Machine Learning Prediction for Postdischarge Falls in Older Adults: A Multicenter Prospective Study.

IF 4.2 2区 医学 Q2 GERIATRICS & GERONTOLOGY
Yuko Takeshita, Mai Onishi, Hirotada Masuda, Mizuki Katsuhisa, Kasumi Ikuta, Yuichiro Saizen, Misaki Fujii, Misaki Kasamatsu, Nobuyuki Inaizumi, Yuzuki Maeizumi, Yoshinobu Kishino, Tsuneo Nakajima, Eriko Koujiya, Miyae Yamakawa, Yoichi Takami, Koichi Yamamoto, Yumi Umeda-Kameyama, Shosuke Satake, Hiroyuki Umegaki, Yasushi Takeya
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Abstract

Objectives: The study aimed to develop a machine learning (ML) model to predict early postdischarge falls in older adults using data that are easy to collect in acute care hospitals. This may reduce the burden imposed by complex measures on patients and health care staff.

Design: This prospective multicenter study included patients admitted to and discharged from geriatric wards at 3 university hospitals and 1 national medical center in Japan between October 2019 and July 2023.

Setting and participants: The participants were individuals aged ≥65 years. Of the 1307 individuals enrolled during the study period, 684 were excluded, leaving 706 for inclusion in the analysis.

Methods: We extracted 19 variables from admission and discharge data, including physical, mental, psychological, and social aspects and in-hospital events, to assess the main outcome measure: falls occurring within 3 months postdischarge. We developed a prediction model using 4 major classifiers, Extra Trees, Bernoulli Naive Bayes, AdaBoost, and Random Forest, which were evaluated using a 5-fold cross-validation. The area under the receiver operating characteristic curve (AUC) was used to evaluate predictive performance.

Results: Among the 706 patients, 114 (16.1%) reported a fall within 3 months postdischarge. The Extra Trees classifier demonstrated the best predictive performance, with an AUC of 0.73 on the test data. Important features included the Lawton Instrumental Activities of Daily Living scale, Clinical Frailty Scale (≥4 points), presence of urinary incontinence, 15-item Geriatric Depression Scale (≥5 points), and preadmission residence, all assessed at admission.

Conclusions and implications: To our knowledge, this is the first study to develop an ML model for predicting early postdischarge falls among older patients in acute care hospitals. The findings suggest that this model could assist in developing fall-prevention strategies to ensure seamless transition of care from hospitals to communities.

机器学习预测老年人出院后跌倒:一项多中心前瞻性研究。
目的:本研究旨在开发一种机器学习(ML)模型,利用在急症医院易于收集的数据预测老年人出院后早期跌倒。这可能减轻复杂措施给病人和医护人员带来的负担。设计:这项前瞻性多中心研究包括2019年10月至2023年7月期间日本3所大学医院和1所国立医疗中心老年病房入院和出院的患者。环境和参与者:参与者为年龄≥65岁的个体。在研究期间登记的1307人中,有684人被排除在外,剩下706人被纳入分析。方法:我们从入院和出院数据中提取了19个变量,包括身体、精神、心理和社会方面以及院内事件,以评估主要结局指标:出院后3个月内发生的跌倒。我们使用Extra Trees、Bernoulli Naive Bayes、AdaBoost和Random Forest 4个主要分类器开发了一个预测模型,并使用5倍交叉验证对其进行评估。采用受试者工作特征曲线下面积(AUC)评价预测效果。结果:706例患者中,114例(16.1%)报告出院后3个月内跌倒。Extra Trees分类器表现出最好的预测性能,在测试数据上的AUC为0.73。重要特征包括劳顿日常生活工具活动量表、临床虚弱量表(≥4分)、尿失禁的存在、15项老年抑郁量表(≥5分)和入院前居住,所有这些都在入院时进行评估。结论和意义:据我们所知,这是第一个开发ML模型来预测急性护理医院老年患者出院后早期跌倒的研究。研究结果表明,该模型可以帮助制定预防跌倒的策略,以确保从医院到社区的护理无缝过渡。
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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来源期刊
CiteScore
11.10
自引率
6.60%
发文量
472
审稿时长
44 days
期刊介绍: JAMDA, the official journal of AMDA - The Society for Post-Acute and Long-Term Care Medicine, is a leading peer-reviewed publication that offers practical information and research geared towards healthcare professionals in the post-acute and long-term care fields. It is also a valuable resource for policy-makers, organizational leaders, educators, and advocates. The journal provides essential information for various healthcare professionals such as medical directors, attending physicians, nurses, consultant pharmacists, geriatric psychiatrists, nurse practitioners, physician assistants, physical and occupational therapists, social workers, and others involved in providing, overseeing, and promoting quality
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