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https://accedacris.ulpgc.es/jspui/handle/10553/160989
| Título: | Using machine learning to define mepolizumab treatment response at 2 years in patients with chronic rhinosinusitis with nasal polyps | Autores/as: | Domínguez Sosa, Maria Sandra Cabrera-Ramírez, María Soledad Marrero Ramos, Miriam Del Carmen Cabrera López, Carlos Carrillo Díaz, Teresa Benítez-Rosario, Jesús Dávila Quintana, Carmen Delia |
Clasificación UNESCO: | 531207 Sanidad | Palabras clave: | Chronic Rhinosinusitis Machine Learning Mepolizumab Monoclonal Antibody Nasal Polyps, et al. |
Fecha de publicación: | 2026 | Publicación seriada: | Frontiers in Allergy | Resumen: | Introduction: Using machine learning to identify clinical biomarkers for determining optimal response to mepolizumab in chronic rhinosinusitis with nasal polyps. Methods: Single center retrospective observational study with 84 CRSwNP patients treated with mepolizumab. We evaluated 4 machine learning algorithms: Decision Tree, Logistic Regression, K-Nearest Neighbors and Extreme Gradient Boosting. K-Fold cross-validation incorporating hyperparameter optimization in the process was used to ensure robustness and prevent overfitting. Results: After 6, 12 and 24 months, SNOT-22, VAS overall symptom score, VAS-smell, asthma control test (ACT) and nasal polyp score (NPS) significantly improved (p < 0.001). 44.1% of patients were classified as “super-responders” after 2-year of Mepolizumab treatment based on EPOS/Euforea criteria. XGBoost emerged as the most accurate for predicting super-response to mepolizumab, achieving an ROC- AUC of 0.766. In contrast, Logistic Regression was the least effective for predicting sustained super-response at 24 months, with an ROC-AUC of 0.628. Significant predictors included Blood Neutrophilia and Blood Eosinophilia where higher baseline scores were linked to higher probabilities of super-response at 24 months. Shapley Additive Explanations were employed to identify the most critical baseline features and to visualize their directional impacts on treatment responses. Conclusions: Machine learning models, particularly XGBoost, can predict real-world super-response to mepolizumab in severe CRSwNP by identifying key predictors like high baseline BEC, high baseline BNC and AERD comorbidity. These insights have the potential to refine CRSwNP treatment strategies and support clinical decision-making, ultimately enhancing patient outcomes by predicting treatment response prior to starting medication | URI: | https://accedacris.ulpgc.es/jspui/handle/10553/160989 | DOI: | 10.3389/falgy.2026.1710163 | Fuente: | Frontiers in Allergy[EISSN 2673-6101],v. 7, (Enero 2026) |
| Colección: | Artículos |
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