Lo Conte Sofia, Fruscoloni Guido, Cartocci Alessandra, Vitiello Martin, De Marco Maria Francesca, Cevenini Gabriele, Barbini Paolo
Unit of Diagnostic and Therapeutic Neuroradiology, Department of Neurology and Human Movement Sciences, Azienda Ospedaliero Universitaria, 53100 Siena, Italy.
Health Management Department, Azienda Ospedaliero Universitaria, 53100 Siena, Italy.
Medicina (Kaunas). 2025 Aug 27;61(9):1543. doi: 10.3390/medicina61091543.
: Early identification of patients at risk of clinical deterioration is essential for optimizing therapeutic management and improving outcomes in general medicine wards. The National Early Warning Score 2 (NEWS2) is a validated tool for predicting patient worsening but integrating it with additional clinical and demographic data can enhance its predictive accuracy and support timely clinical decisions. : In this retrospective cohort study, 2108 patients admitted to the general medicine department of the University Hospital of Siena were analyzed. Logistic regression models incorporating NEWS2 alongside key clinical variables-including age, presence of central venous catheter (CVC), and functional status measured by the Barthel Index-were developed to predict high clinical risk (HCR) and mortality. Model performance was assessed using the area under the ROC curve (AUC). : High clinical risk status developed in 29% of patients. Older age, presence of CVC, lower Barthel Index, and higher NEWS2 scores were significantly associated with both HCR and mortality. The integrated predictive model demonstrated good accuracy, with an AUC of 0.798 for HCR and 0.716 for mortality prediction. : This study suggests that NEWS2, when combined with additional patient-specific variables from the electronic health record, can become a more sophisticated tool for early risk stratification. Such a tool has the potential to support timely clinical intervention and optimized therapeutic management, potentially contributing to improved patient outcomes. While the model may indirectly support nurse workload balancing by identifying patients requiring intensified care, its ultimate impact on patient outcomes requires confirmation through prospective studies.
早期识别有临床病情恶化风险的患者对于优化综合内科病房的治疗管理和改善治疗结果至关重要。国家早期预警评分2(NEWS2)是一种经过验证的预测患者病情恶化的工具,但将其与其他临床和人口统计学数据相结合可以提高其预测准确性,并支持及时的临床决策。
在这项回顾性队列研究中,分析了锡耶纳大学医院综合内科收治的2108例患者。构建了包含NEWS2以及关键临床变量(包括年龄、中心静脉导管(CVC)的存在情况以及通过巴氏指数测量的功能状态)的逻辑回归模型,以预测高临床风险(HCR)和死亡率。使用ROC曲线下面积(AUC)评估模型性能。
29%的患者出现了高临床风险状态。年龄较大、存在CVC、巴氏指数较低以及NEWS2评分较高均与HCR和死亡率显著相关。综合预测模型显示出良好的准确性,HCR预测的AUC为0.798,死亡率预测的AUC为0.716。
这项研究表明,当NEWS2与电子健康记录中的其他患者特定变量相结合时,它可以成为一种更复杂的早期风险分层工具。这样的工具有可能支持及时的临床干预和优化的治疗管理,有可能改善患者的治疗结果。虽然该模型可能通过识别需要加强护理的患者间接支持护士工作量的平衡,但其对患者治疗结果的最终影响需要通过前瞻性研究来证实。