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基于机器学习的哮喘管理工具的临床需求评估:以用户为中心的设计方法。

Clinical Needs Assessment of a Machine Learning-Based Asthma Management Tool: User-Centered Design Approach.

作者信息

Zheng Lu, Ohde Joshua W, Overgaard Shauna M, Brereton Tracey A, Jose Kristelle, Wi Chung-Il, Peterson Kevin J, Juhn Young J

机构信息

Center for Digital Health, Mayo Clinic, Rochester, MN, United States.

Precision Population Science Lab, Mayo Clinic, Rochester, MN, United States.

出版信息

JMIR Form Res. 2024 Jan 15;8:e45391. doi: 10.2196/45391.

Abstract

BACKGROUND

Personalized asthma management depends on a clinician's ability to efficiently review patient's data and make timely clinical decisions. Unfortunately, efficient and effective review of these data is impeded by the varied format, location, and workflow of data acquisition, storage, and processing in the electronic health record. While machine learning (ML) and clinical decision support tools are well-positioned as potential solutions, the translation of such frameworks requires that barriers to implementation be addressed in the formative research stages.

OBJECTIVE

We aimed to use a structured user-centered design approach (double-diamond design framework) to (1) qualitatively explore clinicians' experience with the current asthma management system, (2) identify user requirements to improve algorithm explainability and Asthma Guidance and Prediction System prototype, and (3) identify potential barriers to ML-based clinical decision support system use.

METHODS

At the "discovery" phase, we first shadowed to understand the practice context. Then, semistructured interviews were conducted digitally with 14 clinicians who encountered pediatric asthma patients at 2 outpatient facilities. Participants were asked about their current difficulties in gathering information for patients with pediatric asthma, their expectations of ideal workflows and tools, and suggestions on user-centered interfaces and features. At the "define" phase, a synthesis analysis was conducted to converge key results from interviewees' insights into themes, eventually forming critical "how might we" research questions to guide model development and implementation.

RESULTS

We identified user requirements and potential barriers associated with three overarching themes: (1) usability and workflow aspects of the ML system, (2) user expectations and algorithm explainability, and (3) barriers to implementation in context. Even though the responsibilities and workflows vary among different roles, the core asthma-related information and functions they requested were highly cohesive, which allows for a shared information view of the tool. Clinicians hope to perceive the usability of the model with the ability to note patients' high risks and take proactive actions to manage asthma efficiently and effectively. For optimal ML algorithm explainability, requirements included documentation to support the validity of algorithm development and output logic, and a request for increased transparency to build trust and validate how the algorithm arrived at the decision. Acceptability, adoption, and sustainability of the asthma management tool are implementation outcomes that are reliant on the proper design and training as suggested by participants.

CONCLUSIONS

As part of our comprehensive informatics-based process centered on clinical usability, we approach the problem using a theoretical framework grounded in user experience research leveraging semistructured interviews. Our focus on meeting the needs of the practice with ML technology is emphasized by a user-centered approach to clinician engagement through upstream technology design.

摘要

背景

个性化哮喘管理依赖于临床医生有效审查患者数据并及时做出临床决策的能力。不幸的是,电子健康记录中数据采集、存储和处理的格式、位置及工作流程各不相同,阻碍了对这些数据进行高效且有效的审查。虽然机器学习(ML)和临床决策支持工具很有潜力成为解决方案,但在形成性研究阶段就需要解决此类框架实施过程中的障碍。

目的

我们旨在采用结构化的以用户为中心的设计方法(双钻石设计框架)来(1)定性探索临床医生对当前哮喘管理系统的体验,(2)确定用户需求以提高算法可解释性及哮喘指导与预测系统原型,以及(3)识别基于ML的临床决策支持系统使用的潜在障碍。

方法

在“发现”阶段,我们首先进行跟踪观察以了解实践背景。然后,对在2个门诊机构中接触过儿科哮喘患者的14名临床医生进行了数字化半结构化访谈。询问参与者他们目前在为儿科哮喘患者收集信息时遇到的困难、对理想工作流程和工具的期望,以及对以用户为中心的界面和功能的建议。在“定义”阶段,进行了综合分析,将受访者见解中的关键结果汇总为主题,最终形成关键的“我们该如何做”研究问题,以指导模型开发和实施。

结果

我们确定了与三个总体主题相关的用户需求和潜在障碍:(1)ML系统的可用性和工作流程方面,(2)用户期望和算法可解释性,以及(3)实际应用中的实施障碍。尽管不同角色的职责和工作流程有所不同,但他们所要求的核心哮喘相关信息和功能具有高度的一致性,这使得该工具能够有一个共享的信息视图。临床医生希望通过能够识别患者的高风险并采取积极行动来有效管理哮喘,从而感受到该模型的可用性。为实现最佳的ML算法可解释性,要求包括支持算法开发有效性和输出逻辑的文档,以及提高透明度以建立信任并验证算法如何得出决策的要求。哮喘管理工具的可接受性、采用率和可持续性是实施结果,参与者建议这依赖于适当的设计和培训。

结论

作为我们以临床可用性为中心的全面信息学流程的一部分,我们利用半结构化访谈,采用基于用户体验研究的理论框架来解决这个问题。通过上游技术设计以用户为中心的方法来让临床医生参与,强调了我们专注于用ML技术满足实践需求。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7f4d/10825767/aa2a0de7a167/formative_v8i1e45391_fig1.jpg

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