Meng Lihui, Li Jiachen, He Yan, Xiong Ying, Li Jingming, Wang Jing, Shi Ying, Liu Yinglong
Pediatric Cardiac Center, Department of Cardiac Surgery.
Health-care Associated Infection Management Office, Beijing Anzhen Hospital, Capital Medical University, Beijing, China.
Medicine (Baltimore). 2020 Dec 4;99(49):e23324. doi: 10.1097/MD.0000000000023324.
The aim of this study was to identify the main risk factors for health-care-associated infections (HAIs) following cardiac surgery and to establish an effective early warning model for HAIs to enable intervention in an earlier stage.In total, 2227 patients, including 222 patients with postoperative diagnosis of HAIs and 2005 patients with no-HAIs, were continuously enrolled in Beijing Anzhen Hospital, Beijing, China. Propensity score matching was used and 222 matched pairs were created. The risk factors were analyzed with the methods of univariate and multivariate logistic regression. The receiver operating characteristic (ROC) curve was used to test the accuracy of the HAIs early warning model.After propensity score matching, operation time, clamping time, intubation time, urinary catheter time, central venous catheter time, ≥3 blood transfusions, re-endotracheal intubation, length of hospital stay, and length of intensive care unit stay, still showed significant differences between the 2 groups. After logistic model analysis, the independent risk factors for HAIs were medium to high complexity, intubation time, urinary catheter time, and central venous catheter time. The ROC showed the area under curve was 0.985 (confidence interval: 0.975-0.996). When the probability was 0.529, the model had the highest prediction rate, the corresponding sensitivity was 0.946, and the specificity was 0.968.According to the results, the early warning model containing medium to high complexity, intubation time, urinary catheter time, and central venous catheter time enables more accurate predictions and can be used to guide early intervention after pediatric cardiac surgery.
本研究旨在确定心脏手术后医院感染(HAIs)的主要危险因素,并建立有效的HAIs早期预警模型,以便在早期进行干预。在中国北京安贞医院,连续纳入了2227例患者,其中包括222例术后诊断为HAIs的患者和2005例未发生HAIs的患者。采用倾向得分匹配法,创建了222对匹配组。通过单因素和多因素逻辑回归方法分析危险因素。采用受试者工作特征(ROC)曲线检验HAIs早期预警模型的准确性。
倾向得分匹配后,两组在手术时间、阻断时间、插管时间、导尿时间、中心静脉导管留置时间、≥3次输血、再次气管插管、住院时间和重症监护病房住院时间方面仍存在显著差异。经过逻辑模型分析,HAIs的独立危险因素为中高复杂性、插管时间、导尿时间和中心静脉导管留置时间。ROC曲线显示曲线下面积为0.985(置信区间:0.975 - 0.996)。当概率为0.529时,模型预测率最高,相应的敏感度为0.946,特异度为0.968。
根据研究结果,包含中高复杂性、插管时间、导尿时间和中心静脉导管留置时间的早期预警模型能够进行更准确的预测,可用于指导小儿心脏手术后的早期干预。