A Novel Risk Score to Predict Thirty-Day Readmissions after Acute Type A Aortic Dissections

Danial Ahmad, E. Aranda-Michel, Derek Serna-Gallegos, G. Arnaoutakis, James A. Brown, Sarah Yousef, Rashmi Rao, Yisi Wang, Julie Phillippi, Ibrahim Sultan
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Abstract

Background: Readmissions following acute type A aortic dissections (ATAAD) are associated with potentially worse clinical outcomes and increased hospital costs. Predicting which patients are at risk for readmission may guide patient management prior to discharge. Methods: The National Readmissions Database was utilized to identify patients treated for ATAAD between 2010 and 2018. Univariate mixed effects logistic regression was used to assess each variable. Variables were assigned risk points based off the bootstrapped (bias-corrected) odds ratio of the final variable model according to the Johnson's scoring system. A mixed effect logistic regression was run on the risk score (sum of risk points) and 30-day readmission. Calibration plots and predicted readmission curves were generated for model assessment. Results: A total of 30,727 type A aortic dissections were identified. The majority of ATAAD (66%) were in men with a median age of 61 years and 30-day readmission rate of 19.4%. The risk scores ranging from –1 to 14 mapped to readmission probabilities between 3.5% and 29% for ATAAD. The predictive model showed good calibration and receiver operator characteristics with an area under the curve (AUC) of 0.81. Being a resident of the hospital state (OR: 2.01 [1.64, 2.47], p < 0.001) was the highest contributor to readmissions followed by chronic kidney disease (1.35 [1.16, 1.56], p = 0), discharge to a short-term facility (1.31 [1.09, 1.57], p = 0.003), and developing a myocardial infarction (1.20 [1.00, 1.45], p = 0.048). Conclusions: The readmission model had good predictive capability given by the large AUC. Being a resident in the State of the index admission was the most significant contributor to readmission.
预测急性 A 型主动脉夹层术后三十天再入院的新型风险评分法
背景:急性 A 型主动脉夹层(ATAAD)术后再入院可能会导致更差的临床预后和更高的住院费用。预测哪些患者有再次入院的风险可以指导出院前的患者管理。方法:利用美国国家再入院数据库(National Readmissions Database)来识别2010年至2018年间接受ATAAD治疗的患者。采用单变量混合效应逻辑回归评估每个变量。根据约翰逊评分系统,基于最终变量模型的自引导(偏差校正)几率,为变量分配风险点。对风险评分(风险点总和)和 30 天再入院情况进行混合效应逻辑回归。生成校准图和预测再入院曲线,以便对模型进行评估。结果:共发现 30,727 例 A 型主动脉夹层。大部分(66%)ATAAD 患者为男性,中位年龄为 61 岁,30 天再入院率为 19.4%。风险评分从-1到14,与ATAAD再入院概率的对应关系为3.5%到29%。预测模型显示出良好的校准和接收器运算特性,曲线下面积(AUC)为 0.81。住院州居民(OR:2.01 [1.64, 2.47],p < 0.001)是导致再入院的最大因素,其次是慢性肾病(1.35 [1.16, 1.56],p = 0)、出院到短期机构(1.31 [1.09, 1.57],p = 0.003)和心肌梗死(1.20 [1.00, 1.45],p = 0.048)。结论从较大的 AUC 值来看,再入院模型具有良好的预测能力。作为指数入院时所在州的居民是导致再入院的最重要因素。
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