Can we predict the future of respiratory failure prediction?
Critical Care volume 29,
Article number: 253 (2025)
Background
Mortality in patients with acute respiratory failure remains
high. Predicting progression of acute respiratory failure may be critical to
improving patient outcomes. Machine learning, a subset of artificial
intelligence is a rapidly expanding area, which is being integrated into
several areas of clinical medicine. This manuscript will address the knowledge
gap in predicting the onset and progression of respiratory failure, provide a
review of existing prognostic strategies, and provide a clinical perspective on
the implementation and future integration of machine learning into clinical
care.
Main body
Existing strategies for predicting respiratory failure, such
as prediction scores and biomarkers, offer both strengths and limitations.
While these tools provide some prognostic value, machine learning presents a
promising, data-driven approach to prognostication in the intensive care unit.
Machine learning has already shown success in various areas of clinical
medicine, although relatively few algorithms target respiratory failure
prediction specifically. As machine learning grows in the context of respiratory
failure, outcomes such as the need for invasive mechanical ventilation and
escalation of respiratory support (e.g. non-invasive ventilation) have been
identified as key targets. However, the development and implementation of
machine learning models in clinical care involves complex challenges. Future
success will depend on rigorous model validation, clinician collaboration,
thoughtful trial design, and the application of implementation science to
ensure integration into clinical care.
Conclusion
Machine learning holds promise for optimizing treatment
strategies and potentially improving outcomes in respiratory failure. However,
further research and development are necessary to fully realize its potential
in clinical practice.
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