Machine-learning models for prediction of sepsis patients mortality

C. Bao, F. Deng,S. Zhao

Medicina Intensiva(2023)

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摘要
Objectives: Sepsis is an infection-caused syndrome, that leads to life-threatening organ dam-age. We aim to develop machine learning models with large-scale data to predict sepsis patients' mortality. Design: we extracted sepsis patients from two databases, Medical Information Mart for Intensive Care IV (MIMIC-IV) as a train set and Philips eICU Collaborative Research Database as a test set.Setting: ICUs in multicenter hospitals in the USA during 2012-2019.Patients or participants: A total of 21,680 sepsis-3 patients are included in the study, in which, 3771 patients were dead and 17,909 survived during hospitalization, respectively.Interventions: No interventions.Main variables of interest: Basic information, examination items during hospitalization and some medication and treatment information are incorporated into analyzed. Seven different models were built with a Support vector machine, Decision Tree Classifier, Random Forest, Gra-dients Boosting, Multiple Layer Perception, Xgboost, light Gradients Boosting to predict dead or live during hospitalization.Results: Algorithms with an AUC value in the test set of the top three: light GBM, GBM, Xgboost. Considering the performance of the training set and the test set, the light GBM model performs best, and then the parameters of the model were adjusted, after that the AUC value was 0.99 in the train set, 0.96 in the test set, respectively. Conclusions: Models built with light GBM algorithm from real-world sepsis patients from electronic health records accurately predict whether sepsis patients are dead and can be incor-porated into clinical decision tools to enhance the prognosis of the patient and prevent adverse outcomes.(c) 2022 Elsevier Espan similar to a, S.L.U. y SEMICYUC. All rights reserved.
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关键词
Sepsis,Machine learning,Light GBM,MIMIC-IV,Multi-center
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