A Simplified Clinical Prediction Rule for Prognosticating Dependent Daily Living in Patients with Thoracic Spinal Cord Injury: A Multicenter Nationwide Japan Registry Study.

IF 2.4 4区 医学 Q3 CLINICAL NEUROLOGY
Takeshi Imura, Tomonari Hori, Ryo Tanaka
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Abstract

Introduction: Clinical prediction rule (CPR) using decision tree analysis is able to show the branching of the variables under consideration in a clear, hierarchical manner, including specific reference values, which can be used as classifiers in clinical practice. However, CPRs developed by decision tree analysis for predicting the degree of independent living of patients with thoracic spinal cord injury (SCI) are few. The purpose of this study was to develop a simplified CPR for prognosticating dependent daily living in patients with thoracic SCI.

Methods: We extracted data on patients with thoracic SCI from a national multicenter registry database, the Japan Rehabilitation Database (JRD). All patients with thoracic SCI who were hospitalized within 30 days after the injury onset were included. The independent living was categorized in the JRD as follows: independent socially, independent at home, needing care at home, independent at the facility, and needing care at the facility. These categories were used as the objective variables in classification and regression tree (CART) analysis. The CART algorithm was applied to develop the CPR for predicting whether patients with thoracic SCI achieve independent living at hospital discharge.

Results: Three hundred ten patients with thoracic SCI were included in the CART analysis. The CART model identified, in a hierarchical order, patient's age, residual function level, and the bathing sub-score of Functional Independence Measure as the top three factors with moderate classification accuracy and area under the curve.

Conclusions: We developed a simplified, moderately accurate CPR for predicting whether patients with thoracic SCI achieve independent living at hospital discharge.

预测胸脊髓损伤患者依赖日常生活的简化临床预测规则:一项日本全国多中心注册研究。
简介:采用决策树分析的临床预测规则(CPR)能够清晰、层次地显示所考虑变量的分支,包括具体的参考值,可作为临床实践中的分类器。然而,通过决策树分析来预测胸椎脊髓损伤(SCI)患者独立生活程度的CPRs却很少。本研究的目的是开发一种简化的心肺复苏术,用于预测胸椎脊髓损伤患者的依赖日常生活。方法:我们从日本康复数据库(JRD)的国家多中心注册数据库中提取胸椎脊髓损伤患者的数据。所有受伤后30天内住院的胸椎脊髓损伤患者均被纳入研究。《联合发展战略》将独立生活分类如下:社会独立、在家独立、需要在家照顾、在设施中独立、需要在设施中照顾。将这些分类作为分类回归树(CART)分析的客观变量。应用CART算法开发心肺复苏术,预测胸椎脊髓损伤患者出院时能否实现独立生活。结果:310例胸椎脊髓损伤患者被纳入CART分析。CART模型将患者的年龄、残差功能水平和沐浴功能独立量表评分按等级顺序确定为前3个因素,分类精度和曲线下面积适中。结论:我们开发了一种简化的、中等准确度的心肺复苏术,用于预测胸椎脊髓损伤患者出院后能否实现独立生活。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
European Neurology
European Neurology 医学-临床神经学
CiteScore
4.40
自引率
4.20%
发文量
51
审稿时长
4-8 weeks
期刊介绍: ''European Neurology'' publishes original papers, reviews and letters to the editor. Papers presented in this journal cover clinical aspects of diseases of the nervous system and muscles, as well as their neuropathological, biochemical, and electrophysiological basis. New diagnostic probes, pharmacological and surgical treatments are evaluated from clinical evidence and basic investigative studies. The journal also features original works and reviews on the history of neurology.
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