Machine Learning Improves Risk Stratification in Myelofibrosis: An Analysis of the Spanish Registry of Myelofibrosis

Adrián Mosquera-Orgueira(Complejo Hospitalario Universitario de Santiago), Manuel Pérez‐Encinas(Complejo Hospitalario Universitario de Santiago), Alberto Hernández‐Sánchez, Teresa González‐Martínez, Eduardo Arellano‐Rodrigo(Consorci Institut D'Investigacions Biomediques August Pi I Sunyer), Javier Martínez-Elicegui, Ángela Villaverde-Ramiro, José‐María Raya(Hospital Universitario de Canarias), Rosa Ayala(Hospital Universitario 12 De Octubre), Francisca Ferrer‐Marín(Centre for Biomedical Network Research on Rare Diseases), María Laura Fox(Hebron University), Patricia Vélez(Hospital Del Mar), Elvira Mora(Hospital Universitari i Politècnic La Fe), Blanca Xicoy(Universitat Autònoma de Barcelona), María‐Isabel Mata‐Vázquez(Hospital Costa del Sol), María García‐Fortes(Hospital Clínico Universitario Virgen de la Victoria), Anna Angona(Institut Català d'Oncologia), Beatriz Cuevas(Hospital Universitario de Canarias), María‐Alicia Senín(Institut Català d'Oncologia), Ángel Ramírez-Payer(Hospital Universitario Central de Asturias), María‐José Ramírez(Vall d'Hebron Hospital Universitari), Raúl Pérez‐López(Hospital Universitario Virgen de la Arrixaca), Sonia González de Villambrosía(Marqués de Valdecilla University Hospital), Clara Martínez‐Valverde(Hospital de Sant Pau), María Teresa Gómez‐Casares(Hospital Universitario de Gran Canaria Doctor Negrín), Carmen García‐Hernández(Hospital General Universitario de Alicante Doctor Balmis), Mercedes Gasior Kabat(Hospital Universitario La Paz), Beatríz Bellosillo(Hospital Del Mar), J. L. Steegmann(Hospital Universitario de Canarias), Alberto Álvarez‐Larrán(Consorci Institut D'Investigacions Biomediques August Pi I Sunyer), Jesús María Hernández‐Rivas, Juan Carlos Hernández‐Boluda, on behalf of the Spanish MPN Group (GEMFIN).(Digital Science (United States))
HemaSphere
December 20, 2022
Cited by 29Open Access
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Abstract

Myelofibrosis (MF) is a myeloproliferative neoplasm (MPN) with heterogeneous clinical course. Allogeneic hematopoietic cell transplantation remains the only curative therapy, but its morbidity and mortality require careful candidate selection. Therefore, accurate disease risk prognostication is critical for treatment decision-making. We obtained registry data from patients diagnosed with MF in 60 Spanish institutions (N = 1386). These were randomly divided into a training set (80%) and a test set (20%). A machine learning (ML) technique (random forest) was used to model overall survival (OS) and leukemia-free survival (LFS) in the training set, and the results were validated in the test set. We derived the AIPSS-MF (Artificial Intelligence Prognostic Scoring System for Myelofibrosis) model, which was based on 8 clinical variables at diagnosis and achieved high accuracy in predicting OS (training set c-index, 0.750; test set c-index, 0.744) and LFS (training set c-index, 0.697; test set c-index, 0.703). No improvement was obtained with the inclusion of MPN driver mutations in the model. We were unable to adequately assess the potential benefit of including adverse cytogenetics or high-risk mutations due to the lack of these data in many patients. AIPSS-MF was superior to the IPSS regardless of MF subtype and age range and outperformed the MYSEC-PM in patients with secondary MF. In conclusion, we have developed a prediction model based exclusively on clinical variables that provides individualized prognostic estimates in patients with primary and secondary MF. The use of AIPSS-MF in combination with predictive models that incorporate genetic information may improve disease risk stratification.


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