首页> 外文期刊>Cytometry, Part A: the journal of the International Society for Analytical Cytology >A supervised learning framework for pancreatic islet segmentation with multi-scale color-texture features and rolling guidance filters
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A supervised learning framework for pancreatic islet segmentation with multi-scale color-texture features and rolling guidance filters

机译:具有多尺度颜色纹理特征和滚动引导过滤器的胰岛分割的有监督学习框架

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摘要

Islet cell quantification and function is important for developing novel therapeutic interventions for diabetes. Existing methods of pancreatic islet segmentation in histopathological images depend strongly on celluclei detection, and thus are limited due to a wide variance in the appearance of pancreatic islets. In this paper, we propose a supervised learning pipeline to segment pancreatic islets in histopathological images, which does not require cell detection. The proposed framework firstly partitions images into superpixels, and then extracts multi-scale color-texture features from each superpixel and processes these features using rolling guidance filters, in order to simultaneously reduce inter-class ambiguity and intra-class variation. Finally, a linear support vector machine (SVM) is trained and applied to segment the testing images. A total of 23 hematoxylin-and-eosin-stained histopathological images with pancreatic islets are used for verifying the framework. With an average accuracy of 95%, training time of 20 min and testing time of 1 min per image, the proposed framework outperforms existing approaches with better segmentation performance and lower computational cost. (c) 2016 International Society for Advancement of Cytometry
机译:胰岛细胞的定量和功能对于开发新型的糖尿病治疗干预非常重要。组织病理学图像中胰岛分割的现有方法在很大程度上取决于细胞/细胞核的检测,因此由于胰岛外观的巨大差异而受到限制。在本文中,我们提出了一种有监督的学习管道,以在组织病理学图像中分割胰岛,该过程不需要细胞检测。所提出的框架首先将图像划分为超像素,然后从每个超像素中提取多尺度色彩纹理特征,并使用滚动引导滤波器处理这些特征,以同时减少类间歧义和类内变异。最终,线性支持向量机(SVM)被训练并应用于分割测试图像。总共使用23个苏木精和曙红染色的胰岛组织病理学图像用于验证框架。提出的框架具有95%的平均准确度,20分钟的训练时间和每张图像1分钟的测试时间,以更好的分割性能和较低的计算成本优于现有方法。 (c)2016国际细胞计数学会

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