Supporting long-term condition management: a workflow framework for the co-development and operationalization of machine learning models using electronic health record data insights.

IF 3 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Frontiers in Artificial Intelligence Pub Date : 2024-11-12 eCollection Date: 2024-01-01 DOI:10.3389/frai.2024.1458508
Shane Burns, Andrew Cushing, Anna Taylor, David J Lowe, Christopher Carlin
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Abstract

The prevalence of long-term conditions such as cardiovascular disease, chronic obstructive pulmonary disease (COPD), asthma, and diabetes mellitus is rising. These conditions are leading sources of premature mortality, hospital admission, and healthcare expenditure. Machine learning approaches to improve the management of these conditions have been widely explored, with data-driven insights demonstrating the potential to support earlier diagnosis, triage, and treatment selection. The translation of this research into tools used in live clinical practice has however been limited, with many projects lacking clinical involvement and planning beyond the initial model development stage. To support the move toward a more coordinated and collaborative working process from concept to investigative use in a live clinical environment, we present a multistage workflow framework for the co-development and operationalization of machine learning models which use routine clinical data derived from electronic health records. The approach outlined in this framework has been informed by our multidisciplinary team's experience of co-developing and operationalizing risk prediction models for COPD within NHS Greater Glasgow & Clyde. In this paper, we provide a detailed overview of this framework, alongside a description of the development and operationalization of two of these risk-prediction models as case studies of this approach.

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支持长期病情管理:利用电子健康记录数据见解共同开发和运行机器学习模型的工作流程框架。
心血管疾病、慢性阻塞性肺病(COPD)、哮喘和糖尿病等长期疾病的发病率正在上升。这些疾病是导致过早死亡、入院治疗和医疗支出的主要原因。人们已经广泛探索了机器学习方法来改善这些疾病的管理,数据驱动的洞察力显示了支持早期诊断、分流和治疗选择的潜力。然而,将这些研究成果转化为实际临床实践工具的工作还很有限,许多项目在最初的模型开发阶段之后就缺乏临床参与和规划。为了支持在实际临床环境中实现从概念到研究使用的更协调、更合作的工作流程,我们提出了一个多阶段工作流程框架,用于共同开发和操作机器学习模型,这些模型使用了从电子健康记录中提取的常规临床数据。该框架中概述的方法借鉴了我们多学科团队在大格拉斯哥和克莱德地区国家医疗服务系统内共同开发和运行慢性阻塞性肺病风险预测模型的经验。在本文中,我们将对这一框架进行详细概述,并介绍其中两个风险预测模型的开发和操作方法,作为这一方法的案例研究。
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来源期刊
CiteScore
6.10
自引率
2.50%
发文量
272
审稿时长
13 weeks
期刊最新文献
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