Endovascular treatment (EVT) for vertebrobasilar artery occlusion (VBAO) with atrial fibrillation presents complex clinical challenges. This comprehensive multicenter study of 525 patients across 15 Chinese provinces investigated nuanced predictors beyond conventional metrics. While 45.1% achieved favorable outcomes at 90 days, our advanced machine learning approach unveiled subtle interaction effects among clinical variables not captured by traditional statistical methods. The predictive model distinguished high-risk subgroups by integrating multiple parameters, demonstrating superior prognostic precision compared to standard NIHSS-based assessments. Novel findings include nonlinear relationships between dyslipidemia, stroke severity, and functional recovery. The developed predictive algorithm (AUC 0.719 internally, 0.684 externally) offers a more sophisticated risk stratification tool, potentially guiding personalized treatment strategies in high-complexity VBAO patients with atrial fibrillation.

Huang, Z., Alexandre, A. M., Pedicelli, A., He, X., Hong, Q., Li, Y., Chen, P., Cai, Q., Broccolini, A., Scarcia, L., Abruzzese, S., Cirelli, C., Bergui, M., Romi, A., Kalsoum, E., Frauenfelder, G., Meder, G., Scalise, S., Ganimede, M. P., Bellini, L., Del Sette, B., Arba, F., Sammali, S., Salcuni, A., Vinci, S. L., Cester, G., Roveri, L., Huang, X., Sun, W., AI prediction model for endovascular treatment of vertebrobasilar occlusion with atrial fibrillation, <<NPJ DIGITAL MEDICINE>>, 2025; 8 (1): N/A-N/A. [doi:10.1038/s41746-025-01478-5] [https://hdl.handle.net/10807/307900]

AI prediction model for endovascular treatment of vertebrobasilar occlusion with atrial fibrillation

Pedicelli, Alessandro;Broccolini, Aldobrando;Abruzzese, Serena;
2025

Abstract

Endovascular treatment (EVT) for vertebrobasilar artery occlusion (VBAO) with atrial fibrillation presents complex clinical challenges. This comprehensive multicenter study of 525 patients across 15 Chinese provinces investigated nuanced predictors beyond conventional metrics. While 45.1% achieved favorable outcomes at 90 days, our advanced machine learning approach unveiled subtle interaction effects among clinical variables not captured by traditional statistical methods. The predictive model distinguished high-risk subgroups by integrating multiple parameters, demonstrating superior prognostic precision compared to standard NIHSS-based assessments. Novel findings include nonlinear relationships between dyslipidemia, stroke severity, and functional recovery. The developed predictive algorithm (AUC 0.719 internally, 0.684 externally) offers a more sophisticated risk stratification tool, potentially guiding personalized treatment strategies in high-complexity VBAO patients with atrial fibrillation.
2025
Inglese
Huang, Z., Alexandre, A. M., Pedicelli, A., He, X., Hong, Q., Li, Y., Chen, P., Cai, Q., Broccolini, A., Scarcia, L., Abruzzese, S., Cirelli, C., Bergui, M., Romi, A., Kalsoum, E., Frauenfelder, G., Meder, G., Scalise, S., Ganimede, M. P., Bellini, L., Del Sette, B., Arba, F., Sammali, S., Salcuni, A., Vinci, S. L., Cester, G., Roveri, L., Huang, X., Sun, W., AI prediction model for endovascular treatment of vertebrobasilar occlusion with atrial fibrillation, <<NPJ DIGITAL MEDICINE>>, 2025; 8 (1): N/A-N/A. [doi:10.1038/s41746-025-01478-5] [https://hdl.handle.net/10807/307900]
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