Engineered Materials for Biomedical Applications Laboratory, Department of Materials Science and Engineering, National Cheng Kung University, Tainan, 701, Taiwan.
Department of Pathology, National Cheng Kung University Hospital, College of Medicine, National Cheng Kung University, Tainan, 704, Taiwan; Department of Medical Laboratory Science and Biotechnology, College of Medicine, National Cheng Kung University, Tainan, 701, Taiwan.
Anal Chim Acta. 2024 Oct 9;1325:342917. doi: 10.1016/j.aca.2024.342917. Epub 2024 Jun 27.
The evolution of analytical techniques has opened the possibilities of accurate analyte detection through a straightforward method and short acquisition time, leading towards their applicability to identify medical conditions. Surface-enhanced Raman spectroscopy (SERS) has long been proven effective for rapid detection and relies on SERS spectra that are unique to each specific analyte. However, the complexity of viruses poses challenges to SERS and hinders further progress in its practical applications. The principle of SERS revolves around the interaction among substrate, analyte, and Raman laser, but most studies only emphasize the substrate, especially label-free methods, and the synergy among these factors is often ignored. Therefore, issues related to reproducibility and consistency of results, which are crucial for medical diagnosis and are the main highlights of this review, can be understood and largely addressed when considering these interactions. Viruses are composed of multiple surface components and can be detected by label-free SERS, but the presence of non-target molecules in clinical samples interferes with the detection process. Appropriate spectral data processing workflow also plays an important role in the interpretation of results. Furthermore, integrating machine learning into data processing can account for changes brought about by the presence of non-target molecules when analyzing spectral features to accurately group the data, for example, whether the sample corresponds to a positive or negative patient, and whether a virus variant or multiple viruses are present in the sample. Subsequently, advances in interdisciplinary fields can bring SERS closer to practical applications.
分析技术的发展为通过简单的方法和短的采集时间实现准确的分析物检测开辟了可能性,从而使其能够应用于识别医疗状况。表面增强拉曼光谱(SERS)长期以来一直被证明对快速检测有效,并且依赖于对每种特定分析物都独特的 SERS 光谱。然而,病毒的复杂性给 SERS 带来了挑战,并阻碍了其在实际应用中的进一步发展。SERS 的原理围绕着衬底、分析物和拉曼激光之间的相互作用展开,但大多数研究只强调衬底,特别是无标记方法,而这些因素之间的协同作用往往被忽视。因此,当考虑这些相互作用时,与医疗诊断相关的结果的可重复性和一致性等问题可以得到理解和很大程度的解决,这些问题是该综述的主要重点。病毒由多个表面成分组成,可以通过无标记的 SERS 检测到,但临床样本中存在非目标分子会干扰检测过程。适当的光谱数据处理工作流程在结果解释中也起着重要作用。此外,将机器学习集成到数据处理中,可以在分析光谱特征以准确地对数据进行分组时,考虑到非目标分子存在带来的变化,例如,样本是否对应于阳性或阴性患者,以及样本中是否存在病毒变体或多种病毒。随后,跨学科领域的进展可以使 SERS 更接近实际应用。