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智能个性化运动处方中依从行为的影响因素及实施途径:定性研究

Influencing Factors and Implementation Pathways of Adherence Behavior in Intelligent Personalized Exercise Prescription: Qualitative Study.

作者信息

Xu Xuejie, Zhang Guoli, Xia Yuxin, Xie Hui, Ding Zenghui, Wang Hongyu, Ma Zuchang, Sun Ting

机构信息

School of Nursing, Bengbu Medical University, Bengbu, China.

Institute of Intelligent Machines, Hefei Institutes of Physical Sciences, Chinese Academy of Sciences, Hefei, China.

出版信息

JMIR Mhealth Uhealth. 2024 Dec 5;12:e59610. doi: 10.2196/59610.

Abstract

BACKGROUND

Personalized intelligent exercise prescriptions have demonstrated significant benefits in increasing physical activity and improving individual health. However, the health benefits of these prescriptions depend on long-term adherence. Therefore, it is essential to analyze the factors influencing adherence to personalized intelligent exercise prescriptions and explore the intrinsic relationship between individual behavioral motivation and adherence. This understanding can help improve adherence and maximize the effectiveness of such prescriptions.

OBJECTIVE

This study aims to identify the factors influencing adherence behavior among middle-aged and older community residents who have been prescribed personalized exercise regimens through an electronic health promotion system. It also explores how these factors affect the initiation and maintenance of adherence behavior.

METHODS

We used purposive sampling to conduct individual, face-to-face semistructured interviews based on the Transtheoretical Model (TTM) with 12 middle-aged and older community residents who had been following personalized exercise regimens for 8 months. These residents had received detailed exercise health education and guidance from staff. The interviews were recorded, transcribed verbatim, and analyzed using NVivo software through grounded theory. We then applied the TTM and multibehavioral motivation theory to analyze the factors influencing adherence. Additionally, the relationship between behavioral motivations and adherence was explored.

RESULTS

Using the behavior change stages of the TTM, open coding yielded 21 initial categories, which were then organized into 8 main categories through axial coding: intrinsic motivation, extrinsic motivation, benefit motivation, pleasure motivation, achievement motivation, perceived barriers, self-regulation, and optimization strategies. Selective coding further condensed these 8 main categories into 3 core categories: "multitheory motivation," "obstacle factors," and "solution strategies." Using the coding results, a 3-level model of factors influencing adherence to intelligent personalized exercise prescriptions was developed. Based on this, an implementation path for promoting adherence to intelligent personalized exercise prescriptions was proposed by integrating the model with the TTM.

CONCLUSIONS

Adherence to personalized exercise prescriptions is influenced by both facilitating factors (eg, multibehavioral motivation, optimization strategies) and obstructive factors (eg, perceived barriers). Achieving and maintaining adherence is a gradual process, shaped by a range of motivations and factors. Personalized solutions, long-term support, feedback mechanisms, and social support networks are essential for promoting adherence. Future efforts should focus on enhancing adherence by strengthening multibehavioral motivation, optimizing solutions, and addressing barriers to improve overall adherence.

摘要

背景

个性化智能运动处方在增加身体活动和改善个体健康方面已显示出显著益处。然而,这些处方对健康的益处取决于长期坚持。因此,分析影响个性化智能运动处方依从性的因素,并探索个体行为动机与依从性之间的内在关系至关重要。这种理解有助于提高依从性并使此类处方的效果最大化。

目的

本研究旨在确定通过电子健康促进系统接受个性化运动方案的中老年社区居民中影响依从行为的因素。同时探索这些因素如何影响依从行为的启动和维持。

方法

我们采用目的抽样法,基于跨理论模型(TTM)对12名遵循个性化运动方案8个月的中老年社区居民进行了个体面对面的半结构化访谈。这些居民已接受工作人员详细的运动健康教育和指导。访谈进行了录音,逐字转录,并使用NVivo软件通过扎根理论进行分析。然后我们应用TTM和多行为动机理论来分析影响依从性的因素。此外,还探讨了行为动机与依从性之间的关系。

结果

利用TTM的行为改变阶段,开放编码产生了21个初始类别,然后通过主轴编码将其组织成8个主要类别:内在动机、外在动机、益处动机、愉悦动机、成就动机、感知障碍、自我调节和优化策略。选择编码进一步将这8个主要类别浓缩为3个核心类别:“多理论动机”、“障碍因素”和“解决策略”。利用编码结果,构建了一个影响智能个性化运动处方依从性的三级因素模型。在此基础上,将该模型与TTM相结合,提出了促进智能个性化运动处方依从性的实施路径。

结论

个性化运动处方的依从性受促进因素(如多行为动机、优化策略)和阻碍因素(如感知障碍)的影响。实现并维持依从性是一个渐进的过程,由一系列动机和因素塑造。个性化解决方案、长期支持、反馈机制和社会支持网络对于促进依从性至关重要。未来的努力应集中在通过加强多行为动机、优化解决方案和消除障碍来提高依从性,以改善整体依从性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ece8/11659695/9495121e7605/mhealth_v12i1e59610_fig1.jpg

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