Clinical Sensoring and Monitoring, Department of Anesthesiology and Intensive Care Medicine, Faculty of Medicine, TU Dresden, Dresden, Germany.
Medical Physics and Biomedical Engineering, Faculty of Medicine, TU Dresden, Dresden, Germany.
J Neurooncol. 2023 Jan;161(1):57-66. doi: 10.1007/s11060-022-04204-3. Epub 2022 Dec 12.
Infrared (IR) spectroscopy has the potential for tumor delineation in neurosurgery. Previous research showed that IR spectra of brain tumors are generally characterized by reduced lipid-related and increased protein-related bands. Therefore, we propose the exploitation of these common spectral changes for brain tumor recognition.
Attenuated total reflection IR spectroscopy was performed on fresh specimens of 790 patients within minutes after resection. Using principal component analysis and linear discriminant analysis, a classification model was developed on a subset of glioblastoma (n = 135) and non-neoplastic brain (n = 27) specimens, and then applied to classify the IR spectra of several types of brain tumors.
The model correctly classified 82% (517/628) of specimens as "tumor" or "non-tumor", respectively. While the sensitivity was limited for infiltrative glioma, this approach recognized GBM (86%), other types of primary brain tumors (92%) and brain metastases (92%) with high accuracy and all non-tumor samples were correctly identified.
The concept of differentiation of brain tumors from non-tumor brain based on a common spectroscopic tumor signature will accelerate clinical translation of infrared spectroscopy and related technologies. The surgeon could use a single instrument to detect a variety of brain tumor types intraoperatively in future clinical settings. Our data suggests that this would be associated with some risk of missing infiltrative regions or tumors, but not with the risk of removing non-tumor brain.
近红外(IR)光谱技术有可能实现神经外科中的肿瘤边界描绘。先前的研究表明,脑肿瘤的 IR 光谱通常表现为脂质相关带减少和蛋白相关带增加。因此,我们提出利用这些常见的光谱变化来识别脑肿瘤。
在切除后几分钟内,对 790 名患者的新鲜标本进行衰减全反射 IR 光谱分析。使用主成分分析和线性判别分析,在一组脑胶质瘤(n=135)和非肿瘤性脑(n=27)标本中建立分类模型,然后应用于分类几种类型的脑肿瘤的 IR 光谱。
该模型正确分类了 82%(628/790)的标本为“肿瘤”或“非肿瘤”。虽然浸润性胶质瘤的灵敏度有限,但该方法能够准确识别 GBM(86%)、其他类型的原发性脑肿瘤(92%)和脑转移瘤(92%),并且所有非肿瘤样本均被正确识别。
基于常见的光谱肿瘤特征来区分肿瘤和非肿瘤脑的概念将加速近红外光谱和相关技术的临床转化。在未来的临床环境中,外科医生可以使用单一仪器在术中检测多种脑肿瘤类型。我们的数据表明,这可能会存在一些错过浸润性区域或肿瘤的风险,但不会存在切除非肿瘤脑的风险。