Seid Michael, Bridgeland David, Bridgeland Alexandra, Hartley David M
Division of Pulmonary Medicine Cincinnati Children's Hospital Cincinnati Ohio USA.
James M. Anderson Center for Health Systems Excellence Cincinnati Children's Hospital Cincinnati Ohio USA.
Learn Health Syst. 2021 Apr 9;5(3):e10261. doi: 10.1002/lrh2.10261. eCollection 2021 Jul.
Improving the healthcare system is a major public health challenge. Collaborative learning health systems (CLHS) - network organizations that allow all healthcare stakeholders to collaborate at scale - are a promising response. However, we know little about CLHS mechanisms of actions, nor how to optimize CLHS performance. Agent-based models (ABM) have been used to study a variety of complex systems. We translate the conceptual underpinnings of a CLHS to a computational model and demonstrate initial computational and face validity.
CLHSs are organized to allow stakeholders (patients and families, clinicians, researchers) to collaborate, at scale, in the production and distribution of information, knowledge, and know-how for improvement. We build up a CLHS ABM from a population of patient- and doctor-agents, assign them characteristics, and set them into interaction, resulting in engagement, information, and knowledge to facilitate optimal treatment selection. To assess computational and face validity, we vary a single parameter - the degree to which patients influence other patients - and trace its effects on patient engagement, shared knowledge, and outcomes.
The CLHS ABM, developed in Python and using the open-source modeling framework Mesa, is delivered as a web application. The model is simulated on a cloud server and the user interface is a web browser using Python and Plotly Dash. Holding all other parameters steady, when patient influence increases, the overall patient population activation increases, leading to an increase in shared knowledge, and higher median patient outcomes.
We present the first theoretically-derived computational model of CLHSs, demonstrating initial computational and face validity. These preliminary results suggest that modeling CLHSs using an ABM is feasible and potentially valid. A well-developed and validated computational model of the health system may have profound effects on understanding mechanisms of action, potential intervention targets, and ultimately translation to improved outcomes.
改善医疗保健系统是一项重大的公共卫生挑战。协作式学习型卫生系统(CLHS)——允许所有医疗保健利益相关者大规模协作的网络组织——是一个很有前景的应对措施。然而,我们对CLHS的作用机制知之甚少,也不清楚如何优化CLHS的性能。基于主体的模型(ABM)已被用于研究各种复杂系统。我们将CLHS的概念基础转化为一个计算模型,并展示了初步的计算有效性和表面效度。
CLHS的组织方式是让利益相关者(患者及其家属、临床医生、研究人员)在信息、知识和专门技能的生产与传播方面大规模协作,以实现改善。我们从患者和医生主体群体构建一个CLHS ABM,赋予它们特征,并使其相互作用,从而产生参与度、信息和知识,以促进最佳治疗方案的选择。为了评估计算有效性和表面效度,我们改变一个单一参数——患者对其他患者的影响程度——并追踪其对患者参与度、共享知识和结果的影响。
用Python开发并使用开源建模框架Mesa构建的CLHS ABM以网络应用程序的形式交付。该模型在云服务器上进行模拟,用户界面是使用Python和Plotly Dash的网络浏览器。在所有其他参数保持不变的情况下,当患者影响力增加时,总体患者群体的活跃度会提高,从而导致共享知识增加,患者中位数结果更好。
我们提出了首个从理论推导得出的CLHS计算模型,展示了初步的计算有效性和表面效度。这些初步结果表明,使用ABM对CLHS进行建模是可行的且可能有效。一个完善且经过验证的卫生系统计算模型可能对理解作用机制、潜在干预靶点以及最终转化为改善结果产生深远影响。