• 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