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Medical Imaging on the Semantic Web: Annotation and Image Markup

机译:语义网上的医学成像:注释和图像标记

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Medical images are proliferating at an explosive pace, similar to other types of data in e-Science. Technological solutions are needed to enable machines to help researchers and physicians access and use these images optimally. While Semantic Web technologies are showing promise in tackling the information challenges in biomedicine, less attention is focused on leveraging similar technologies in imaging. We are developing methods and tools to enable the transparent discovery and use of large distributed collections of medical images in cyberspace as well as within hospital information systems. Our approach is to make the human and machine descriptions of image pixel content machine-accessible through annotation using ontologies. We created an ontology of image annotation and markup, specifying the entities and relations necessary to represent the semantics of medical image pixel content. We are creating a toolkit to collect the annotations directly from researchers and physicians as they view the images on medical imaging workstations. Image annotations, represented as instances in the ontology can be serialized to a variety of formats, enabling interoperability among a variety of systems that contain images: medical records systems, image archives in hospitals, and the Semantic Web. The ontology-based annotations will enable images to be related to non-image data having related semantics and relevance. Our ultimate goal is to enable semantic integration of images and all the related scientific data pertaining to their content so that researchers and physicians can have the best understanding of the biological and physiological significance of image content.
机译:医学图像以爆炸性的速度增殖,类似于电子科学中的其他类型的数据。需要技术解决方案来使机器能够帮助研究人员和医院获得并最佳地使用这些图像。虽然语义网络技术在解决生物医药中的信息挑战时,虽然语义网络技术在解决生物医学中的信息挑战方面,但重点关注在对成像中的相似技术中的贡献。我们正在开发方法和工具,以实现网络空间中的透明发现和使用大型分布式的医学图像以及在医院信息系统中。我们的方法是通过使用本体的注释来使图像像素内容机器的人员和机器描述。我们创建了图像注释和标记的本体,指定了代表医学图像像素内容的语义所需的实体和关系。我们正在创建一个工具包,以直接从研究人员和医院收集注释,因为它们在医学成像工作站上查看图像。图像注释表示作为本体中的实例可以序列化为各种格式,在包含图像的各种系统之间启用互操作性:医疗记录系统,医院图像档案和语义网络。基于本体的注释将使图像能够与具有相关语义和相关性的非图像数据相关。我们的最终目标是启用图像的语义整合和与其内容有关的所有相关科学数据,以便研究人员和医生可以最佳了解图像内容的生物和生理意义。

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