Development and Validation of a Decision Tree Analysis Model for Predicting Home Discharge in a Convalescent Ward: A Single Institution Study.

Physical therapy research Pub Date : 2024-01-01 Epub Date: 2024-01-19 DOI:10.1298/ptr.E10267
Dai Nakaizumi, Shingo Miyata, Keita Uchiyama, Ikki Takahashi
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Abstract

Objectives: Accurately predicting the likelihood of inpatients' home discharge in a convalescent ward is crucial for assisting patients and families in decision-making. While logistic regression analysis has been commonly used, its complexity limits practicality in clinical settings. We focused on decision tree analysis, which is visually straightforward. This study aimed to develop and validate the accuracy of a prediction model for home discharge for inpatients in a convalescent ward using a decision tree analysis.

Methods: The cohort consisted of 651 patients admitted to our convalescent ward from 2018 to 2020. We collected data from medical records, including disease classification, sex, age, duration of acute hospitalization, discharge destination (home or nonhome), and Functional Independence Measure (FIM) subitems at admission. We divided the cohort data into training and validation sets and developed a prediction model using decision tree analysis with discharge destination as the target and other variables as predictors. The model's accuracy was validated using the validation data set.

Results: The decision tree model identified FIM grooming as the first single discriminator of home discharge, diverging at four points and identifying subsequent branching for the duration of acute hospitalization. The model's accuracy was 86.7%, with a sensitivity of 0.96, specificity of 0.52, positive predictive accuracy of 0.88, and negative predictive accuracy of 0.80. The area under the receiver operating characteristic curve was 0.75.

Conclusion: The predictive model demonstrated more than moderate predictive accuracy, suggesting its utility in clinical practice. Grooming emerged as a variable with the highest explanatory power for determining home discharge.

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开发和验证决策树分析模型,用于预测疗养病房的出院回家情况:一项单一机构研究。
目的:准确预测疗养病房住院病人出院回家的可能性对于协助病人和家属做出决策至关重要。虽然逻辑回归分析已被普遍使用,但其复杂性限制了其在临床环境中的实用性。我们将重点放在决策树分析上,因为它直观简单。本研究旨在利用决策树分析法开发并验证疗养病房住院患者出院回家预测模型的准确性:队列由 2018 年至 2020 年入住我们疗养病房的 651 名患者组成。我们从病历中收集了数据,包括疾病分类、性别、年龄、急性期住院时间、出院目的地(家庭或非家庭)以及入院时的功能独立性测量(FIM)子项目。我们将队列数据分为训练集和验证集,并以出院目的地为目标,其他变量为预测因子,利用决策树分析建立了一个预测模型。我们使用验证数据集验证了该模型的准确性:决策树模型将 FIM 梳理确定为出院回家的第一个单一判别因素,在四个点上出现分叉,并确定了急性住院时间的后续分支。该模型的准确率为 86.7%,灵敏度为 0.96,特异性为 0.52,阳性预测准确率为 0.88,阴性预测准确率为 0.80。接收者操作特征曲线下面积为 0.75:该预测模型的预测准确率超过中等水平,表明其在临床实践中的实用性。梳洗是决定出院回家的一个解释力最高的变量。
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