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采用拉曼微光谱成像技术对脑膜瘤脑肿瘤进行分级。

Determination of meningioma brain tumour grades using Raman microspectroscopy imaging.

机构信息

School of Pharmacy and Biomedical Sciences, University of Central Lancashire, Preston PR1 2HE, UK.

出版信息

Analyst. 2019 Nov 18;144(23):7024-7031. doi: 10.1039/c9an01551e.

DOI:10.1039/c9an01551e
PMID:31650137
Abstract

Raman spectroscopy is a powerful technique used to analyse biological materials, where spectral markers such as proteins (1500-1700 cm-1), carbohydrates (470-1200 cm-1) and phosphate groups of DNA (980, 1080-1240 cm-1) can be detected in a complex biological medium. Herein, Raman microspectroscopy imaging was used to investigate 90 brain tissue samples in order to differentiate meningioma Grade I and Grade II samples, which are the commonest types of brain tumour. Several classification algorithms using feature extraction and selection methods were tested, in which the best classification performances were achieved by principal component analysis-quadratic discriminant analysis (PCA-QDA) and successive projections algorithm-quadratic discriminant analysis (SPA-QDA), resulting in accuracies of 96.2%, sensitivities of 85.7% and specificities of 100% using both methods. A biochemical profiling in terms of spectral markers was investigated using the difference-between-mean (DBM) spectrum, PCA loadings, SPA-QDA selected wavenumbers, and the recovered imaging profiles after multivariate curve resolution alternating least squares (MCR-ALS), where the following wavenumbers were found to be associated with class differentiation: 850 cm-1 (amino acids or polysaccharides), 1130 cm-1 (phospholipid structural changes), the region between 1230-1360 cm-1 (Amide III and CH2 deformation), 1450 cm-1 (CH2 bending), and 1858 cm-1 (C[double bond, length as m-dash]O stretching). These findings highlight the potential of Raman microspectroscopy imaging for determination of meningioma tumour grades.

摘要

拉曼光谱是一种强大的技术,用于分析生物材料,其中可以在复杂的生物介质中检测到蛋白质(1500-1700 cm-1)、碳水化合物(470-1200 cm-1)和 DNA 的磷酸基团(980、1080-1240 cm-1)等光谱标记物。在此,使用拉曼显微光谱成像技术研究了 90 个脑组织样本,以区分最常见的脑肿瘤之一脑膜瘤 1 级和 2 级样本。测试了几种使用特征提取和选择方法的分类算法,其中主成分分析-二次判别分析(PCA-QDA)和连续投影算法-二次判别分析(SPA-QDA)的分类性能最佳,两种方法的准确率均达到 96.2%,敏感度为 85.7%,特异性为 100%。使用差异均值(DBM)光谱、PCA 载荷、SPA-QDA 选择的波数以及多元曲线分辨交替最小二乘法(MCR-ALS)后恢复的成像谱,研究了光谱标记物的生化特征,发现以下波数与分类差异有关:850 cm-1(氨基酸或多糖)、1130 cm-1(磷脂结构变化)、1230-1360 cm-1 之间的区域(酰胺 III 和 CH2 变形)、1450 cm-1(CH2 弯曲)和 1858 cm-1(C[双键,长度为破折号]O 伸缩)。这些发现强调了拉曼显微光谱成像在确定脑膜瘤肿瘤分级方面的潜力。

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