Müller H, Hanbury A
HES-SO, Rue du TechnoPôle 3, 3960, Sierre, Schweiz.
TU Wien, Wien, Österreich.
Radiologe. 2016 Feb;56(2):176-80. doi: 10.1007/s00117-015-0042-1.
Medical imaging produces increasingly complex images (e.g. thinner slices and higher resolution) with more protocols, so that image reading has also become much more complex. More information needs to be processed and usually the number of radiologists available for these tasks has not increased to the same extent. The objective of this article is to present current research results from projects on the use of image data for clinical decision support. An infrastructure that can allow large volumes of data to be accessed is presented. In this way the best performing tools can be identified without the medical data having to leave secure servers. The text presents the results of the VISCERAL and Khresmoi EU-funded projects, which allow the analysis of previous cases from institutional archives to support decision-making and for process automation. The results also represent a secure evaluation environment for medical image analysis. This allows the use of data extracted from past cases to solve information needs occurring when diagnosing new cases. The presented research prototypes allow direct extraction of knowledge from the visual data of the images and to use this for decision support or process automation. Real clinical use has not been tested but several subjective user tests showed the effectiveness and efficiency of the process. The future in radiology will clearly depend on better use of the important knowledge in clinical image archives to automate processes and aid decision-making via big data analysis. This can help concentrate the work of radiologists towards the most important parts of diagnostics.
医学成像产生的图像越来越复杂(例如切片更薄、分辨率更高),且检查方案更多,因此图像解读也变得更加复杂。需要处理更多信息,而通常可用于这些任务的放射科医生数量并未以相同幅度增加。本文的目的是展示关于使用图像数据进行临床决策支持的项目的当前研究成果。介绍了一种能够允许访问大量数据的基础设施。通过这种方式,可以在医疗数据无需离开安全服务器的情况下识别性能最佳的工具。本文介绍了欧盟资助的VISCERAL和Khresmoi项目的成果,这些项目允许分析机构档案中的既往病例,以支持决策制定和流程自动化。这些成果还代表了一个用于医学图像分析的安全评估环境。这使得可以使用从过去病例中提取的数据来解决诊断新病例时出现的信息需求。所展示的研究原型允许直接从图像的视觉数据中提取知识,并将其用于决策支持或流程自动化。尚未对实际临床应用进行测试,但多项主观用户测试表明了该流程的有效性和效率。放射学的未来显然将取决于更好地利用临床图像档案中的重要知识,通过大数据分析实现流程自动化并辅助决策制定。这有助于将放射科医生的工作集中于诊断中最重要的部分。