Predicting the Need for Blood Transfusions in Cardiac Surgery: A Comparison between Machine Learning Algorithms and Established Risk Scores in the Brazilian Population

Blood transfusion is a common practice in cardiac surgery, despite its well-known negative effects. To mitigate blood transfusion-associated risks, identifying patients who are at higher risk of needing this procedure is crucial. Widely used risk scores to predict the need for blood transfusions hav...

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Veröffentlicht in:Revista brasileira de cirurgia cardiovascular 2024-01, Vol.39 (2), p.e20230212-e20230212
Hauptverfasser: Cunha, Cristiano Berardo Carneiro da, Lima, Tiago Andrade, Ferraz, Diogo Luiz de Magalhães, Silva, Igor Tiago Correia, Santiago, Matheus Kennedy Dionisio, Sena, Gabrielle Ribeiro, Monteiro, Verônica Soares, Andrade, Lívia Barbosa
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container_title Revista brasileira de cirurgia cardiovascular
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creator Cunha, Cristiano Berardo Carneiro da
Lima, Tiago Andrade
Ferraz, Diogo Luiz de Magalhães
Silva, Igor Tiago Correia
Santiago, Matheus Kennedy Dionisio
Sena, Gabrielle Ribeiro
Monteiro, Verônica Soares
Andrade, Lívia Barbosa
description Blood transfusion is a common practice in cardiac surgery, despite its well-known negative effects. To mitigate blood transfusion-associated risks, identifying patients who are at higher risk of needing this procedure is crucial. Widely used risk scores to predict the need for blood transfusions have yielded unsatisfactory results when validated for the Brazilian population. In this retrospective study, machine learning (ML) algorithms were compared to predict the need for blood transfusions in a cohort of 495 cardiac surgery patients treated at a Brazilian reference service between 2019 and 2021. The performance of the models was evaluated using various metrics, including the area under the curve (AUC), and compared to the commonly used Transfusion Risk and Clinical Knowledge (TRACK) and Transfusion Risk Understanding Scoring Tool (TRUST) scoring systems. The study found that the model had the highest performance, achieving an AUC of 0.7350 (confidence interval [CI]: 0.7203 to 0.7497). Importantly, all ML algorithms performed significantly better than the commonly used TRACK and TRUST scoring systems. TRACK had an AUC of 0.6757 (CI: 0.6609 to 0.6906), while TRUST had an AUC of 0.6622 (CI: 0.6473 to 0.6906). The findings of this study suggest that ML algorithms may offer a more accurate prediction of the need for blood transfusions than the traditional scoring systems and could enhance the accuracy of predicting blood transfusion requirements in cardiac surgery patients. Further research could focus on optimizing and refining ML algorithms to improve their accuracy and make them more suitable for clinical use.
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subjects Accuracy
Algorithms
Blood
Blood Transfusion
Blood transfusions
Brazil
CARDIAC & CARDIOVASCULAR SYSTEMS
Cardiac Surgical Procedures - methods
Coronaviruses
COVID-19
Heart surgery
Hemoglobin
Humans
Machine Learning
Original
Patients
Performance evaluation
Regression analysis
Retrospective Studies
Risk Factors
Support vector machines
SURGERY
title Predicting the Need for Blood Transfusions in Cardiac Surgery: A Comparison between Machine Learning Algorithms and Established Risk Scores in the Brazilian Population
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