创伤患者非计划的重症监护病房入院:一个关键的评估。

Amlan Swain, Deb Sanjay Nag, Jayanta Kumar Laik, Seelora Sahu, Mrunalkant Panchal, Shivani Srirala
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引用次数: 0

摘要

在最初的普通病房安置之后,计划外的重症监护病房(ICU)入住(UP-ICU)与患者预后差有关,是医疗保健机构的一个关键质量指标。医疗机构采用了许多预测模型,如生理评分(如急性生理和慢性健康评估II、修订创伤评分和24小时死亡概率模型II)和解剖学评分(损伤严重程度评分和新损伤严重程度评分)来识别高风险患者。尽管生理评分在预测死亡率方面经常超过解剖评分,但其对创伤患者的特异性有限,其临床适用性可能有限。最初提出用于ICU再入院预测,转移评分的稳定性和工作量指标的有效性不一致。机器学习提供了一个很有前途的选择。几项研究表明,机器学习模型,包括那些使用电子健康记录(EHR)数据的模型,可以比传统的评分系统更准确地预测创伤患者的死亡和ICU的入院情况。这些模型确定了现有方法无法捕获的唯一预测因子。然而,挑战仍然存在,包括与EHR系统的集成和数据输入的复杂性。重症监护外展计划和远程医疗可以帮助减少UP-ICU的入院率;然而,由于成本和实施方面的挑战,它们的有效性尚不清楚。减少upi -ICU入院的策略包括改进分诊系统,实施基于证据的ICU患者管理方案,优先考虑院前干预和稳定,以优化创伤护理的“黄金时间”。为了改善患者的预后并减轻UP-ICU入院的负担,需要进一步的研究来验证和实施这些策略并完善机器学习模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unplanned intensive care unit admissions in trauma patients: A critical appraisal.

Unplanned intensive care unit (ICU) admissions (UP-ICU) following initial general ward placement are associated with poor patient outcomes and represent a key quality indicator for healthcare facilities. Healthcare facilities have employed numerous predictive models, such as physiological scores (e.g., Acute Physiology and Chronic Health Evaluation II, Revised Trauma Score, and Mortality Probability Model II at 24 hours) and anatomical scores (Injury Severity Score and New Injury Severity Score), to identify high-risk patients. Although physiological scores frequently surpass anatomical scores in predicting mortality, their specificity for trauma patients is limited, and their clinical applicability may be limited. Initially proposed for ICU readmission prediction, the stability and workload index for the transfer score has demonstrated inconsistent validity. Machine learning offers a promising alternative. Several studies have shown that machine learning models, including those that use electronic health records (EHR) data, can more accurately predict trauma patients' deaths and admissions to the ICU than traditional scoring systems. These models identify unique predictors that are not captured by existing methods. However, challenges remain, including integration with EHR systems and data entry complexities. Critical care outreach programs and telemedicine can help reduce UP-ICU admissions; however, their effectiveness remains unclear because of costs and implementation challenges, respectively. Strategies to reduce UP-ICU admissions include improving triage systems, implementing evidence-based protocols for ICU patient management, and prioritizing prehospital intervention and stabilization to optimize the "golden hour" of trauma care. To improve patient outcomes and reduce the burden of UP-ICU admissions, further studies are required to validate and implement these strategies and refine machine learning models.

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