Predicting Survival Status in COVID-19 Patients: Machine Learning Models Development with Ventilator-Related and Biochemical Parameters from Early Stages: A Pilot Study.

Publication date: Oct 17, 2024

Objective: 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. Methods: 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). Results: 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. Conclusions: 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.

Open Access PDF

Concepts Keywords
Coronavirus C-Reactive Protein (CRP)
Forest COVID-19
Hospitals random forest
Taipei survival prediction
Trained ventilator weaning

Semantics

Type Source Name
disease MESH COVID-19
disease MESH respiratory failure
disease IDO protein
drug DRUGBANK Carbon dioxide
drug DRUGBANK Oxygen
disease MESH weaning
drug DRUGBANK Coenzyme M
disease MESH viral pneumonia
disease MESH infection
disease IDO blood
disease MESH inflammation
drug DRUGBANK Iron
disease IDO production
disease MESH leukocytosis
drug DRUGBANK Tocilizumab
disease MESH lifestyle
disease MESH Comorbidity
drug DRUGBANK Aspartame
disease MESH Cardiovascular diseases
disease MESH Hypertension
disease MESH heart failure
disease MESH COPD
disease MESH Asthma
pathway KEGG Asthma
disease MESH Diabetes mellitus
disease MESH Acute kidney injury
disease MESH Dementia
disease MESH Coma

Original Article

(Visited 1 times, 1 visits today)