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术后跌倒风险预测:一种用于脊柱和下肢手术的机器学习方法。

Post-surgical fall risk prediction: a machine learning approach for spine and lower extremity procedures.

作者信息

Chen Ya-Huei, Luo Xing-Yu, Chang Chia-Hui, Kuo Chen-Tsung, Shih Sou-Jen, Chang Mei-Yu, Weng Mei-Rong, Chen I-Chieh, Hsu Ying-Lin, Xu Jia-Lang

机构信息

Department of Nursing, Taichung Veterans General Hospital, Taichung, Taiwan.

Department of Institute of Statistics, National Chung Hsing University, Taichung, Taiwan.

出版信息

Front Med (Lausanne). 2025 Apr 15;12:1574305. doi: 10.3389/fmed.2025.1574305. eCollection 2025.

DOI:10.3389/fmed.2025.1574305
PMID:40303369
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC12037567/
Abstract

In Taiwan, two key indicators of clinical care quality are pressure injuries and falls. Falls can have significant physical impacts, ranging from minor injuries like bruises to major injuries such as fractures, sprains, and severe head trauma. To assess fall risk early and implement preventive measures, this study analyzed 2,948 medical records of patients who underwent spinal and lower limb surgeries at the Veterans General Hospital in Taichung, Taiwan. Data collected included patient demographics, vital signs, health conditions, diagnoses, and medications, as well as information on their admission type and any recorded falls, to identify factors contributing to inpatient falls and to establish early warning measures. This study accounted for patients' history of falls during model training, followed by variable selection and outcome modeling using logistic regression and random forest methods. Results showed that logistic regression with fall history as part of the training data is an effective approach. Patients admitted by wheelchair or stretcher for spine or lower limb surgeries had an increased fall risk. Each additional year of age also increased fall risk. In patients with arthritis, the odds of falling decreased. Conversely, the use of psychotropic and antihypertensive drugs raised fall risk. While sleeping pills reduced it. Each degree increase in body temperature and poor vision were also associated with higher fall odds. These findings support improvements in patient care quality and help reduce caregiver workload by refining fall risk assessment processes.

摘要

在台湾,临床护理质量的两个关键指标是压疮和跌倒。跌倒可能会产生重大的身体影响,从轻微的瘀伤等伤害到骨折、扭伤和严重头部创伤等重大伤害。为了早期评估跌倒风险并实施预防措施,本研究分析了台湾台中国军总医院2948例接受脊柱和下肢手术患者的病历。收集的数据包括患者的人口统计学信息、生命体征、健康状况、诊断和用药情况,以及他们的入院类型和任何记录在案的跌倒信息,以确定导致住院患者跌倒的因素并建立预警措施。本研究在模型训练期间考虑了患者的跌倒史,随后使用逻辑回归和随机森林方法进行变量选择和结果建模。结果表明,将跌倒史作为训练数据的一部分进行逻辑回归是一种有效的方法。因脊柱或下肢手术通过轮椅或担架入院的患者跌倒风险增加。年龄每增加一岁,跌倒风险也会增加。患有关节炎的患者跌倒几率降低。相反,使用精神药物和抗高血压药物会增加跌倒风险。而安眠药则会降低跌倒风险。体温每升高一度和视力不佳也与较高的跌倒几率相关。这些发现有助于提高患者护理质量,并通过完善跌倒风险评估流程帮助减轻护理人员的工作量。

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Using machine learning models to predict falls in hospitalised adults.
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Risk Factors and Characteristics of In-Hospital Falls After Spine Surgery: A Retrospective, Single-Center Cohort Study in the Republic of Korea.脊柱手术后院内跌倒的危险因素及特征:韩国一项回顾性单中心队列研究
JB JS Open Access. 2024 Apr 4;9(2). doi: 10.2106/JBJS.OA.23.00096. eCollection 2024 Apr-Jun.
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