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心力衰竭再入院风险评分的适用性:一项首次欧洲研究。

Applicability of the heart failure Readmission Risk score: A first European study.

作者信息

Formiga Francesc, Masip Joan, Chivite David, Corbella Xavier

机构信息

Geriatric Unit, Internal Medicine Department, Hospital Universitari de Bellvitge-IDIBELL, L'Hospitalet de Llobregat, Barcelona, Spain.

Medical Coding Unit, Hospital Universitari de Bellvitge, L'Hospitalet de Llobregat, Barcelona, Spain.

出版信息

Int J Cardiol. 2017 Jun 1;236:304-309. doi: 10.1016/j.ijcard.2017.02.024.

DOI:10.1016/j.ijcard.2017.02.024
PMID:28407978
Abstract

BACKGROUND

The Readmission Risk score (RR score) has been considered useful to predict Medicare/Medicaid patients' likelihood of 30-day hospital readmission for heart failure (HF). To our knowledge, the accuracy of this prediction model has not been independently validated in other clinical circumstances in Europe.

METHODS

From July 2013 to December 2014, all patients who survived to a first admission due to decompensated HF at our tertiary care teaching hospital were retrospectively included in the study. The RR score was calculated in all patients to predict future 30 and 90-day unplanned all-cause readmissions.

RESULTS

A total of 679 patients were included, of them, 52 patients (7.6%) were readmitted by any cause within 30days after discharge, and 98 (14.4%) within 90days. When compared, the average RR scores for patients readmitted was significantly higher to those who did not, either within 30days (22.7 vs. 20.1) or 90days (22.7 vs. 20.1) of discharge. The 30-day C-statistic was 0.649 (95% CI 0.574-0.723) and the 90-day 0.621 (95% CI 0.560-0.681). There was a significant increase in readmission percentages at 30 and 90days with respect to increasing quartiles of RR score.

CONCLUSION

Our results only support a modest applicability of this predictive model in patients at 30 and 90days, after a first hospitalization for decompensated HF. Probably, the fact that our readmission rate in patients firstly admitted due to HF was very low, generated a bias in the study, discouraging the use of this score in the de novo HF patients.

摘要

背景

再入院风险评分(RR评分)被认为有助于预测医疗保险/医疗补助患者因心力衰竭(HF)30天内再次入院的可能性。据我们所知,该预测模型的准确性尚未在欧洲的其他临床环境中得到独立验证。

方法

2013年7月至2014年12月,所有因失代偿性心力衰竭首次入院存活的患者被回顾性纳入本研究。计算所有患者的RR评分,以预测未来30天和90天内的非计划全因再入院情况。

结果

共纳入679例患者,其中52例(7.6%)在出院后30天内因任何原因再次入院,98例(14.4%)在90天内再次入院。比较发现,再次入院患者的平均RR评分在出院后30天(22.7对20.1)或90天(22.7对20.1)均显著高于未再次入院的患者。30天的C统计量为0.649(95%可信区间0.574 - 0.723),90天的为0.621(95%可信区间0.560 - 0.681)。随着RR评分四分位数的增加,30天和90天的再入院百分比显著增加。

结论

我们的结果仅支持该预测模型在失代偿性心力衰竭首次住院后30天和90天患者中的适度适用性。可能是因为我们因心力衰竭首次入院患者的再入院率非常低,在研究中产生了偏差,不鼓励在初发性心力衰竭患者中使用该评分。

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