荟萃分析
医学
科克伦图书馆
观察研究
伤害预防
毒物控制
梅德林
急诊医学
职业安全与健康
相对风险
系统回顾
物理疗法
内科学
置信区间
病理
政治学
法学
作者
Andrea Spota,Stefano Granieri,Luca Ferrario,Beatrice Zamburlini,Simone Frassini,Elisa Reitano,Stefano Piero Bernardo Cioffi,Michele Altomare,Roberto Bini,Francesco Virdis,Osvaldo Chiara,Stefania Cimbanassi
出处
期刊:American Surgeon
[SAGE Publishing]
日期:2024-03-26
卷期号:90 (6): 1702-1713
被引量:1
标识
DOI:10.1177/00031348241241682
摘要
Electric scooter (ES)-related injuries are increasing but poorly described. Clinicians need more information to be prepared for these patients. We supposed two prevalent patterns of patients: mildly injured (predominant upper-limb injuries) and severely injured (predominant head trauma). This study aims to understand the frequency of ES-related injuries and patients' characteristics despite the heterogeneity of data currently available. A systematic review with a proportion meta-analysis was conducted on studies with a multidisciplinary description of ES-related injuries in adult patients (PROSPERO-ID: CRD42022341241). Articles from inception to April 2023 were identified in MEDLINE, Embase, and Cochrane's databases. The risk of bias was evaluated using ROBINS-I. Twenty-five observational studies with 5387 patients were included in the meta-analysis, depending on reported data. Upper-limb (31.8%) and head (19.5%) injuries are the most frequent (25/25 studies included). When injured while riding, 19.5% of patients are intoxicated with drugs/alcohol, and only 3.9% use a helmet, increasing the possibility of severe injuries. About 80% of patients are victims of spontaneous falls. Half of the patients self-present to the ED, and 69.4% of cases are discharged directly from the ED. Studies' limitations include an overall moderate risk of bias and high heterogeneity. Electric scooter-related accidents are commonly associated with upper-limb injuries but often involve the head. Spontaneous falls are the most common mechanism of injury, probably related to frequent substance abuse and helmet misuse. This hot topic is not adequately investigated due to a lack of data. A prospective registry could fill this gap.
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