Tang Jun, Li Tao, Liu Liangming, Wu Dongdong
Department of Information, Daping Hospital, Army Medical University, Chongqing, 400042, China.
Department of Shock and Transfusion, State Key Laboratory of Trauma, Burns and Combined Injury, Daping Hospital, Army Medical University, Chongqing, 400042, China.
Med Biol Eng Comput. 2025 Jul 11. doi: 10.1007/s11517-025-03414-x.
Trauma has become a major cause of increased morbidity and mortality worldwide. In emergency response, the classification of injuries is crucial as it helps to quickly determine the criticality of the injured, allocate rescue resources rationally, and decide the priority order of treatment. However, emergency scenes are often chaotic environments, making it difficult for rescue personnel to collect complete and accurate information about the injured in a short period. The combination of artificial intelligence and emergency rescue is gradually changing the rescue model, improving the efficiency of rescue operations. We selected data from 26,810 trauma patients admitted to Chongqing Daping Hospital between 2013 and 2024. We propose a fast tiered medical treatment method with a two-layer structure under emergency limited data conditions, which integrates natural language processing (NLP) and machine learning (ML) techniques. The tiered medical treatment model utilizes NLP to capture semantic features of unstructured text data, while utilizing four ML algorithms to process structured numerical data. Additionally, we conducted external validation using 245 data entries from the Chongqing Emergency Center. The experimental results show that gradient boosting and logistic regression have the best performance in the two-layer ML algorithms. Based on these two algorithms, our model outperformed the multilayer perceptron (MLP) model on the test dataset, achieving an accuracy of 91.17%, which is 4.33% higher than that of the MLP model. The specificity, F1-score, and AUC of our model were 97.06%, 86.85%, and 0.949, respectively. For the external dataset, the model achieved accuracy, specificity, F1-score, and AUC of 87.35%, 95.78%, 80.37%, and 0.848, respectively. These results demonstrate the model's high generalizability and prediction accuracy. A model integrating NLP and ML techniques enables rapid tiered medical treatment based on limited data from the emergency scene, with significant advantages in terms of prediction accuracy.
创伤已成为全球发病率和死亡率上升的主要原因。在应急响应中,伤情分类至关重要,因为它有助于快速确定伤者的危急程度,合理分配救援资源,并决定治疗的优先顺序。然而,应急现场往往环境混乱,救援人员很难在短时间内收集到关于伤者的完整准确信息。人工智能与应急救援的结合正在逐渐改变救援模式,提高救援行动的效率。我们选取了2013年至2024年期间入住重庆大坪医院的26810例创伤患者的数据。我们提出了一种在应急有限数据条件下具有两层结构的快速分层医疗方法,该方法整合了自然语言处理(NLP)和机器学习(ML)技术。分层医疗模型利用NLP捕获非结构化文本数据的语义特征,同时利用四种ML算法处理结构化数值数据。此外,我们使用来自重庆急救中心的245条数据记录进行了外部验证。实验结果表明,梯度提升和逻辑回归在两层ML算法中表现最佳。基于这两种算法,我们的模型在测试数据集上的表现优于多层感知器(MLP)模型,准确率达到91.17%,比MLP模型高4.33%。我们模型的特异性、F1分数和AUC分别为97.06%、86.85%和0.949。对于外部数据集,该模型的准确率、特异性、F1分数和AUC分别为87.35%、95.78%、80.37%和0.848。这些结果证明了该模型具有很高的通用性和预测准确性。一个整合了NLP和ML技术的模型能够基于应急现场的有限数据实现快速分层医疗,在预测准确性方面具有显著优势。