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心力衰竭患者出院时日常生活独立性预测临床预测模型的开发与内部验证:使用日本全国住院患者数据库真实世界数据集进行分析

Development and internal validation of a clinical prediction model to predict independence in daily living at discharge for patients with heart failure: analysis using a Japanese national inpatient database real-world dataset.

作者信息

Tamura Shuntaro, Kamo Tomohiko, Miyata Kazuhiro, Igarashi Tatsuya, Momosaki Ryo

机构信息

Department of Physical Therapy, Ota college of medical technology, Gunma, Japan.

Department of Physical Therapy, Faculty of Rehabilitation, Gunma Paz University, Gunma, Japan.

出版信息

Physiother Theory Pract. 2025 Apr;41(4):741-751. doi: 10.1080/09593985.2024.2371027. Epub 2024 Jun 25.

Abstract

PURPOSE

To develop a clinical prediction model (CPM) to predict independence in activities of daily living (ADLs) in patients with heart failure.

SUBJECTS AND METHODS

We collected the data of the individuals who were admitted and rehabilitated for heart failure from January 2017 to June 2022 from Japan's Diagnosis Procedure Combination database. We assessed the subjects' ADLs at discharge using the Barthel Index and classified them into independence, partial-independence, and total-dependence groups based on their ADLs at discharge. Two CPMs (an independence model and a partial-independence model) were developed by a binomial logistic regression analysis. The predictors included subject characteristics, treatment, and post-hospitalization disease onset. The CPMs' accuracy was validated by the area under the curve (AUC). Internal validation was performed using the bootstrap method. The final CPM is presented in a nomogram.

RESULTS

We included 96,753 patients whose ADLs could be traced at discharge. The independence model had a 0.73 mean AUC and a 1.0 slope at bootstrapping. We thus developed a simplified model using nomograms, which also showed adequate predictive accuracy in the independence model. The partial-independence model had a 0.65 AUC and inadequate predictive accuracy.

CONCLUSIONS

The independence model of ADLs in patients with heart failure is a useful CPM.

摘要

目的

建立一种临床预测模型(CPM),以预测心力衰竭患者日常生活活动(ADL)的独立性。

对象与方法

我们从日本诊断程序组合数据库中收集了2017年1月至2022年6月因心力衰竭入院并接受康复治疗的个体数据。我们使用Barthel指数在出院时评估受试者的ADL,并根据他们出院时的ADL将其分为独立、部分独立和完全依赖组。通过二项逻辑回归分析建立了两个CPM(一个独立模型和一个部分独立模型)。预测因素包括受试者特征、治疗和出院后疾病发作情况。CPM的准确性通过曲线下面积(AUC)进行验证。使用自助法进行内部验证。最终的CPM以列线图的形式呈现。

结果

我们纳入了96753例出院时ADL可追踪的患者。独立模型在自助抽样时的平均AUC为0.73,斜率为1.0。因此,我们使用列线图开发了一个简化模型,该模型在独立模型中也显示出足够的预测准确性。部分独立模型的AUC为0.65,预测准确性不足。

结论

心力衰竭患者ADL的独立模型是一种有用的CPM。

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