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初级保健咨询活动的网络模型。

A network model of activities in primary care consultations.

机构信息

Australian Institute of Health Innovation, Macquarie University, Sydney, Australia.

Faculty of Medicine and Health Sciences, Macquarie University, Sydney, Australia.

出版信息

J Am Med Inform Assoc. 2019 Oct 1;26(10):1074-1082. doi: 10.1093/jamia/ocz046.

Abstract

OBJECTIVE

The objective of this study is to characterize the dynamic structure of primary care consultations by identifying typical activities and their inter-relationships to inform the design of automated approaches to clinical documentation using natural language processing and summarization methods.

MATERIALS AND METHODS

This is an observational study in Australian general practice involving 31 consultations with 4 primary care physicians. Consultations were audio-recorded, and computer interactions were recorded using screen capture. Physical interactions in consultation rooms were noted by observers. Brief interviews were conducted after consultations. Conversational transcripts were analyzed to identify different activities and their speech content as well as verbal cues signaling activity transitions. An activity transition analysis was then undertaken to generate a network of activities and transitions.

RESULTS

Observed activity classes followed those described in well-known primary care consultation models. Activities were often fragmented across consultations, did not flow necessarily in a defined order, and the flow between activities was nonlinear. Modeling activities as a network revealed that discussing a patient's present complaint was the most central activity and was highly connected to medical history taking, physical examination, and assessment, forming a highly interrelated bundle. Family history, allergy, and investigation discussions were less connected suggesting less dependency on other activities. Clear verbal signs were often identifiable at transitions between activities.

DISCUSSION

Primary care consultations do not appear to follow a classic linear model of defined information seeking activities; rather, they are fragmented, highly interdependent, and can be reactively triggered.

CONCLUSION

The nonlinearity of activities has significant implications for the design of automated information capture. Whereas dictation systems generate literal translation of speech into text, speech-based clinical summary systems will need to link disparate information fragments, merge their content, and abstract coherent information summaries.

摘要

目的

本研究旨在通过识别典型活动及其相互关系,来描述初级保健咨询的动态结构,为使用自然语言处理和总结方法为临床文档编制自动化方法提供信息。

材料和方法

这是一项在澳大利亚普通实践中进行的观察性研究,涉及 31 次与 4 位初级保健医生的咨询。咨询被录音,计算机交互通过屏幕截图记录。观察员记录咨询室中的物理交互。咨询后进行简短访谈。对会话记录进行分析以识别不同的活动及其言语内容,以及表示活动转换的言语提示。然后进行活动转换分析,以生成活动和转换网络。

结果

观察到的活动类别遵循著名的初级保健咨询模型中描述的类别。活动通常在咨询中被分割,不一定按定义的顺序流动,活动之间的流动是非线性的。将活动建模为网络表明,讨论患者的当前投诉是最核心的活动,与病史采集、体检和评估高度相关,形成一个高度相互关联的集合。家庭史、过敏和调查讨论的连接性较低,表明对其他活动的依赖性较小。在活动之间的转换处通常可以清楚地识别出明确的言语迹象。

讨论

初级保健咨询似乎没有遵循经典的线性模型,而是被分割、高度相互依赖,可以进行反应性触发。

结论

活动的非线性对自动化信息捕获的设计有重大影响。虽然听写系统将言语逐字翻译成文本,但基于语音的临床总结系统将需要链接不同的信息片段、合并其内容并抽象出连贯的信息摘要。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a054/6748800/af72d8ddb7d9/ocz046f1.jpg

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