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使用全国再入院数据库的心力衰竭再入院预测模型

Predictive Model for Heart Failure Readmission Using Nationwide Readmissions Database.

作者信息

Zheng Lillian, Smith Nathan J, Teng Bi Qing, Szabo Aniko, Joyce David L

机构信息

Department of Medicine, Medical College of Wisconsin, Milwaukee.

Division of Cardiothoracic Surgery, Department of Surgery, Medical College of Wisconsin, Milwaukee.

出版信息

Mayo Clin Proc Innov Qual Outcomes. 2022 May 17;6(3):228-238. doi: 10.1016/j.mayocpiqo.2022.04.002. eCollection 2022 Jun.

Abstract

OBJECTIVE

To generate a heart failure (HF) readmission prediction model using the Nationwide Readmissions Database to guide management and reduce HF readmissions.

PATIENTS AND METHODS

A retrospective analysis was performed for patients listed for HF admissions in the Nationwide Readmissions Database from January 1, 2010, to December 31, 2014. A Cox proportional hazards model for sample survey data for the prediction of readmission for all patients with HF was implemented using a derivation cohort (2010-2012). We generated receiver operating characteristic (ROC) curves and estimated area under the ROC curve at each time point (30, 60, 90, and 180 days) to assess the accuracy of our predictive model using the derivation cohort (2010-2012) and compared it with the validation cohort (2013-2014). A risk score was computed for the validation cohort. On the basis of the total risk score, we calculated the probability of readmission at 30, 60, 90, and 180 days.

RESULTS

Approximately 1,420,564 patients were admitted for HF, contributing to 1,817,735 total HF admissions. Of these, 665,867 patients had at least 1 readmission for HF. The 10 most common comorbidities for readmitted patients included hypertension, diabetes mellitus, renal failure, chronic pulmonary disease, deficiency anemia, fluid and electrolyte disorders, obesity, hypothyroidism, peripheral vascular disorders, and depression. The area under the ROC curve for the prediction model was 0.58 in the derivation cohort and 0.59 in the validation cohort.

CONCLUSION

The prediction model will find clinical utility at point of care in optimizing the management of patients with HF and reducing HF readmissions.

摘要

目的

利用全国再入院数据库生成心力衰竭(HF)再入院预测模型,以指导管理并减少HF再入院情况。

患者与方法

对2010年1月1日至2014年12月31日全国再入院数据库中因HF入院的患者进行回顾性分析。使用一个推导队列(2010 - 2012年)对所有HF患者的再入院预测实施样本调查数据的Cox比例风险模型。我们生成了接受者操作特征(ROC)曲线,并估计了每个时间点(30、60、90和180天)的ROC曲线下面积,以使用推导队列(2010 - 2012年)评估我们预测模型的准确性,并将其与验证队列(2013 - 2014年)进行比较。为验证队列计算风险评分。基于总风险评分,我们计算了30、60、90和180天时再入院的概率。

结果

约1,420,564例患者因HF入院,导致总计1,817,735次HF入院。其中,665,867例患者至少有1次HF再入院。再入院患者最常见的10种合并症包括高血压、糖尿病、肾衰竭、慢性肺病、缺铁性贫血、体液和电解质紊乱、肥胖、甲状腺功能减退、外周血管疾病和抑郁症。预测模型在推导队列中的ROC曲线下面积为0.58,在验证队列中为0.59。

结论

该预测模型将在临床护理点找到临床应用价值,以优化HF患者的管理并减少HF再入院情况。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/031d/9120065/863d6ee9b8eb/gr1.jpg

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