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用于自动组织病理学图像标注的微观结构组织分析。

Micro-structural tissue analysis for automatic histopathological image annotation.

机构信息

Bioingenium Research Group, Faculty of Medicine, National University of Colombia, Bogotá, Colombia.

出版信息

Microsc Res Tech. 2012 Mar;75(3):343-58. doi: 10.1002/jemt.21063. Epub 2011 Oct 14.

Abstract

This article presents a new approach for extracting high level semantic concepts from digital histopathological images. This strategy provides not only annotation of several biological concepts, but also a coarse location of these concepts. The proposed approach is composed of five main steps: (1) a stain decomposition stage, which separates the contribution of hematoxylin and eosin dyes, (2) a color standardization that corrects color image differences, (3) a part-based representation, which describes the image in terms of the conditional probability of relevant local patches, selected by their stain contributions, (4) a discriminative classification model, which bridges out the found patterns and the biological concepts, (5) a block-based annotation strategy that identifies the multiple biological concepts within an image. A set of 655 skin images, containing 10 biological concepts of skin tissues were used for assessing the proposed approach, obtaining a sensitivity of 84% and a specificity of 67% when annotating images with multiple concepts.

摘要

本文提出了一种从数字组织病理学图像中提取高层语义概念的新方法。该策略不仅提供了多个生物概念的注释,还提供了这些概念的粗略位置。所提出的方法由五个主要步骤组成:(1)染色分解阶段,它分离苏木精和伊红染料的贡献,(2)颜色标准化,纠正颜色图像差异,(3)基于部分的表示,它根据相关局部补丁的条件概率来描述图像,这些补丁是通过它们的染色贡献选择的,(4)有区别的分类模型,它连接找到的模式和生物概念,(5)基于块的注释策略,用于识别图像中的多个生物概念。使用一组包含 10 种皮肤组织生物概念的 655 张皮肤图像来评估所提出的方法,在对具有多个概念的图像进行注释时,获得了 84%的灵敏度和 67%的特异性。

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