TY - JOUR
T1 - Use of machine learning techniques to predict poor survival after hematopoietic cell transplantation for myelofibrosis
AU - Hernandez-Boluda, Juan Carlos
AU - Mosquera Orgueira, Adrian
AU - Gras, Luuk
AU - Koster, Linda
AU - Tuffnell, Joe
AU - Kröger, Nicolaus
AU - Gambella, Massimiliano
AU - Schroeder, Thomas
AU - Robin, Marie
AU - Sockel, Katja
AU - Passweg, Jakob R
AU - Blau, Igor Wolfgang
AU - Yakoub-Agha, Ibrahim
AU - Van Dijck, Ruben
AU - Stelljes, Matthias
AU - Sengeloev, Henrik
AU - Vydra, Jan
AU - Platzbecker, Uwe
AU - Dewitte, Moniek
AU - Baron, Frédéric
AU - Carlson, Kristina
AU - Rojas Martínez, Javier Alberto
AU - Pérez Míguez, Carlos
AU - Crucitti, Davide
AU - Raj, Kavita
AU - Drozd-Sokolowska, Joanna
AU - Battipaglia, Giorgia
AU - Polverelli, Nicola
AU - Czerw, Tomasz
AU - McLornan, Donal P
N1 - Copyright © 2025 American Society of Hematology.
PY - 2025/6/26
Y1 - 2025/6/26
N2 - With the incorporation of effective therapies for myelofibrosis (MF), accurately predicting outcomes after allogeneic hematopoietic cell transplantation (allo-HCT) is crucial for determining the optimal timing for this procedure. Using data from 5183 patients with MF who underwent first allo-HCT between 2005 and 2020 at European Society for Blood and Marrow Transplantation centers, we examined different machine learning (ML) models to predict overall survival after transplant. The cohort was divided into a training set (75%) and a test set (25%) for model validation. A random survival forests (RSF) model was developed based on 10 variables: patient age, comorbidity index, performance status, blood blasts, hemoglobin, leukocytes, platelets, donor type, conditioning intensity, and graft-versus-host disease prophylaxis. Its performance was compared with a 4-level Cox regression-based score and other ML-based models derived from the same data set, and with the Center for International Blood and Marrow Transplant Research score. The RSF outperformed all comparators, achieving better concordance indices across both primary and postessential thrombocythemia/polycythemia vera MF subgroups. The robustness and generalizability of the RSF model was confirmed by Akaike information criterion and time-dependent receiver operating characteristic area under the curve metrics in both sets. Although all models were prognostic for nonrelapse mortality, the RSF provided better curve separation, effectively identifying a high-risk group comprising 25% of patients. In conclusion, ML enhances risk stratification in patients with MF undergoing allo-HCT, paving the way for personalized medicine. A web application (https://gemfin.click/ebmt) based on the RSF model offers a practical tool to identify patients at high risk for poor transplantation outcomes, supporting informed treatment decisions and advancing individualized care.
AB - With the incorporation of effective therapies for myelofibrosis (MF), accurately predicting outcomes after allogeneic hematopoietic cell transplantation (allo-HCT) is crucial for determining the optimal timing for this procedure. Using data from 5183 patients with MF who underwent first allo-HCT between 2005 and 2020 at European Society for Blood and Marrow Transplantation centers, we examined different machine learning (ML) models to predict overall survival after transplant. The cohort was divided into a training set (75%) and a test set (25%) for model validation. A random survival forests (RSF) model was developed based on 10 variables: patient age, comorbidity index, performance status, blood blasts, hemoglobin, leukocytes, platelets, donor type, conditioning intensity, and graft-versus-host disease prophylaxis. Its performance was compared with a 4-level Cox regression-based score and other ML-based models derived from the same data set, and with the Center for International Blood and Marrow Transplant Research score. The RSF outperformed all comparators, achieving better concordance indices across both primary and postessential thrombocythemia/polycythemia vera MF subgroups. The robustness and generalizability of the RSF model was confirmed by Akaike information criterion and time-dependent receiver operating characteristic area under the curve metrics in both sets. Although all models were prognostic for nonrelapse mortality, the RSF provided better curve separation, effectively identifying a high-risk group comprising 25% of patients. In conclusion, ML enhances risk stratification in patients with MF undergoing allo-HCT, paving the way for personalized medicine. A web application (https://gemfin.click/ebmt) based on the RSF model offers a practical tool to identify patients at high risk for poor transplantation outcomes, supporting informed treatment decisions and advancing individualized care.
KW - Adult
KW - Aged
KW - Female
KW - Hematopoietic Stem Cell Transplantation/mortality
KW - Humans
KW - Machine Learning
KW - Male
KW - Middle Aged
KW - Primary Myelofibrosis/therapy
KW - Prognosis
KW - Survival Rate
UR - http://www.scopus.com/inward/record.url?scp=105005592859&partnerID=8YFLogxK
U2 - 10.1182/blood.2024027287
DO - 10.1182/blood.2024027287
M3 - Journal article
C2 - 40145857
SN - 0006-4971
VL - 145
SP - 3139
EP - 3152
JO - Blood
JF - Blood
IS - 26
ER -