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Exploration research on the fusion of multimodal spectrum technology to improve performance of rapid diagnosis scheme for thyroid dysfunction

机译:多模式谱技术融合探讨,提高甲状腺功能障碍快速诊断方案的性能

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The spectral fusion by Raman spectroscopy and Fourier infrared spectroscopy combined with pattern recognition algorithms is utilized to diagnose thyroid dysfunction serum, and finds the spectral segment with the highest sensitivity to further advance diagnosis speed. Compared with the single infrared spectroscopy or Raman spectroscopy, the proposal can improve the detection accuracy, and can obtain more spectral features, indicating greater differences between thyroid dysfunction and normal serum samples. For discriminating different samples, principal component analysis (PCA) was first used for feature extraction to reduce the dimension of high-dimension spectral data and spectral fusion. Then, support vector machine (SVM), back propagation neural network, extreme learning machine and learning vector quantization algorithms were employed to establish the discriminant diagnostic models. The accuracy of spectral fusion of the best analytical model PCA-SVM, single Raman spectral accuracy and single infrared spectral accuracy is 83.48%, 78.26% and 80%, respectively. The accuracy of spectral fusion is higher than the accuracy of single spectrum in five classifiers. And the diagnostic accuracy of spectral fusion in the range of 2000 to 2500cm(-1) is 81.74%, which greatly improves the sample measure speed and data analysis speed than analysis of full spectra. The results from our study demonstrate that the serum spectral fusion technique combined with multivariate statistical methods have great potential for the screening of thyroid dysfunction.
机译:利用拉曼光谱和傅里叶红外光谱与模式识别算法结合的光谱融合用于诊断甲状腺功能障碍血清,并找到具有最高敏感性的光谱段,以进一步提前诊断速度。与单一红外光谱或拉曼光谱相比,该提案可以提高检测精度,并可以获得更多的光谱特征,表明甲状腺功能障碍和正常血清样品之间的差异更大。为了区分不同的样品,首先使用主成分分析(PCA)进行特征提取以减少高尺寸谱数据和光谱融合的尺寸。然后,使用支持向量机(SVM),后传播神经网络,极端学习机和学习矢量量化算法来建立判别诊断模型。最佳分析模型PCA-SVM的光谱融合,单拉曼光谱精度和单红外光谱精度的光谱融合的准确性分别为83.48%,78.26%和80%。光谱融合的准确性高于五分类器中单光谱的精度。 2000至2500cm(-1)范围内的光谱融合的诊断精度为81.74%,这大大提高了样品测量速度和数据分析速度,而不是完整光谱的分析。我们研究的结果表明,血清光谱融合技术与多变量统计方法相结合,具有筛选甲状腺功能障碍的潜力。

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