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Machine learning in the prediction of massive transfusion in trauma: a retrospective analysis as a proof-of-concept.
Nikouline, Anton; Feng, Jinyue; Rudzicz, Frank; Nathens, Avery; Nolan, Brodie.
Affiliation
  • Nikouline A; Department of Emergency Medicine, London Health Sciences Centre, 800 Commissioners Road E, London, ON, N6A 5W9, Canada. anton.nikouline@mail.utoronto.ca.
  • Feng J; Division of Critical Care and Emergency Medicine, Department of Medicine, Western University, London, ON, Canada. anton.nikouline@mail.utoronto.ca.
  • Rudzicz F; Department of Computer Science, University of Toronto, Toronto, ON, Canada.
  • Nathens A; Vector Institute for Artificial Intelligence, Toronto, ON, Canada.
  • Nolan B; Vector Institute for Artificial Intelligence, Toronto, ON, Canada.
Eur J Trauma Emerg Surg ; 50(3): 1073-1081, 2024 Jun.
Article in En | MEDLINE | ID: mdl-38265444
ABSTRACT

PURPOSE:

Early administration and protocolization of massive hemorrhage protocols (MHP) has been associated with decreases in mortality, multiorgan system failure, and number of blood products used. Various prediction tools have been developed for the initiation of MHP, but no single tool has demonstrated strong prediction with early clinical data. We sought to develop a massive transfusion prediction model using machine learning and early clinical data.

METHODS:

Using the National Trauma Data Bank from 2013 to 2018, we included severely injured trauma patients and extracted clinical features available from the pre-hospital and emergency department. We subsequently balanced our dataset and used the Boruta algorithm to determine feature selection. Massive transfusion was defined as five units at 4 h and ten units at 24 h. Six machine learning models were trained on the balanced dataset and tested on the original.

RESULTS:

A total of 326,758 patients met our inclusion with 18,871 (5.8%) requiring massive transfusion. Emergency department models demonstrated strong performance characteristics with mean areas under the receiver-operating characteristic curve of 0.83. Extreme gradient boost modeling slightly outperformed and demonstrated adequate predictive performance with pre-hospital data only, as well as 4-h transfusion thresholds.

CONCLUSIONS:

We demonstrate the use of machine learning in developing an accurate prediction model for massive transfusion in trauma patients using early clinical data. This research demonstrates the potential utility of artificial intelligence as a clinical decision support tool.
Subject(s)
Key words

Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Wounds and Injuries / Blood Transfusion / Machine Learning Type of study: Guideline / Prognostic_studies / Risk_factors_studies Limits: Adult / Female / Humans / Male / Middle aged Language: En Journal: Eur J Trauma Emerg Surg Year: 2024 Type: Article Affiliation country: Canada

Full text: 1 Collection: 01-internacional Database: MEDLINE Main subject: Wounds and Injuries / Blood Transfusion / Machine Learning Type of study: Guideline / Prognostic_studies / Risk_factors_studies Limits: Adult / Female / Humans / Male / Middle aged Language: En Journal: Eur J Trauma Emerg Surg Year: 2024 Type: Article Affiliation country: Canada