SERS microscopy as a tool for comprehensive biochemical characterization in complex samples.

IF 40.4 1区 化学 Q1 CHEMISTRY, MULTIDISCIPLINARY Chemical Society Reviews Pub Date : 2024-06-27 DOI:10.1039/d4cs00460d
Janina Kneipp, Stephan Seifert, Florian Gärber
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Abstract

Surface enhanced Raman scattering (SERS) spectra of biomaterials such as cells or tissues can be used to obtain biochemical information from nanoscopic volumes in these heterogeneous samples. This tutorial review discusses the factors that determine the outcome of a SERS experiment in complex bioorganic samples. They are related to the SERS process itself, the possibility to selectively probe certain regions or constituents of a sample, and the retrieval of the vibrational information in order to identify molecules and their interaction. After introducing basic aspects of SERS experiments in the context of biocompatible environments, spectroscopy in typical microscopic settings is exemplified, including the possibilities to combine SERS with other linear and non-linear microscopic tools, and to exploit approaches that improve lateral and temporal resolution. In particular the great variation of data in a SERS experiment calls for robust data analysis tools. Approaches will be introduced that have been originally developed in the field of bioinformatics for the application to omics data and that show specific potential in the analysis of SERS data. They include the use of simulated data and machine learning tools that can yield chemical information beyond achieving spectral classification.

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将 SERS 显微镜作为复杂样品中全面生化特征描述的工具。
细胞或组织等生物材料的表面增强拉曼散射(SERS)光谱可用于从这些异质样品的纳米体积中获取生化信息。本教程综述讨论了决定复杂生物有机样品 SERS 实验结果的因素。这些因素涉及 SERS 过程本身、选择性探测样品中某些区域或成分的可能性,以及检索振动信息以识别分子及其相互作用。在介绍了生物兼容环境下 SERS 实验的基本方面之后,举例说明了典型显微镜环境下的光谱学,包括将 SERS 与其他线性和非线性显微镜工具相结合的可能性,以及利用提高横向和时间分辨率的方法。特别是 SERS 实验中数据的巨大差异需要强大的数据分析工具。我们将介绍最初在生物信息学领域开发的方法,这些方法适用于omics数据,并在SERS数据分析中显示出特殊的潜力。这些方法包括使用模拟数据和机器学习工具,这些工具不仅能实现光谱分类,还能产生化学信息。
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来源期刊
Chemical Society Reviews
Chemical Society Reviews 化学-化学综合
CiteScore
80.80
自引率
1.10%
发文量
345
审稿时长
6.0 months
期刊介绍: Chemical Society Reviews is published by: Royal Society of Chemistry. Focus: Review articles on topics of current interest in chemistry; Predecessors: Quarterly Reviews, Chemical Society (1947–1971); Current title: Since 1971; Impact factor: 60.615 (2021); Themed issues: Occasional themed issues on new and emerging areas of research in the chemical sciences
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