使用快速紧凑3D CNN方法的高光谱脑组织分类

Hamail Ayaz, D. Tormey, Ian McLoughlin, Muhammad Ahmad, S. Unnikrishnan
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摘要

胶质母细胞瘤(GB)是一种恶性脑肿瘤,需要手术切除。虽然完全切除GB可改善预后,但顶骨上切除可引起神经系统异常。因此,需要术中组织分类技术来划定感染的肿瘤区域,以消除复发。为了描绘受影响的区域,外科医生大多依靠传统的磁共振成像(MRI),但由于脑转移现象,往往缺乏准确性和精度。高光谱成像(HSI)是一种无创的先进光学技术,具有准确分类组织细胞的潜力。然而,由于重叠的区域、高的类间相似性和同质信息,HSI肿瘤分类是具有挑战性的。此外,使用二维卷积神经网络(CNN)模型的HSI模型具有光谱信息消除空间特征,3D后2D混合模型缺乏抽象层次的空间信息。因此,在本研究中,我们使用最小层3D CNN模型,使用术中VivoHSI数据集对GB肿瘤区域与正常组织进行分类。HSI数据包括正常组织(NT)、肿瘤组织(TT)、血管化组织或血管(BV)和背景组织细胞(BG)。本文提出的3D CNN模型仅由两个3D层组成,使用有限的训练样本(20%),其中50%用于训练,50%用于验证,其余数据进行盲测(80%)。该研究通过实现99.99%的总体准确率,优于当时最先进的混合架构。
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Hyperspectral Brain Tissue Classification using a Fast and Compact 3D CNN Approach
Glioblastoma (GB) is a malignant brain tumor and requires surgical resection. Although complete resection of GB improves prognosis, supratotal resection may cause neurological abnormalities. Therefore, intraoperative tissue classification techniques are needed to delineate infected tumor regions to remove reoccurrences. To delineate the affected regions, surgeons mostly rely on traditional magnetic resonance imaging (MRI) which often lacks accuracy and precision due to the brain-shift phenomenon. Hyperspectral Imaging (HSI) is a noninvasive advanced optical technique and has the potential to classify tissue cells accurately. However, HSI tumor classification is challenging due to overlapping regions, high interclass similarity, and homogeneous information. Additionally, HSI models using 2D Convolutional Neural Network (CNN) models works with spectral information eliminating spatial features and 3D followed by 2D hybrid model lacks abstract level spatial information. Therefore, in this study, we have used a minimal layer 3D CNN model to classify the GB tumor region from normal tissues using an intraoperative VivoHSI dataset. The HSI data have normal tissue (NT), tumor tissue (TT), hypervascularized tissue or blood vessels (BV), and background (BG) tissue cells. The proposed 3D CNN model consists of only two 3D layers using limited training samples (20%), which are further divided into 50% for training and 50% for validation and blind tested (80%) on the rest of the data. This study outperformed then state-of-the-art hybrid architecture by achieving an overall accuracy of 99.99%.
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