Hamad Fouad, Ali Muhammad, Kindawi Mohamed, Mustafa Rawia, Omer Saeed Arwa Noraeldin, Khalafalla Abdelfadeel Wala Hassan, Ibrahim Ensaf
Internal Medicine, University Hospital Galway, Galway, IRL.
Internal Medicine, Portiuncula Hospital in Ballinasloe, Galway, IRL.
Cureus. 2025 Jun 25;17(6):e86773. doi: 10.7759/cureus.86773. eCollection 2025 Jun.
The cardiovascular intensive care unit (CVICU) requires robust quality indicators (QIs) to standardize performance measurement and improve patient outcomes. However, heterogeneity in QI definitions, measurement tools, and implementation practices persists. This systematic review synthesizes evidence on CVICU QIs, evaluates their methodological rigor, and proposes a framework for standardization. Following Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) 2020 guidelines, we searched PubMed, Embase, Scopus, Web of Science, and CINAHL for relevant studies. Eight studies met the inclusion criteria, encompassing retrospective cohorts, predictive models, and mixed-methods designs. Quality assessment employed the Newcastle-Ottawa Scale (NOS) for cohort studies and the Mixed Methods Appraisal Tool (MMAT) for non-randomized studies. Narrative synthesis categorized QIs by Donabedian domains (structure, process, outcome). Included studies (n=8) predominantly focused on outcome QIs (5/8 studies), particularly mortality prediction using machine learning. Risk of bias was moderate to high, with most studies lacking prospective validation or objective measurements. Structural QIs were especially underrepresented, and although Delphi methods were employed, they lacked external validation and reproducibility, limiting generalizability. Process QIs relied on subjective surveys, while structural QIs lacked robust measurement frameworks. Alignment with Donabedian and Institute of Medicine (IOM) frameworks was reported in 6/8 studies, yet consistency in application was limited. CVICU QIs prioritize outcome measurement through artificial intelligence (AI)-driven tools but lack standardization in the development, validation, and operationalization of process and structural indicators. Future work should (1) validate predictive models in multicenter, prospective settings, (2) develop objective and reproducible process metrics, and (3) expand structural QIs for global applicability, accounting for resource constraints, variability in infrastructure, and cultural differences in care delivery. Given the limited number of studies, findings should be interpreted cautiously and considered hypothesis-generating rather than definitive. This review informs efforts to harmonize CVICU performance measurement.
心血管重症监护病房(CVICU)需要强大的质量指标(QIs)来规范绩效评估并改善患者预后。然而,QI定义、测量工具和实施实践中的异质性依然存在。本系统评价综合了关于CVICU QIs的证据,评估了其方法的严谨性,并提出了一个标准化框架。按照系统评价和Meta分析的首选报告项目(PRISMA)2020指南,我们在PubMed、Embase、Scopus、Web of Science和CINAHL中检索了相关研究。八项研究符合纳入标准,包括回顾性队列研究、预测模型和混合方法设计。质量评估采用纽卡斯尔-渥太华量表(NOS)进行队列研究,采用混合方法评估工具(MMAT)进行非随机研究。叙述性综合根据唐纳贝迪安领域(结构、过程、结果)对QIs进行分类。纳入的研究(n = 8)主要集中在结果QIs(5/8项研究),特别是使用机器学习进行死亡率预测。偏倚风险为中度至高,大多数研究缺乏前瞻性验证或客观测量。结构QIs的代表性尤其不足,虽然采用了德尔菲法,但缺乏外部验证和可重复性,限制了普遍性。过程QIs依赖主观调查,而结构QIs缺乏强大的测量框架。6/8项研究报告了与唐纳贝迪安和医学研究所(IOM)框架的一致性,但应用中的一致性有限。CVICU QIs通过人工智能(AI)驱动的工具优先进行结果测量,但在过程和结构指标的开发、验证和实施方面缺乏标准化。未来的工作应(1)在多中心、前瞻性环境中验证预测模型,(2)开发客观且可重复的过程指标,(3)扩展结构QIs以实现全球适用性,同时考虑资源限制、基础设施差异和护理提供中的文化差异。鉴于研究数量有限,研究结果应谨慎解释,并视为产生假设而非确定性结论。本综述为协调CVICU绩效评估的努力提供了参考。