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Detecting Silica-Coated Gold Nanostars within Surface-Enhanced Resonance Raman Spectroscopy Mapping via Semi-Supervised Framework Combining Feature Selection and Classification

机译:通过半监督框架在结合特征选择和分类中检测表面增强的谐振拉曼光谱映射中的二氧化硅涂覆的金纳盘。特征选择和分类

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Raman Spectroscopy provides a non-invasive approach to study cells and tissues, and its ability to provide biochemical composition information of samples shows great importance for the research, diagnosis and treatment of cancer. However, conventional Raman Spectroscopy suffers from weak signal strength observed in many biological samples. Surface-Enhanced Resonance Raman Spectroscopy (SERRS) can overcome this disadvantage with the presence of roughened nano-dimensional noble-metal surfaces. In order to study the role of integrins in breast cancer invasiveness, gold nanostars were conjugated with cyclo-RGDf/k peptide for targeting integrins on breast cancer cells and high-speed Raman mapping was employed to assess the samples. Due to the high dimensionality of the datasets collected through SERRS, we have proposed a semi-supervised framework combining feature selection and classification techniques for nanostars detection and tested our method on a breast cancer cells. The results show the advantage of our framework over other data mining technique and potentially provide a new method for evaluating the role of integrins in tumor development. Also, the features selected can possibly be used for further studies on compositional changes observed during the process of breast cancer progression and metastasis.
机译:拉曼光谱法提供了研究细胞和组织的非侵入性方法,其提供样品的生化组成信息的能力对癌症的研究,诊断和治疗具有重要意义。然而,传统的拉曼光谱患有许多生物样品中观察到的信号强度弱。表面增强的共振拉曼光谱(SERRS)可以通过粗糙的纳米尺寸贵金属表面存在克服这种缺点。为了研究整合蛋白在乳腺癌侵袭性中的作用中,将金纳米甾体与环RGDF / K肽缀合,用于靶向乳腺癌细胞上的整年蛋白,并且使用高速拉曼映射来评估样品。由于通过SERR收集的数据集的高维度,我们提出了一种结合特征选择和分类技术的半监督框架,用于纳米杆菌检测,并在乳腺癌细胞上测试了我们的方法。结果表明我们对其他数据挖掘技术的框架的优势,并且可能提供评估整联蛋白在肿瘤发展中的作用的新方法。此外,所选择的特征可能用于进一步研究在乳腺癌进展和转移过程中观察到的组成变化。

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