articleJournal of Translational MedicineDec 1, 2020GOLD OA

Predicting 30-days mortality for MIMIC-III patients with sepsis-3: a machine learning approach using XGboost

Central Hospital of Zibo · Shandong First Medical University · +3 more institutions

PubMed
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Abstract

Background

Sepsis is a significant cause of mortality in-hospital, especially in ICU patients. Early prediction of sepsis is essential, as prompt and appropriate treatment can improve survival outcomes. Machine learning methods are flexible prediction algorithms with potential advantages over conventional regression and scoring system. The aims of this study were to develop a machine learning approach using XGboost to predict the 30-days mortality for MIMIC-III Patients with sepsis-3 and to determine whether such model performs better than traditional prediction models.

Methods

Using the MIMIC-III v1.4, we identified patients with sepsis-3. The data was split into two groups based on death or survival within 30 days and variables, selected based on clinical significance and availability by stepwise analysis, were displayed and compared between groups. Three predictive models including conventional logistic regression model, SAPS-II score prediction model and XGBoost algorithm model were constructed by R software. Then, the performances of the three models were tested and compared by AUCs of the receiver operating characteristic curves and decision curve analysis. At last, nomogram and clinical impact curve were used to validate the model.

Citation impact

592
total citations
FWCI
31.94
Percentile
100%
References
47
Citations per year

Authors

10

Topics & keywords

Keywords
  • Nomogram
  • Logistic regression
  • Sepsis
  • Stepwise regression
  • Medicine
  • Receiver operating characteristic
  • Machine learning
  • Area under the curve
UN Sustainable Development Goals
  • Good health and well-being
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