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Determining similarity in histological images using graph-theoretic description and matching methods for content-based image retrieval in medical diagnostics

机译:使用图论描述和匹配方法在医学诊断中基于内容的图像检索中确定组织学图像的相似性

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Background Computer-based analysis of digitalized histological images has been gaining increasing attention, due to their extensive use in research and routine practice. The article aims to contribute towards the description and retrieval of histological images by employing a structural method using graphs. Due to their expressive ability, graphs are considered as a powerful and versatile representation formalism and have obtained a growing consideration especially by the image processing and computer vision community. Methods The article describes a novel method for determining similarity between histological images through graph-theoretic description and matching, for the purpose of content-based retrieval. A higher order (region-based) graph-based representation of breast biopsy images has been attained and a tree-search based inexact graph matching technique has been employed that facilitates the automatic retrieval of images structurally similar to a given image from large databases. Results The results obtained and evaluation performed demonstrate the effectiveness and superiority of graph-based image retrieval over a common histogram-based technique. The employed graph matching complexity has been reduced compared to the state-of-the-art optimal inexact matching methods by applying a pre-requisite criterion for matching of nodes and a sophisticated design of the estimation function, especially the prognosis function. Conclusion The proposed method is suitable for the retrieval of similar histological images, as suggested by the experimental and evaluation results obtained in the study. It is intended for the use in Content Based Image Retrieval (CBIR)-requiring applications in the areas of medical diagnostics and research, and can also be generalized for retrieval of different types of complex images. Virtual Slides The virtual slide(s) for this article can be found here: http://www.diagnosticpathology.diagnomx.eu/vs/1224798882787923 webcite.
机译:背景技术由于数字化组织学图像在研究和常规实践中的广泛使用,因此基于计算机的数字化组织学图像分析越来越受到关注。本文旨在通过采用使用图的结构方法,为组织学图像的描述和检索做出贡献。由于图形的表达能力,图形被认为是一种功能强大且用途广泛的表示形式主义,尤其是在图像处理和计算机视觉界,图形学已得到越来越多的关注。方法本文介绍了一种通过图论描述和匹配来确定组织学图像之间相似性的新颖方法,目的是基于内容的检索。已经获得了乳房活检图像的更高阶(基于区域)基于图的表示,并且已经采用了基于树搜索的不精确图匹配技术,该技术有助于从大型数据库中自动检索结构类似于给定图像的图像。结果获得的结果和进行的评估证明了基于图的图像检索相对于基于常规直方图的技术的有效性和优越性。与最新的最佳不精确匹配方法相比,通过应用用于节点匹配的先决条件和估计功能(尤其是预测功能)的复杂设计,可以降低所采用的图匹配复杂性。结论根据实验和评估结果表明,该方法适用于相似组织学图像的检索。它旨在用于医学诊断和研究领域中的基于内容的图像检索(CBIR)需求的应用程序,并且还可以推广用于检索不同类型的复杂图像。虚拟幻灯片可以在此处找到本文的虚拟幻灯片:http://www.diagnosticpathology.diagnomx.eu/vs/1224798882787923网站。

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