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开发和评估促进健康与医疗保健行为改变的数字干预措施:国际研讨会的建议

Developing and Evaluating Digital Interventions to Promote Behavior Change in Health and Health Care: Recommendations Resulting From an International Workshop.

作者信息

Michie Susan, Yardley Lucy, West Robert, Patrick Kevin, Greaves Felix

机构信息

Centre for Behaviour Change, Department of Clinical, Educational and Health Psychology, University College London, London, United Kingdom.

Department of Psychology, University of Southampton, Southampton, United Kingdom.

出版信息

J Med Internet Res. 2017 Jun 29;19(6):e232. doi: 10.2196/jmir.7126.

Abstract

Devices and programs using digital technology to foster or support behavior change (digital interventions) are increasingly ubiquitous, being adopted for use in patient diagnosis and treatment, self-management of chronic diseases, and in primary prevention. They have been heralded as potentially revolutionizing the ways in which individuals can monitor and improve their health behaviors and health care by improving outcomes, reducing costs, and improving the patient experience. However, we are still mainly in the age of promise rather than delivery. Developing and evaluating these digital interventions presents new challenges and new versions of old challenges that require use of improved and perhaps entirely new methods for research and evaluation. This article discusses these challenges and provides recommendations aimed at accelerating the rate of progress in digital behavior intervention research and practice. Areas addressed include intervention development in a rapidly changing technological landscape, promoting user engagement, advancing the underpinning science and theory, evaluating effectiveness and cost-effectiveness, and addressing issues of regulatory, ethical, and information governance. This article is the result of a two-day international workshop on how to create, evaluate, and implement effective digital interventions in relation to health behaviors. It was held in London in September 2015 and was supported by the United Kingdom's Medical Research Council (MRC), the National Institute for Health Research (NIHR), the Methodology Research Programme (PI Susan Michie), and the Robert Wood Johnson Foundation of the United States (PI Kevin Patrick). Important recommendations to manage the rapid pace of change include considering using emerging techniques from data science, machine learning, and Bayesian approaches and learning from other disciplines including computer science and engineering. With regard to assessing and promoting engagement, a key conclusion was that sustained engagement is not always required and that for each intervention it is useful to establish what constitutes "effective engagement," that is, sufficient engagement to achieve the intended outcomes. The potential of digital interventions for testing and advancing theories of behavior change by generating ecologically valid, real-time objective data was recognized. Evaluations should include all phases of the development cycle, designed for generalizability, and consider new experimental designs to make the best use of rich data streams. Future health economics analyses need to recognize and model the complex and potentially far-reaching costs and benefits of digital interventions. In terms of governance, developers of digital behavior interventions should comply with existing regulatory frameworks, but with consideration for emerging standards around information governance, ethics, and interoperability.

摘要

利用数字技术促进或支持行为改变的设备和程序(数字干预)越来越普遍,被应用于患者诊断和治疗、慢性病自我管理以及初级预防。它们被誉为有可能彻底改变个人监测和改善健康行为及医疗保健的方式,通过改善治疗效果、降低成本和提升患者体验来实现。然而,我们目前仍主要处于充满希望的阶段,而非实际交付成果的阶段。开发和评估这些数字干预带来了新的挑战以及一些旧挑战的新形式,这需要运用改进的、甚至可能是全新的研究和评估方法。本文讨论了这些挑战,并提出了旨在加快数字行为干预研究与实践进展速度的建议。涉及的领域包括在快速变化的技术环境中进行干预开发、促进用户参与、推进基础科学和理论、评估有效性和成本效益,以及解决监管、伦理和信息治理问题。本文是关于如何创建、评估和实施与健康行为相关的有效数字干预的为期两天的国际研讨会的成果。该研讨会于2015年9月在伦敦举行,由英国医学研究理事会(MRC)、国家卫生研究院(NIHR)、方法学研究项目(项目负责人苏珊·米基)以及美国罗伯特·伍德·约翰逊基金会(项目负责人凯文·帕特里克)支持。应对快速变化的重要建议包括考虑使用数据科学、机器学习和贝叶斯方法中的新兴技术,并借鉴包括计算机科学和工程在内的其他学科的经验。关于评估和促进参与度,一个关键结论是并非总是需要持续参与,对于每种干预而言,确定什么构成 “有效参与” 很有用,即足以实现预期结果的参与度。人们认识到数字干预通过生成生态有效、实时的客观数据来测试和推进行为改变理论的潜力。评估应涵盖开发周期的所有阶段,设计要具有可推广性,并考虑新的实验设计以充分利用丰富的数据流。未来的健康经济学分析需要认识并模拟数字干预复杂且可能影响深远的成本和效益。在治理方面,数字行为干预的开发者应遵守现有的监管框架,但要考虑围绕信息治理、伦理和互操作性的新兴标准。

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