Department of Electrical Engineering, Chalmers University of Technology, 412 96, Gothenburg, Sweden.
Center for Prehospital Research, Faculty of Caring Science, Work Life and Social Welfare, University of Borås, 501 90, Borås, Sweden.
BMC Med Inform Decis Mak. 2023 Oct 9;23(1):206. doi: 10.1186/s12911-023-02290-5.
Providing optimal care for trauma, the leading cause of death for young adults, remains a challenge e.g., due to field triage limitations in assessing a patient's condition and deciding on transport destination. Data-driven On Scene Injury Severity Prediction (OSISP) models for motor vehicle crashes have shown potential for providing real-time decision support. The objective of this study is therefore to evaluate if an Artificial Intelligence (AI) based clinical decision support system can identify severely injured trauma patients in the prehospital setting.
The Swedish Trauma Registry was used to train and validate five models - Logistic Regression, Random Forest, XGBoost, Support Vector Machine and Artificial Neural Network - in a stratified 10-fold cross validation setting and hold-out analysis. The models performed binary classification of the New Injury Severity Score and were evaluated using accuracy metrics, area under the receiver operating characteristic curve (AUC) and Precision-Recall curve (AUCPR), and under- and overtriage rates.
There were 75,602 registrations between 2013-2020 and 47,357 (62.6%) remained after eligibility criteria were applied. Models were based on 21 predictors, including injury location. From the clinical outcome, about 40% of patients were undertriaged and 46% were overtriaged. Models demonstrated potential for improved triaging and yielded AUC between 0.80-0.89 and AUCPR between 0.43-0.62.
AI based OSISP models have potential to provide support during assessment of injury severity. The findings may be used for developing tools to complement field triage protocols, with potential to improve prehospital trauma care and thereby reduce morbidity and mortality for a large patient population.
创伤是导致年轻人死亡的主要原因,为其提供最佳治疗仍然是一个挑战,例如,由于现场分诊在评估患者病情和决定转运目的地方面存在局限性。机动车事故的基于数据的现场损伤严重度预测 (OSISP) 模型已显示出提供实时决策支持的潜力。因此,本研究的目的是评估基于人工智能 (AI) 的临床决策支持系统是否可以在院前环境中识别严重受伤的创伤患者。
使用瑞典创伤登记处,通过分层 10 折交叉验证设置和保留分析,对五个模型(逻辑回归、随机森林、XGBoost、支持向量机和人工神经网络)进行训练和验证。这些模型对新损伤严重度评分进行二进制分类,并使用准确性指标、接收器操作特征曲线下面积 (AUC) 和精度-召回曲线下面积 (AUCPR)、以及分诊不足和过度比例进行评估。
2013 年至 2020 年期间共登记了 75602 例,符合入选标准后,有 47357 例(62.6%)被保留。模型基于 21 个预测因子,包括损伤部位。从临床结果来看,约 40%的患者分诊不足,46%的患者分诊过度。模型显示出改善分诊的潜力,AUC 为 0.80-0.89,AUCPR 为 0.43-0.62。
基于 AI 的 OSISP 模型有可能在评估损伤严重程度时提供支持。这些发现可用于开发工具以补充现场分诊方案,有可能改善院前创伤护理,从而降低大量患者的发病率和死亡率。