已发表论文

建立和验证列线图预测老年患者心脏手术后医院获得性感染

 

Authors Gao Y, Wang C, Wang Y, Li J, Wang J, Wang S, Tian Y, Liu J, Diao X, Zhao W

Received 25 November 2021

Accepted for publication 16 January 2022

Published 9 February 2022 Volume 2022:17 Pages 141—150

DOI https://doi.org/10.2147/CIA.S351226

Checked for plagiarism Yes

Review by Single anonymous peer review

Peer reviewer comments 2

Editor who approved publication: Dr Zhi-Ying Wu

Background: Hospital-acquired infection (HAI) after cardiac surgery is a common clinical concern associated with adverse prognosis and mortality. The objective of this study is to determine the prevalence of HAI and its associated risk factors in elderly patients following cardiac surgery and to build a nomogram as a predictive model.
Methods: We developed and internally validated a predictive model from a retrospective cohort of 6405 patients aged ≥ 70 years, who were admitted to our hospital and underwent cardiac surgery. The primary outcome was HAI. Multivariable logistic regression analysis was used to identify independent factors significantly associated with HAI. The performance of the established nomogram was assessed by calibration, discrimination, and clinical utility. Internal validation was achieved by bootstrap sampling with 1000 repetitions to reduce the overfit bias.
Results: Independent factors derived from the multivariable analysis to predict HAI were smoking, myocardial infarction, cardiopulmonary bypass use, intraoperative erythrocytes transfusion, extended preoperative hospitalization days and prolonged duration of mechanical ventilation postoperatively. The derivation model showed good discrimination, with a C-index of 0.706 [95% confidence interval 0.671– 0.740], and good calibration [Hosmer–Lemeshow test = 0.139]. Internal validation also maintained optimal discrimination and calibration. The decision curve analysis revealed that the nomogram was clinically useful.
Conclusions: We developed a predictive nomogram for postoperative HAIs based on routinely available data. This predictive tool may enable clinicians to achieve better perioperative management for elderly patients undergoing cardiac surgery but still requires further external validation.
Keywords: prediction, model, older patients, nosocomial infection