支持查找医疗叙述的电子健康记录的多尺度可视化

Sanne van der Linden, J. V. Wijk, M. Funk
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引用次数: 2

摘要

电子健康记录(EHRs)包含关于患者的丰富医疗信息,可能包括数百个笔记、实验室结果、图像和其他信息。医生很容易被这些丰富的信息所淹没。对于他们的日常工作,他们需要从所有这些信息中得出叙述,以深入了解患者的主要问题。标准解决方案以线性列表的形式显示所有信息,常常导致认知超载;研究解决方案提供了时间线和笔记之间的关系,但提供了太多碎片化的信息。我们提出MEDeNAR,这是一个使医疗专业人员能够根据其工作流程中的不同任务从电子病历中获得见解的系统。我们系统的关键方面是引入了一个中间层,该层使用聚类和NLP方法总结信息。结果是可视化的时间轴,并提供方便的访问详细说明笔记和实验室结果在EHR水平。我们与18名医生、两名护士和14名领域专家合作,使用迭代设计过程设计了这个系统。在最后的评估中,医生将我们的系统评为高于标准基线解决方案和使用的NLP方法的变体。CCS概念•以人为中心的计算→可视化工具包;用户界面工具包;
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Multiple Scale Visualization of Electronic Health Records to Support Finding Medical Narratives
Electronic Health Records (EHRs) contain rich medical information about patients, possibly hundreds of notes, lab results, images and other information. Doctors can easily be overwhelmed by this wealth of information. For their daily work, they need to derive narratives from all this information to get insights into the main issues of their patients. Standard solutions show all the information in linear lists, often leading to cognitive overload; research solutions provide timelines and relations between the notes but provide too much fragmented information. We propose MEDeNAR, a system for enabling medical professionals to obtain insights from EHRs based on the different tasks in their workflow. The key aspects of our system are the introduction of an intermediate level that summarizes the information using clustering and NLP methods. The results are visualized along a timeline and provide easy access to the detailed descriptions in notes and lab results at the EHR level. We designed the system using an iterative design process in collaboration with 18 doctors, two nurses and 14 domain experts. During the final evaluation, the doctors ranked our system higher than a standard baseline solution and a variation for the used NLP methods. CCS Concepts • Human-centered computing → Visualization toolkits; User interface toolkits;
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