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Automated skin biopsy histopathological image annotation using multi-instance representation and learning

机译:使用多实例表示和学习的自动皮肤活检组织病理学图像注释

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With digitisation and the development of computer-aided diagnosis, histopathological image analysis has attracted considerable interest in recent years. In this article, we address the problem of the automated annotation of skin biopsy images, a special type of histopathological image analysis. In contrast to previous well-studied methods in histopathology, we propose a novel annotation method based on a multi-instance learning framework. The proposed framework first represents each skin biopsy image as a multi-instance sample using a graph cutting method, decomposing the image to a set of visually disjoint regions. Then, we construct two classification models using multi-instance learning algorithms, among which one provides determinate results and the other calculates a posterior probability. We evaluate the proposed annotation framework using a real dataset containing 6691 skin biopsy images, with 15 properties as target annotation terms. The results indicate that the proposed method is effective and medically acceptable.
机译:随着数字化和计算机辅助诊断的发展,近年来组织病理学图像分析引起了相当大的兴趣。在本文中,我们解决了皮肤活检图像(一种特殊类型的组织病理学图像分析)的自动注释问题。与以前在组织病理学方面经过深入研究的方法相反,我们提出了一种基于多实例学习框架的新颖注释方法。提出的框架首先使用图形切割方法将每个皮肤活检图像表示为多实例样本,然后将图像分解为一组视觉上不相连的区域。然后,我们使用多实例学习算法构造两个分类模型,其中一个提供确定的结果,另一个计算后验概率。我们使用包含6691个皮肤活检图像的真实数据集(具有15个属性作为目标注释项)评估提出的注释框架。结果表明,所提出的方法是有效的并且在医学上可以接受。

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