Abstract
BACKGROUND: Within the UK, COVID-19 has contributed towards over 103,000 deaths. Although multiple risk factors for COVID-19 have been identified, using this data to improve clinical care has proven challenging. The main aim of this study is to develop a reliable, multivariable predictive model for COVID-19 in-patient outcomes, thus enabling risk-stratification and earlier clinical decision-making. METHODS: Anonymised data consisting of 44 independent predictor variables from 355 adults diagnosed with COVID-19, at a UK hospital, was manually extracted from electronic patient records for retrospective, case-control analysis. Primary outcomes included inpatient mortality, required ventilatory support, and duration of inpatient treatment. Pulmonary embolism sequala was the only secondary outcome. After balancing data, key variables were feature selected for each outcome using random forests. Predictive models were then learned and constructed using Bayesian networks. RESULTS: The proposed probabilistic models were able to predict, using feature selected risk factors, the probability of the mentioned outcomes. Overall, our findings demonstrate reliable, multivariable, quantitative predictive models for four outcomes, which utilise readily available clinical information for COVID-19 adult inpatients. Further research is required to externally validate our models and demonstrate their utility as risk stratification and clinical decision-making tools.
More Information
Identification Number: | https://doi.org/10.3390/ijerph18126228 |
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Status: | Published |
Refereed: | Yes |
Additional Information: | Originally published in: Vepa, A.; Saleem, A.; Rakhshan, K.; Daneshkhah, A.; Sedighi, T.; Shohaimi, S.; Omar, A.; Salari, N.; Chatrabgoun, O.; Dharmaraj, D.; Sami, J.; Parekh, S.; Ibrahim, M.; Raza, M.; Kapila, P.; Chakrabarti, P. Using Machine Learning Algorithms to Develop a Clinical Decision-Making Tool for COVID-19 Inpatients. Int. J. Environ. Res. Public Health 2021, 18, 6228. https://doi.org/10.3390/ijerph18126228 |
Uncontrolled Keywords: | Bayesian network, COVID-19, SARS CoV, random forest, risk stratification, synthetic minority oversampling technique (SMOTE), Adult, Algorithms, Bayes Theorem, COVID-19, Clinical Decision-Making, Humans, Inpatients, Machine Learning, Retrospective Studies, SARS-CoV-2, Toxicology, |
Depositing User (symplectic) | Deposited by Blomfield, Helen |
Date Deposited: | 20 Sep 2021 14:43 |
Last Modified: | 12 Jul 2024 16:20 |
Item Type: | Article |
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