Lombardi Romain, Jozwiak Mathieu, Dellamonica Jean, Pasquier Claude
Critical Care Unit, Pasteur 2 University Hospital, 30 Voie Romaine, 06000, Nice, France.
Université Côte d'Azur, UR2CA, Unité de Recherche Clinique Côte d'Azur, Nice, France.
Intensive Care Med Exp. 2025 Mar 18;13(1):34. doi: 10.1186/s40635-025-00724-0.
Weaning from mechanical ventilation (MV) is a key phase in the management of intensive care unit (ICU) patient. According to the WEAN SAFE study, weaning from MV initiation is defined as the first attempt to separate a patient from the ventilator and the success is the absence of reintubation (or death) within 7 days of extubation. Mortality rates increase with the difficulty of weaning, reaching 38% for the most challenging cases. Predicting the success of weaning is difficult, due to the complexity of factors involved. The many biosignals that are measured in patients during ventilation may be considered "weak signals", a concept rarely used in medicine. The aim of this research is to investigate the performance of machine learning (ML) models based on biosignals to predict spontaneous breathing trial success (SBT) using biosignals and to identify the most important variables.
This retrospective study used data from two centers (Nice University Hospital, Archet and Pasteur) collected from 232 intensive care patients who underwent MV (149 successfully and 83 unsuccessfully) between January, 2020 and April, 2023. The study focuses on the development of ML algorithms to predict the success of the spontaneous breathing trial based on a combination of discrete variables and biosignals (time series) recorded during the 24 h prior to the SBT.
For the models tested, the best results were obtained with Support Vector Classifier model: AUC-PR 0.963 (0.936-0.970, p = 0.001), AUROC 0.922 (0.871-0.940, p < 0.001).
We found that ML models are effective in predicting the success of SBT based on biosignals. Predicting weaning from mechanical ventilation thus appears to be a promising area for the application of AI, through the development of multidimensional models to analyze weak signals.
机械通气撤机是重症监护病房(ICU)患者管理中的关键阶段。根据“WEAN SAFE”研究,机械通气撤机起始定义为首次尝试使患者脱离呼吸机,撤机成功是指拔管后7天内未再次插管(或死亡)。撤机难度越大,死亡率越高,最具挑战性的病例死亡率达38%。由于涉及的因素复杂,预测撤机成功与否具有难度。在通气过程中测量的许多生物信号可能被视为“微弱信号”,这一概念在医学中很少使用。本研究的目的是研究基于生物信号的机器学习(ML)模型预测自主呼吸试验(SBT)成功的性能,并确定最重要的变量。
这项回顾性研究使用了来自两个中心(尼斯大学医院阿歇特分院和巴斯德分院)的数据,这些数据收集自2020年1月至2023年4月期间接受机械通气的232例重症监护患者(149例成功撤机,83例未成功撤机)。该研究重点在于开发ML算法,以基于SBT前24小时记录的离散变量和生物信号(时间序列)的组合来预测自主呼吸试验的成功。
对于所测试的模型,支持向量分类器模型取得了最佳结果:精确率-召回率曲线下面积(AUC-PR)为0.963(0.936 - 0.970,p = 0.001),受试者工作特征曲线下面积(AUROC)为0.922(0.871 - 0.940,p < 0.001)。
我们发现ML模型在基于生物信号预测SBT成功方面是有效的。因此,通过开发多维模型来分析微弱信号,利用人工智能预测机械通气撤机似乎是一个很有前景的应用领域。