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基于拉曼光谱的机器学习分类及生化特征在胃腺癌实时诊断中的应用

Machine learning classification and biochemical characteristics in the real-time diagnosis of gastric adenocarcinoma using Raman spectroscopy.

作者信息

Noh Alex, Quek Sabrina Xin Zi, Zailani Nuraini, Wee Juin Shin, Yong Derrick, Ahn Byeong Yun, Ho Khek Yu, Chung Hyunsoo

机构信息

School of Clinical Medicine, Faculty of Medicine and Health, University of New South Wales, Sydney, NSW, Australia.

Division of Gastroenterology and Hepatology, Department of Medicine, National University Hospital, Singapore, Singapore.

出版信息

Sci Rep. 2025 Jan 20;15(1):2469. doi: 10.1038/s41598-025-86763-9.

Abstract

This study aimed to identify biomolecular differences between benign gastric tissues (gastritis/intestinal metaplasia) and gastric adenocarcinoma and to evaluate the diagnostic power of Raman spectroscopy-based machine learning in gastric adenocarcinoma. Raman spectroscopy-based machine learning was applied in real-time during endoscopy in 19 patients (aged 51-85 years) with high-risk for gastric adenocarcinoma. Raman spectra were captured from suspicious lesions and adjacent normal mucosa, which were biopsied for matched histopathologic diagnosis. Spectral data were analyzed using principal component analysis (PCA) and linear discriminant analysis (LDA) with leave-one-out cross-validation (LOOCV) to develop a machine learning model for diagnosing gastric adenocarcinoma. High-quality spectra (800-3300 cm⁻¹) revealed distinct patterns: adenocarcinoma tissues had higher intensities below 3150 cm⁻¹, while benign tissues exhibited higher intensities between 3150 and 3290 cm⁻¹ (p < 0.001). The model achieved diagnostic accuracy, sensitivity, specificity, and AUC values of 0.905, 0.942, 0.787, and 0.957, respectively. Biochemical correlations suggested adenocarcinoma tissues had increased protein (e.g., phenylalanine), reduced lipids, and lower water content compared to benign tissues. This study highlights the potential of Raman spectroscopy with machine learning as a real-time diagnostic tool for gastric adenocarcinoma. Further validation could establish this technique as a non-invasive, accurate method to aid clinical decision-making during endoscopy.

摘要

本研究旨在确定良性胃组织(胃炎/肠化生)与胃腺癌之间的生物分子差异,并评估基于拉曼光谱的机器学习在胃腺癌中的诊断能力。基于拉曼光谱的机器学习在内镜检查期间对19例胃腺癌高危患者(年龄51 - 85岁)进行了实时应用。从可疑病变和相邻正常黏膜采集拉曼光谱,并进行活检以进行匹配的组织病理学诊断。使用主成分分析(PCA)和线性判别分析(LDA)以及留一法交叉验证(LOOCV)对光谱数据进行分析,以建立诊断胃腺癌的机器学习模型。高质量光谱(800 - 3300 cm⁻¹)显示出明显的模式:腺癌组织在3150 cm⁻¹以下强度较高,而良性组织在3150至3290 cm⁻¹之间强度较高(p < 0.001)。该模型的诊断准确性、敏感性、特异性和AUC值分别为0.905、0.942、0.787和0.957。生化相关性表明,与良性组织相比,腺癌组织的蛋白质(如苯丙氨酸)增加、脂质减少且含水量较低。本研究强调了拉曼光谱结合机器学习作为胃腺癌实时诊断工具的潜力。进一步验证可将该技术确立为一种非侵入性、准确的方法,以辅助内镜检查期间的临床决策。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f6f4/11747496/ae6e661841e9/41598_2025_86763_Fig1_HTML.jpg

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