Application of serum SERS technology based on thermally annealed silver nanoparticle composite substrate in breast cancer

乳腺癌 材料科学 生物分子 表面增强拉曼光谱 拉曼光谱 癌症 生物医学工程 纳米技术 人工智能 计算机科学 医学 拉曼散射 内科学 光学 物理
作者
Zhiyuan Cheng,Hongyi Li,Chen Chen,Xiaoyi Lv,Enguang Zuo,Xiaodong Xie,Zhongyuan Li,Pei Liu,Hongtao Li,Cheng Chen
出处
期刊:Photodiagnosis and Photodynamic Therapy [Elsevier]
卷期号:41: 103284-103284 被引量:67
标识
DOI:10.1016/j.pdpdt.2023.103284
摘要

Liquid biopsy is currently a non-destructive and convenient method of cancer screening, due to human blood containing a variety of cancer-related biomolecules. Therefore, the development of an accurate and rapid breast cancer screening technique combined with breast cancer serum is crucial for the treatment and prognosis of breast cancer patients. In this study, the surface enhanced Raman spectroscopy (SERS) technique is used to enhance the Raman spectroscopy (RS) signal of serum based on a high sensitivity thermally annealed silver nanoparticle/porous silicon bragg mirror (AgNPs/PSB) composite substrate. Compared with RS, SERS reflects more and stronger spectral peak information, which is beneficial to discover new biomarkers of breast cancer. At the same time, to further explore the diagnostic ability of SERS technology for breast cancer. In this study, the raw spectral data are processed by baseline correction, polynomial smoothing, and normalization. Then, the relevant feature information of SERS and RS is extracted by principal component analysis (PCA), and five classification models are established to compare the diagnostic performance of SERS and RS models respectively. The experimental results show that the breast cancer diagnosis model based on the improved SERS substrate combined with the machine learning algorithm can be used to distinguish breast cancer patients from controls. The accuracy, sensitivity, specificity and AUC values of the SVM model are 100%, 100%, 100% and 100%, respectively, as well as the training time of 4 ms. The above experimental results show that the SERS technology based on AgNPs/PSB composite substrate, combined with machine learning methods, has great potential in the rapid and accurate identification of breast cancer patients.

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