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Data-Driven Activities Involving Electronic Health Records An Activity and Task Analysis Framework for Interactive Visualization Tools

机译:涉及电子健康的数据驱动活动记录交互式可视化工具的活动和任务分析框架

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Electronic health records (EHRs) can be used to make critical decisions, to study the effects of treatments, and to detect hidden patterns in patient histories. In this paper, we present a framework to identify and analyze EHR-data-driven tasks and activities in the context of interactive visualization tools (IVTs)—that is, all the activities, sub-activities, tasks, and sub-tasks that are and can be supported by EHR-based IVTs. A systematic literature survey was conducted to collect the research papers that describe the design, implementation, and/or evaluation of EHR-based IVTs that support clinical decision-making. Databases included PubMed, the ACM Digital Library, the IEEE Library, and Google Scholar. These sources were supplemented by gray literature searching and reference list reviews. Of the 946 initially identified articles, the survey analyzes 19 IVTs described in 24 articles that met the final selection criteria. The survey includes an overview of the goal of each IVT, a brief description of its visualization, and an analysis of how sub-activities, tasks, and sub-tasks blend and combine to accomplish the tool’s main higher-level activities of interpreting, predicting, and monitoring. Our proposed framework shows the gaps in support of higher-level activities supported by existing IVTs. It appears that almost all existing IVTs focus on the activity of interpreting, while only a few of them support predicting and monitoring—this despite the importance of these activities in assisting users in finding patients that are at high risk and tracking patients’ status after treatment.
机译:电子健康记录(EHRS)可用于作出关键决策,以研究治疗的影响,并检测患者历史中的隐藏模式。在本文中,我们提出了一个框架,用于在交互式可视化工具(IVTS)的上下文中识别和分析EHR数据驱动的任务和活动 - 这是,所有活动,子活动,任务和子任务并且可以由基于EHR的IVTS支持。进行了系统的文献调查,收集了描述了解临床决策的EHR的IVT的设计,实施和/或评估的研究论文。数据库包括PubMed,ACM数字图书馆,IEEE图书馆和Google Scholar。这些来源被灰色文献搜索和参考清单评论补充说。在946年初鉴定的文章中,调查分析了24次符合最终选择标准的24篇文章中描述的19个IVT。该调查包括每个IVT的目标的概述,简要说明它的可视化,以及分析子活动,任务和子任务的混合以及组合如何实现工具的诠释,预测的主要高级活动和监控。我们拟议的框架显示了支持现有IVTS支持的高级活动的差距。看来,几乎所有现有的IVTS都侧重于解释的活动,而其中只有少数人支持预测和监测 - 尽管这些活动在协助用户在治疗后寻找高风险和跟踪患者地位的患者中的重要性。

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