整合人工智能和智能手机技术,加强饮食失调的个性化评估和治疗。

IF 4.7 2区 医学 Q1 NUTRITION & DIETETICS
Jake Linardon, John Torous
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引用次数: 0

摘要

目的:智能手机技术为扩大以证据为基础的饮食失调评估和治疗提供了一条有希望的途径。尽管技术进步迅速,但研究尚未以使个性化数字医疗成为临床现实的方式利用这些系统。在本次论坛中,我们回顾了现有的研究,测试智能手机干预和监测工具对饮食失调的影响,并探索将这项技术与人工智能相结合的创新方法,以加强评估、症状检测和干预工作。方法:我们强调了智能手机的三个功能,这些功能有望提供个性化和最有效的数字健康工具:(1)被动传感和数字表型;(2)应用内作业任务反思的自然语言处理;(3)闭环自适应干预。我们讨论了这些能力如何增强当前的评估和治疗努力,并借鉴其他领域的文献来为饮食失调领域的研究问题提供信息。结果:来自其他领域的证据表明,利用智能手机传感器数据和应用内CBT活动的文本输入构建数据驱动模型来预测临床结果是可行的。这些模型可以为闭环干预提供信息,使应用程序能够根据用户需求的实时变化提供及时、个性化的支持。结论:饮食失调领域可以借鉴其他领域的经验来评估利用AI增强个性化的智能手机技术。实现这些工具的潜力需要解决与参与、信任、数据治理和临床整合相关的挑战。这里提出的可测试的研究问题提供了一个路线图,指导未来大规模的合作努力,旨在改变饮食失调的治疗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integrating Artificial Intelligence and Smartphone Technology to Enhance Personalized Assessment and Treatment for Eating Disorders.

Objective: Smartphone technology presents a promising path toward expanding access to evidence-based eating disorder assessment and treatment. Despite rapid technological advances, research has yet to harness these systems in ways that make personalized digital health care a clinical reality. In this forum, we review extant research testing smartphone intervention and monitoring tools for eating disorders and explore innovative ways integrating this technology with AI can enhance assessment, symptom detection, and intervention efforts.

Method: We highlight three capabilities of smartphones that hold promise for delivering personalized and maximally effective digital health tools: (1) passive sensing and digital phenotyping; (2) natural language processing of reflections from in-app homework tasks; and (3) closed-loop adaptive interventions. We discuss how these capabilities can augment current assessment and treatment efforts and draw on literature from other fields to inform research questions for the eating disorder field.

Results: Evidence from other fields demonstrates the feasibility of constructing data-driven models from smartphone sensor data and textual input from in-app CBT activities to predict clinical outcomes. These models may inform closed-loop interventions, enabling apps to deliver timely, personalized support in response to real-time changes in a user's needs.

Conclusion: The eating disorder field can draw on lessons from other fields to evaluate smartphone technology that leverages AI to enhance personalization. Realizing the potential of these tools will require addressing challenges related to engagement, trust, data governance, and clinical integration. The testable research questions presented here offer a roadmap to guide future large-scale, collaborative efforts aimed at transforming eating disorder care.

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来源期刊
CiteScore
10.00
自引率
12.70%
发文量
204
审稿时长
4-8 weeks
期刊介绍: Articles featured in the journal describe state-of-the-art scientific research on theory, methodology, etiology, clinical practice, and policy related to eating disorders, as well as contributions that facilitate scholarly critique and discussion of science and practice in the field. Theoretical and empirical work on obesity or healthy eating falls within the journal’s scope inasmuch as it facilitates the advancement of efforts to describe and understand, prevent, or treat eating disorders. IJED welcomes submissions from all regions of the world and representing all levels of inquiry (including basic science, clinical trials, implementation research, and dissemination studies), and across a full range of scientific methods, disciplines, and approaches.
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