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高处坠落伤的发生率及严重程度的预测因素。

Incidence of fall-from-height injuries and predictive factors for severity.

作者信息

Palacio Carlos, Darwish Muhammad, Acosta Marie, Bautista Ruby, Hovorka Maximillian, Chen Chaoyang, Hovorka John

机构信息

McAllen Department of Trauma, South Texas Health System, McAllen, TX, USA.

Department of Orthopaedic Surgery, Detroit Medical Center; and College of Osteopathic Medicine, Michigan State University, Detroit, MI, USA.

出版信息

J Osteopath Med. 2025 Jan 8;125(5):229-236. doi: 10.1515/jom-2024-0158. eCollection 2025 May 1.

Abstract

CONTEXT

The injuries caused by falls-from-height (FFH) are a significant public health concern. FFH is one of the most common causes of polytrauma. The injuries persist to be significant adverse events and a challenge regarding injury severity assessment to identify patients at high risk upon admission. Understanding the incidence and the factors that predict injury severity can help in developing effective intervention strategies. Artificial intelligence (AI) predictive models are emerging to assist in clinical assessment with challenges.

OBJECTIVES

This retrospective study investigated the incidence of FFH injuries utilizing conventional statistics and a predictive AI model to understand the fall-related injury profile and predictive factors.

METHODS

A total of 124 patients who sustained injuries from FFHs were recruited for this retrospective study. These patients fell from a height of 15-30 feet and were admitted into a level II trauma center at the border of US-Mexica region. A chart review was performed to collect demographic information and other factors including Injury Severity Score (ISS), Glasgow Coma Scale (GCS), anatomic injury location, fall type (domestic falls vs. border wall falls), and comorbidities. Multiple variable statistical analyses were analyzed to determine the correlation between variables and injury severity. A machine learning (ML) method, the multilayer perceptron neuron network (MPNN), was utilized to determine the importance of predictive factors leading to in-hospital mortality. The chi-square test or Fisher's exact test and Spearman correlate analysis were utilized for statistical analysis for categorical variables. A p value smaller than 0.05 was considered to be statistically different.

RESULTS

Sixty-four (64/124, 51.6 %) patients sustained injuries from FFHs from a border wall or fence, whereas 60 (48.4 %) sustained injuries from FFHs at a domestic region including falls from roofs or scaffolds. Patients suffering from domestic falls had a higher ISS than border fence falls. The height of the falls was not significantly associated with injury severity, but rather the anatomic locations of injuries were associated with severity. Compared with border falls, domestic falls had more injuries to the head and chest and longer intensive care unit (ICU) stay. The MPNN showed that the factors leading to in-hospital mortality were chest injury followed by head injury and low GCS on admission.

CONCLUSIONS

Domestic vs. border FFHs yielded different injury patterns and injury severity. Patients of border falls sustained a lower ISS and more lower-extremity injuries, while domestic falls caused more head or chest injuries and low GCS on admission. MPNN analysis demonstrated that chest and head injuries with low GCS indicated a high risk of mortality from an FFH.

摘要

背景

高处坠落(FFH)造成的损伤是一个重大的公共卫生问题。FFH是多发伤最常见的原因之一。这些损伤仍然是严重的不良事件,并且在入院时对损伤严重程度进行评估以识别高危患者是一项挑战。了解发病率和预测损伤严重程度的因素有助于制定有效的干预策略。人工智能(AI)预测模型正在兴起,以协助应对具有挑战性的临床评估。

目的

这项回顾性研究利用传统统计方法和预测性AI模型调查FFH损伤的发病率,以了解与跌倒相关的损伤情况和预测因素。

方法

本回顾性研究共招募了124例因FFH受伤的患者。这些患者从15至30英尺的高度坠落,并被收治到美墨边境地区的一家二级创伤中心。进行病历审查以收集人口统计学信息和其他因素,包括损伤严重程度评分(ISS)、格拉斯哥昏迷量表(GCS)、损伤的解剖位置、跌倒类型(家庭跌倒与边境墙跌倒)和合并症。进行多变量统计分析以确定变量与损伤严重程度之间的相关性。采用机器学习(ML)方法,即多层感知器神经元网络(MPNN),来确定导致院内死亡的预测因素的重要性。卡方检验或Fisher精确检验以及Spearman相关性分析用于分类变量的统计分析。p值小于0.05被认为具有统计学差异。

结果

64例(64/124,51.6%)患者因从边境墙或围栏高处坠落受伤,而60例(48.4%)患者因在国内区域(包括从屋顶或脚手架坠落)高处坠落受伤。家庭跌倒患者的ISS高于边境围栏跌倒患者。坠落高度与损伤严重程度无显著相关性,而损伤的解剖位置与严重程度相关。与边境跌倒相比,家庭跌倒导致头部和胸部受伤更多,重症监护病房(ICU)住院时间更长。MPNN显示,导致院内死亡的因素依次为胸部损伤、头部损伤和入院时GCS较低。

结论

家庭与边境高处坠落导致不同的损伤模式和损伤严重程度。边境跌倒患者的ISS较低,下肢损伤较多,而家庭跌倒导致更多的头部或胸部损伤以及入院时GCS较低。MPNN分析表明,GCS较低的胸部和头部损伤表明高处坠落导致死亡的风险较高。

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