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首页> 外文期刊>Journal of medical systems >Toward a human-centered hyperlipidemia management system: the interaction between internal and external information on relational data search.
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Toward a human-centered hyperlipidemia management system: the interaction between internal and external information on relational data search.

机译:迈向以人为中心的高脂血症管理系统:关于关系数据搜索的内部和外部信息之间的交互。

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摘要

In a distributed information search task, data representation and cognitive distribution jointly affect user search performance in terms of response time and accuracy. Guided by UFuRT (User, Function, Representation, Task), a human-centered framework, we proposed a search model and task taxonomy. The model defines its application in the context of healthcare setting. The taxonomy clarifies the legitimate operations for each type of search task of relational data. We then developed experimental prototypes of hyperlipidemia data displays. Based on the displays, we tested the search tasks performance through two experiments. The experiments are of a within-subject design with a random sample of 24 participants. The results support our hypotheses and validate the prediction of the model and task taxonomy. In this study, representation dimensions, data scales, and search task types are the main factors in determining search efficiency and effectiveness. Specifically, the more external representations provided on the interface the better search task performance of users. The results also suggest the ideal search performance occurs when the question type and its corresponding data scale representation match. The implications of the study lie in contributing to the effective design of search interface for relational data, especially laboratory results, which could be more effectively designed in electronic medical records.
机译:在分布式信息搜索任务中,数据表示和认知分布会在响应时间和准确性方面共同影响用户搜索性能。在以人为本的框架UFuRT(用户,功能,表示形式,任务)的指导下,我们提出了一种搜索模型和任务分类法。该模型定义了其在医疗环境中的应用。分类法阐明了每种类型的关系数据搜索任务的合法操作。然后,我们开发了高脂血症数据显示的实验原型。根据显示,我们通过两个实验测试了搜索任务的性能。实验采用受试者内部设计,随机抽取24名参与者。结果支持我们的假设,并验证了模型和任务分类法的预测。在这项研究中,表示维度,数据规模和搜索任务类型是确定搜索效率和有效性的主要因素。具体而言,界面上提供的外部表示越多,用户的搜索任务性能就越好。结果还表明,当问题类型及其相应的数据量表表示形式匹配时,会出现理想的搜索性能。该研究的意义在于为关系数据(尤其是实验室结果)的搜索界面的有效设计做出了贡献,可以在电子病历中更有效地设计该接口。

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