机器学习的应用及其在少肌症护理指导手机应用程序开发中的效果。

IF 3.1 2区 医学 Q1 NURSING BMC Nursing Pub Date : 2023-10-09 DOI:10.1186/s12912-023-01545-w
Pei-Hung Liao, Yu-Jie Huang, Chen-Shie Ho, William Chu
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引用次数: 0

摘要

背景:衰老会导致身体系统的变化,如少肌症。这可能会导致一些健康问题,特别是身体和行动功能障碍。亚洲人通常很少意识到少肌症。因此,本研究将护理指导纳入移动应用程序设计中,让用户轻松了解少肌症。目的:本研究评估了一种预测家庭环境中少肌症高危人群的模型。我们进一步开发了少肌症护理指导移动应用程序,并评估了该应用程序在影响参与者少肌症相关知识和自我护理意识方面的有效性。方法:以台湾北部某教学医院120名受试者为研究对象,采用一组试验前-试验设计。这项研究使用了一种人工智能算法来评估一种预测少肌症高危人群的模型。我们使用基于移动应用评分量表的问卷开发并评估了少肌症护理指导移动应用程序。结果:本研究中开发的应用程序增强了参与者的少肌症相关知识和自我护理意识。经过三个月的干预,知识和意识得到了有效的提高,总分从4.15分开始 ± 2.35至6.65 ± 0.85,并且在所有问卷项目中都是显著的(p值 结论:少肌症护理指南在家庭环境中的移动应用可通过提高个人的自我护理意识和能力来帮助缓解少肌症症状并减少并发症。试验注册:NCT05363033,注册日期为2022年5月2日。
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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Application of machine learning and its effects on the development of a nursing guidance mobile app for sarcopenia.

Background: Aging leads to changes in the body system, such as sarcopenia. This can result in several health issues, particularly physical and mobility dysfunction. Asian people typically have little awareness of sarcopenia. Thus, this study incorporated nursing instruction into the mobile application design to allow users to easily learn about sarcopenia.

Objective: This study evaluated a model for predicting high-risk populations for sarcopenia in home settings. We further developed a sarcopenia nursing guidance mobile application and assessed the effectiveness of this application in influencing sarcopenia-related knowledge and self-care awareness among participants.

Methods: Using a one-group pretest-posttest design, data were collected from 120 participants at a teaching hospital in northern Taiwan. This study used an artificial intelligence algorithm to evaluate a model for predicting high-risk populations for sarcopenia. We developed and assessed the sarcopenia nursing guidance mobile application using a questionnaire based on the Mobile Application Rating Scale.

Results: The application developed in this study enhanced participants' sarcopenia-related knowledge and awareness regarding self-care. After the three-month intervention, the knowledge and awareness was effectively increase, total score was from 4.15 ± 2.35 to 6.65 ± 0.85 and were significant for all questionnaire items (p values < 0.05). On average, 96.1% of the participants were satisfied with the mobile app. The artificial intelligence algorithm positively evaluated the home-use model for predicting high-risk sarcopenia groups.

Conclusions: The mobile application of the sarcopenia nursing guidance for public use in home settings may help alleviate sarcopenia symptoms and reduce complications by enhancing individuals' self-care awareness and ability.

Trial registration: NCT05363033, registered on 02/05/2022.

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来源期刊
BMC Nursing
BMC Nursing Nursing-General Nursing
CiteScore
3.90
自引率
6.20%
发文量
317
审稿时长
30 weeks
期刊介绍: BMC Nursing is an open access, peer-reviewed journal that considers articles on all aspects of nursing research, training, education and practice.
期刊最新文献
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