A Machine Learning-Based Prediction of Hospital Mortality in Patients With Postoperative Sepsis
Introduction: The incidence of postoperative sepsis is continually increased, while few studies have specifically focused on the risk factors and clinical outcomes associated with the development of sepsis after surgical procedures. The present study aimed to develop a mathematical model for predict...
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doaj-9f84b67c33d24c47808f6d26e76db2872020-11-25T03:41:06ZengFrontiers Media S.A.Frontiers in Medicine2296-858X2020-08-01710.3389/fmed.2020.00445549673A Machine Learning-Based Prediction of Hospital Mortality in Patients With Postoperative SepsisRen-qi Yao0Ren-qi Yao1Xin Jin2Guo-wei Wang3Yue Yu4Guo-sheng Wu5Yi-bing Zhu6Lin Li7Yu-xuan Li8Peng-yue Zhao9Sheng-yu Zhu10Zhao-fan Xia11Chao Ren12Yong-ming Yao13Trauma Research Center, Fourth Medical Center of the Chinese PLA General Hospital, Beijing, ChinaDepartment of Burn Surgery, Changhai Hospital, Naval Medical University, Shanghai, ChinaSchool of Mathematics and Statistics, Beijing Institute of Technology, Beijing, ChinaSchool of Computer Science and Technology, Wuhan University of Technology, Wuhan, ChinaDepartment of Cardiothoracic Surgery, Changzheng Hospital, Naval Medical University, Shanghai, ChinaDepartment of Burn Surgery, Changhai Hospital, Naval Medical University, Shanghai, ChinaMedical Research and Biometrics Center, Fuwai Hospital, National Center for Cardiovascular Diseases, Chinese Academy of Medical Sciences and Peking Union Medical College, Beijing, ChinaSchool of Computer Science and Technology, Wuhan University of Technology, Wuhan, ChinaDepartment of General Surgery, First Medical Center of Chinese PLA General Hospital, Beijing, ChinaDepartment of General Surgery, First Medical Center of Chinese PLA General Hospital, Beijing, ChinaDepartment of General Surgery, First Medical Center of Chinese PLA General Hospital, Beijing, ChinaDepartment of Burn Surgery, Changhai Hospital, Naval Medical University, Shanghai, ChinaTrauma Research Center, Fourth Medical Center of the Chinese PLA General Hospital, Beijing, ChinaTrauma Research Center, Fourth Medical Center of the Chinese PLA General Hospital, Beijing, ChinaIntroduction: The incidence of postoperative sepsis is continually increased, while few studies have specifically focused on the risk factors and clinical outcomes associated with the development of sepsis after surgical procedures. The present study aimed to develop a mathematical model for predicting the in-hospital mortality among patients with postoperative sepsis.Materials and Methods: Surgical patients in Medical Information Mart for Intensive Care (MIMIC-III) database who simultaneously fulfilled Sepsis 3.0 and Agency for Healthcare Research and Quality (AHRQ) criteria at ICU admission were incorporated. We employed both extreme gradient boosting (XGBoost) and stepwise logistic regression model to predict the in-hospital mortality among patients with postoperative sepsis. Consequently, the model performance was assessed from the angles of discrimination and calibration.Results: We included 3,713 patients who fulfilled our inclusion criteria, in which 397 (10.7%) patients died during hospitalization, and 3,316 (89.3%) patients survived through discharge. Fluid-electrolyte disturbance, coagulopathy, renal replacement therapy (RRT), urine output, and cardiovascular surgery were important features related to the in-hospital mortality. The XGBoost model had a better performance in both discriminatory ability (c-statistics, 0.835 vs. 0.737 and 0.621, respectively; AUPRC, 0.418 vs. 0.280 and 0.237, respectively) and goodness of fit (visualized by calibration curve) compared to the stepwise logistic regression model and baseline model.Conclusion: XGBoost model has a better performance in predicting hospital mortality among patients with postoperative sepsis in comparison to the stepwise logistic regression model. Machine learning-based algorithm might have significant application in the development of early warning system for septic patients following major operations.https://www.frontiersin.org/article/10.3389/fmed.2020.00445/fullpostoperative sepsisintensive care unitextreme gradient boostingcoagulationprediction |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Ren-qi Yao Ren-qi Yao Xin Jin Guo-wei Wang Yue Yu Guo-sheng Wu Yi-bing Zhu Lin Li Yu-xuan Li Peng-yue Zhao Sheng-yu Zhu Zhao-fan Xia Chao Ren Yong-ming Yao |
