Introduction: Formulating reliable prognosis for ischemic stroke patients remains a challenging task. We aimed to develop an artificial intelligence model able to formulate in the first 24 h after stroke an individualized prognosis in terms of NIHSS. Patients and methods: Seven hundred ninety four acute ischemic stroke patients were divided into a training (597) and testing (197) cohort. Clinical and instrumental data were collected in the first 24 h. We evaluated the performance of four machine-learning models (Random Forest, K-Nearest Neighbors, Support Vector Machine, XGBoost) in predicting NIHSS at discharge both in terms of variation between discharge and admission (regressor approach) and in terms of severity class namely NIHSS 0–5, 6–10, 11–20, >20 (classifier approach). We used Shapley Additive exPlanations values to weight features impact on predictions. Results: XGBoost emerged as the best performing model. The classifier and regressor approaches perform similarly in terms of accuracy (80% vs 75%) and f1-score (79% vs 77%) respectively. However, the regressor has higher precision (85% vs 68%) in predicting prognosis of very severe stroke patients (NIHSS > 20). NIHSS at admission and 24 hours, GCS at 24 hours, heart rate, acute ischemic lesion on CT-scan and TICI score were the most impacting features on the prediction. Discussion: Our approach, which employs an artificial intelligence based-tool, inherently able to continuously learn and improve its performance, could improve care pathway and support stroke physicians in the communication with patients and caregivers. Conclusion: XGBoost reliably predicts individualized outcome in terms of NIHSS at discharge in the first 24 hours after stroke.

Caliandro, P., Lenkowicz, J., Reale, G., Scaringi, S., Zauli, A., Uccheddu, C., Fabiole-Nicoletto, S., Patarnello, S., Damiani, A., Tagliaferri, L., Valente, I., Moci, M., Monforte, M., Valentini, V., Calabresi, P., Artificial intelligence to predict individualized outcome of acute ischemic stroke patients: The SIBILLA project, <<EUROPEAN STROKE JOURNAL>>, 2024; 9 (4): 1053-1062. [doi:10.1177/23969873241253366] [https://hdl.handle.net/10807/302136]

Artificial intelligence to predict individualized outcome of acute ischemic stroke patients: The SIBILLA project

Caliandro, Pietro;Lenkowicz, Jacopo;Reale, Giuseppe;Zauli, Aurelia;Damiani, Andrea;Tagliaferri, Luca;Valente, Iacopo;Moci, Marco;Monforte, Mauro;Valentini, Vincenzo;Calabresi, Paolo
2024

Abstract

Introduction: Formulating reliable prognosis for ischemic stroke patients remains a challenging task. We aimed to develop an artificial intelligence model able to formulate in the first 24 h after stroke an individualized prognosis in terms of NIHSS. Patients and methods: Seven hundred ninety four acute ischemic stroke patients were divided into a training (597) and testing (197) cohort. Clinical and instrumental data were collected in the first 24 h. We evaluated the performance of four machine-learning models (Random Forest, K-Nearest Neighbors, Support Vector Machine, XGBoost) in predicting NIHSS at discharge both in terms of variation between discharge and admission (regressor approach) and in terms of severity class namely NIHSS 0–5, 6–10, 11–20, >20 (classifier approach). We used Shapley Additive exPlanations values to weight features impact on predictions. Results: XGBoost emerged as the best performing model. The classifier and regressor approaches perform similarly in terms of accuracy (80% vs 75%) and f1-score (79% vs 77%) respectively. However, the regressor has higher precision (85% vs 68%) in predicting prognosis of very severe stroke patients (NIHSS > 20). NIHSS at admission and 24 hours, GCS at 24 hours, heart rate, acute ischemic lesion on CT-scan and TICI score were the most impacting features on the prediction. Discussion: Our approach, which employs an artificial intelligence based-tool, inherently able to continuously learn and improve its performance, could improve care pathway and support stroke physicians in the communication with patients and caregivers. Conclusion: XGBoost reliably predicts individualized outcome in terms of NIHSS at discharge in the first 24 hours after stroke.
2024
Inglese
Caliandro, P., Lenkowicz, J., Reale, G., Scaringi, S., Zauli, A., Uccheddu, C., Fabiole-Nicoletto, S., Patarnello, S., Damiani, A., Tagliaferri, L., Valente, I., Moci, M., Monforte, M., Valentini, V., Calabresi, P., Artificial intelligence to predict individualized outcome of acute ischemic stroke patients: The SIBILLA project, <<EUROPEAN STROKE JOURNAL>>, 2024; 9 (4): 1053-1062. [doi:10.1177/23969873241253366] [https://hdl.handle.net/10807/302136]
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