| Literature DB >> 30071322 |
Adarsh Sivasankaran1, Eric Williams2, Mark Albrecht2, Galen E Switzer3, Vladimir Cherkassky4, Martin Maiers5.
Abstract
The success of unrelated donor stem cell transplants depends on not only finding genetically matched donors, but also donor availability. On average 50% of potential donors in the National Marrow Donor Program database are unavailable for a variety of reasons, after initially matching a patient, with significant variations in availability among subgroups (eg, by race or age). Several studies have established univariate donor characteristics associated with availability. Individual consideration of each applicable characteristic is laborious. Extrapolating group averages to the individual-donor level tends to be highly inaccurate. In the current environment with enhanced donor data collection, we can make better estimates of individual donor availability. We propose a machine learning based approach to predict availability of every registered donor, and evaluate the predictive power on a test cohort of 44,544 requests to be .77 based on the area under the receiver-operating characteristic curve. We propose that this predictor should be used during donor selection to reduce the time to transplant.Entities:
Keywords: Donor availability; Donor selection; Machine learning; Stem cell transplant
Mesh:
Year: 2018 PMID: 30071322 DOI: 10.1016/j.bbmt.2018.07.035
Source DB: PubMed Journal: Biol Blood Marrow Transplant ISSN: 1083-8791 Impact factor: 5.742