Zhang Liang, Zhou Yan, Wu Binlin, Zhang Shengjia, Zhu Ke, Liu Cheng-Hui, Yu Xinguang, Alfano Robert R
Department of Neurosurgery, Medical School of Nankai University, Tianjin 300071, China.
Department of Neurosurgery, PLA General Hospital, Beijing 100853, China.
Cancers (Basel). 2023 Mar 14;15(6):1752. doi: 10.3390/cancers15061752.
There is still a lack of reliable intraoperative tools for glioma diagnosis and to guide the maximal safe resection of glioma. We report continuing work on the optical biopsy method to detect glioma grades and assess glioma boundaries intraoperatively using the VRR-LRR Raman analyzer, which is based on the visible resonance Raman spectroscopy (VRR) technique. A total of 2220 VRR spectra were collected during surgeries from 63 unprocessed fresh glioma tissues using the VRR-LRR Raman analyzer. After the VRR spectral analysis, we found differences in the native molecules in the fingerprint region and in the high-wavenumber region, and differences between normal (control) and different grades of glioma tissues. A principal component analysis-support vector machine (PCA-SVM) machine learning method was used to distinguish glioma tissues from normal tissues and different glioma grades. The accuracy in identifying glioma from normal tissue was over 80%, compared with the gold standard of histopathology reports of glioma. The VRR-LRR Raman analyzer may be a new label-free, real-time optical molecular pathology tool aiding in the intraoperative detection of glioma and identification of tumor boundaries, thus helping to guide maximal safe glioma removal and adjacent healthy tissue preservation.
目前仍缺乏可靠的术中工具用于胶质瘤诊断及指导胶质瘤的最大安全切除。我们报告了基于可见共振拉曼光谱(VRR)技术的VRR-LRR拉曼分析仪在光学活检方法上的持续研究工作,该方法用于术中检测胶质瘤分级并评估胶质瘤边界。使用VRR-LRR拉曼分析仪在手术过程中从63个未经处理的新鲜胶质瘤组织共收集了2220个VRR光谱。经过VRR光谱分析,我们发现指纹区和高波数区天然分子存在差异,正常(对照)组织与不同分级的胶质瘤组织之间也存在差异。采用主成分分析-支持向量机(PCA-SVM)机器学习方法区分胶质瘤组织与正常组织以及不同分级的胶质瘤。与胶质瘤组织病理学报告的金标准相比,从正常组织中识别胶质瘤的准确率超过80%。VRR-LRR拉曼分析仪可能是一种新型的无标记、实时光学分子病理学工具,有助于术中检测胶质瘤并识别肿瘤边界,从而有助于指导最大程度安全切除胶质瘤并保留相邻健康组织。