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针对难以实现独立生活的颈脊髓损伤患者制定临床预测规则。

Development of a clinical prediction rule for patients with cervical spinal cord injury who have difficulty in obtaining independent living.

作者信息

Hori Tomonari, Imura Takeshi, Tanaka Ryo

机构信息

Department of Rehabilitation, Fukuyama Rehabilitation Hospital, 2-15-41, Myojincho, Fukuyama 721-0961, Japan.

Department of Rehabilitation, