Prognostic risk prediction model for patients with acute exacerbation of chronic obstructive pulmonary disease (AECOPD): a systematic review and meta-analysis.

IF 5.8 2区 医学 Q1 Medicine Respiratory Research Pub Date : 2024-11-14 DOI:10.1186/s12931-024-03033-4
Zihan Xu, Fan Li, You Xin, Ye Wang, Yuping Wang
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Abstract

Background: Chronic obstructive pulmonary disease (COPD) is a prevalent respiratory condition and a leading cause of mortality, with acute exacerbations (AECOPD) significantly complicating its management and prognosis. Despite the development of various prognostic prediction models for patients with AECOPD, their performance and clinical applicability remain unclear, necessitating a systematic review to evaluate these models and provide guidance for their future improvement and clinical use.

Method: PubMed, Web of Science, CINAHL, Scopus, EMBASE, and Medline were searched for studies published from their inception until February 5, 2024. Data extraction and evaluation were conducted using the Checklist for Critical Appraisal and Data Extraction for Systematic Reviews of Prediction Modelling Studies (CHARMS). The Prediction model Risk Of Bias Assessment Tool (PROBAST) was employed to assess the risk of bias and applicability of the models.

Results: After deduplication and screening 5942 retrieved articles, 46 studies comprising 53 models were included. Of these, 17 (37.0%) studies developed from studies conducted in China. All models were based on cohort studies. Mortality was the predicted outcome in 27 (50.9%) models. Logistic regression was used in 41 (77.4%) models, while machine learning methods were employed in 9 (17.0%) models. The median (minimum, maximum) sample size for model development was 672 (106, 150,035). The median (minimum, maximum) number of predictors per model was 5 (2, 42). Frequently used predictors included age (n = 28), dyspnea severity scores (n = 12), and PaCO2 (n = 11). The pooled AUC was 0.80 for mortality prediction models and 0.84 for hospitalization-related outcomes. 52 models have a high overall risk of bias, and all models were judged to have low concern regarding applicability. Major sources of bias included insufficient sample sizes (83.0%), reliance on univariate analysis for predictor selection (73.6%), inappropriate internal and external validation methods (54.7%), inappropriate inclusion and exclusion criteria for study subjects (50.9%) and so on. The only model with low bias was the PEARL score.

Conclusion: Current prognostic risk prediction models for patients with AECOPD generally exhibit high bias. Future efforts should standardize model development and validation methods, and develop widely usable clinical models.

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慢性阻塞性肺疾病(AECOPD)急性加重期患者的预后风险预测模型:系统综述与荟萃分析。
背景:慢性阻塞性肺疾病(COPD)是一种常见的呼吸系统疾病,也是导致死亡的主要原因之一,急性加重期(AECOPD)使其管理和预后大大复杂化。尽管针对 AECOPD 患者开发了各种预后预测模型,但其性能和临床适用性仍不明确,因此有必要对这些模型进行系统性回顾评估,并为其未来改进和临床应用提供指导:方法:检索了 PubMed、Web of Science、CINAHL、Scopus、EMBASE 和 Medline 上从开始到 2024 年 2 月 5 日发表的研究。数据提取和评估采用预测模型研究系统综述批判性评估和数据提取核对表(CHARMS)进行。预测模型偏倚风险评估工具(PROBAST)用于评估模型的偏倚风险和适用性:在对检索到的 5942 篇文章进行去重和筛选后,共纳入了 46 项研究,包括 53 个模型。其中,17 项研究(37.0%)源自在中国进行的研究。所有模型均基于队列研究。在 27 个(50.9%)模型中,死亡率是预测结果。41个(77.4%)模型采用了逻辑回归,9个(17.0%)模型采用了机器学习方法。模型开发样本量的中位数(最小,最大)为 672(106,150,035)。每个模型预测因子数量的中位数(最小,最大)为 5(2,42)。常用的预测因子包括年龄(n = 28)、呼吸困难严重程度评分(n = 12)和 PaCO2(n = 11)。死亡率预测模型的集合 AUC 为 0.80,住院相关结果的集合 AUC 为 0.84。52 个模型的总体偏倚风险较高,所有模型的适用性均被判定为较低。偏倚的主要来源包括样本量不足(83.0%)、依赖单变量分析选择预测因子(73.6%)、内部和外部验证方法不当(54.7%)、研究对象的纳入和排除标准不当(50.9%)等。唯一偏倚较低的模型是 PEARL 评分:结论:目前针对 AECOPD 患者的预后风险预测模型普遍存在较高的偏倚性。结论:目前针对 AECOPD 患者的预后风险预测模型普遍存在较高的偏倚性,今后的工作应规范模型的开发和验证方法,并开发出广泛可用的临床模型。
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来源期刊
Respiratory Research
Respiratory Research RESPIRATORY SYSTEM-
CiteScore
9.70
自引率
1.70%
发文量
314
审稿时长
4-8 weeks
期刊介绍: Respiratory Research publishes high-quality clinical and basic research, review and commentary articles on all aspects of respiratory medicine and related diseases. As the leading fully open access journal in the field, Respiratory Research provides an essential resource for pulmonologists, allergists, immunologists and other physicians, researchers, healthcare workers and medical students with worldwide dissemination of articles resulting in high visibility and generating international discussion. Topics of specific interest include asthma, chronic obstructive pulmonary disease, cystic fibrosis, genetics, infectious diseases, interstitial lung diseases, lung development, lung tumors, occupational and environmental factors, pulmonary circulation, pulmonary pharmacology and therapeutics, respiratory immunology, respiratory physiology, and sleep-related respiratory problems.
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