Chou Shin-Ho, Tsai Cheng-Yu, Hsu Wen-Hua, Chung Chi-Li, Li Hsin-Yu, Chen Zhihe, Chien Rachel, Cheng Wun-Hao
Respiratory Therapy, Department of Pulmonary Medicine, Taipei Medical University Hospital, Taipei 110, Taiwan.
Division of Pulmonary Medicine, Department of Internal Medicine, Shuang Ho Hospital, Taipei Medical University, New Taipei City 235, Taiwan.
J Clin Med. 2024 Oct 17;13(20):6190. doi: 10.3390/jcm13206190.
: Coronavirus disease 2019 (COVID-19) can cause intubation and ventilatory support due to respiratory failure, and extubation failure increases mortality risk. This study, therefore, aimed to explore the feasibility of using specific biochemical and ventilator parameters to predict survival status among COVID-19 patients by using machine learning. : This study included COVID-19 patients from Taipei Medical University-affiliated hospitals from May 2021 to May 2022. Sequential data on specific biochemical and ventilator parameters from days 0-2, 3-5, and 6-7 were analyzed to explore differences between the surviving (successfully weaned off the ventilator) and non-surviving groups. These data were further used to establish separate survival prediction models using random forest (RF). : The surviving group exhibited significantly lower mean C-reactive protein (CRP) levels and mean potential of hydrogen ions levels (pH) levels on days 0-2 compared to the non-surviving group (CRP: non-surviving group: 13.16 ± 5.15 ng/mL, surviving group: 10.23 ± 5.15 ng/mL; pH: non-surviving group: 7.32 ± 0.07, survival group: 7.37 ± 0.07). Regarding the survival prediction performanace, the RF model trained solely with data from days 0-2 outperformed models trained with data from days 3-5 and 6-7. Subsequently, CRP, the partial pressure of carbon dioxide in arterial blood (PaCO), pH, and the arterial oxygen partial pressure to fractional inspired oxygen (P/F) ratio served as primary indicators in survival prediction in the day 0-2 model. : The present developed models confirmed that early biochemical and ventilatory parameters-specifically, CRP levels, pH, PaCO, and P/F ratio-were key predictors of survival for COVID-19 patients. Assessed during the initial two days, these indicators effectively predicted the likelihood of successful weaning of from ventilators, emphasizing their importance in early management and improved outcomes in COVID-19-related respiratory failure.
2019冠状病毒病(COVID-19)可因呼吸衰竭导致插管和通气支持,而拔管失败会增加死亡风险。因此,本研究旨在通过机器学习探索使用特定生化和通气参数预测COVID-19患者生存状态的可行性。 本研究纳入了2021年5月至2022年5月台北医学大学附属医院的COVID-19患者。分析了第0 - 2天、3 - 5天和6 - 7天特定生化和通气参数的连续数据,以探讨存活(成功脱机)组和非存活组之间的差异。这些数据进一步用于使用随机森林(RF)建立单独的生存预测模型。 与非存活组相比,存活组在第0 - 2天的平均C反应蛋白(CRP)水平和平均氢离子电位(pH)水平显著更低(CRP:非存活组:13.16±5.15 ng/mL,存活组:10.23±5.15 ng/mL;pH:非存活组:7.32±0.07,存活组:7.37±0.07)。关于生存预测性能,仅用第0 - 2天数据训练的RF模型优于用第3 - 5天和6 - 7天数据训练的模型。随后,CRP、动脉血二氧化碳分压(PaCO)、pH以及动脉血氧分压与吸入氧分数之比(P/F)在第0 - 2天模型的生存预测中作为主要指标。 目前开发的模型证实,早期生化和通气参数,特别是CRP水平、pH、PaCO和P/F比值,是COVID-19患者生存的关键预测指标。在最初两天评估时,这些指标有效地预测了成功脱机的可能性,强调了它们在COVID-19相关呼吸衰竭早期管理和改善结局中的重要性。