医学
急诊科
预测建模
损伤严重程度评分
梅德林
系统回顾
临床预测规则
钝伤
急诊医学
重症监护医学
毒物控制
外科
伤害预防
机器学习
内科学
计算机科学
法学
精神科
政治学
作者
Ceri Battle,Elaine Cole,Kymberley Carter,Edward Baker
标识
DOI:10.1186/s12873-024-01107-6
摘要
Abstract Background The aim of this systematic review was to investigate how clinical prediction models compare in terms of their methodological development, validation, and predictive capabilities, for patients with blunt chest trauma presenting to the Emergency Department. Methods A systematic review was conducted across databases from 1st Jan 2000 until 1st April 2024. Studies were categorised into three types of multivariable prediction research and data extracted regarding methodological issues and the predictive capabilities of each model. Risk of bias and applicability were assessed. Results 41 studies were included that discussed 22 different models. The most commonly observed study design was a single-centre, retrospective, chart review. The most widely externally validated clinical prediction models with moderate to good discrimination were the Thoracic Trauma Severity Score and the STUMBL Score. Discussion This review demonstrates that the predictive ability of some of the existing clinical prediction models is acceptable, but high risk of bias and lack of subsequent external validation limits the extensive application of the models. The Thoracic Trauma Severity Score and STUMBL Score demonstrate better predictive accuracy in both development and external validation studies than the other models, but require recalibration and / or update and evaluation of their clinical and cost effectiveness. Review registration PROSPERO database ( https://www.crd.york.ac.uk/PROSPERO/display_record.php?RecordID=351638 ).
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