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用于生物医学查询调解的多站点认知任务分析。

A multi-site cognitive task analysis for biomedical query mediation.

作者信息

Hruby Gregory W, Rasmussen Luke V, Hanauer David, Patel Vimla L, Cimino James J, Weng Chunhua

机构信息

Department of Biomedical Informatics, Columbia University, New York, NY, USA.

Division of Health and Biomedical Informatics, Northwestern University Feinberg School of Medicine, Chicago, IL, USA.

出版信息

Int J Med Inform. 2016 Sep;93:74-84. doi: 10.1016/j.ijmedinf.2016.06.006. Epub 2016 Jun 16.

Abstract

OBJECTIVE

To apply cognitive task analyses of the Biomedical query mediation (BQM) processes for EHR data retrieval at multiple sites towards the development of a generic BQM process model.

MATERIALS AND METHODS

We conducted semi-structured interviews with eleven data analysts from five academic institutions and one government agency, and performed cognitive task analyses on their BQM processes. A coding schema was developed through iterative refinement and used to annotate the interview transcripts. The annotated dataset was used to reconstruct and verify each BQM process and to develop a harmonized BQM process model. A survey was conducted to evaluate the face and content validity of this harmonized model.

RESULTS

The harmonized process model is hierarchical, encompassing tasks, activities, and steps. The face validity evaluation concluded the model to be representative of the BQM process. In the content validity evaluation, out of the 27 tasks for BQM, 19 meet the threshold for semi-valid, including 3 fully valid: "Identify potential index phenotype," "If needed, request EHR database access rights," and "Perform query and present output to medical researcher", and 8 are invalid.

DISCUSSION

We aligned the goals of the tasks within the BQM model with the five components of the reference interview. The similarity between the process of BQM and the reference interview is promising and suggests the BQM tasks are powerful for eliciting implicit information needs.

CONCLUSIONS

We contribute a BQM process model based on a multi-site study. This model promises to inform the standardization of the BQM process towards improved communication efficiency and accuracy.

摘要

目的

对多个机构用于电子健康记录(EHR)数据检索的生物医学查询调解(BQM)过程进行认知任务分析,以开发通用的BQM过程模型。

材料与方法

我们对来自五个学术机构和一个政府机构的11名数据分析师进行了半结构化访谈,并对他们的BQM过程进行了认知任务分析。通过反复完善开发了一个编码模式,并用于注释访谈记录。注释后的数据集用于重建和验证每个BQM过程,并开发一个统一的BQM过程模型。进行了一项调查以评估该统一模型的表面效度和内容效度。

结果

统一的过程模型是分层的,包括任务、活动和步骤。表面效度评估得出该模型代表了BQM过程。在内容效度评估中,在27项BQM任务中,19项达到半有效阈值,其中3项完全有效:“识别潜在索引表型”、“如有需要,请求EHR数据库访问权限”以及“执行查询并向医学研究人员展示输出”,8项无效。

讨论

我们将BQM模型中的任务目标与参考访谈的五个组成部分进行了对齐。BQM过程与参考访谈之间的相似性很有前景,表明BQM任务在引出隐含信息需求方面很强大。

结论

我们基于多机构研究贡献了一个BQM过程模型。该模型有望为BQM过程的标准化提供参考,以提高沟通效率和准确性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/085f/4957698/d7652979871e/nihms800669f1.jpg

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