Department of Neurosurgery, Clinical Hospital No 2 in Rzeszów, Lwowska 60, 35-309 Rzeszów, Poland.
Institute of Computer Science, College of Natural Sciences, University of Rzeszów, Poland.
Nanomedicine. 2024 Apr;57:102737. doi: 10.1016/j.nano.2024.102737. Epub 2024 Feb 8.
Brain tumors are one of the most dangerous, because the position of these are in the organ that governs all life processes. Moreover, a lot of brain tumor types were observed, but only one main diagnostic method was used - histopathology, for which preparation of sample was long. Consequently, a new, quicker diagnostic method is needed. In this paper, FT-Raman spectra of brain tissues were analyzed by Principal Component Analysis (PCA), Hierarchical Cluster Analysis (HCA), four different machine learning (ML) algorithms to show possibility of differentiating between glioblastoma G4 and meningiomas, as well as two different types of meningiomas (atypical and angiomatous). Obtained results showed that in meningiomas additional peak around 1503 cm and higher level of amides was noticed in comparison with glioblastoma G4. In the case of meningiomas differentiation, in angiomatous meningiomas tissues lower level of lipids and polysaccharides were visible than in atypical meningiomas. Moreover, PCA analyses showed higher distinction between glioblastoma G4 and meningiomas in the FT-Raman range between 800 cm and 1800 cm and between two types of meningiomas in the range between 2700 cm and 3000 cm. Decision trees showed, that the most important peaks to differentiate glioblastoma and meningiomas were at 1151 cm and 2836 cm while for angiomatous and atypical meningiomas - 1514 cm and 2875 cm. Furthermore, the accuracy of obtained results for glioblastoma G4 and meningiomas was 88 %, while for meningiomas - 92 %. Consequently, obtained data showed possibility of using FT-Raman spectroscopy in diagnosis of different types of brain tumors.
脑肿瘤是最危险的肿瘤之一,因为这些肿瘤位于控制所有生命过程的器官中。此外,观察到了很多种脑肿瘤类型,但只使用了一种主要的诊断方法——组织病理学,其样本制备过程漫长。因此,需要一种新的、更快的诊断方法。在本文中,通过主成分分析(PCA)、层次聚类分析(HCA)和四种不同的机器学习(ML)算法分析了脑组织的 FT-Raman 光谱,以显示区分胶质母细胞瘤 G4 和脑膜瘤以及两种不同类型脑膜瘤(非典型脑膜瘤和血管母细胞瘤)的可能性。结果表明,与胶质母细胞瘤 G4 相比,脑膜瘤中在 1503 cm 左右有额外的峰,酰胺水平更高。在脑膜瘤的区分中,血管母细胞瘤组织中的脂类和多糖水平低于非典型脑膜瘤。此外,PCA 分析表明,在 FT-Raman 范围内(800-1800 cm),胶质母细胞瘤 G4 和脑膜瘤之间以及两种脑膜瘤之间(2700-3000 cm)的区分更高。决策树表明,区分胶质母细胞瘤和脑膜瘤的最重要的峰是在 1151 cm 和 2836 cm,而对于血管母细胞瘤和非典型脑膜瘤则是在 1514 cm 和 2875 cm。此外,获得的胶质母细胞瘤 G4 和脑膜瘤的结果准确率为 88%,而脑膜瘤的准确率为 92%。因此,获得的数据表明,FT-Raman 光谱学有可能用于诊断不同类型的脑肿瘤。