评估外科主动脉瓣置换术医院绩效的动态更新策略。

IF 6.7 2区 医学 Q1 CARDIAC & CARDIOVASCULAR SYSTEMS
Jackie Pollack, Wei Yang, George J Arnaoutakis, Michael J Kallan, Stephen E Kimmel
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引用次数: 0

摘要

背景:确定预期结果的预测模型很少更新(即静态),这可能会降低准确性并随着时间的推移对医院绩效进行错误分类。动态模型包含了随时间的变化,可以提高医院比较的准确性和公平性。本研究评估了与静态模型相比,动态更新是否会改变手术主动脉瓣置换术患者的医院排名和异常值检测。方法:这项回顾性队列研究评估了53家医院的绩效,使用的数据来自宾夕法尼亚州卫生保健成本控制委员会。采用临床和人口统计学变量对1999年至2006年的数据建立多变量logistic回归模型,预测术后30天死亡率,并将其应用于2007年至2018年的检测数据,比较4种策略:(1)基于固定参数的静态模型;(2)基于胸外科学会方法的年度校正因子;(3)年度再校准的校准回归;(4)动态逻辑状态空间模型,不断更新模型系数。使用观察到的期望比率和Z分数来评估性能。较低的数值表明结果好于预期。结果:训练样本包括14070例患者(平均年龄66.6岁;43.1%女性);检测样本包括29127例患者(平均年龄67.4岁;39.1%的女性)。与校正回归模型(-3.04 ~ 2.85)、校正因子(-2.87 ~ 3.24)和动态logistic状态空间模型(-2.57 ~ 3.03)相比,静态模型的Z评分变异性最大(-6.97 ~ 1.38)。静态模型将15家医院标记为明显好于预期;只有3个(20.0%)使用校正因子和动态逻辑状态空间模型保持这种分类,5个(33.3%)使用校准回归。在静态模型下,没有医院被分类为显著差于预期,而校准回归模型识别出6家,动态logistic状态空间模型和校正因子均识别出7家。结论:静态模型可能会对医院绩效和排名进行错误分类。动态策略影响异常值检测并随时间改变医院排名。定期更新模型可以更好地反映当前的表现,支持更公平的医院比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic Updating Strategies to Assess Hospital Performance of Surgical Aortic Valve Replacement.

Background: Prediction models determining expected outcomes are infrequently updated (ie, static), which may reduce accuracy and misclassify hospital performance over time. Dynamic models incorporate changes over time and may improve accuracy and fairness in hospital comparisons. This study evaluated whether dynamic updating, compared with a static model, altered hospital rankings and outlier detection among surgical aortic valve replacement patients.

Methods: This retrospective cohort study assessed performance across 53 hospitals using claims data from the Pennsylvania Health Care Cost Containment Council. A multivariable logistic regression model using clinical and demographic variables was developed on data from 1999 to 2006 to predict 30-day postoperative mortality, then applied to testing data from 2007 to 2018 to compare 4 strategies: (1) a static model with fixed parameters, (2) an annual correction factor based on The Society of Thoracic Surgeons methodology, (3) calibration regression for annual recalibration, and (4) dynamic logistic state space model to continuously update model coefficients. Performance was evaluated using observed-to-expected ratios and Z scores. Lower values indicate better-than-expected outcomes.

Results: The training sample included 14 070 patients (mean age 66.6; 43.1% women); the testing sample included 29 127 patients (mean age 67.4; 39.1% women). The static model had the widest Z score variability (range -6.97 to 1.38), compared with calibration regression (-3.04 to 2.85), correction factor (-2.87 to 3.24), and dynamic logistic state space model (-2.57 to 3.03). The static model labeled 15 hospitals as significantly better-than-expected; only 3 (20.0%) maintained this classification with the correction factor and dynamic logistic state space model, and 5 (33.3%) with calibration regression. No hospitals were classified as significantly worse-than-expected under the static model, whereas calibration regression identified 6, and both dynamic logistic state space model and the correction factor identified 7.

Conclusions: Static models may misclassify hospital performance and rankings. Dynamic strategies influence outlier detection and change hospital rankings over time. Regular model updates may better reflect current performance, supporting fairer hospital comparisons.

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来源期刊
Circulation-Cardiovascular Quality and Outcomes
Circulation-Cardiovascular Quality and Outcomes CARDIAC & CARDIOVASCULAR SYSTEMS-
CiteScore
8.50
自引率
2.90%
发文量
357
审稿时长
4-8 weeks
期刊介绍: Circulation: Cardiovascular Quality and Outcomes, an American Heart Association journal, publishes articles related to improving cardiovascular health and health care. Content includes original research, reviews, and case studies relevant to clinical decision-making and healthcare policy. The online-only journal is dedicated to furthering the mission of promoting safe, effective, efficient, equitable, timely, and patient-centered care. Through its articles and contributions, the journal equips you with the knowledge you need to improve clinical care and population health, and allows you to engage in scholarly activities of consequence to the health of the public. Circulation: Cardiovascular Quality and Outcomes considers the following types of articles: Original Research Articles, Data Reports, Methods Papers, Cardiovascular Perspectives, Care Innovations, Novel Statistical Methods, Policy Briefs, Data Visualizations, and Caregiver or Patient Viewpoints.
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