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Combining Text Retrieval and Content-based Image Retrieval for Searching Large-scaleMedical Image Database in Integrated RIS/PACS Environment

机译:在集成的RIS / PACS环境中搜索大型ScaleMedical Image数据库的基于文本检索和基于内容的图像检索

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Medical imaging modalities generate huge amount of medical images daily, and there are urgent demands to search large-scale image databases in an RIS-integrated PACS environment to support medical research and diagnosis by using image visual content to find visually similar images. However, most of current content-based image retrieval (CBIR) systems require distance computations to perform query by image content. Distance computations can be time consuming when image database grows large, and thus limits the usability of such systems. Furthermore, there is still a semantic gap between the low-level visual features automatically extracted and the high-level concepts that users normally search for. To address these problems, we propose a novel framework that combines text retrieval and CBIR techniques in order to support searching large-scale medical image database while integrated RIS/PACS is in place. A prototype system for CBIR has been implemented, which can query similar medical images both by their visual content and relevant semantic descriptions (symptoms and/or possible diagnosis). It also can be used as a decision support tool for radiology diagnosis and a learning tool for education.
机译:医学成像方式每天产生大量的医学图像,并且在RIS-Integrated PACS环境中搜索大规模图像数据库的迫切需要通过使用图像视觉内容来查找视觉上类似的图像来支持医学研究和诊断。然而,基于当前的基于内容的图像检索(CBIR)系统需要距离计算以通过图像内容执行查询。当图像数据库变大时,距离计算可能是耗时的,因此限制了这种系统的可用性。此外,低级视觉功能之间仍然存在语义差距,并且用户通常会搜索的高级概念。为了解决这些问题,我们提出了一种新的框架,它结合了文本检索和CBIR技术,以便在集成的RIS / PACS到位时支持大规模医学图像数据库。已经实施了CBIR的原型系统,可以通过其视觉内容和相关语义描述(症状和/或可能的诊断)来查询类似的医学图像。它还可以用作放射学诊断的决策支持工具和教育学习工具。

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