Nanjing University, School of Electronic Science and Engineering, Nanjing 210023, China.
School of Medicine, University of Electronic Science and Technology of China, Chengdu 611731, China.
Biomed Res Int. 2022 Jun 23;2022:4368928. doi: 10.1155/2022/4368928. eCollection 2022.
This study is aimed at evaluating the feasibility of a screening method for the pulmonary adenocarcinoma nodules through surface-enhanced Raman spectroscopy (SERS). . Using SERS to measure serum from pulmonary nodules and healthy subjects, intraoperative biopsy pathological diagnosis was regarded as the gold standard for labeling serum samples. To explore the application value of SERS in the differential diagnosis of pulmonary adenocarcinoma nodules, benign nodules, and healthy, we build a machine learning model. . We collected 116 serum samples from patients. Radiographically confirmed nodules less than 3 cm in maximum diameter in all patients, including 58 cancer (pathologic diagnosis: adenocarcinoma nodules, labeled as cancer) patients, 58 pathologic diagnoses as benign nodule (labeled as benign) patients, and 63 healthy (labeled as normal) people from the clinical laboratory of Sichuan Cancer Hospital. Gold nanorods were employed as SERS substrates. Support vector machine (SVM) was used to classify the normal, benign, and cancer sample groups, and SVM model evaluated using cross-validation. . The average SERS spectra of serum were significantly different between the normal group and the cancer/benign group. While the average SERS spectra of the cancer group and the benign group differed slightly, for the cancer, benign, and normal groups, SVM models can predict with 93.33% accuracy. . This exploratory study demonstrates that the SERS technique based on nanoparticles in conjunction with SVM has great potential as a clinical auxiliary diagnosis and screening for pulmonary adenocarcinoma nodules.
本研究旨在评估基于表面增强拉曼光谱(SERS)的肺腺癌结节筛查方法的可行性。使用 SERS 测量肺结节和健康受试者的血清,将术中活检病理诊断作为标记血清样本的金标准。为了探索 SERS 在肺腺癌结节、良性结节和健康人群的鉴别诊断中的应用价值,我们构建了一个机器学习模型。我们收集了 116 例来自四川肿瘤医院临床实验室的患者血清样本。所有患者的最大直径均小于 3cm 的影像学证实的结节,包括 58 例癌症(病理诊断:腺癌结节,标记为癌症)患者、58 例病理诊断为良性结节(标记为良性)患者和 63 例健康人。金纳米棒被用作 SERS 基底。支持向量机(SVM)用于对正常、良性和癌症样本组进行分类,并使用交叉验证评估 SVM 模型。正常组和癌症/良性组之间的血清平均 SERS 光谱有明显差异。而癌症组和良性组之间的平均 SERS 光谱差异较小,对于癌症、良性和正常组,SVM 模型可以以 93.33%的准确率进行预测。这项探索性研究表明,基于纳米颗粒的 SERS 技术与 SVM 结合具有作为肺腺癌结节临床辅助诊断和筛查的巨大潜力。