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分层深度卷积神经网络结合光谱和空间信息,用于基于拉曼显微镜的高精度细胞病理学。

Hierarchical deep convolutional neural networks combine spectral and spatial information for highly accurate Raman-microscopy-based cytopathology.

作者信息

Krauß Sascha D, Roy Raphael, Yosef Hesham K, Lechtonen Tatjana, El-Mashtoly Samir F, Gerwert Klaus, Mosig Axel

机构信息

Department of Biophysics, Ruhr-University Bochum, Bochum, Germany.

出版信息

J Biophotonics. 2018 Oct;11(10):e201800022. doi: 10.1002/jbio.201800022. Epub 2018 Jul 5.

Abstract

Hierarchical variants of so-called deep convolutional neural networks (DCNNs) have facilitated breakthrough results for numerous pattern recognition tasks in recent years. We assess the potential of these novel whole-image classifiers for Raman-microscopy-based cytopathology. Conceptually, DCNNs facilitate a flexible combination of spectral and spatial information for classifying cellular images as healthy or cancer-affected cells. As we demonstrate, this conceptual advantage translates into practice, where DCNNs exceed the accuracy of both conventional classifiers based on pixel spectra as well as classifiers based on morphological features extracted from Raman microscopic images. Remarkably, accuracies exceeding those of all previously proposed classifiers are obtained while using only a small fraction of the spectral information provided by the dataset. Overall, our results indicate a high potential for DCNNs in medical applications of not just Raman, but also infrared microscopy.

摘要

近年来,所谓的深度卷积神经网络(DCNN)的分层变体在众多模式识别任务中取得了突破性成果。我们评估了这些新型全图像分类器在基于拉曼显微镜的细胞病理学中的潜力。从概念上讲,DCNN便于灵活组合光谱和空间信息,以将细胞图像分类为健康细胞或受癌症影响的细胞。正如我们所展示的,这一概念优势转化为了实际效果,即DCNN在准确率上超过了基于像素光谱的传统分类器以及基于从拉曼显微图像中提取的形态特征的分类器。值得注意的是,在仅使用数据集中一小部分光谱信息的情况下,就获得了超过所有先前提出的分类器的准确率。总体而言,我们的结果表明DCNN不仅在拉曼医学应用中,而且在红外显微镜医学应用中都具有很高的潜力。

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