Ding Hongbo, Feng Xue, Yang Qi, Yang Yichang, Zhu Siyi, Ji Xiaozhen, Kang Yangbo, Shen Jiashen, Zhao Mei, Xu Shanxiang, Ning Gangmin, Xu Yongan
Department of Emergency Medicine Second Affiliated Hospital & Institute of Emergency Medicine Zhejiang University School of Medicine Hangzhou China.
Key Laboratory of the Diagnosis and Treatment of Severe Trauma and Burn of Zhejiang Province Hangzhou China.
J Am Coll Emerg Physicians Open. 2024 May 31;5(3):e13190. doi: 10.1002/emp2.13190. eCollection 2024 Jun.
To analyze the risk factors associated with intubated critically ill patients in the emergency department (ED) and develop a prediction model by machine learning algorithms.
This study was conducted in an academic tertiary hospital in Hangzhou, China. Critically ill patients admitted to the ED were retrospectively analyzed from May 2018 to July 2022. The demographic characteristics, distribution of organ dysfunction, parameters for different organs' examination, and status of mechanical ventilation were recorded. These patients were assigned to the intubation and non-intubation groups according to ventilation support. We used the eXtreme Gradient Boosting (XGBoost) algorithm to develop the prediction model and compared it with other algorithms, such as logistic regression, artificial neural network, and random forest. SHapley Additive exPlanations was used to analyze the risk factors of intubated critically ill patients in the ED.
Of 14,589 critically ill patients, 10,212 comprised the training group and 4377 comprised the test group; 2289 intubated patients were obtained from the electronic medical records. The mean age, mean scores of vital signs, parameters of different organs, and blood oxygen examination results differed significantly between the two groups (< 0.05). The white blood cell count, international normalized ratio, respiratory rate, and pH are the top four risk factors for intubation in critically ill patients. Based on the risk factors in different predictive models, the XGBoost model showed the highest area under the receiver operating characteristic curve (0.84) for predicting ED intubation.
For critically ill patients in the ED, the proposed model can predict potential intubation based on the risk factors in the clinically predictive model.
分析急诊科(ED)气管插管重症患者的相关危险因素,并通过机器学习算法建立预测模型。
本研究在中国杭州的一家三级甲等教学医院进行。对2018年5月至2022年7月收治入ED的重症患者进行回顾性分析。记录患者的人口统计学特征、器官功能障碍分布、不同器官检查参数以及机械通气状态。根据通气支持情况将这些患者分为插管组和非插管组。我们使用极端梯度提升(XGBoost)算法建立预测模型,并将其与其他算法进行比较,如逻辑回归、人工神经网络和随机森林。采用SHapley值法分析ED气管插管重症患者的危险因素。
14589例重症患者中,10212例为训练组,4377例为测试组;从电子病历中获取2289例插管患者。两组患者的平均年龄、生命体征平均评分、不同器官参数及血氧检查结果差异有统计学意义(<0.05)。白细胞计数、国际标准化比值、呼吸频率和pH值是重症患者插管的前四大危险因素。基于不同预测模型中的危险因素,XGBoost模型在预测ED插管方面的受试者工作特征曲线下面积最高(0.84)。
对于ED重症患者,所提出的模型可根据临床预测模型中的危险因素预测潜在插管情况。