Development and application of quick response code for prediction of healthcare-associated infection risks in ICU inpatients
10.12138/j.issn.1671-9638.20252416
- VernacularTitle:重症监护病房住院患者医院感染风险评估二维码的开发与应用
- Author:
Man ZHANG
1
;
Yongsheng LIANG
;
Huai YANG
;
Jiangnan SUN
;
Xi WANG
;
Zidi XU
;
Jie SONG
;
Yanli ZHANG
;
Di ZHAO
;
Rui WANG
;
Chengsong ZHAO
;
Xin NI
Author Information
1. 国家儿童医学中心首都医科大学附属北京儿童医院感染管理办公室,北京 100045
- Publication Type:Journal Article
- Keywords:
risk assessment;
healthcare-associated infection;
intensive care unit;
inpatient;
QR code;
prediction
- From:
Chinese Journal of Infection Control
2025;24(9):1259-1268
- CountryChina
- Language:Chinese
-
Abstract:
Objective To identify high-risk factors for healthcare-associated infection(HAI)in patients in inten-sive care units(ICUs),and develop a quick response(QR)code-based APP prediction tool.Methods Information of inpatients in general ICUs of three hospitals in Guizhou Province from January to December 2024 were collected.Risk factors were analyzed with a logistic regression model.QR code-based APP was constructed and validated.Results A total of 1 782 patients in general ICUs of three hospitals in Guizhou Province in 2024 were included in the analysis,out of which 410 were HAI cases,and the incidence of HAI was 23.01%.Multivariate logistic regre-ssion analysis results of HAI in ICU inpatients showed that regional gross domestic product(GDP)≥58 685 Yuan,performing pathogen culture during this hospitalization,history of diabetes mellitus,history of cancer,length of hospital stay ≥7 days before infection,and duration of persistent fever>5 days before infection were independent risk factors for HAI in ICU patients(all P<0.05).The discrimination of the model(area under the receiver operating characteristic curve[AUC]of 0.841),calibration(Brier score of 0.129),and clinical effectiveness(net benefit of 11.4%when the risk threshold was 5%-74%)all performed well.Conclusion The QR code-based APP prediction tool is of great significance for scientific research transformation and precise HAI control.