通过线性非混合和深度神经网络集合对组织病理学高光谱图像进行混合脑肿瘤分类。

IF 2.8 Q3 ENGINEERING, BIOMEDICAL
Inés A. Cruz-Guerrero, Daniel Ulises Campos-Delgado, Aldo R. Mejía-Rodríguez, Raquel Leon, Samuel Ortega, Himar Fabelo, Rafael Camacho, Maria de la Luz Plaza, Gustavo Callico
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引用次数: 0

摘要

高光谱成像技术已经证明,它可以通过非接触和非侵入式技术提供样本的相关空间和光谱信息。在医学领域,特别是组织病理学领域,高光谱成像技术已被用于病变组织的分类和识别,以及病变组织形态特征的鉴定。在这项工作中,我们提出了一种通过高光谱成像对非肿瘤和肿瘤脑组织样本进行分类的混合方案。所提出的方法基于通过线性非混合来识别高光谱图像中的特征成分,作为特征工程步骤,随后通过深度学习方法进行分类。在最后一个步骤中,通过在增强数据集上的交叉验证方案和迁移学习方案对深度神经网络集合进行评估。所提出的方法可以对大脑组织学样本进行分类,平均准确率达到 88%,并降低了变异性、计算成本和推理时间,与最先进的方法相比具有优势。因此,这项工作展示了混合分类方法的潜力,通过结合线性非混合特征提取和深度学习分类,可以获得稳健可靠的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Hybrid brain tumor classification of histopathology hyperspectral images by linear unmixing and an ensemble of deep neural networks

Hybrid brain tumor classification of histopathology hyperspectral images by linear unmixing and an ensemble of deep neural networks

Hyperspectral imaging has demonstrated its potential to provide correlated spatial and spectral information of a sample by a non-contact and non-invasive technology. In the medical field, especially in histopathology, HSI has been applied for the classification and identification of diseased tissue and for the characterization of its morphological properties. In this work, we propose a hybrid scheme to classify non-tumor and tumor histological brain samples by hyperspectral imaging. The proposed approach is based on the identification of characteristic components in a hyperspectral image by linear unmixing, as a features engineering step, and the subsequent classification by a deep learning approach. For this last step, an ensemble of deep neural networks is evaluated by a cross-validation scheme on an augmented dataset and a transfer learning scheme. The proposed method can classify histological brain samples with an average accuracy of 88%, and reduced variability, computational cost, and inference times, which presents an advantage over methods in the state-of-the-art. Hence, the work demonstrates the potential of hybrid classification methodologies to achieve robust and reliable results by combining linear unmixing for features extraction and deep learning for classification.

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来源期刊
Healthcare Technology Letters
Healthcare Technology Letters Health Professions-Health Information Management
CiteScore
6.10
自引率
4.80%
发文量
12
审稿时长
22 weeks
期刊介绍: Healthcare Technology Letters aims to bring together an audience of biomedical and electrical engineers, physical and computer scientists, and mathematicians to enable the exchange of the latest ideas and advances through rapid online publication of original healthcare technology research. Major themes of the journal include (but are not limited to): Major technological/methodological areas: Biomedical signal processing Biomedical imaging and image processing Bioinstrumentation (sensors, wearable technologies, etc) Biomedical informatics Major application areas: Cardiovascular and respiratory systems engineering Neural engineering, neuromuscular systems Rehabilitation engineering Bio-robotics, surgical planning and biomechanics Therapeutic and diagnostic systems, devices and technologies Clinical engineering Healthcare information systems, telemedicine, mHealth.
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