Detection of Nuclei in H&E Stained Sections Using Convolutional Neural Networks.

Mina Khoshdeli, Richard Cong, Bahram Parvin
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引用次数: 31

Abstract

Detection of nuclei is an important step in phenotypic profiling of histology sections that are usually imaged in bright field. However, nuclei can have multiple phenotypes, which are difficult to model. It is shown that convolutional neural networks (CNN)s can learn different phenotypic signatures for nuclear detection, and that the performance is improved with the feature-based representation of the original image. The feature-based representation utilizes Laplacian of Gaussian (LoG) filter, which accentuates blob-shape objects. Several combinations of input data representations are evaluated to show that by LoG representation, detection of nuclei is advanced. In addition, the efficacy of CNN for vesicular and hyperchromatic nuclei is evaluated. In particular, the frequency of detection of nuclei with the vesicular and apoptotic phenotypes is increased. The overall system has been evaluated against manually annotated nuclei and the F-Scores for alternative representations have been reported.

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卷积神经网络检测H&E染色切片细胞核。
细胞核的检测是一个重要的步骤,在表型分析的组织学切片,通常是在明亮的视野成像。然而,细胞核可以有多种表型,这是很难建模的。研究表明,卷积神经网络(CNN)可以学习不同的表型特征用于核检测,并通过基于特征的原始图像表示提高了性能。基于特征的表示利用拉普拉斯高斯(LoG)滤波器,突出斑点形状的对象。对输入数据表示的几种组合进行了评估,表明通过LoG表示,核的检测是先进的。此外,我们还评估了CNN对泡状核和深染核的疗效。特别是,检出率的细胞核与泡状和凋亡表型增加。整个系统已经对人工注释的核进行了评估,并报告了替代表示的f分数。
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