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近红外拉曼光谱法评估与宫颈不同病理状态相关的生化变化。

Near-infrared Raman spectroscopy for estimating biochemical changes associated with different pathological conditions of cervix.

机构信息

Department of Medical Physics, Anna University, Sardar Patel Road, Chennai 600025, India.

Department of Medical Physics, Anna University, Sardar Patel Road, Chennai 600025, India.

出版信息

Spectrochim Acta A Mol Biomol Spectrosc. 2018 Feb 5;190:409-416. doi: 10.1016/j.saa.2017.09.014. Epub 2017 Sep 18.

Abstract

The molecular level changes associated with oncogenesis precede the morphological changes in cells and tissues. Hence molecular level diagnosis would promote early diagnosis of the disease. Raman spectroscopy is capable of providing specific spectral signature of various biomolecules present in the cells and tissues under various pathological conditions. The aim of this work is to develop a non-linear multi-class statistical methodology for discrimination of normal, neoplastic and malignant cells/tissues. The tissues were classified as normal, pre-malignant and malignant by employing Principal Component Analysis followed by Artificial Neural Network (PC-ANN). The overall accuracy achieved was 99%. Further, to get an insight into the quantitative biochemical composition of the normal, neoplastic and malignant tissues, a linear combination of the major biochemicals by non-negative least squares technique was fit to the measured Raman spectra of the tissues. This technique confirms the changes in the major biomolecules such as lipids, nucleic acids, actin, glycogen and collagen associated with the different pathological conditions. To study the efficacy of this technique in comparison with histopathology, we have utilized Principal Component followed by Linear Discriminant Analysis (PC-LDA) to discriminate the well differentiated, moderately differentiated and poorly differentiated squamous cell carcinoma with an accuracy of 94.0%. And the results demonstrated that Raman spectroscopy has the potential to complement the good old technique of histopathology.

摘要

与癌变相关的分子水平变化先于细胞和组织的形态变化。因此,分子水平的诊断将促进疾病的早期诊断。拉曼光谱能够提供各种生物分子在不同病理条件下的特定光谱特征。本工作的目的是开发一种用于区分正常、肿瘤和恶性细胞/组织的非线性多类统计方法。通过主成分分析(PCA)和人工神经网络(ANN)对组织进行分类,分为正常、癌前和恶性。总体准确率达到 99%。此外,为了深入了解正常、肿瘤和恶性组织的定量生化成分,通过非负最小二乘法对组织的拉曼光谱进行-major 生化物质的线性组合拟合。该技术证实了与不同病理条件相关的主要生物分子(如脂质、核酸、肌动蛋白、糖原和胶原蛋白)的变化。为了研究该技术与组织病理学相比的效果,我们利用主成分分析(PCA)和线性判别分析(LDA)来区分分化良好、中度分化和低度分化的鳞状细胞癌,准确率为 94.0%。结果表明,拉曼光谱有可能补充组织病理学这一古老的技术。

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