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The Lung Image Database Consortium (LIDC) Data Collection Process for Nodule Detection and Annotation

机译:用于结节检测和注释的肺图像数据库联盟(LIDC)数据收集过程

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摘要

RATIONALE AND OBJECTIVES: The Lung Image Database Consortium (LIDC) is developing a publicly available database of thoracic computed tomography (CT) scans as a medical imaging research resource to promote the development of computer-aided detection or characterization of pulmonary nodules. To obtain the best estimate of the location and spatial extent of lung nodules, expert thoracic radiologists reviewed and annotated each scan. Because a consensus panel approach was neither feasible nor desirable, a unique two-phase, multicenter data collection process was developed to allow multiple radiologists at different centers to asynchronously review and annotate each CT scan. This data collection process was also intended to capture the variability among readers.MATERIALS AND METHODS: Four radiologists reviewed each scan using the following process. In the first or "blinded" phase, each radiologist reviewed the CT scan independently. In the second or "unblinded" review phase, results from all four blinded reviews were compiled and presented to each radiologist for a second review, allowing the radiologists to review their own annotations together with the annotations of the other radiologists. The results of each radiologist's unblinded review were compiled to form the final unblinded review. An XML-based message system was developed to communicate the results of each reading.RESULTS: This two-phase data collection process was designed, tested, and implemented across the LIDC. More than 500 CT scans have been read and annotated using this method by four expert readers; these scans either are currently publicly available at http://ncia.nci.nih.gov or will be in the near future.CONCLUSIONS: A unique data collection process was developed, tested, and implemented that allowed multiple readers at distributed sites to asynchronously review CT scans multiple times. This process captured the opinions of each reader regarding the location and spatial extent of lung nodules.
机译:理由和目标:肺图像数据库协会(LIDC)正在开发可公开获得的胸部计算机断层扫描(CT)扫描数据库,作为医学影像研究资源,以促进计算机辅助检测或表征肺结节的发展。为了获得对肺结节的位置和空间范围的最佳估计,胸腔放射线专家对每次扫描进行了审查和注释。由于共识小组方法既不可行也不理想,因此开发了独特的两阶段,多中心数据收集过程,以允许不同中心的多位放射科医生异步检查和注释每次CT扫描。该数据收集过程还旨在捕获读者之间的差异。材料与方法:四位放射科医生使用以下过程检查了每次扫描。在第一阶段或“盲”阶段,每位放射科医生都独立检查CT扫描。在第二个或“非盲目”审阅阶段,所有四个盲目审阅的结果都会被编译并提交给每个放射线医师进行第二次审阅,从而使放射线医师能够审阅自己的注释以及其他放射线医生的注释。汇总每位放射科医生的无盲评论的结果以形成最终的无盲评论。开发了一个基于XML的消息系统来传达每次读数的结果。结果:整个LIDC均设计,测试和实现了这个分为两个阶段的数据收集过程。四个专家阅读器已使用此方法读取并注释了500多次CT扫描;这些扫描或者可以在http://ncia.nci.nih.gov上公开获得,也可以在不久的将来获得。结论:开发,测试和实施了一个独特的数据收集过程,该过程允许分布式站点的多个读取器异步进行多次检查CT扫描。这个过程捕获了每个读者关于肺结节的位置和空间范围的意见。

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