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Machine learning-based prediction of one-year mortality in ischemic stroke patients. | LitMetric

Machine learning-based prediction of one-year mortality in ischemic stroke patients.

Oxf Open Neurosci

Neuroradiology Department, Neuroscience Institute, Hamad Medical Corporation (HMC), 3050 Doha, Qatar.

Published: November 2024

AI Article Synopsis

  • The study assesses the use of machine learning models to predict one-year mortality after an ischemic stroke, highlighting the importance of accurate predictions for personalized treatment strategies.
  • Logistic regression proved to be the most effective model, achieving an accuracy of 83% and identifying key factors like stroke severity, age, and pre-stroke functional status that influence mortality risk.
  • The findings suggest that early prediction of mortality can improve stroke care, though further research is necessary to validate the model across various clinical environments.

Article Abstract

Background: Accurate prediction of mortality following an ischemic stroke is essential for tailoring personalized treatment strategies. This study evaluates the effectiveness of machine learning models in predicting one-year mortality after an ischemic stroke.

Methods: Five machine learning models were trained using data from a national stroke registry, with logistic regression demonstrating the highest performance. The SHapley Additive exPlanations (SHAP) analysis explained the model's outcomes and defined the influential predictive factors.

Results: Analyzing 8183 ischemic stroke patients, logistic regression achieved 83% accuracy, 0.89 AUC, and an F1 score of 0.83. Significant predictors included stroke severity, pre-stroke functional status, age, hospital-acquired pneumonia, ischemic stroke subtype, tobacco use, and co-existing diabetes mellitus (DM).

Discussion: The model highlights the importance of predicting mortality in enhancing personalized stroke care. Apart from pneumonia, all predictors can serve the early prediction of mortality risk which supports the initiation of early preventive measures and in setting realistic expectations of disease outcomes for all stakeholders. The identified tobacco paradox warrants further investigation.

Conclusion: This study offers a promising tool for early prediction of stroke mortality and for advancing personalized stroke care. It emphasizes the need for prospective studies to validate these findings in diverse clinical settings.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11576476PMC
http://dx.doi.org/10.1093/oons/kvae011DOI Listing

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