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评估 DAVROS(急诊护理系统的开发和验证风险调整结果)风险调整模型作为医疗保健质量指标。

Evaluation of the DAVROS (Development And Validation of Risk-adjusted Outcomes for Systems of emergency care) risk-adjustment model as a quality indicator for healthcare.

机构信息

Medical Care Research Unit, School of Health and Related Research, University of Sheffield, Sheffield, UK.

Western Health and The University of Melbourne, Victoria, Australia.

出版信息

Emerg Med J. 2014 Jun;31(6):471-5. doi: 10.1136/emermed-2013-202359. Epub 2013 Apr 19.

Abstract

BACKGROUND AND OBJECTIVE

Risk-adjusted mortality rates can be used as a quality indicator if it is assumed that the discrepancy between predicted and actual mortality can be attributed to the quality of healthcare (ie, the model has attributional validity). The Development And Validation of Risk-adjusted Outcomes for Systems of emergency care (DAVROS) model predicts 7-day mortality in emergency medical admissions. We aimed to test this assumption by evaluating the attributional validity of the DAVROS risk-adjustment model.

METHODS

We selected cases that had the greatest discrepancy between observed mortality and predicted probability of mortality from seven hospitals involved in validation of the DAVROS risk-adjustment model. Reviewers at each hospital assessed hospital records to determine whether the discrepancy between predicted and actual mortality could be explained by the healthcare provided.

RESULTS

We received 232/280 (83%) completed review forms relating to 179 unexpected deaths and 53 unexpected survivors. The healthcare system was judged to have potentially contributed to 10/179 (8%) of the unexpected deaths and 26/53 (49%) of the unexpected survivors. Failure of the model to appropriately predict risk was judged to be responsible for 135/179 (75%) of the unexpected deaths and 2/53 (4%) of the unexpected survivors. Some 10/53 (19%) of the unexpected survivors died within a few months of the 7-day period of model prediction.

CONCLUSIONS

We found little evidence that deaths occurring in patients with a low predicted mortality from risk-adjustment could be attributed to the quality of healthcare provided.

摘要

背景与目的

如果假设预测死亡率与实际死亡率之间的差异可以归因于医疗保健质量(即模型具有归因有效性),那么风险调整后的死亡率可以用作质量指标。开发和验证用于紧急医疗保健系统的风险调整结局(DAVROS)模型预测急诊入院患者的 7 天死亡率。我们旨在通过评估 DAVROS 风险调整模型的归因有效性来检验这一假设。

方法

我们从参与 DAVROS 风险调整模型验证的七家医院中选择了观察死亡率与预测死亡率之间差异最大的病例。每家医院的评审员评估医院记录,以确定预测死亡率与实际死亡率之间的差异是否可以用所提供的医疗保健来解释。

结果

我们收到了 232/280(83%)份关于 179 例意外死亡和 53 例意外存活者的完整评审表。医疗保健系统被认为可能导致 10/179(8%)例意外死亡和 26/53(49%)例意外存活者。模型未能适当预测风险被认为是 135/179(75%)例意外死亡和 2/53(4%)例意外存活者的原因。约有 10/53(19%)例意外存活者在模型预测的 7 天期间后几个月内死亡。

结论

我们发现几乎没有证据表明,风险调整后预测死亡率低的患者死亡可以归因于所提供的医疗保健质量。

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