首页> 外文会议>Conference on PACS and imaging informatics >Collection of Sequential Imaging Events for Research in Breast Cancer Screening
【24h】

Collection of Sequential Imaging Events for Research in Breast Cancer Screening

机译:乳腺癌筛查研究的顺序成像事件的集合

获取原文

摘要

Due to the huge amount of research involving medical images, there is a widely accepted need for comprehensive collections of medical images to be made available for research. This demand led to the design and implementation of a flexible image repository, which retrospectively collects images and data from multiple sites throughout the UK. The OPTIMAM Medical Image Database (OMI-DB) was created to provide a centralized, fully annotated dataset for research. The database contains both processed and unprocessed images, associated data, annotations and expert-determined ground truths. Collection has been ongoing for over three years, providing the opportunity to collect sequential imaging events. Extensive alterations to the identification, collection, processing and storage arms of the system have been undertaken to support the introduction of sequential events, including interval cancers. These updates to the collection systems allow the acquisition of many more images, but more importantly, allow one to build on the existing high-dimensional data stored in the OMI-DB. A research dataset of this scale, which includes original normal and subsequent malignant cases along with expert derived and clinical annotations, is currently unique. These data provide a powerful resource for future research and has initiated new research projects, amongst which, is the quantification of normal cases by applying a large number of quantitative imaging features, with a priori knowledge that eventually these cases develop a malignancy. This paper describes, extensions to the OMI-DB collection systems and tools and discusses the prospective applications of having such a rich dataset for future research applications.
机译:由于涉及医学图像的大量研究,有一个广泛接受的需要综合医学图像的综合需求。这种需求导致了灵活图像存储库的设计和实现,它回顾性地从整个英国的多个站点收集图像和数据。创建OptimAM Medical Image数据库(OMI-DB)以提供用于研究的集中式全注算的数据集。数据库包含已处理和未处理的图像,关联的数据,注释和专家确定的基础事实。收集已有三年多一直在进行,提供收集顺序成像事件的机会。对系统的识别,收集,处理和存储武器进行了广泛的更改,以支持引入连续事件,包括间隔癌。这些收集系统的这些更新允许获取更多图像,但更重要的是,允许一个人建立在存储在OMI-DB中的现有高维数据上。该规模的研究数据集包括原始的正常和随后的恶性病例以及专家源性和临床注释,目前是独一无二的。这些数据为未来的研究提供了强大的资源,并启动了新的研究项目,其中包括通过应用大量定量成像特征来定量正常情况,并先验,最终这些案例产生恶性肿瘤。本文介绍了对OMI-DB收集系统和工具的扩展,并讨论了为未来的研究应用程序拥有这样的丰富数据集的前瞻性应用。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号