DocumentCode :
3685608
Title :
Ensemble learning approaches to predicting complications of blood transfusion
Author :
Dennis Murphree;Che Ngufor;Sudhindra Upadhyaya;Nagesh Madde;Leanne Clifford;Daryl J. Kor;Jyotishman Pathak
Author_Institution :
Mayo Clinic, Rochester, MN 55905 USA
fYear :
2015
Firstpage :
7222
Lastpage :
7225
Abstract :
Of the 21 million blood components transfused in the United States during 2011, approximately 1 in 414 resulted in complication [1]. Two complications in particular, transfusion-related acute lung injury (TRALI) and transfusion-associated circulatory overload (TACO), are especially concerning. These two alone accounted for 62% of reported transfusion-related fatalities in 2013 [2]. We have previously developed a set of machine learning base models for predicting the likelihood of these adverse reactions, with a goal towards better informing the clinician prior to a transfusion decision. Here we describe recent work incorporating ensemble learning approaches to predicting TACO/TRALI. In particular we describe combining base models via majority voting, stacking of model sets with varying diversity, as well as a resampling/boosting combination algorithm called RUSBoost. We find that while the performance of many models is very good, the ensemble models do not yield significantly better performance in terms of AUC.
Keywords :
"Predictive models","Training","Blood","Prediction algorithms","Boosting","Medical services","Analytical models"
Publisher :
ieee
Conference_Titel :
Engineering in Medicine and Biology Society (EMBC), 2015 37th Annual International Conference of the IEEE
ISSN :
1094-687X
Electronic_ISBN :
1558-4615
Type :
conf
DOI :
10.1109/EMBC.2015.7320058
Filename :
7320058
Link To Document :
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