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Surgical Aid Visualization System for Glioblastoma Tumor Identification based on Deep Learning and In-Vivo Hyperspectral Images of Human Patients

机译:基于人类患者的深度学习和体内高光谱图像的胶质母细胞瘤肿瘤手术辅助可视化系统

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摘要

Brain cancer surgery has the goal of performing an accurate resection of the tumor and preserving as much as possible the quality of life of the patient. There is a clinical need to develop non-invasive techniques that can provide reliable assistance for tumor resection in real-time during surgical procedures. Hyperspectral imaging (HSI) arises as a new, noninvasive and non-ionizing technique that can assist neurosurgeons during this difficult task. In this paper, we explore the use of deep learning (DL) techniques for processing hyperspectral (HS) images of in-vivo human brain tissue. We developed a surgical aid visualization system capable of offering guidance to the operating surgeon to achieve a successful and accurate tumor resection. The employed HS database is composed of 26 in-vivo hypercubes from 16 different human patients, among which 258,810 labelled pixels were used for evaluation. The proposed DL methods achieve an overall accuracy of 95% and 85% for binary and multiclass classifications, respectively. The proposed visualization system is able to generate a classification map that is formed by the combination of the DL map and an unsupervised clustering via a majority voting algorithm. This map can be adjusted by the operating surgeon to find the suitable configuration for the current situation during the surgical procedure.
机译:脑癌手术的目标是执行肿瘤的精确切除并尽可能保留患者的生活质量。临床上需要开发可以在手术过程中实时为肿瘤切除提供可靠协助的非侵入性技术。高光谱成像(HSI)作为一种新的,非侵入性且非电离的技术应运而生,可以在此艰巨任务中协助神经外科医师。在本文中,我们探索使用深度学习(DL)技术来处理体内人脑组织的高光谱(HS)图像。我们开发了一种手术辅助可视化系统,能够为手术外科医生提供指导,以实现成功,准确的肿瘤切除。所使用的HS数据库由来自16个不同人类患者的26个体内超立方体组成,其中258,810个带标记的像素用于评估。所提出的DL方法对于二进制和多类分类分别达到95%和85%的总体准确性。所提出的可视化系统能够通过多数投票算法生成由DL映射和无监督聚类的组合形成的分类映射。手术医生可以调整此图,以找到适合手术过程中当前情况的配置。

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