COVID-19 患者医源性感染 (HAIs) 的风险因素和提名图预测模型

IF 2.9 3区 医学 Q2 INFECTIOUS DISEASES Infection and Drug Resistance Pub Date : 2024-08-02 DOI:10.2147/idr.s472387
Zhanjie Li, Jian Li, Chuanlong Zhu, Shengyuan Jiao
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摘要

背景:确定COVID-19患者感染HAIs的风险因素并建立可视化预测模型:方法:从杏林医院感染监测系统中提取数据,分析2022年12月1日至2023年3月1日期间确诊的COVID-19患者:从杏林医院感染监测系统中提取数据,分析2022年12月1日至2023年3月1日期间确诊的COVID-19患者。进行单变量和多变量分析以确定风险因素。通过从套索、逻辑回归及其交叉和结合中选择变量,建立了预测特征。使用 DeLong's t 检验对模型进行比较。使用似然比(LR)和尤登指数评估预测性能。使用最佳变量组合构建了提名图,并使用AUC、DCA和校准曲线评估了预测准确性:共有 739 名患者符合标准,其中 53 例(7.2%)为 HAIs。非甾体抗炎药、手术、真菌和MDRO检测、激素药物和LYMR是独立的风险因素。Lasso 模型筛选出七个变量,Logistic 模型确定了六个风险因素。联合模型表现最佳,尤登指数最大值为 0.703,灵敏度为 95.6%,特异性为 74.7%,LR 为 3.778。联合模型的最佳 AUC 为 0.953(0.928- 0.978),准确率为 87.5%。DCA表明,联合模型提供了最佳净效益,校准曲线显示了良好的预测一致性:结论:对 COVID-19 患者进行 HAIs 预测是可行的,而且有利于改善预后。医生可以使用该提名图来确定 COVID-19 HAIs 的高风险人群,并制定相应的随访策略。
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Risk Factors and Nomogram Prediction Model for Healthcare-Associated Infections (HAIs) in COVID-19 Patients
Background: To identify risk factors for acquiring HAIs in COVID-19 patients and establish visual prediction model.
Methods: Data was extracted from Xinglin Hospital Infection Monitoring System to analyze COVID-19 patients diagnosed between December 1, 2022, and March 1, 2023. Univariate and multivariate analyses were conducted to identify risk factors. Predictive signature was developed by selected variables from lasso, logistic regression, and their intersection and union. Models were compared using DeLong’s t-tests. Likelihood ratio (LR) and Youden’s index was used to evaluate the predictive performance. Nomogram was constructed using optimal variables ensemble, prediction accuracy was evaluated using AUC, DCA and calibration curve.
Results: Total of 739 patients met the criteria, of which 53 (7.2%) were HAIs. NSAIDs, surgery, fungi and MDRO detected, hormone drugs and LYMR were independent risk factors. Lasso model screened seven variables, and logistic model identified six risk factors. Union model performed the best with the maximum of the Youden’s index is 0.703, the sensitivity is 95.6%, the specificity is 74.7%, the LR is 3.778. The best AUC of union model is 0.953 (0.928– 0.978), and the accuracy is 87.5%. DCA indicated that the union model provided the best net benefits and calibration curve demonstrated good predictive agreement.
Conclusions: HAIs prediction in COVID-19 patients is feasible and beneficial to improve prognosis. Physicians can use this nomogram to identify high-risk COVID-19 populations for HAIs and tailor follow-up strategies.

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来源期刊
Infection and Drug Resistance
Infection and Drug Resistance Medicine-Pharmacology (medical)
CiteScore
5.60
自引率
7.70%
发文量
826
审稿时长
16 weeks
期刊介绍: About Journal Editors Peer Reviewers Articles Article Publishing Charges Aims and Scope Call For Papers ISSN: 1178-6973 Editor-in-Chief: Professor Suresh Antony An international, peer-reviewed, open access journal that focuses on the optimal treatment of infection (bacterial, fungal and viral) and the development and institution of preventative strategies to minimize the development and spread of resistance.
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