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利用机器学习通过老年急诊科创新干预预测医院处置情况。

Using Machine Learning to Predict Hospital Disposition With Geriatric Emergency Department Innovation Intervention.

作者信息

Bunney Gabrielle, Tran Steven, Han Sae, Gu Carol, Wang Hanyin, Luo Yuan, Dresden Scott

机构信息

Department of Emergency Medicine, Northwestern University, Chicago, IL.

Feinberg School of Medicine, Northwestern University, Chicago, IL.

出版信息

Ann Emerg Med. 2023 Mar;81(3):353-363. doi: 10.1016/j.annemergmed.2022.07.026. Epub 2022 Oct 15.

Abstract

STUDY OBJECTIVE

The Geriatric Emergency Department Innovations (GEDI) program is a nurse-based geriatric assessment and care coordination program that reduces preventable admissions for older adults. Unfortunately, only 5% of older adults receive GEDI care because of resource limitations. The objective of this study was to predict the likelihood of hospitalization accurately and consistently with and without GEDI care using machine learning models to better target patients for the GEDI program.

METHODS

We performed a cross-sectional observational study of emergency department (ED) patients between 2010 and 2018. Using propensity-score matching, GEDI patients were matched to other older adult patients. Multiple models, including random forest, were used to predict hospital admission. Multiple second-layer models, including random forest, were then used to predict whether GEDI assessment would change predicted hospital admission. Final model performance was reported as the area under the curve using receiver operating characteristic models.

RESULTS

We included 128,050 patients aged over 65 years. The random forest ED disposition model had an area under the curve of 0.774 (95% confidence interval [CI] 0.741 to 0.806). In the random forest GEDI change-in-disposition model, 24,876 (97.3%) ED visits were predicted to have no change in disposition with GEDI assessment, and 695 (2.7%) ED visits were predicted to have a change in disposition with GEDI assessment.

CONCLUSION

Our machine learning models could predict who will likely be discharged with GEDI assessment with good accuracy and thus select a cohort appropriate for GEDI care. In addition, future implementation through integration into the electronic health record may assist in selecting patients to be prioritized for GEDI care.

摘要

研究目的

老年急诊科创新(GEDI)项目是一项以护士为基础的老年评估和护理协调项目,可减少老年人可预防的住院情况。遗憾的是,由于资源限制,只有5%的老年人接受GEDI护理。本研究的目的是使用机器学习模型准确且一致地预测有无GEDI护理情况下的住院可能性,以便更好地为GEDI项目确定目标患者。

方法

我们对2010年至2018年间急诊科(ED)患者进行了一项横断面观察性研究。使用倾向得分匹配法,将GEDI患者与其他老年患者进行匹配。使用包括随机森林在内的多种模型预测住院情况。然后使用包括随机森林在内的多种第二层模型预测GEDI评估是否会改变预测的住院情况。最终模型性能使用受试者操作特征模型以曲线下面积报告。

结果

我们纳入了128,050名65岁以上的患者。随机森林ED处置模型的曲线下面积为0.774(95%置信区间[CI]0.741至0.806)。在随机森林GEDI处置变化模型中,预计24,876次(97.3%)ED就诊的处置情况在GEDI评估后不会改变,695次(2.7%)ED就诊的处置情况在GEDI评估后预计会改变。

结论

我们的机器学习模型能够以较高的准确性预测哪些患者可能通过GEDI评估出院,从而选择适合GEDI护理的队列。此外,未来通过集成到电子健康记录中实施该模型可能有助于选择优先接受GEDI护理的患者。

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