批判性评价
髋部骨折
肺炎
医学
重症监护医学
系统回顾
梅德林
物理疗法
替代医学
骨质疏松症
病理
内科学
政治学
法学
作者
Zhiqiang He,Geyu Zhong,Wenjin Han,Mengyu Han,Wenbin Wu,Xiaoling Zhou,Yaru Yang,An Yu,Li Jin
摘要
ABSTRACT Background Although several models have been developed to predict postoperative pneumonia in elderly hip fracture patients, no systematic review of the model quality and clinical applicability has been reported. Objective To systematically review and critically appraise existing models for postoperative pneumonia in elderly hip fracture patients. Design Systematic review and meta‐analysis. Methods 10 databases were systematically searched from inception to April 15, 2024, updated on August 26. Two reviewers independently performed literature selection, information extraction and quality assessment. A narrative synthesis was employed to summarise the characteristics of the models. Meta‐analysis was performed using Stata 17.0. Results 13 studies containing 25 models were included. The prevalence of pneumonia was 9.62% (95% CI: 7.62%–11.62%). Age (53.8%), hypoproteinemia (46.2%), chronic obstructive pulmonary disease (COPD, 30.8%), gender (30.8%), activity of daily living score (ADL, 30.8%) and American Society of Anesthesiologists (ASA, 30.8%) score were the top six predictors. All models reported area under curve (AUC: 0.617–0.996). 9 studies (69.2%) used the Hosmer‐Lemeshow (H‐L) test, calibration curves, or Brier scores to evaluate the calibration. 5 studies (38.5%) performed internal validation, 4 studies (30.8%) performed external validation. All studies had a high risk of bias due to single sample source, inappropriate data processing, inadequate model evaluation, and negligence of calibration and validation. 10 studies (76.9%) had good applicability. Conclusions Prediction models for postoperative pneumonia in elderly hip fracture patients are still in the developing stage. The validation and evaluation of existing models are poor. Future studies should focus on robust external validation and updating. Additionally, the Transparent Reporting of a Multivariable Prediction Model for Individual Prognosis or Diagnosis + artificial intelligence (TRIPOD+AI) statement should be followed. Relevance to Clinical Practice Prediction models are effective in discriminating postoperative pneumonia in elderly hip fracture patients, but further external validation and adjustment are still warranted.
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