Machine Learning Approach to Predicting Absence of Serious Bacterial Infection at PICU Admission

被引:8
|
作者
Martin, Blake [1 ,4 ,5 ]
DeWitt, Peter E. [2 ]
Scott, Halden F. [3 ,4 ,5 ]
Parker, Sarah [4 ,5 ]
Bennett, Tellen D. [1 ,2 ,4 ,5 ]
机构
[1] Univ Colorado, Sch Med, Dept Pediat, Sect Crit Care, Aurora, CO USA
[2] Univ Colorado, Sch Med, Informat & Data Sci, Aurora, CO USA
[3] Univ Colorado, Sch Med, Emergency Med, Aurora, CO USA
[4] Univ Colorado, Infect Dis, Sch Med, Aurora, CO USA
[5] Childrens Hosp Colorado, Aurora, CO USA
关键词
PEDIATRIC INTENSIVE-CARE; C-REACTIVE PROTEIN; ANTIBIOTIC-TREATMENT; DIAGNOSTIC-ACCURACY; HOSPITAL MORTALITY; FEBRILE INFANTS; PROCALCITONIN; BACTEREMIA; SEPSIS; CHILDREN;
D O I
10.1542/hpeds.2021-005998
中图分类号
R72 [儿科学];
学科分类号
100202 ;
摘要
BACKGROUND AND OBJECTIVES Serious bacterial infection (SBI) is common in the PICU. Antibiotics can mitigate associated morbidity and mortality but have associated adverse effects. Our objective is to develop machine learning models able to identify SBI-negative children and reduce unnecessary antibiotics.METHODS We developed models to predict SBI-negative status at PICU admission using vital sign, laboratory, and demographic variables. Children 3-months to 18-years-old admitted to our PICU, between 2011 and 2020, were included if evaluated for infection within 24-hours, stratified by documented antibiotic exposure in the 48-hours prior. Area under the receiver operating characteristic curve (AUROC) was the primary model accuracy measure; secondarily, we calculated the number of SBI-negative children subsequently provided antibiotics in the PICU identified as low-risk by each model.RESULTS A total of 15 074 children met inclusion criteria; 4788 (32%) received antibiotics before PICU admission. Of these antibiotic-exposed patients, 2325 of 4788 (49%) had an SBI. Of the 10 286 antibiotic-unexposed patients, 2356 of 10 286 (23%) had an SBI. In antibiotic-exposed children, a radial support vector machine model had the highest AUROC (0.80) for evaluating SBI, identifying 48 of 442 (11%) SBI-negative children provided antibiotics in the PICU who could have been spared a median 3.7 (interquartile range 0.9-9.0) antibiotic-days per patient. In antibiotic-unexposed children, a random forest model performed best, but was less accurate overall (AUROC 0.76), identifying 33 of 469 (7%) SBI-negative children provided antibiotics in the PICU who could have been spared 1.1 (interquartile range 0.9-3.7) antibiotic-days per patient.CONCLUSIONS Among children who received antibiotics before PICU admission, machine learning models can identify children at low risk of SBI and potentially reduce antibiotic exposure.
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页数:10
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