用机器学习方法发现健康老龄化的幸福感和复原力的隐藏模式。

IF 2.4 3区 医学 Q1 NURSING Journal of Nursing Scholarship Pub Date : 2024-09-09 DOI:10.1111/jnu.13025
Robin R Austin, Ratchada Jantraporn, Martin Michalowski, Jenna Marquard
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引用次数: 0

摘要

背景:全人健康老龄化方法可以让人们深入了解可能至关重要的社会因素。移动健康(mHealth)应用等数字技术有望为健康老龄化提供新的见解,并能在临床护理就诊之间收集数据。机器学习/人工智能方法具有揭示健康老龄化的潜力。护士和护士信息学家拥有独特的视角来塑造这一技术的未来用途:本研究的目的是将机器学习方法应用于 MyStrengths+MyHealth 45 岁及以上成年人的去标识化数据(N = 988)。这项工作以探索性数据分析过程为指导:总体而言(n = 988),平均优势为 66.1%(SD = 5.1),平均挑战为 66.5%(SD = 7.5),平均需求为 60.06%(SD = 3.1)。优势和需求之间存在显着差异(p 结论:"优势 "和 "需求 "之间存在显着差异:这项回顾性分析将机器学习方法应用于 MSMH 应用程序中去标识化的全人健康复原力数据。45 岁及以上的成年人尽管面临众多挑战和需求,但仍有许多优势。思维群体的优势、挑战和需求均最高,这与文献报道一致,并突出了该群体所经历的并发健康挑战。应用于消费者健康数据的机器学习方法可以识别出适用于特定条件(如认知)和健康老龄化的独特见解。下一步工作包括与护士一起测试个性化干预措施,引导人工智能融入临床护理。
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Machine learning methods to discover hidden patterns in well-being and resilience for healthy aging.

Background: A whole person approach to healthy aging can provide insight into social factors that may be critical. Digital technologies, such as mobile health (mHealth) applications, hold promise to provide novel insights for healthy aging and the ability to collect data between clinical care visits. Machine learning/artificial intelligence methods have the potential to uncover insights into healthy aging. Nurses and nurse informaticians have a unique lens to shape the future use of this technology.

Methods: The purpose of this research was to apply machine learning methods to MyStrengths+MyHealth de-identified data (N = 988) for adults 45 years of age and older. An exploratory data analysis process guided this work.

Results: Overall (n = 988), the average Strength was 66.1% (SD = 5.1), average Challenges 66.5% (SD = 7.5), and average Needs 60.06% (SD = 3.1). There was a significant difference between Strengths and Needs (p < 0.001), between Challenges and Needs (p < 0.001), and no significant differences between average Strengths and Challenges. Four concept groups were identified from the data (Thinking, Moving, Emotions, and Sleeping). The Thinking group had the most statistically significant challenges (11) associated with having at least one Thinking Challenge and the highest average Strengths (66.5%) and Needs (83.6%) compared to the other groups.

Conclusion: This retrospective analysis applied machine learning methods to de-identified whole person health resilience data from the MSMH application. Adults 45 and older had many Strengths despite numerous Challenges and Needs. The Thinking group had the highest Strengths, Challenges, and Needs, which aligns with the literature and highlights the co-occurring health challenges experienced by this group. Machine learning methods applied to consumer health data identify unique insights applicable to specific conditions (e.g., cognitive) and healthy aging. The next steps involve testing personalized interventions with nurses leading artificial intelligence integration into clinical care.

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来源期刊
CiteScore
6.30
自引率
5.90%
发文量
85
审稿时长
6-12 weeks
期刊介绍: This widely read and respected journal features peer-reviewed, thought-provoking articles representing research by some of the world’s leading nurse researchers. Reaching health professionals, faculty and students in 103 countries, the Journal of Nursing Scholarship is focused on health of people throughout the world. It is the official journal of Sigma Theta Tau International and it reflects the society’s dedication to providing the tools necessary to improve nursing care around the world.
期刊最新文献
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