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New method of lung cancer detection by saliva test using surface‐enhanced Raman spectroscopy

机译:表面增强拉曼光谱通过唾液测试检测肺癌的新方法

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摘要

Surface‐enhanced Raman spectroscopy (SERS) is a surface‐sensitive technique that enhances Raman scattering by molecules adsorbed on nanostructures. The advantages of using SERS include high detection sensibility and fast analysis, thus it is a potentially promising tool for sensing metabolic cancer molecules in trace amounts. To explore this new method of lung cancer detection, we analyzed saliva samples from 61 lung cancer patients and 66 healthy controls. An SERS system and a nano‐modified chip were used in this study. Statistics were analyzed using support vector machine (SVM) and random forest algorithms. The leave‐one‐out algorithm was used based on SVM results to analyze differences in saliva between lung cancer patients and controls. There was a significant difference between the saliva of patients with lung cancer and healthy controls using the Raman spectrum; the intensity of the spectral line in lung cancer patients was weaker than in controls and 12 characteristic peaks were detected. Saliva SERS peaks have been characterized to refer to tissues, body fluids, and biological standard Raman peaks, but it is difficult to identify molecules with current information. The sensitivity and specificity of Raman spectroscopy data and SVM classification results of lung cancer patients and normal saliva samples were both 100%. Using the leave‐one‐out algorithm, the sensitivity was 95.08% and the specificity was 100%. The sensitivity of the random forest method was 96.72% and specificity was 100%. Our results show that SERS has the potential to detect lung cancer.
机译:表面增强拉曼光谱(SERS)是一种表面敏感技术,可通过吸附在纳米结构上的分子增强拉曼散射。使用SERS的优势包括高检测灵敏度和快速分析,因此它是检测痕量代谢癌分子的潜在有前途的工具。为了探索这种新的肺癌检测方法,我们分析了61位肺癌患者和66位健康对照者的唾液样本。在这项研究中使用了SERS系统和纳米改性芯片。使用支持向量机(SVM)和随机森林算法分析统计数据。基于SVM结果的留一法算法用于分析肺癌患者和对照组之间唾液的差异。使用拉曼光谱图,肺癌患者的唾液与健康对照组之间存在显着差异。肺癌患者的谱线强度弱于对照组,并检测到12个特征峰。唾液SERS峰的特征是指组织,体液和生物学标准拉曼峰,但是很难用当前信息来鉴定分子。肺癌患者和正常唾液样本的拉曼光谱数据和SVM分类结果的敏感性和特异性均为100%。使用留一法算法,灵敏度为95.08%,特异性为100%。随机森林法的灵敏度为96.72%,特异性为100%。我们的结果表明,SERS具有检测肺癌的潜力。

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