Department of Engineering and Geology, University G. d'Annunzio Chieti-Pescara, Pescara, Italy.
Department of Neuroscience, Imaging and Clinical Sciences, University G. d'Annunzio Chieti-Pescara, Chieti, Italy.
Phys Eng Sci Med. 2023 Mar;46(1):325-337. doi: 10.1007/s13246-023-01222-x. Epub 2023 Jan 30.
Surgical resection is one of the most relevant practices in neurosurgery. Finding the correct surgical extent of the tumor is a key question and so far several techniques have been employed to assist the neurosurgeon in preserving the maximum amount of healthy tissue. Some of these methods are invasive for patients, not always allowing high precision in the detection of the tumor area. The aim of this study is to overcome these limitations, developing machine learning based models, relying on features obtained from a contactless and non-invasive technique, the thermal infrared (IR) imaging. The thermal IR videos of thirteen patients with heterogeneous tumors were recorded in the intraoperative context. Time (TD)- and frequency (FD)-domain features were extracted and fed different machine learning models. Models relying on FD features have proven to be the best solutions for the optimal detection of the tumor area (Average Accuracy = 90.45%; Average Sensitivity = 84.64%; Average Specificity = 93,74%). The obtained results highlight the possibility to accurately detect the tumor lesion boundary with a completely non-invasive, contactless, and portable technology, revealing thermal IR imaging as a very promising tool for the neurosurgeon.
手术切除是神经外科中最相关的实践之一。找到肿瘤的正确手术范围是一个关键问题,迄今为止已经采用了几种技术来协助神经外科医生保留最大量的健康组织。其中一些方法对患者具有侵入性,并且并不总是允许对肿瘤区域进行高精度检测。本研究的目的是克服这些限制,开发基于机器学习的模型,依靠从非接触式和非侵入性技术即热红外(IR)成像获得的特征。在手术过程中记录了十三名患有异质肿瘤的患者的热红外视频。提取了时域(TD)和频域(FD)特征,并将其输入到不同的机器学习模型中。结果表明,基于 FD 特征的模型是最佳的肿瘤区域检测解决方案(平均准确率=90.45%;平均灵敏度=84.64%;平均特异性=93.74%)。这些结果突出了使用完全非侵入性、非接触式和便携式技术准确检测肿瘤病变边界的可能性,表明热红外成像作为神经外科医生的一种非常有前途的工具。