New Approach to Equitable Intervention Planning to Improve Engagement and Outcomes in a Digital Health Program: Simulation Study.

Q2 Medicine
JMIR Diabetes Pub Date : 2024-03-15 DOI:10.2196/52688
Jackson A Killian, Manish Jain, Yugang Jia, Jonathan Amar, Erich Huang, Milind Tambe
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引用次数: 0

Abstract

Background: Digital health programs provide individualized support to patients with chronic diseases and their effectiveness is measured by the extent to which patients achieve target individual clinical outcomes and the program's ability to sustain patient engagement. However, patient dropout and inequitable intervention delivery strategies, which may unintentionally penalize certain patient subgroups, represent challenges to maximizing effectiveness. Therefore, methodologies that optimize the balance between success factors (achievement of target clinical outcomes and sustained engagement) equitably would be desirable, particularly when there are resource constraints.

Objective: Our objectives were to propose a model for digital health program resource management that accounts jointly for the interaction between individual clinical outcomes and patient engagement, ensures equitable allocation as well as allows for capacity planning, and conducts extensive simulations using publicly available data on type 2 diabetes, a chronic disease.

Methods: We propose a restless multiarmed bandit (RMAB) model to plan interventions that jointly optimize long-term engagement and individual clinical outcomes (in this case measured as the achievement of target healthy glucose levels). To mitigate the tendency of RMAB to achieve good aggregate performance by exacerbating disparities between groups, we propose new equitable objectives for RMAB and apply bilevel optimization algorithms to solve them. We formulated a model for the joint evolution of patient engagement and individual clinical outcome trajectory to capture the key dynamics of interest in digital chronic disease management programs.

Results: In simulation exercises, our optimized intervention policies lead to up to 10% more patients reaching healthy glucose levels after 12 months, with a 10% reduction in dropout compared to standard-of-care baselines. Further, our new equitable policies reduce the mean absolute difference of engagement and health outcomes across 6 demographic groups by up to 85% compared to the state-of-the-art.

Conclusions: Planning digital health interventions with individual clinical outcome objectives and long-term engagement dynamics as considerations can be both feasible and effective. We propose using an RMAB sequential decision-making framework, which may offer additional capabilities in capacity planning as well. The integration of an equitable RMAB algorithm further enhances the potential for reaching equitable solutions. This approach provides program designers with the flexibility to switch between different priorities and balance trade-offs across various objectives according to their preferences.

公平干预规划新方法,提高数字健康计划的参与度和成果:模拟研究。
背景:数字健康项目为慢性病患者提供个性化支持,其有效性通过患者实现目标个体临床结果的程度以及项目维持患者参与的能力来衡量。然而,患者辍学和不公平的干预实施策略可能会无意中惩罚某些患者亚群,这对最大限度地提高疗效构成了挑战。因此,优化成功因素(实现目标临床结果和持续参与)之间平衡的方法是可取的,尤其是在资源有限的情况下:我们的目标是为数字医疗项目资源管理提出一个模型,该模型将个人临床结果与患者参与度之间的相互作用结合起来考虑,既能确保公平分配,又能进行能力规划,并利用公开的 2 型糖尿病(一种慢性疾病)数据进行了广泛的模拟:方法:我们提出了一种不安分的多臂强盗(RMAB)模型,用于规划干预措施,从而共同优化长期参与度和个人临床结果(在本例中以达到目标健康血糖水平为衡量标准)。为了减少 RMAB 通过加剧群体间差异来实现良好总体绩效的趋势,我们为 RMAB 提出了新的公平目标,并应用双层优化算法来解决这些目标。我们为患者参与度和个人临床结果轨迹的共同演变建立了一个模型,以捕捉数字化慢性病管理项目中的关键动态:在模拟演练中,与标准护理基线相比,我们的优化干预政策使 12 个月后达到健康血糖水平的患者增加了 10%,辍学率降低了 10%。此外,与最先进的政策相比,我们的新公平政策将6个人口群体的参与度和健康结果的平均绝对值差异减少了85%:以个人临床结果目标和长期参与动态作为考虑因素来规划数字健康干预既可行又有效。我们建议使用 RMAB 顺序决策框架,该框架还可为能力规划提供额外的功能。整合公平的 RMAB 算法可进一步提高达成公平解决方案的可能性。这种方法为计划设计者提供了灵活性,他们可以根据自己的偏好在不同的优先事项之间进行切换,并在各种目标之间进行权衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
JMIR Diabetes
JMIR Diabetes Computer Science-Computer Science Applications
CiteScore
4.00
自引率
0.00%
发文量
35
审稿时长
16 weeks
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