Weaver Marianna, Goodin Dylan A, Miller Hunter A, Karmali Dipan, Agarwal Apurv A, Frieboes Hermann B, Suliman Sally A
Division of Pulmonary Medicine, University of Louisville, Louisville, KY, 40292, USA.
Department of Bioengineering, University of Louisville, Lutz Hall 419, Louisville, KY, 40292, USA.
Sci Rep. 2024 Dec 4;14(1):30173. doi: 10.1038/s41598-024-81980-0.
Early recognition of risk factors for prolonged mechanical ventilation (PMV) could allow for early clinical interventions, prevention of secondary complications such as nosocomial infections, and effective triage of hospital resources. This study tested the hypothesis that an ensemble machine learning (ML) analysis of clinical data at time of intubation could identify patients at risk of PMV, using a COVID-19 dataset to classify patients into PMV (> 14 days) and non-PMV (≤ 14 days) groups. While several factors are known to cause PMV, including acid-base, weakness, and delirium, lesser-utilized but routinely measured parameters such as platelet count, glucose levels and fevers may also be relevant. Patient data from a single University Hospital were analyzed via the ML workflow to predict patients at risk of PMV and identify key clinical markers. Model performance was evaluated on a chronologically distinct cohort. The ML workflow identified patients at risk of PMV with AUROC=0.960 (F1 = 0.935) and AUROC=0.804 (F1 = 0.800). Top key features for classification included glucose, platelet count, temperature, LVEF, bicarbonate (arterial blood gas), and BMI. Data analysis at intubation time via the proposed workflow offers the potential to accurately predict patients at risk of PMV, with the goal to improve patient management and triage of hospital resources.
早期识别延长机械通气(PMV)的风险因素有助于早期临床干预、预防医院感染等继发性并发症以及有效分配医院资源。本研究检验了这样一个假设:利用新冠肺炎数据集将患者分为PMV(>14天)和非PMV(≤14天)组,对插管时的临床数据进行集成机器学习(ML)分析能够识别有PMV风险的患者。虽然已知有几个因素会导致PMV,包括酸碱平衡、虚弱和谵妄,但较少使用但常规测量的参数,如血小板计数、血糖水平和发热,也可能与之相关。通过ML工作流程分析了一家大学医院的患者数据,以预测有PMV风险的患者并识别关键临床标志物。在一个时间上不同的队列中评估了模型性能。ML工作流程识别出有PMV风险的患者,其曲线下面积(AUROC)=0.960(F1=0.935)和AUROC=0.804(F1=0.800)。分类的关键特征包括血糖、血小板计数、体温、左心室射血分数、碳酸氢盐(动脉血气)和体重指数。通过所提出的工作流程在插管时进行数据分析,有可能准确预测有PMV风险的患者,目标是改善患者管理和医院资源分配。