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基于人工智能的全科医生临床决策支持系统的需求分析:以用户为中心的设计过程。

Requirements analysis for an AI-based clinical decision support system for general practitioners: a user-centered design process.

机构信息

Goethe University Frankfurt, Institute of General Practice, Theodor-Stern-Kai 7, 60590, Frankfurt, Germany.

Goethe University Frankfurt, University Hospital, Institute of Medical Informatics, Frankfurt, Germany.

出版信息

BMC Med Inform Decis Mak. 2023 Jul 31;23(1):144. doi: 10.1186/s12911-023-02245-w.

Abstract

BACKGROUND

As the first point of contact for patients with health issues, general practitioners (GPs) are frequently confronted with patients presenting with non-specific symptoms of unclear origin. This can result in delayed, prolonged or false diagnoses. To accelerate and improve the diagnosis of diseases, clinical decision support systems would appear to be an appropriate tool. The objective of the project 'Smart physician portal for patients with unclear disease' (SATURN) is to employ a user-centered design process based on the requirements analysis presented in this paper to develop an artificial Intelligence (AI)-based diagnosis support system that specifically addresses the needs of German GPs.

METHODS

Requirements analysis for a GP-specific diagnosis support system was conducted in an iterative process with five GPs. First, interviews were conducted to analyze current workflows and the use of digital applications in cases of diagnostic uncertainty (as-is situation). Second, we focused on collecting and prioritizing tasks to be performed by an ideal smart physician portal (to-be situation) in a workshop. We then developed a task model with corresponding user requirements.

RESULTS

Numerous GP-specific user requirements were identified concerning the tasks and subtasks: performing data entry (open system, enter patient data), reviewing results (receiving and evaluating results), discussing results (with patients and colleagues), scheduling further diagnostic procedures, referring to specialists (select, contact, make appointments), and case closure. Suggested features particularly concerned the process of screening and assessing results: e.g., the system should focus more on atypical patterns of common diseases than on rare diseases only, display probabilities of differential diagnoses, ensure sources and results are transparent, and mark diagnoses that have already been ruled out. Moreover, establishing a means of using the platform to communicate with colleagues and transferring patient data directly from electronic patient records to the system was strongly recommended.

CONCLUSIONS

Essential user requirements to be considered in the development and design of a diagnosis system for primary care could be derived from the analysis. They form the basis for mockup-development and system engineering.

摘要

背景

作为患者健康问题的第一接触点,全科医生(GP)经常面临具有不明来源的非特异性症状的患者。这可能导致诊断延迟、延长或误诊。为了加速和改善疾病的诊断,临床决策支持系统似乎是一种合适的工具。“不明疾病患者智能医生门户”(SATURN)项目的目标是基于本文提出的需求分析,采用以用户为中心的设计过程,开发一种专门针对德国全科医生需求的基于人工智能(AI)的诊断支持系统。

方法

对特定于全科医生的诊断支持系统的需求分析是在与五名全科医生进行的迭代过程中进行的。首先,通过访谈分析当前的工作流程和在诊断不确定情况下使用数字应用程序的情况(现状)。其次,我们专注于在研讨会上收集和优先处理理想的智能医生门户要执行的任务(未来情况)。然后,我们开发了一个具有相应用户需求的任务模型。

结果

确定了许多与任务和子任务相关的特定于全科医生的用户需求:执行数据输入(开放系统,输入患者数据)、查看结果(接收和评估结果)、讨论结果(与患者和同事)、安排进一步的诊断程序、转诊给专家(选择、联系、预约)以及病例关闭。建议的功能特别涉及到筛选和评估结果的过程:例如,系统应更关注常见疾病的非典型模式,而不仅仅是罕见疾病,显示鉴别诊断的概率,确保来源和结果透明,并标记已排除的诊断。此外,强烈建议建立一种使用该平台与同事沟通并直接从电子病历将患者数据传输到系统的方法。

结论

可以从分析中得出开发和设计初级保健诊断系统时要考虑的基本用户需求。它们是模型开发和系统工程的基础。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f208/10391889/3dd626f43d5f/12911_2023_2245_Fig1_HTML.jpg

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