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Adapting contentz-based image retrieval techniques for the semantic annotation of medical images

机译:适应基于Contentz的图像检索技术,了解医学图像的语义注释

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The automatic annotation of medical images is a prerequisite for building comprehensive semantic archives that can be used to enhance evidence-based diagnosis, physician education, and biomedical research. Annotation also has important applications in the automatic generation of structured radiology reports. Much of the prior research work has focused on annotating images with properties such as the modality of the image, or the biological system or body region being imaged. However, many challenges remain for the annotation of high-level semantic content in medical images (e.g., presence of calcification, vessel obstruction, etc.) due to the difficulty in discovering relationships and associations between low-level image features and high-level semantic concepts. This difficulty is further compounded by the lack of labelled training data. In this paper, we present a method for the automatic semantic annotation of medical images that leverages techniques from content-based image retrieval (CBIR). CBIR is a well-established image search technology that uses quantifiable low-level image features to represent the high-level semantic content depicted in those images. Our method extends CBIR techniques to identify or retrieve a collection of labelled images that have similar low-level features and then uses this collection to determine the best high-level semantic annotations. We demonstrate our annotation method using retrieval via weighted nearest-neighbour retrieval and multi-class classification to show that our approach is viable regardless of the underlying retrieval strategy. We experimentally compared our method with several well-established baseline techniques (classification and regression) and showed that our method achieved the highest accuracy in the annotation of liver computed tomography (CT) images. (C) 2016 Elsevier Ltd. All rights reserved.
机译:医学图像的自动注释是构建综合语义档案的先决条件,可用于增强基于证据的诊断,医生教育和生物医学研究。注释还在自动生成结构化放射学报告中具有重要应用。许多先前的研究工作都集中在带有诸如图像的模态的性质的注释图像,或者进行成像的生物系统或体区域。然而,由于难以发现低级图像特征和高级语义之间的关系和关联,因此仍有许多挑战在医学图像(例如,钙化,血管阻塞等)中的高级别语义内容的注释概念。由于缺乏标记的训练数据,这种困难进一步复杂化。在本文中,我们提出了一种用于从基于内容的图像检索(CBIR)利用技术的医学图像自动语义注释的方法。 CBIR是一种良好的图像搜索技术,使用量化的低级图像特征来表示这些图像中描绘的高电平语义内容。我们的方法扩展了CBIR技术,以识别或检索具有相似的低级功能的标记图像的集合,然后使用此集合来确定最佳的高级语义注释。我们展示了我们的注释方法,通过加权最近邻检索和多级分类来证明我们的方法是可行的,无论潜在的检索策略如何。我们通过多种良好的基线技术(分类和回归)进行了实验比较了我们的方法,并显示了我们的方法在肝脏计算断层扫描(CT)图像的注释中实现了最高精度。 (c)2016 Elsevier Ltd.保留所有权利。

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