest-neighbor (HKNN), and combines the advantages of the adaptive weight k-local hyperplane (AWKH) and the net analyte signal (NAS). In this algorithm, NAS was first used to eliminate the influence caused by other non-target factors. Then, the distance between the test set samples and hyperplane was calculated with consideration of the feature weights. The HKNN only works well for small values of the nearest-neighbor. However, the accuracy decreases with increasing values of the nearest-neighbor. The method presented in this paper can resolve the basic shortcoming by using the feature weights. The original spectra are projected into the vertical subspace without the objective factors. NAS was employed to obtain the spectra without irrelevant information. NAS can improve the classification accuracy, sensitivity, and specificity of breast cancer early diagnosis. Experimental results of Raman spectra detection in vitro of breast tissues showed that the proposed algorithm can obtain high classification accuracy, sensitivity, and specificity. This paper demonstrates that the ANWKH algorithm is feasible for early clinical diagnosis of breast cancer in the future.
机译:为了实现便携式,低成本和体内癌症诊断仪器的发展,本文使用激光785 nm微型拉曼光谱仪获取用于乳腺癌检测的拉曼光谱。但是,由于频谱信噪比低,因此难以通过使用微型拉曼光谱仪来实现高辨别精度。因此,提出一种自适应净分析物信号(NAS)权重k局部超平面(ANWKH)的模式识别方法,以提高分类精度。 ANWKH是K局部超平面距离最近邻(HKNN)的扩展和改进,结合了自适应权重k局部超平面(AWKH)和净分析物信号(NAS)的优势。在该算法中,首先使用NAS来消除其他非目标因素引起的影响。然后,考虑特征权重来计算测试集样本和超平面之间的距离。 HKNN仅适用于较小值的最近邻居。但是,精度随着最近邻居值的增加而降低。本文提出的方法可以通过使用特征权重来解决基本缺点。原始光谱在没有客观因素的情况下投影到垂直子空间中。 NAS被用于获得没有无关信息的光谱。 NAS可以提高乳腺癌早期诊断的分类准确性,敏感性和特异性。乳腺组织体外拉曼光谱检测的实验结果表明,该算法具有较高的分类准确性,敏感性和特异性。本文证明了ANWKH算法在将来对乳腺癌的早期临床诊断中是可行的。

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