1. Machine learning–driven SERS analysis platform for rapid and accurate detection of precancerous lesions of gastric cancer.
- Author
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Cao, Dawei, Shi, Fanfeng, Sheng, JinXin, Zhu, Jinhua, Yin, Hongjun, Qin, ShiChen, Yao, Jie, Zhu, LiangFei, Lu, JinJun, and Wang, XiaoYong
- Subjects
PRECANCEROUS conditions ,STOMACH cancer ,SERS spectroscopy ,PRINCIPAL components analysis ,GAS-liquid interfaces ,NANOPOSITIONING systems ,VIRTUAL networks - Abstract
A novel approach is proposed leveraging surface-enhanced Raman spectroscopy (SERS) combined with machine learning (ML) techniques, principal component analysis (PCA)-centroid displacement–based nearest neighbor (CDNN). This label-free approach can identify slight abnormalities between SERS spectra of gastric lesions at different stages, offering a promising avenue for detection and prevention of precancerous lesion of gastric cancer (PLGC). The agaric-shaped nanoarray substrate was prepared using gas–liquid interface self-assembly and reactive ion etching (RIE) technology to measure SERS spectra of serum from mice model with gastric lesions at different stages, and then a SERS spectral recognition model was trained and constructed using the PCA-CDNN algorithm. The results showed that the agaric-shaped nanoarray substrate has good uniformity, stability, cleanliness, and SERS enhancement effect. The trained PCA-CDNN model not only found the most important features of PLGC, but also achieved satisfactory classification results with accuracy, area under curve (AUC), sensitivity, and specificity up to 100%. This demonstrated the enormous potential of this analysis platform in the diagnosis of PLGC. [ABSTRACT FROM AUTHOR]
- Published
- 2024
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