A Time-Phased Machine Learning Model for Real-Time Prediction of Sepsis in Critical Care

被引:32
|
作者
Li, Xiang [1 ]
Xu, Xiao [1 ]
Xie, Fei [2 ]
Xu, Xian [1 ]
Sun, Yuyao [1 ]
Liu, Xiaoshuang [1 ]
Jia, Xiaoyu [1 ]
Kang, Yanni [1 ]
Xie, Lixin [2 ]
Wang, Fei [3 ]
Xie, Guotong [1 ]
机构
[1] Ping An Technol, Beijing, Peoples R China
[2] Chinese Peoples Liberat Army Gen Hosp, Dept Pulm & Crit Care Med, Beijing, Peoples R China
[3] Cornell Univ, Weill Cornell Med Coll, Dept Healthcare Policy & Res, New York, NY 10021 USA
关键词
clinical interpretability; competition; machine learning; real-time prediction; sepsis; time-phased strategy; DEFINITIONS;
D O I
10.1097/CCM.0000000000004494
中图分类号
R4 [临床医学];
学科分类号
1002 ; 100602 ;
摘要
Objectives: As a life-threatening condition, sepsis is one of the major public health issues worldwide. Early prediction can improve sepsis outcomes with appropriate interventions. With the PhysioNet/Computing in Cardiology Challenge 2019, we aimed to develop and validate a machine learning algorithm with high prediction performance and clinical interpretability for prediction of sepsis onset during critical care in real-time. Design: Retrospective observational cohort study. Setting: The dataset was collected from three ICUs in three different U.S. hospitals. Two of them were publicly available for model development (offline) and one was used for testing (online). Patients: Forty-thousand three-hundred thirty-six ICU patients from the two model development databases and 24,819 from the test database. There are up to 40 hourly-recorded clinical variables for each ICU stay. The Sepsis-3 criteria were used to confirm sepsis onset. Interventions: None. Measurements and Main Results: Three-hundred twelve features were constructed hourly as the input of our proposed Time-phAsed machine learning model for Sepsis Prediction. Time-phAsed machine learning model for Sepsis Prediction first estimates the likelihood of sepsis onset for each hour of an ICU stay in the following 6 hours, and then makes a binary prediction with three time-phased cutoff values. On the internal validation set, the utility score (official challenge measurement) achieved by Time-phAsed machine learning model for Sepsis Prediction was 0.430. On the test set, the utility score reached was 0.354. Furthermore, Time-phAsed machine learning model for Sepsis Prediction provides an intuitive way to illustrate the impact of the input features on the outcome prediction, which makes it clinically interpretable. Conclusions: The proposed Time-phAsed machine learning model for Sepsis Prediction model is accurate and interpretable for real-time prediction of sepsis onset in critical care, which holds great potential for further evaluation in prospective studies.
引用
收藏
页码:E884 / E888
页数:5
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