Predicting short-term outcomes in atrial-fibrillation-related stroke using machine learning

BackgroundPrognostic prediction and the identification of prognostic factors are critical during the early period of atrial-fibrillation (AF)-related strokes as AF is associated with poor outcomes in stroke patients.MethodsTwo independent datasets, namely, the Korean Atrial Fibrillation Evaluation R...

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Veröffentlicht in:Frontiers in neurology 2023-11, Vol.14, p.1243700-1243700
Hauptverfasser: Jeon, Eun-Tae, Jung, Seung Jin, Yeo, Tae Young, Seo, Woo-Keun, Jung, Jin-Man
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Sprache:eng
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Zusammenfassung:BackgroundPrognostic prediction and the identification of prognostic factors are critical during the early period of atrial-fibrillation (AF)-related strokes as AF is associated with poor outcomes in stroke patients.MethodsTwo independent datasets, namely, the Korean Atrial Fibrillation Evaluation Registry in Ischemic Stroke Patients (K-ATTENTION) and the Korea University Stroke Registry (KUSR), were used for internal and external validation, respectively. These datasets include common variables such as demographic, laboratory, and imaging findings during early hospitalization. Outcomes were unfavorable functional status with modified Rankin scores of 3 or higher and mortality at 3 months. We developed two machine learning models, namely, a tree-based model and a multi-layer perceptron (MLP), along with a baseline logistic regression model. The area under the receiver operating characteristic curve (AUROC) was used as the outcome metric. The Shapley additive explanation (SHAP) method was used to evaluate the contributions of variables.ResultsMachine learning models outperformed logistic regression in predicting both outcomes. For 3-month unfavorable outcomes, MLP exhibited significantly higher AUROC values of 0.890 and 0.859 in internal and external validation sets, respectively, than those of logistic regression. For 3-month mortality, both machine learning models exhibited significantly higher AUROC values than the logistic regression for internal validation but not for external validation. The most significant predictor for both outcomes was the initial National Institute of Health and Stroke Scale.ConclusionThe explainable machine learning model can reliably predict short-term outcomes and identify high-risk patients with AF-related strokes.
ISSN:1664-2295
1664-2295
DOI:10.3389/fneur.2023.1243700