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一种用于评估糖尿病初级保健数字干预对卫生系统价值的经济影响模型:开发与效用研究

An Economic Impact Model for Estimating the Value to Health Systems of a Digital Intervention for Diabetes Primary Care: Development and Usefulness Study.

作者信息

Powers Brenton, Bucher Amy

机构信息

Lirio, Knoxville, TN, United States.

出版信息

JMIR Form Res. 2022 Sep 26;6(9):e37745. doi: 10.2196/37745.

Abstract

BACKGROUND

Diabetes is associated with significant long-term costs for both patients and health systems. Regular primary care visits aligned with American Diabetes Association guidelines could help mitigate those costs while generating near-term revenue for health systems. Digital interventions prompting primary care visits among unengaged patients could provide significant economic value back to the health system as well as individual patients, but only few economic models have been put forth to understand this value.

OBJECTIVE

Our objective is to establish a data-based method to estimate the economic impact to a health system of interventions promoting primary care visits for people with diabetes who have been historically unengaged with their care. The model was built with a focus on a specific digital health intervention, Precision Nudging, but can be used to quantify the value of other interventions driving primary care usage among patients with diabetes.

METHODS

We developed an economic model to estimate the financial value of a primary care visit of a patient with diabetes to the health system. This model requires segmenting patients with diabetes according to their level of blood sugar control as measured by their most recent hemoglobin A value to understand how frequently they should be visiting a primary care provider. The model also accounts for the payer mix among the population with diabetes, documenting the percentage of insurance coverage through a commercial plan, Medicare, or Medicaid, as these influence the reimbursement rates for the services. Then, the model takes into consideration the population base rates of comorbid conditions for patients with diabetes and the associated current procedural terminology codes to understand what a provider can bill as well as the expected inpatient revenue from a subset of patients likely to require hospitalization based on the national hospitalization rates for people with diabetes. Physician reimbursement is subtracted from the total. Finally, the model also accounts for the level of patient engagement with the intervention to ensure a realistic estimate of the impact.

RESULTS

We present a model to prospectively estimate the economic impact of a digital health intervention to encourage patients with documented diabetes diagnoses to attend primary care visits. The model leverages both publicly available and health system data to calculate the per appointment value (revenue) to the health system. The model offers a method to understand and test the financial impact of Precision Nudging or other primary care-focused diabetes interventions inclusive of costs driven by comorbid conditions.

CONCLUSIONS

The proposed economic model can help health systems understand and evaluate the estimated economic benefits of interventions focused on primary care and prevention for patients with diabetes as well as help intervention developers determine pricing for their product.

摘要

背景

糖尿病给患者和医疗系统都带来了巨大的长期成本。按照美国糖尿病协会指南进行定期初级保健就诊有助于降低这些成本,同时为医疗系统创造短期收入。促使未参与治疗的患者进行初级保健就诊的数字干预措施,可为医疗系统以及患者个人带来显著的经济价值,但目前仅有少数经济模型用于理解这种价值。

目的

我们的目标是建立一种基于数据的方法,以评估促进历来未参与治疗的糖尿病患者进行初级保健就诊的干预措施对医疗系统的经济影响。该模型的构建聚焦于一种特定的数字健康干预措施——精准助推,但也可用于量化促使糖尿病患者使用初级保健服务的其他干预措施的价值。

方法

我们开发了一个经济模型,以估算糖尿病患者一次初级保健就诊对医疗系统的经济价值。该模型需要根据患者最近的糖化血红蛋白值所衡量的血糖控制水平对糖尿病患者进行分类,以了解他们应多久就诊一次初级保健提供者。该模型还考虑了糖尿病患者群体中的付款人构成,记录通过商业保险计划、医疗保险或医疗补助获得保险覆盖的百分比,因为这些会影响服务的报销率。然后,该模型考虑糖尿病患者合并症的人群基础发病率以及相关的当前程序编码术语,以了解提供者可以开具的账单以及根据糖尿病患者的全国住院率,一部分可能需要住院的患者预期的住院收入。从总数中减去医生的报销费用。最后,该模型还考虑患者对干预措施的参与程度,以确保对影响进行现实的评估。

结果

我们提出了一个模型,用于前瞻性地评估数字健康干预措施对鼓励有糖尿病诊断记录的患者进行初级保健就诊的经济影响。该模型利用公开可用数据和医疗系统数据来计算每次就诊对医疗系统的价值(收入)。该模型提供了一种方法,以理解和测试精准助推或其他以初级保健为重点的糖尿病干预措施的财务影响,包括合并症所带来的成本。

结论

所提出的经济模型可以帮助医疗系统理解和评估针对糖尿病患者的以初级保健和预防为重点的干预措施的估计经济效益,并帮助干预措施开发者确定其产品的定价。

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