Prediction of Relapse Using Digital Technology in People in Recovery From Substance Use Disorders: Early Economic Evaluation With a Case Study of the Subreal App.

IF 2 Q3 HEALTH CARE SCIENCES & SERVICES
Janet Bouttell, Michał Bartler, Sarah Bolton
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引用次数: 0

Abstract

Background: Many people relapse after achieving abstinence in substance use disorders. Health care providers may scan the horizon for new technologies to predict response that allow interventions to be targeted rather than routine. Currently, no such predictive technologies are available in the United Kingdom. The Subreal app is available for use in research contexts, but no clinical data specific to the app are yet available. Early health economic modeling can use data from the literature to explore characteristics essential for the new technology to be cost-effective. This information can guide developers in setting performance targets and pricing and estimating potential cost savings and/or cost-effectiveness for health care providers.

Objective: This study was supported by a UK industry funding body to explore the potential of digital technologies such as the Subreal app to offer cost savings or cost-effectiveness for health care providers. We explored the threshold price and clinical effectiveness required to deliver cost savings and cost-effectiveness in 2 subpopulations with substance use disorders in a UK setting.

Methods: Deterministic models were used to estimate costs per relapse and quality-adjusted life years over 1-, 5-, and 20-year time horizons for people who have achieved abstinence after treatment for alcohol or opioid misuse. The intervention was a digital technology predicting relapse, provided-in addition to standard care-for 1 year post achievement of abstinence. In Subreal, biomarker data are collected daily through the app, and artificial intelligence-enhanced risk assessment flags patients who require additional support. The comparator was event-driven, reactive response to relapse. Costs and quality-of-life estimates were calculated using Markov models with data from existing published sources. The base-case estimate of 15% reduction in first-year relapse rates was based on a previous study on a similar but simpler digital technology.

Results: Digital technologies such as the Subreal app have the potential to be cost-saving from a UK health and social care perspective, especially when used over a longer time horizon. Assuming a reduction of 15% in first-year relapse rates, digital technologies have the potential to be cost-saving, provided that they do not cost more than £300 (US $400.09) and £460 (US $613.47) per patient per annum for alcohol and opioid use disorders, respectively. No cost was included for postalert care, as it was assumed that this could be met within existing resources. Cost savings would be achieved predominantly through a reduction in treatment requirements as fewer people relapse. Price thresholds would reduce correspondingly if a <15% reduction in relapse rates were achieved.

Conclusions: Developers of digital technologies that aim to reduce relapse need to focus on the generation of evidence of clinical effectiveness and develop a commercially sustainable pricing model that allows health care providers to benefit from cost savings.

使用数字技术预测物质使用障碍患者的复发:以Subreal应用程序为例的早期经济评估。
背景:许多人在戒断物质使用障碍后复发。卫生保健提供者可能会寻找新的技术来预测反应,使干预措施有针对性,而不是常规的。目前,在英国还没有这样的预测技术。Subreal应用程序可用于研究背景,但目前还没有针对该应用程序的临床数据。早期健康经济建模可以使用文献中的数据来探索新技术具有成本效益的基本特征。这些信息可以指导开发人员设定性能目标和定价,并估计医疗保健提供者的潜在成本节约和/或成本效益。目的:本研究由英国一个行业资助机构支持,旨在探索数字技术的潜力,如Subreal应用程序,为医疗保健提供者提供成本节约或成本效益。我们探讨了在英国的2个物质使用障碍亚群中提供成本节约和成本效益所需的阈值价格和临床有效性。方法:使用确定性模型来估计在酒精或阿片类药物滥用治疗后实现戒断的人在1年、5年和20年的时间范围内每次复发和质量调整生命年的成本。干预是一种预测复发的数字技术,除了标准治疗之外,还提供戒断后1年的治疗。在Subreal中,每天通过应用程序收集生物标志物数据,并通过人工智能增强的风险评估标记需要额外支持的患者。比较者是事件驱动的,对复发的反应性反应。成本和生活质量估算使用马尔可夫模型和现有公开来源的数据进行计算。第一年复发率降低15%的基本情况估计是基于先前对类似但更简单的数字技术的研究。结果:从英国健康和社会保健的角度来看,Subreal应用程序等数字技术有可能节省成本,特别是在较长时间内使用时。假设第一年的复发率降低15%,数字技术就有可能节省成本,只要每位患者每年用于酒精和阿片类药物使用障碍的费用分别不超过300英镑(400.09美元)和460英镑(613.47美元)。不包括警报后护理费用,因为假定这可以在现有资源范围内满足。成本节约主要通过减少治疗需求来实现,因为复发的人减少了。结论:旨在减少复发的数字技术的开发者需要将重点放在临床有效性证据的生成上,并开发一种商业上可持续的定价模式,使卫生保健提供者能够从成本节约中受益。
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 Formative Research
JMIR Formative Research Medicine-Medicine (miscellaneous)
CiteScore
2.70
自引率
9.10%
发文量
579
审稿时长
12 weeks
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