Continuous Prediction of Mortality in the PICU: A Recurrent Neural Network Model in a Single-Center Dataset*

被引:28
作者
Aczon, Melissa D. [1 ,2 ]
Ledbetter, David R. [1 ,2 ]
Laksana, Eugene [1 ,2 ]
Ho, Long, V [1 ,2 ]
Wetzel, Randall C. [1 ,2 ,3 ,4 ]
机构
[1] Childrens Hosp Los Angeles, Dept Anesthesiol & Crit Care Med, Los Angeles, CA 90027 USA
[2] Childrens Hosp Los Angeles, Laura P & Leland K Whittier Virtual Pediat Intens, Los Angeles, CA 90027 USA
[3] Univ Southern Calif, Keck Sch Med, Dept Pediat, Los Angeles, CA 90007 USA
[4] Univ Southern Calif, Keck Sch Med, Dept Anesthesiol, Los Angeles, CA 90007 USA
关键词
continuous severity of illness assessment; deep learning; electronic medical records; pediatric intensive care; recurrent neural networks; risk of mortality; PATIENT CONDITION; PEDIATRIC INDEX; SEVERITY; RISK; VALIDATION; CHILDREN;
D O I
10.1097/PCC.0000000000002682
中图分类号
R4 [临床医学];
学科分类号
1002 ; 100602 ;
摘要
OBJECTIVES: Develop, as a proof of concept, a recurrent neural network model using electronic medical records data capable of continuously assessing an individual child's risk of mortality throughout their ICU stay as a proxy measure of severity of illness. DESIGN: Retrospective cohort study. SETTING: PICU in a tertiary care academic children's hospital. PATIENTS/SUBJECTS: Twelve thousand five hundred sixteen episodes (9,070 children) admitted to the PICU between January 2010 and February 2019, partitioned into training (50%), validation (25%), and test (25%) sets. INTERVENTIONS: None. MEASUREMENTS AND MAIN RESULTS: On 2,475 test set episodes lasting greater than or equal to 24 hours in the PICU, the area under the receiver operating characteristic curve of the recurrent neural network's 12th hour predictions was 0.94 (CI, 0.93-0.95), higher than those of Pediatric Index of Mortality 2 (0.88; CI, [0.85-0.91]; p < 0.02), Pediatric Risk of Mortality III (12th hr) (0.89; CI, [0.86-0.92]; p < 0.05), and Pediatric Logistic Organ Dysfunction day 1 (0.85; [0.81-0.89]; p < 0.002). The recurrent neural network's discrimination increased with more acquired data and smaller lead time, achieving a 0.99 area under the receiver operating characteristic curve 24 hours prior to discharge. Despite not having diagnostic information, the recurrent neural network performed well across different primary diagnostic categories, generally achieving higher area under the receiver operating characteristic curve for these groups than the other three scores. On 692 test set episodes lasting greater than or equal to 5 days in the PICU, the recurrent neural network area under the receiver operating characteristic curves significantly outperformed their daily Pediatric Logistic Organ Dysfunction counterparts (p < 0.005). CONCLUSIONS: The recurrent neural network model can process hundreds of input variables contained in a patient's electronic medical record and integrate them dynamically as measurements become available. Its high discrimination suggests the recurrent neural network's potential to provide an accurate, continuous, and real-time assessment of a child in the ICU.
引用
收藏
页码:519 / 529
页数:11
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