拉曼光谱的深度学习研究进展

Analytica Pub Date : 2022-07-19 DOI:10.3390/analytica3030020
Ruihao Luo, J. Popp, T. Bocklitz
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引用次数: 24

摘要

拉曼光谱(RS)是一种间接测量样品内部振动状态的光谱方法。这些关于振动状态的信息可以用作样品的光谱指纹,随后可以在广泛的应用场景中使用,以在不改变样品的情况下确定样品的化学成分,或预测样品的性质,例如患者的疾病状态。这两个例子只是应用场景的一小部分,应用范围从生物医学诊断到材料科学问题。然而,由于RS的无标签特性,拉曼信号很弱,因此拉曼数据是无目标的。因此,拉曼光谱的分析具有挑战性,需要基于机器学习的化学计量模型。作为表征学习算法的一个子集,深度学习在拉曼光谱和光子数据分析的数据科学中取得了巨大的成功。在这篇综述中,将讨论拉曼光谱DL算法的最新发展以及这些算法在应用中的当前挑战。
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Deep Learning for Raman Spectroscopy: A Review
Raman spectroscopy (RS) is a spectroscopic method which indirectly measures the vibrational states within samples. This information on vibrational states can be utilized as spectroscopic fingerprints of the sample, which, subsequently, can be used in a wide range of application scenarios to determine the chemical composition of the sample without altering it, or to predict a sample property, such as the disease state of patients. These two examples are only a small portion of the application scenarios, which range from biomedical diagnostics to material science questions. However, the Raman signal is weak and due to the label-free character of RS, the Raman data is untargeted. Therefore, the analysis of Raman spectra is challenging and machine learning based chemometric models are needed. As a subset of representation learning algorithms, deep learning (DL) has had great success in data science for the analysis of Raman spectra and photonic data in general. In this review, recent developments of DL algorithms for Raman spectroscopy and the current challenges in the application of these algorithms will be discussed.
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