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EPIC 的再入院风险模型、LACE+ 指数和 SQLape 作为非计划性住院再入院预测因子的外部验证:瑞士单中心回顾性诊断队列研究。

External validation of EPIC's Risk of Unplanned Readmission model, the LACE+ index and SQLape as predictors of unplanned hospital readmissions: A monocentric, retrospective, diagnostic cohort study in Switzerland.

机构信息

Staff Medicine, Cantonal Hospital Lucerne, Lucerne, Switzerland.

Department of Health Sciences and Medicine, University of Lucerne, Lucerne, Switzerland.

出版信息

PLoS One. 2021 Nov 12;16(11):e0258338. doi: 10.1371/journal.pone.0258338. eCollection 2021.

Abstract

INTRODUCTION

Readmissions after an acute care hospitalization are relatively common, costly to the health care system, and are associated with significant burden for patients. As one way to reduce costs and simultaneously improve quality of care, hospital readmissions receive increasing interest from policy makers. It is only relatively recently that strategies were developed with the specific aim of reducing unplanned readmissions using prediction models to identify patients at risk. EPIC's Risk of Unplanned Readmission model promises superior performance. However, it has only been validated for the US setting. Therefore, the main objective of this study is to externally validate the EPIC's Risk of Unplanned Readmission model and to compare it to the internationally, widely used LACE+ index, and the SQLAPE® tool, a Swiss national quality of care indicator.

METHODS

A monocentric, retrospective, diagnostic cohort study was conducted. The study included inpatients, who were discharged between the 1st of January 2018 and the 31st of December 2019 from the Lucerne Cantonal Hospital, a tertiary-care provider in Central Switzerland. The study endpoint was an unplanned 30-day readmission. Models were replicated using the original intercept and beta coefficients as reported. Otherwise, score generator provided by the developers were used. For external validation, discrimination of the scores under investigation were assessed by calculating the area under the receiver operating characteristics curves (AUC). Calibration was assessed with the Hosmer-Lemeshow X2 goodness-of-fit test This report adheres to the TRIPOD statement for reporting of prediction models.

RESULTS

At least 23,116 records were included. For discrimination, the EPIC´s prediction model, the LACE+ index and the SQLape® had AUCs of 0.692 (95% CI 0.676-0.708), 0.703 (95% CI 0.687-0.719) and 0.705 (95% CI 0.690-0.720). The Hosmer-Lemeshow X2 tests had values of p<0.001.

CONCLUSION

In summary, the EPIC´s model showed less favorable performance than its comparators. It may be assumed with caution that the EPIC´s model complexity has hampered its wide generalizability-model updating is warranted.

摘要

简介

急性护理住院后的再入院相对较为常见,这不仅给医疗系统带来了巨大的经济负担,同时也给患者带来了巨大的负担。为了降低成本并同时提高医疗质量,医院再入院问题越来越受到政策制定者的关注。直到最近,才开发出了使用预测模型识别高危患者的策略,以降低非计划性再入院率。EPIC 的非计划性再入院风险模型有望取得更好的效果。然而,该模型仅在美国得到验证。因此,本研究的主要目的是对 EPIC 的非计划性再入院风险模型进行外部验证,并将其与国际上广泛使用的 LACE+指数和 SQLAPE®工具(瑞士国家医疗质量指标)进行比较。

方法

本研究为单中心、回顾性、诊断队列研究。研究纳入了 2018 年 1 月 1 日至 2019 年 12 月 31 日期间从瑞士中部卢塞恩州立医院出院的住院患者。研究终点为 30 天内的非计划性再入院。使用报告中提供的原始截距和β系数复制模型。否则,将使用开发人员提供的评分生成器。对于外部验证,通过计算受试者工作特征曲线下的面积(AUC)评估所研究评分的区分度。使用 Hosmer-Lemeshow X2 拟合优度检验评估校准。本报告符合预测模型报告的 TRIPOD 声明。

结果

至少纳入了 23116 条记录。对于区分度,EPIC 预测模型、LACE+指数和 SQLape®的 AUC 值分别为 0.692(95%CI 0.676-0.708)、0.703(95%CI 0.687-0.719)和 0.705(95%CI 0.690-0.720)。Hosmer-Lemeshow X2 检验的 p 值均<0.001。

结论

综上所述,EPIC 模型的表现不如其对照组。可以谨慎地假设,EPIC 模型的复杂性阻碍了其广泛的通用性,需要进行模型更新。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9085/8589185/ddcaa0644bc3/pone.0258338.g001.jpg

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