使用人工智能预测老年人跌倒相关损伤入院:一项概念验证研究。

IF 2.4 4区 医学 Q3 GERIATRICS & GERONTOLOGY
Nam Le, Milan Sonka, Dionne A Skeete, Kathleen S Romanowski, Colette Galet
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引用次数: 0

摘要

目的:研究损伤前虚弱作为预测老年创伤患者预后的工具。利用机器学习的人工智能原理,我们旨在确定一个“特征”(临床变量的组合),可以预测哪些老年人有因跌倒而住院的风险。我们假设虚弱,使用5项修正的虚弱指数来衡量,可以与其他因素结合使用,作为跌倒相关损伤入院的预测因子。方法:挖掘国家再入院数据库,以确定老年人因跌倒相关损伤入院的相关因素。其中包括2010年至2014年因创伤相关损伤入院的老年人。年龄、性别、慢性疾病数量和既往因跌倒而入院、合并症、5项修正虚弱指数和医疗保险状况被纳入分析。在六个被测试的模型(逻辑回归和随机森林)中选择了两个机器学习模型。使用决策树作为随机森林的替代模型,我们提取了与跌倒相关损伤入院相关的高风险因素组合。结果:我们的方法产生了18个模型。女性身份是因跌倒受伤入院的最常见因素之一。18个组合中有4个出现了虚弱。年龄在65-74岁之间的女性,有5项修改后的虚弱指数得分bb0.3,这一人群中有80.3%的人因跌倒相关损伤入院。结论:利用机器学习的人工智能原理,我们能够开发18个签名,使我们能够识别有跌倒相关损伤入院风险的老年人。未来使用其他数据库(如TQIP)的研究有必要验证我们的高风险组合模型。Geriatr Gerontol 2025;••: ••-••.
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting admission for fall-related injuries in older adults using artificial intelligence: A proof-of-concept study.

Aim: Pre-injury frailty has been investigated as a tool to predict outcomes of older trauma patients. Using artificial intelligence principles of machine learning, we aimed to identify a "signature" (combination of clinical variables) that could predict which older adults are at risk of fall-related hospital admission. We hypothesized that frailty, measured using the 5-item modified Frailty Index, could be utilized in combination with other factors as a predictor of admission for fall-related injuries.

Methods: The National Readmission Database was mined to identify factors associated with admission of older adults for fall-related injuries. Older adults admitted for trauma-related injuries from 2010 to 2014 were included. Age, sex, number of chronic conditions and past fall-related admission, comorbidities, 5-item modified Frailty Index, and medical insurance status were included in the analysis. Two machine learning models were selected among six tested models (logistic regression and random forest). Using a decision tree as a surrogate model for random forest, we extracted high-risk combinations of factors associated with admission for fall-related injury.

Results: Our approach yielded 18 models. Being a woman was one of the factors most often associated with admission for fall-related injuries. Frailty appeared in four of the 18 combinations. Being a woman, aged 65-74 years and presenting a 5-item modified Frailty Index score >3 predicted admission for fall-related injuries in 80.3% of this population.

Conclusion: Using artificial intelligence principles of machine learning, we were able to develop 18 signatures allowing us to identify older adults at risk of admission for fall-related injuries. Future studies using other databases, such as TQIP, are warranted to validate our high-risk combination models. Geriatr Gerontol Int 2025; ••: ••-••.

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来源期刊
CiteScore
5.50
自引率
6.10%
发文量
189
审稿时长
4-8 weeks
期刊介绍: Geriatrics & Gerontology International is the official Journal of the Japan Geriatrics Society, reflecting the growing importance of the subject area in developed economies and their particular significance to a country like Japan with a large aging population. Geriatrics & Gerontology International is now an international publication with contributions from around the world and published four times per year.
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