Prediction of Allogeneic Hematopoietic Stem-Cell Transplantation Mortality 100 Days After Transplantation Using a Machine Learning Algorithm: A European Group for Blood and Marrow Transplantation Acute Leukemia Working Party Retrospective Data Mining Study

Author:

Shouval Roni1,Labopin Myriam1,Bondi Ori1,Mishan-Shamay Hila1,Shimoni Avichai1,Ciceri Fabio1,Esteve Jordi1,Giebel Sebastian1,Gorin Norbert C.1,Schmid Christoph1,Polge Emmanuelle1,Aljurf Mahmoud1,Kroger Nicolaus1,Craddock Charles1,Bacigalupo Andrea1,Cornelissen Jan J.1,Baron Frederic1,Unger Ron1,Nagler Arnon1,Mohty Mohamad1

Affiliation:

1. Roni Shouval, Hila Mishan-Shamay, Avichai Shimoni, and Arnon Nagler, The Chaim Sheba Medical Center, Tel-Hashomer; Roni Shouval, Ori Bondi, and Ron Unger, Bar-Ilan University, Ramat-Gan, Israel; Myriam Labopin, Norbert C. Gorin, Emmanuelle Polge, Arnon Nagler, and Mohamad Mohty, European Group for Blood and Marrow Transplantation; Myriam Labopin and Mohamad Mohty, Sorbonne Universités, Centre de Recherche (CDR) Saint-Antoine; Myriam Labopin and Mohamad Mohty, Institut National de la Santé et de la...

Abstract

Purpose Allogeneic hematopoietic stem-cell transplantation (HSCT) is potentially curative for acute leukemia (AL), but carries considerable risk. Machine learning algorithms, which are part of the data mining (DM) approach, may serve for transplantation-related mortality risk prediction. Patients and Methods This work is a retrospective DM study on a cohort of 28,236 adult HSCT recipients from the AL registry of the European Group for Blood and Marrow Transplantation. The primary objective was prediction of overall mortality (OM) at 100 days after HSCT. Secondary objectives were estimation of nonrelapse mortality, leukemia-free survival, and overall survival at 2 years. Donor, recipient, and procedural characteristics were analyzed. The alternating decision tree machine learning algorithm was applied for model development on 70% of the data set and validated on the remaining data. Results OM prevalence at day 100 was 13.9% (n = 3,936). Of the 20 variables considered, 10 were selected by the model for OM prediction, and several interactions were discovered. By using a logistic transformation function, the crude score was transformed into individual probabilities for 100-day OM (range, 3% to 68%). The model's discrimination for the primary objective performed better than the European Group for Blood and Marrow Transplantation score (area under the receiver operating characteristics curve, 0.701 v 0.646; P < .001). Calibration was excellent. Scores assigned were also predictive of secondary objectives. Conclusion The alternating decision tree model provides a robust tool for risk evaluation of patients with AL before HSCT, and is available online ( http://bioinfo.lnx.biu.ac.il/∼bondi/web1.html ). It is presented as a continuous probabilistic score for the prediction of day 100 OM, extending prediction to 2 years. The DM method has proved useful for clinical prediction in HSCT.

Publisher

American Society of Clinical Oncology (ASCO)

Subject

Cancer Research,Oncology

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