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Deep learning for FTIR histology: leveraging spatial and spectral features with convolutional neural networks

机译:FTIR组织学的深度学习:利用卷积神经网络利用空间和频谱特征

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摘要

Current methods for cancer detection rely on tissue biopsy, chemical labeling/staining, and examination of the tissue by a pathologist. Though these methods continue to remain the gold standard, they are non-quantitative and susceptible to human error. Fourier transform infrared (FTIR) spectroscopic imaging has shown potential as a quantitative alternative to traditional histology. However, identification of histological components requires reliable classification based on molecular spectra, which are susceptible to artifacts introduced by noise and scattering. Several tissue types, particularly in heterogeneous tissue regions, tend to confound traditional classification methods. Convolutional neural networks (CNNs) are the current state-of-the-art in image classification, providing the ability to learn spatial characteristics of images. In this paper, we demonstrate that CNNs with architectures designed to process both spectral and spatial information can significantly improve classifier performance over per-pixel spectral classification. We report classification results after applying CNNs to data from tissue microarrays (TMAs) to identify six major cellular and acellular constituents of tissue, namely adipocytes, blood, collagen, epithelium, necrosis, and myofibroblasts. Experimental results show that the use of spatial information in addition to the spectral information brings significant improvements in the classifier performance and allows classification of cellular subtypes, such as adipocytes, that exhibit minimal chemical information but have distinct spatial characteristics. This work demonstrates the application and efficiency of deep learning algorithms in improving the diagnostic techniques in clinical and research activities related to cancer.
机译:当前用于癌症检测的方法依赖于组织活检,化学标记/染色以及病理学家对组织的检查。尽管这些方法继续保持金本位制,但它们是非定量的,容易受到人为错误的影响。傅里叶变换红外(FTIR)光谱成像技术已显示出可作为传统组织学定量替代技术的潜力。但是,组织学成分的识别需要基于分子光谱的可靠分类,这容易受到噪声和散射引入的伪影的影响。几种组织类型,尤其是在异质组织区域中,往往会混淆传统的分类方法。卷积神经网络(CNN)是图像分类中的最新技术,能够学习图像的空间特征。在本文中,我们证明了具有可同时处理光谱和空间信息的体系结构的CNN可以显着提高分类器性能,而不是逐像素光谱分类。我们将CNN应用于组织微阵列(TMA)的数据,以识别组织的六种主要细胞和无细胞成分,即脂肪细胞,血液,胶原蛋白,上皮细胞,坏死和成肌纤维细胞后,报告分类结果。实验结果表明,除了光谱信息之外,空间信息的使用还大大提高了分类器的性能,并允许对具有最小化学信息但具有独特空间特征的细胞亚型(例如脂肪细胞)进行分类。这项工作证明了深度学习算法在改善与癌症相关的临床和研究活动中的诊断技术方面的应用和效率。

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