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Article
Prediction of perioperative transfusions using an artificial neural network
PLoS One (2020)
  • Steven Walczak, University of South Florida
  • Vic Velanovich, University of South Florida
Abstract
Background

Accurate prediction of operative transfusions is essential for resource allocation and identifying patients at risk of postoperative adverse events. This research examines the efficacy of using artificial neural networks (ANNs) to predict transfusions for all inpatient operations.

Methods

Over 1.6 million surgical cases over a two year period from the NSQIP-PUF database are used. Data from 2014 (750937 records) are used for model development and data from 2015 (885502 records) are used for model validation. ANN and regression models are developed to predict perioperative transfusions for surgical patients.

Results

Various ANN models and logistic regression, using four variable sets, are compared. The best performing ANN models with respect to both sensitivity and area under the receiver operator characteristic curve outperformed all of the regression models (p < .001) and achieved a performance of 70–80% specificity with a corresponding 75–62% sensitivity.

Conclusion

ANNs can predict >75% of the patients who will require transfusion and 70% of those who will not. Increasing specificity to 80% still enables a sensitivity of almost 67%. The unique contribution of this research is the utilization of a single ANN model to predict transfusions across a broad range of surgical procedures.
Keywords
  • artificial neural networks,
  • blood transfusions
Publication Date
Spring February 24, 2020
DOI
10.1371/journal.pone.0229450
Citation Information
Steven Walczak and Vic Velanovich. "Prediction of perioperative transfusions using an artificial neural network" PLoS One Vol. 15 Iss. 2 (2020)
Available at: http://works.bepress.com/steven-walczak/79/