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高光谱图像的空谱分类在手术中用于脑癌检测。

Spatio-spectral classification of hyperspectral images for brain cancer detection during surgical operations.

机构信息

Institute for Applied Microelectronics (IUMA), University of Las Palmas de Gran Canaria (ULPGC), Las Palmas de Gran Canaria, Spain.

The Hamlyn Centre, Imperial College London (ICL), London, United Kingdom.

出版信息

PLoS One. 2018 Mar 19;13(3):e0193721. doi: 10.1371/journal.pone.0193721. eCollection 2018.

Abstract

Surgery for brain cancer is a major problem in neurosurgery. The diffuse infiltration into the surrounding normal brain by these tumors makes their accurate identification by the naked eye difficult. Since surgery is the common treatment for brain cancer, an accurate radical resection of the tumor leads to improved survival rates for patients. However, the identification of the tumor boundaries during surgery is challenging. Hyperspectral imaging is a non-contact, non-ionizing and non-invasive technique suitable for medical diagnosis. This study presents the development of a novel classification method taking into account the spatial and spectral characteristics of the hyperspectral images to help neurosurgeons to accurately determine the tumor boundaries in surgical-time during the resection, avoiding excessive excision of normal tissue or unintentionally leaving residual tumor. The algorithm proposed in this study to approach an efficient solution consists of a hybrid framework that combines both supervised and unsupervised machine learning methods. Firstly, a supervised pixel-wise classification using a Support Vector Machine classifier is performed. The generated classification map is spatially homogenized using a one-band representation of the HS cube, employing the Fixed Reference t-Stochastic Neighbors Embedding dimensional reduction algorithm, and performing a K-Nearest Neighbors filtering. The information generated by the supervised stage is combined with a segmentation map obtained via unsupervised clustering employing a Hierarchical K-Means algorithm. The fusion is performed using a majority voting approach that associates each cluster with a certain class. To evaluate the proposed approach, five hyperspectral images of surface of the brain affected by glioblastoma tumor in vivo from five different patients have been used. The final classification maps obtained have been analyzed and validated by specialists. These preliminary results are promising, obtaining an accurate delineation of the tumor area.

摘要

脑癌的手术是神经外科的一个主要问题。这些肿瘤向周围正常脑组织的弥漫性浸润使得肉眼难以准确识别。由于手术是脑癌的常见治疗方法,因此肿瘤的准确根治性切除可提高患者的生存率。然而,在手术过程中识别肿瘤边界具有挑战性。高光谱成像是一种适用于医学诊断的非接触、非电离和非侵入性技术。本研究提出了一种新的分类方法,考虑了高光谱图像的空间和光谱特征,以帮助神经外科医生在手术过程中准确确定肿瘤边界,避免过度切除正常组织或无意中留下残留肿瘤。本研究提出的算法旨在寻求一种有效的解决方案,它结合了监督和无监督机器学习方法。首先,使用支持向量机(Support Vector Machine)分类器进行像素级监督分类。使用 HS 立方体的单波段表示,通过固定参考 t-随机近邻嵌入降维算法,对生成的分类图进行空间均匀化处理,并执行 K-最近邻滤波。通过监督阶段生成的信息与通过无监督聚类使用分层 K-Means 算法获得的分割图相结合。融合是通过一种多数投票方法完成的,该方法将每个聚类与某个类相关联。为了评估所提出的方法,使用了五个来自五个不同患者的受胶质母细胞瘤肿瘤影响的脑表面的高光谱图像。通过专家对最终分类图进行了分析和验证。这些初步结果很有希望,可以准确地描绘肿瘤区域。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b1a1/5858847/a5eaa34dd368/pone.0193721.g001.jpg

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