Sheikhalishahi Seyedmostafa, Kaspar Mathias, Zaghdoudi Sarra, Sander Julia, Simon Philipp, Geisler Benjamin P, Lange Dorothea, Hinske Ludwig Christian
Digital Medicine, University Hospital of Augsburg, Augsburg, Germany.
Anesthesiology and Surgical Intensive Care Medicine, University Hospital of Augsburg, Augsburg, Germany.
PLOS Digit Health. 2024 Mar 27;3(3):e0000478. doi: 10.1371/journal.pdig.0000478. eCollection 2024 Mar.
Weaning patients from mechanical ventilation (MV) is a critical and resource intensive process in the Intensive Care Unit (ICU) that impacts patient outcomes and healthcare expenses. Weaning methods vary widely among providers. Prolonged MV is associated with adverse events and higher healthcare expenses. Predicting weaning readiness is a non-trivial process in which the positive end-expiratory pressure (PEEP), a crucial component of MV, has potential to be indicative but has not yet been used as the target. We aimed to predict successful weaning from mechanical ventilation by targeting changes in the PEEP-level using a supervised machine learning model. This retrospective study included 12,153 mechanically ventilated patients from Medical Information Mart for Intensive Care (MIMIC-IV) and eICU collaborative research database (eICU-CRD). Two machine learning models (Extreme Gradient Boosting and Logistic Regression) were developed using a continuous PEEP reduction as target. The data is splitted into 80% as training set and 20% as test set. The model's predictive performance was reported using 95% confidence interval (CI), based on evaluation metrics such as area under the receiver operating characteristic (AUROC), area under the precision-recall curve (AUPRC), F1-Score, Recall, positive predictive value (PPV), and negative predictive value (NPV). The model's descriptive performance was reported as the variable ranking using SHAP (SHapley Additive exPlanations) algorithm. The best model achieved an AUROC of 0.84 (95% CI 0.83-0.85) and an AUPRC of 0.69 (95% CI 0.67-0.70) in predicting successful weaning based on the PEEP reduction. The model demonstrated a Recall of 0.85 (95% CI 0.84-0.86), F1-score of 0.86 (95% CI 0.85-0.87), PPV of 0.87 (95% CI 0.86-0.88), and NPV of 0.64 (95% CI 0.63-0.66). Most of the variables that SHAP algorithm ranked to be important correspond with clinical intuition, such as duration of MV, oxygen saturation (SaO2), PEEP, and Glasgow Coma Score (GCS) components. This study demonstrates the potential application of machine learning in predicting successful weaning from MV based on continuous PEEP reduction. The model's high PPV and moderate NPV suggest that it could be a useful tool to assist clinicians in making decisions regarding ventilator management.
使患者脱离机械通气(MV)是重症监护病房(ICU)中一个关键且资源密集的过程,会影响患者的治疗结果和医疗费用。不同医疗人员采用的撤机方法差异很大。长时间使用机械通气与不良事件及更高的医疗费用相关。预测撤机时机并非易事,其中呼气末正压(PEEP)作为机械通气的一个关键组成部分,虽有可能具有指示作用,但尚未被用作预测指标。我们旨在通过使用监督式机器学习模型,以PEEP水平的变化为目标,预测机械通气撤机的成功与否。这项回顾性研究纳入了来自重症监护医学信息数据库(MIMIC-IV)和电子ICU协作研究数据库(eICU-CRD)的12,153例接受机械通气的患者。以持续降低PEEP为目标,开发了两种机器学习模型(极端梯度提升和逻辑回归)。数据被分为80%作为训练集,20%作为测试集。基于受试者工作特征曲线下面积(AUROC)、精确召回率曲线下面积(AUPRC)、F1分数、召回率、阳性预测值(PPV)和阴性预测值(NPV)等评估指标,使用95%置信区间(CI)报告模型的预测性能。使用SHAP(Shapley加性解释)算法将模型的描述性性能报告为变量排名。最佳模型在基于PEEP降低预测撤机成功方面,AUROC为0.84(95%CI 0.83 - 0.85),AUPRC为0.69(95%CI 0.67 - 0.70)。该模型的召回率为0.85(95%CI 0.84 - 0.86),F1分数为0.86(95%CI 0.85 - 0.87),PPV为0.87(95%CI 0.86 - 0.88),NPV为0.64(95%CI 0.63 - 0.66)。SHAP算法排名靠前的大多数变量与临床直觉相符,如机械通气持续时间、血氧饱和度(SaO2)、PEEP和格拉斯哥昏迷评分(GCS)的组成部分。本研究证明了机器学习在基于持续降低PEEP预测机械通气撤机成功方面的潜在应用。该模型较高的PPV和中等的NPV表明,它可能是协助临床医生做出呼吸机管理决策的有用工具。