Pan Junchen, Yue Zhen, Ji Jing, You Yongping, Bi Liqing, Liu Yun, Xiong Xinglin, Gu Genying, Chen Ming, Zhang Shen
Department of Neurosurgery, The Affiliated BenQ Hospital of Nanjing Medical University, Nanjing, Jiangsu, China.
Department of Neurosurgery, The First Affiliated Hospital of Nanjing Medical University, Nanjing, Jiangsu, China.
Front Med (Lausanne). 2025 Apr 11;12:1501025. doi: 10.3389/fmed.2025.1501025. eCollection 2025.
The aim of this study is to construct and validate new machine learning models to predict pneumonia events in intensive care unit (ICU) patients with acute brain injury.
Acute brain injury patients in ICU of hospitals from January 1, 2020, to December 31, 2021 were retrospective reviewed. Patients were divided into training, and validation sets. The primary outcome was nosocomial pneumonia infection during ICU stay. Machine learning models including XGBoost, DecisionTree, Random Forest, Light GBM, Adaptive Boost, BP, and TabNet were used for model derivation. The predictive value of each model was evaluated using accuracy, precision, recall, F1-score, and area under the curve (AUC), and internal and external validation was performed.
A total of 280 ICU patients with acute brain injury were included. Five independent variables for nosocomial pneumonia infection were identified and selected for machine learning model derivations and validations, including tracheotomy time, antibiotic use days, blood glucose, ventilator-assisted ventilation time, and C-reactive protein. The training set revealed the superior and robust performance of the XGBoost with the highest AUC value (0.956), while the Random Forest and Adaptive Boost had the highest AUC value (0.883) in validation set.
Machine learning models can effectively predict the risk of nosocomial pneumonia infection in patients with acute brain injury in the ICU. Despite differences in populations and algorithms, the models we constructed demonstrated reliable predictive performance.
本研究旨在构建并验证新的机器学习模型,以预测急性脑损伤重症监护病房(ICU)患者发生肺炎事件的风险。
回顾性分析2020年1月1日至2021年12月31日期间医院ICU的急性脑损伤患者。将患者分为训练集和验证集。主要结局是ICU住院期间的医院获得性肺炎感染。使用包括XGBoost、决策树、随机森林、轻量级梯度提升机(Light GBM)、自适应增强(Adaptive Boost)、BP神经网络和TabNet在内的机器学习模型进行模型推导。使用准确率、精确率、召回率、F1分数和曲线下面积(AUC)评估每个模型的预测价值,并进行内部和外部验证。
共纳入280例急性脑损伤的ICU患者。确定并选择了五个医院获得性肺炎感染的独立变量用于机器学习模型的推导和验证,包括气管切开时间、抗生素使用天数、血糖、机械通气时间和C反应蛋白。训练集显示XGBoost具有卓越且稳健的性能,AUC值最高(0.956),而验证集中随机森林和自适应增强的AUC值最高(0.883)。
机器学习模型可以有效预测ICU中急性脑损伤患者发生医院获得性肺炎感染的风险。尽管人群和算法存在差异,但我们构建的模型表现出可靠的预测性能。