Kueper Jacqueline, Rayner Jennifer, Bhatti Sara, Angevaare Kelly, Fitzpatrick Sandra, Lucamba Paulino, Sutherland Eric, Lizotte Daniel
Department of Epidemiology and Biostatistics, Western University, London, Ontario, Canada.
Department of Computer Science, Western University, London, Ontario, Canada.
F1000Res. 2024 Dec 19;13:336. doi: 10.12688/f1000research.145700.1. eCollection 2024.
The Alliance for Healthier Communities is a learning health system that supports Community Health Centres (CHCs) across Ontario, Canada to provide team-based primary health care to people who otherwise experience barriers to care. This case study describes the ongoing process and lessons learned from the first Alliance for Healthier Communities' Practice Based Learning Network (PBLN) data-driven decision support tool co-development project.
We employ an iterative approach to problem identification and methods development for the decision support tool, moving between discussion sessions and case studies with CHC electronic health record (EHR) data. We summarize our work to date in terms of six stages: population-level descriptive-exploratory study, PBLN team engagement, decision support tool problem selection, sandbox case study 1: individual-level risk predictions, sandbox case study 2: population-level planning predictions, project recap and next steps decision.
The population-level study provided an initial point of engagement to consider how clients are (not) represented in EHR data and to inform problem selection and methodological decisions thereafter. We identified three initial meaningful types of decision support, with target application areas: risk prediction/screening, triaging specialized program referrals, and identifying care access needs. Based on feasibility and expected impact, we started with the goal to support earlier identification of mental health decline after diabetes diagnosis. As discussions deepened around clinical use cases associated with example prediction task set ups, the target problem evolved towards supporting the upstream task of organizational planning and advocacy for adequate mental health care service capacity to meet incoming needs.
This case study contributes towards a tool to support diabetes and mental health care, as well as lays groundwork for future CHC EHR-based decision support tool initiatives. We share lessons learned and reflections from our process that other primary health care organizations may use to inform their own co-development initiatives while we continue to work on advancing the population-level capacity planning model.
更健康社区联盟是一个学习型健康系统,支持加拿大安大略省的社区健康中心(CHC)为那些在获得医疗服务方面存在障碍的人群提供基于团队的初级医疗保健。本案例研究描述了更健康社区联盟首个基于实践学习网络(PBLN)的数据驱动决策支持工具联合开发项目的持续过程及经验教训。
我们采用迭代方法来识别决策支持工具的问题并开发方法,在与社区健康中心电子健康记录(EHR)数据相关的讨论会议和案例研究之间不断推进。我们将迄今为止的工作总结为六个阶段:人群层面的描述性探索性研究、PBLN团队参与、决策支持工具问题选择、沙盒案例研究1:个体层面风险预测、沙盒案例研究2:人群层面规划预测、项目回顾及下一步决策。
人群层面的研究提供了一个初步切入点,以考虑电子健康记录数据中客户是如何(未)被呈现的,并为后续的问题选择和方法决策提供信息。我们确定了三种初步有意义的决策支持类型及其目标应用领域:风险预测/筛查、对专科项目转诊进行分诊以及识别医疗服务获取需求。基于可行性和预期影响,我们从支持在糖尿病诊断后更早识别心理健康衰退这一目标开始。随着围绕与示例预测任务设置相关的临床用例的讨论不断深入,目标问题逐渐演变为支持组织规划的上游任务以及为满足即将到来的需求而争取足够心理健康护理服务能力的倡导工作。
本案例研究有助于开发一种支持糖尿病和心理健康护理的工具,同时也为未来基于社区健康中心电子健康记录的决策支持工具项目奠定了基础。我们分享从这个过程中吸取的经验教训和思考,其他初级医疗保健组织在开展自身的联合开发项目时可以借鉴,而我们将继续致力于推进人群层面的能力规划模型。