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何时何人需要(哪些功能)?通过个性化的数据驱动自我管理来促进健康公平。

Who needs what (features) when? Personalizing engagement with data-driven self-management to improve health equity.

机构信息

Department of Nutritional Sciences, The University Of Texas At Austin, Department Of Population Health, Dell Medical School, Austin, TX, United States.

Department Of Biomedical Informatics, Columbia University, United States.

出版信息

J Biomed Inform. 2023 Aug;144:104419. doi: 10.1016/j.jbi.2023.104419. Epub 2023 Jun 8.

Abstract

OBJECTIVES

To examine the feasibility of promoting engagement with data-driven self-management of health among individuals from minoritized medically underserved communities by tailoring the design of self-management interventions to individuals' type of motivation and regulation in accordance with the Self-Determination Theory.

METHODS

Fifty-three individuals with type 2 diabetes from an impoverished minority community were randomly assigned to four different versions of an mHealth app for data-driven self-management with the focus on nutrition, Platano; each version was tailored to a specific type of motivation and regulation within the SDT self-determination continuum. These versions included financial rewards (external regulation), feedback from expert registered dietitians (RDF, introjected regulation), self-assessment of attainment of one's nutritional goals (SA, identified regulation), and personalized meal-time nutrition decision support with post-meal blood glucose forecasts (FORC, integrated regulation). We used qualitative interviews to examine interaction between participants' experiences with the app and their motivation type (internal-external).

RESULTS

As hypothesized, we found a clear interaction between the type of motivation and Platano features that users responded to and benefited from. For example, those with more internal motivation reported more positive experience with SA and FORC than those with more external motivation. However, we also found that Platano features that aimed to specifically address the needs of individuals with external regulation did not create the desired experience. We attribute this to a mismatch in emphasis on informational versus emotional support, particularly evident in RDF. In addition, we found that for participants recruited from an economically disadvantaged community, internal factors, such as motivation and regulation, interacted with external factors, most notably with limited health literacy and limited access to resources.

CONCLUSIONS

The study suggests feasibility of using SDT to tailor design of mHealth interventions for promoting data-driven self-management to individuals' motivation and regulation. However, further research is needed to better align design solutions with different levels of self-determination continuum, to incorporate stronger emphasis on emotional support for individuals with external regulation, and to address unique needs and challenges of underserved communities, with particular attention to limited health literacy and access to resources.

摘要

目的

根据自我决定理论,通过根据个体的动机和调节类型来调整自我管理干预措施的设计,探讨在少数族裔医疗服务不足的社区中促进个体参与基于数据的健康自我管理的可行性。

方法

从一个贫困的少数民族社区中随机抽取了 53 名 2 型糖尿病患者,将他们分为四个不同版本的基于移动健康(mHealth)的数据驱动自我管理应用程序 Platano,重点关注营养;每个版本都根据自我决定理论的自我决定连续体中的特定动机和调节类型进行了调整。这些版本包括财务奖励(外部调节)、来自注册营养师(RDF)的反馈(内摄调节)、自我评估实现营养目标的程度(认同调节)以及个性化的用餐时间营养决策支持和餐后血糖预测(综合调节)。我们使用定性访谈来研究参与者与应用程序的互动以及他们的动机类型(内部-外部)之间的关系。

结果

正如假设的那样,我们发现参与者的动机类型和 Platano 功能之间存在明显的相互作用,用户对这些功能做出了回应并从中受益。例如,那些内在动机更强的人报告说,他们对自我评估和个性化决策支持的体验比那些外在动机更强的人更积极。然而,我们也发现,旨在专门满足外部调节个体需求的 Platano 功能并没有产生预期的效果。我们认为这是因为在信息支持和情感支持之间的重点不一致,这在 RDF 中尤为明显。此外,我们发现,对于从经济劣势社区招募的参与者来说,内在因素,如动机和调节,与外在因素,特别是有限的健康素养和资源有限,相互作用。

结论

该研究表明,使用自我决定理论来调整 mHealth 干预措施的设计以促进数据驱动的自我管理,以适应个体的动机和调节是可行的。然而,需要进一步研究以更好地将设计解决方案与自我决定连续体的不同水平相匹配,为外部调节个体提供更强的情感支持,并解决服务不足社区的独特需求和挑战,特别关注有限的健康素养和资源获取。

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