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Semantic Analysis of 3D Anatomical Medical Images for Sub-image Retrieval

机译:用于子图像检索的3D解剖医学图像的语义分析

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Voluminous medical images are critical assets for clinical decision support systems. Retrieval based on the image content can help the clinician in mining images relevant to the current case from a large database. In this paper we address the problem of retrieving relevant sub-images with similar anatomical structures as that of the query image across modalities. The images in the database are automatically annotated with information regarding body region depicted in the scan and organs present, along with their localizing bounding box. For this purpose, initially a coarse localization of body regions is done in the 2D space taking contextual information into account. Following this, finer localization and verification of organs is done using a novel, computationally efficient fuzzy approximation method for constructing 3D texture signatures of organs of interest. They are then indexed using an inverted-file data structure which helps in ranked retrieval of relevant images. Apart from retrieving sub-images across modalities by image example, automatic annotation and efficient indexing allows query by text, limited only by the semantic vocabulary. The algorithm was tested on a database of non-contrast CT and Tl-weighted MR volumes. Quantitative assessment of the proposed algorithm was evaluated using ground-truth database sanitized by medical experts.
机译:大量的医学图像是临床决策支持系统的关键资产。基于图像内容的检索可以帮助临床医生从大型数据库中挖掘与当前病例相关的图像。在本文中,我们解决了跨模态检索与查询图像具有相似解剖结构的相关子图像的问题。数据库中的图像会自动用有关扫描中描绘的身体区域和存在的器官的信息以及它们的定位边界框进行注释。为此,首先在2D空间中考虑到上下文信息对人体区域进行粗略定位。此后,使用新颖的,计算效率高的模糊逼近方法对器官进行更精细的定位和验证,以构建目标器官的3D纹理特征。然后使用反向文件数据结构对它们进行索引,这有助于对相关图像进行分级检索。除了通过图像示例检索跨模态的子图像之外,自动注释和有效索引还允许按文本查询,仅受语义词汇限制。该算法在非对比CT和T1加权MR量的数据库上进行了测试。使用医学专家消毒的地面真相数据库对提出的算法进行定量评估。

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