首页> 外文期刊>Journal of digital imaging: the official journal of the Society for Computer Applications in Radiology >Managing biomedical image metadata for search and retrieval of similar images.
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Managing biomedical image metadata for search and retrieval of similar images.

机译:管理生物医学图像元数据以搜索和检索相似图像。

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Radiology images are generally disconnected from the metadata describing their contents, such as imaging observations ("semantic" metadata), which are usually described in text reports that are not directly linked to the images. We developed a system, the Biomedical Image Metadata Manager (BIMM) to (1) address the problem of managing biomedical image metadata and (2) facilitate the retrieval of similar images using semantic feature metadata. Our approach allows radiologists, researchers, and students to take advantage of the vast and growing repositories of medical image data by explicitly linking images to their associated metadata in a relational database that is globally accessible through a Web application. BIMM receives input in the form of standard-based metadata files using Web service and parses and stores the metadata in a relational database allowing efficient data query and maintenance capabilities. Upon querying BIMM for images, 2D regions of interest (ROIs) stored as metadata are automatically rendered onto preview images included in search results. The system's "match observations" function retrieves images with similar ROIs based on specific semantic features describing imaging observation characteristics (IOCs). We demonstrate that the system, using IOCs alone, can accurately retrieve images with diagnoses matching the query images, and we evaluate its performance on a set of annotated liver lesion images. BIMM has several potential applications, e.g., computer-aided detection and diagnosis, content-based image retrieval, automating medical analysis protocols, and gathering population statistics like disease prevalences. The system provides a framework for decision support systems, potentially improving their diagnostic accuracy and selection of appropriate therapies.
机译:放射线图像通常与描述其内容的元数据断开连接,例如成像观察结果(“语义”元数据),通常在不与图像直接链接的文本报告中进行描述。我们开发了一个系统,即生物医学图像元数据管理器(BIMM),以(1)解决管理生物医学图像元数据的问题,以及(2)使用语义特征元数据促进相似图像的检索。我们的方法允许放射科医生,研究人员和学生通过将图像与其关联的元数据显式链接到可通过Web应用程序全局访问的关系数据库中,来利用庞大且不断增长的医学图像数据存储库。 BIMM使用Web服务以基于标准的元数据文件的形式接收输入,并将这些元数据解析并存储在关系数据库中,从而实现有效的数据查询和维护功能。在向BIMM查询图像后,存储为元数据的2D感兴趣区域(ROI)会自动呈现到搜索结果中包含的预览图像上。系统的“匹配观察”功能基于描述成像观察特征(IOC)的特定语义特征,检索具有相似ROI的图像。我们证明了仅使用IOC的系统就可以准确地检索出诊断与查询图像匹配的图像,并且可以在一组带注释的肝脏病变图像上评估其性能。 BIMM具有多种潜在应用,例如计算机辅助检测和诊断,基于内容的图像检索,自动化医学分析协议以及收集人口统计数据(如疾病患病率)。该系统为决策支持系统提供了框架,有可能提高其诊断准确性和选择适当的疗法。

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