An automatic nuclei segmentation method based on deep convolutional neural networks for histopathology images.

BMC biomedical engineering Pub Date : 2019-10-17 eCollection Date: 2019-01-01 DOI:10.1186/s42490-019-0026-8
Hwejin Jung, Bilal Lodhi, Jaewoo Kang
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Abstract

Background: Since nuclei segmentation in histopathology images can provide key information for identifying the presence or stage of a disease, the images need to be assessed carefully. However, color variation in histopathology images, and various structures of nuclei are two major obstacles in accurately segmenting and analyzing histopathology images. Several machine learning methods heavily rely on hand-crafted features which have limitations due to manual thresholding.

Results: To obtain robust results, deep learning based methods have been proposed. Deep convolutional neural networks (DCNN) used for automatically extracting features from raw image data have been proven to achieve great performance. Inspired by such achievements, we propose a nuclei segmentation method based on DCNNs. To normalize the color of histopathology images, we use a deep convolutional Gaussian mixture color normalization model which is able to cluster pixels while considering the structures of nuclei. To segment nuclei, we use Mask R-CNN which achieves state-of-the-art object segmentation performance in the field of computer vision. In addition, we perform multiple inference as a post-processing step to boost segmentation performance. We evaluate our segmentation method on two different datasets. The first dataset consists of histopathology images of various organ while the other consists histopathology images of the same organ. Performance of our segmentation method is measured in various experimental setups at the object-level and the pixel-level. In addition, we compare the performance of our method with that of existing state-of-the-art methods. The experimental results show that our nuclei segmentation method outperforms the existing methods.

Conclusions: We propose a nuclei segmentation method based on DCNNs for histopathology images. The proposed method which uses Mask R-CNN with color normalization and multiple inference post-processing provides robust nuclei segmentation results. Our method also can facilitate downstream nuclei morphological analyses as it provides high-quality features extracted from histopathology images.

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基于深度卷积神经网络的组织病理学图像自动细胞核分割方法。
背景:由于组织病理学图像中的细胞核分割可为确定疾病的存在或分期提供关键信息,因此需要对图像进行仔细评估。然而,组织病理学图像中的颜色变化和细胞核的各种结构是准确分割和分析组织病理学图像的两大障碍。几种机器学习方法严重依赖于手工创建的特征,而手工阈值处理又导致了这些方法的局限性:为了获得稳健的结果,人们提出了基于深度学习的方法。用于从原始图像数据中自动提取特征的深度卷积神经网络(DCNN)已被证明取得了卓越的性能。受这些成就的启发,我们提出了一种基于 DCNN 的细胞核分割方法。为了对组织病理学图像的颜色进行归一化处理,我们使用了深度卷积高斯混合颜色归一化模型,该模型能够对像素进行聚类,同时考虑到细胞核的结构。为了分割细胞核,我们使用了 Mask R-CNN,它在计算机视觉领域实现了最先进的物体分割性能。此外,我们还在后处理步骤中执行多重推理,以提高分割性能。我们在两个不同的数据集上评估了我们的分割方法。第一个数据集由不同器官的组织病理学图像组成,另一个数据集由同一器官的组织病理学图像组成。在不同的实验设置中,我们分别在对象级和像素级测量了我们的分割方法的性能。此外,我们还比较了我们的方法与现有先进方法的性能。实验结果表明,我们的细胞核分割方法优于现有方法:我们提出了一种基于 DCNN 的组织病理学图像细胞核分割方法。所提出的方法使用了带有颜色归一化和多重推理后处理的掩膜 R-CNN 技术,可提供稳健的核仁分割结果。我们的方法还能提供从组织病理学图像中提取的高质量特征,因此有助于下游的细胞核形态学分析。
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