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Prototypes for Content-Based Image Retrieval in Clinical Practice

机译:临床实践中基于内容的图像检索原型

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Content-based image retrieval (CBIR) has been proposed as key technology for computer-aided diagnostics (CAD). This paper reviews the state of the art and future challenges in CBIR for CAD applied to clinical practice.We define applicability to clinical practice by having recently demonstrated the CBIR system on one of the CAD demonstration workshops held at international conferences, such as SPIE Medical Imaging, CARS, SIIM, RSNA, and IEEE ISBI. From 2009 to 2011, the programs of CADdemo@CARS and the CAD Demonstration Workshop at SPIE Medical Imaging were sought for the key word “retrieval” in the title. The systems identified were analyzed and compared according to the hierarchy of gaps for CBIR systems.In total, 70 software demonstrations were analyzed. 5 systems were identified meeting the criterions. The fields of application are (i) bone age assessment, (ii) bone fractures, (iii) interstitial lung diseases, and (iv) mammography. Bridging the particular gaps of semantics, feature extraction, feature structure, and evaluation have been addressed most frequently.In specific application domains, CBIR technology is available for clinical practice. While system development has mainly focused on bridging content and feature gaps, performance and usability have become increasingly important. The evaluation must be based on a larger set of reference data, and workflow integration must be achieved before CBIR-CAD is really established in clinical practice.
机译:基于内容的图像检索(CBIR)已被提出作为计算机辅助诊断(CAD)的关键技术。本文回顾了CBIR在CAD中应用于临床实践的最新技术和未来挑战。我们通过在国际会议(例如SPIE Medical Imaging)上举行的CAD演示研讨会之一上演示了CBIR系统,定义了临床实践的适用性,CARS,SIIM,RSNA和IEEE ISBI。从2009年到2011年,CADdemo @ CARS的计划和SPIE Medical Imaging的CAD示范讲习班一直被用作标题中的“检索”关键词。根据CBIR系统的差距层次对所识别的系统进行了分析和比较。总共分析了70个软件演示。确定了5个符合标准的系统。应用领域是(i)骨龄评估,(ii)骨折,(iii)肺间质疾病和(iv)乳腺摄影。弥合语义上的特殊差距,特征提取,特征结构和评估已得到最频繁的解决。在特定的应用领域,CBIR技术可用于临床实践。尽管系统开发主要集中在弥合内容和功能差距上,但性能和可用性变得越来越重要。评估必须基于更大的参考数据集,并且必须在临床实践中真正建立CBIR-CAD之前实现工作流集成。

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