Shin Hyun A, Kang Hyeonji, Choi Mona
College of Nursing, Yonsei University, Seoul, Korea.
College of Nursing, Mo-Im Kim Nursing Research Institute, Yonsei University, Seoul, Korea.
Healthc Inform Res. 2025 Jan;31(1):23-36. doi: 10.4258/hir.2025.31.1.23. Epub 2025 Jan 31.
Emergency department (ED) overcrowding significantly impacts healthcare efficiency, safety, and resource management. Predictive models that utilize triage information can streamline the admission process. This review evaluates existing hospital admission prediction models that have been developed or validated using triage data for adult ED patients.
A systematic search of PubMed, Embase, CINAHL, Web of Science, and the Cochrane Library was conducted. Studies were selected if they developed or validated predictive models for hospital admission using triage data from adult ED patients. Data extraction adhered to the CHARMS (Checklist for Critical Appraisal and Data Extraction for Systematic Reviews of Prediction Modelling Studies), and the risk of bias was evaluated using PROBAST (Prediction model Risk of Bias Assessment Tool).
Twenty studies met the inclusion criteria, employing logistic regression and machine learning techniques. Logistic regression was noted for its traditional use and clinical interpretability, whereas machine learning provided enhanced flexibility and potential for better predictive accuracy. Common predictors included patient demographics, triage category, vital signs, and mode of arrival. The area under the curve values for model performance ranged from 0.80 to 0.89, demonstrating strong discriminatory ability. However, external validation was limited, and there was variability in outcome definitions and model generalizability.
Predictive models based on triage data show promise in supporting ED operations by facilitating early predictions of hospital admissions, which could help decrease boarding times and enhance patient flow. Further research is necessary to validate these models in various settings to confirm their applicability and reliability.
急诊科过度拥挤对医疗效率、安全和资源管理有显著影响。利用分诊信息的预测模型可简化入院流程。本综述评估了已开发或验证的、使用成年急诊科患者分诊数据的现有医院入院预测模型。
对PubMed、Embase、CINAHL、Web of Science和Cochrane图书馆进行了系统检索。如果研究使用成年急诊科患者的分诊数据开发或验证了医院入院预测模型,则将其纳入。数据提取遵循CHARM(预测模型研究系统评价的关键评估和数据提取清单),并使用PROBAST(预测模型偏倚风险评估工具)评估偏倚风险。
20项研究符合纳入标准,采用了逻辑回归和机器学习技术。逻辑回归因其传统用途和临床可解释性而受到关注,而机器学习则提供了更高的灵活性和更好的预测准确性潜力。常见的预测因素包括患者人口统计学特征、分诊类别、生命体征和到达方式。模型性能的曲线下面积值范围为0.80至0.89,显示出较强的区分能力。然而,外部验证有限,结果定义和模型可推广性存在差异。
基于分诊数据的预测模型在支持急诊科运营方面显示出前景,通过促进对医院入院的早期预测,这有助于减少住院时间并改善患者流程。有必要进行进一步研究,在各种环境中验证这些模型,以确认其适用性和可靠性。