Dynamic Nomogram for Predicting the Fall Risk of Stroke Patients: An Observational Study.

IF 3.5 3区 医学 Q2 GERIATRICS & GERONTOLOGY
Clinical Interventions in Aging Pub Date : 2025-02-25 eCollection Date: 2025-01-01 DOI:10.2147/CIA.S486252
Yao Wu, Xinjun Jiang, Danxin Wang, Ling Xu, Hai Sun, Bijiao Xie, Shaoying Tan, Yong Chai, Tao Wang
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引用次数: 0

Abstract

Background: Common fall risk assessment scales are not ideal for the prediction of falls in stroke patients. The study aimed to develop and verify a dynamic nomogram model for predicting the falls risk in stroke patients during rehabilitation.

Methods: An observational study design was adopted, 488 stroke patients were treated in a tertiary hospital from March to September 2022 were investigated for fall risk factors and related functional tests. We followed up by telephone within 2 months after that to understand the occurrence of falls. Forward stepwise regression was used to analyze the data, and a dynamic nomogram model was developed.

Results: During follow-up, three patients died, and 16 failed the follow-up, with a failure rate of 3.89%. Among 469 patients, 115 experienced falls, with a fall incidence rate of 24.4% and a cumulative of 163 falls. The fall risk was higher among patients aged 60-69, and ≥80 years than among patients aged <60 years. Patients with a fall history within the last 3 months, or a Berg balance scale (BBS) score of <40, or combined with anxiety had a higher fall risk. The differentiation of the dynamic nomogram model was evaluated. The area under the receiver operating characteristics curve (AUC-ROC), sensitivity, specificity of the model was 0.756, 66.09% and 73.16%, respectively. The AUC-ROC of the model was 0.761 by using the Bootstrap test, and the calibration curve coincided with the diagonal dashed line with a slope of one. The Hosmer-Lemeshow good of fit test value was χ²=2.040, and the decision curve analysis showed that the net benefit was higher than that of the two extreme curves.

Conclusion: Independent fall risk factors in stroke patients are age, had a fall history within the last 3 months, anxiety, and with the BBS score below 40 during rehabilitation. The dynamic nomogram prediction model for stroke patients during rehabilitation has good differentiation, calibration, and clinical utility. The prediction model is simple and practical.

预测中风患者跌倒风险的动态提名图:一项观察研究
背景:常用的跌倒风险评估量表对预测脑卒中患者跌倒并不理想。本研究旨在建立并验证一种预测脑卒中患者康复期间跌倒风险的动态nomogram模型。方法:采用观察性研究设计,对2022年3月至9月在某三级医院治疗的488例脑卒中患者进行跌倒危险因素调查及相关功能检查。在此之后的2个月内,我们通过电话跟进了解了跌倒的发生情况。采用正向逐步回归方法对数据进行分析,建立了动态模态图模型。结果:随访期间死亡3例,随访失败16例,失败率3.89%。469例患者中有115例跌倒,跌倒发生率为24.4%,累计跌倒163例。60 ~ 69岁和≥80岁患者的跌倒风险高于χ²=2.040岁患者,决策曲线分析显示净收益高于两个极端曲线。结论:卒中患者跌倒的独立危险因素为年龄、近3个月内有跌倒史、焦虑、康复期间BBS评分低于40分。所建立的脑卒中患者康复期动态图预测模型具有良好的鉴别、校准和临床应用价值。该预测模型简单实用。
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来源期刊
Clinical Interventions in Aging
Clinical Interventions in Aging GERIATRICS & GERONTOLOGY-
CiteScore
6.80
自引率
2.80%
发文量
193
审稿时长
6-12 weeks
期刊介绍: Clinical Interventions in Aging, is an online, peer reviewed, open access journal focusing on concise rapid reporting of original research and reviews in aging. Special attention will be given to papers reporting on actual or potential clinical applications leading to improved prevention or treatment of disease or a greater understanding of pathological processes that result from maladaptive changes in the body associated with aging. This journal is directed at a wide array of scientists, engineers, pharmacists, pharmacologists and clinical specialists wishing to maintain an up to date knowledge of this exciting and emerging field.
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