spellingShingle |
Ren-qi Yao Ren-qi Yao Xin Jin Guo-wei Wang Yue Yu Guo-sheng Wu Yi-bing Zhu Lin Li Yu-xuan Li Peng-yue Zhao Sheng-yu Zhu Zhao-fan Xia Chao Ren Yong-ming Yao A Machine Learning-Based Prediction of Hospital Mortality in Patients With Postoperative Sepsis Frontiers in Medicine postoperative sepsis intensive care unit extreme gradient boosting coagulation prediction |
author_facet |
Ren-qi Yao Ren-qi Yao Xin Jin Guo-wei Wang Yue Yu Guo-sheng Wu Yi-bing Zhu Lin Li Yu-xuan Li Peng-yue Zhao Sheng-yu Zhu Zhao-fan Xia Chao Ren Yong-ming Yao |
author_sort |
Ren-qi Yao |
title |
A Machine Learning-Based Prediction of Hospital Mortality in Patients With Postoperative Sepsis |
title_short |
A Machine Learning-Based Prediction of Hospital Mortality in Patients With Postoperative Sepsis |
title_full |
A Machine Learning-Based Prediction of Hospital Mortality in Patients With Postoperative Sepsis |
title_fullStr |
A Machine Learning-Based Prediction of Hospital Mortality in Patients With Postoperative Sepsis |
title_full_unstemmed |
A Machine Learning-Based Prediction of Hospital Mortality in Patients With Postoperative Sepsis |
title_sort |
machine learning-based prediction of hospital mortality in patients with postoperative sepsis |
publisher |
Frontiers Media S.A. |
series |
Frontiers in Medicine |
issn |
2296-858X |
publishDate |
2020-08-01 |
description |
Introduction: The incidence of postoperative sepsis is continually increased, while few studies have specifically focused on the risk factors and clinical outcomes associated with the development of sepsis after surgical procedures. The present study aimed to develop a mathematical model for predicting the in-hospital mortality among patients with postoperative sepsis.Materials and Methods: Surgical patients in Medical Information Mart for Intensive Care (MIMIC-III) database who simultaneously fulfilled Sepsis 3.0 and Agency for Healthcare Research and Quality (AHRQ) criteria at ICU admission were incorporated. We employed both extreme gradient boosting (XGBoost) and stepwise logistic regression model to predict the in-hospital mortality among patients with postoperative sepsis. Consequently, the model performance was assessed from the angles of discrimination and calibration.Results: We included 3,713 patients who fulfilled our inclusion criteria, in which 397 (10.7%) patients died during hospitalization, and 3,316 (89.3%) patients survived through discharge. Fluid-electrolyte disturbance, coagulopathy, renal replacement therapy (RRT), urine output, and cardiovascular surgery were important features related to the in-hospital mortality. The XGBoost model had a better performance in both discriminatory ability (c-statistics, 0.835 vs. 0.737 and 0.621, respectively; AUPRC, 0.418 vs. 0.280 and 0.237, respectively) and goodness of fit (visualized by calibration curve) compared to the stepwise logistic regression model and baseline model.Conclusion: XGBoost model has a better performance in predicting hospital mortality among patients with postoperative sepsis in comparison to the stepwise logistic regression model. Machine learning-based algorithm might have significant application in the development of early warning system for septic patients following major operations. |
topic |
postoperative sepsis intensive care unit extreme gradient boosting coagulation prediction |
url |
https://www.frontiersin.org/article/10.3389/fmed.2020.00445/full |
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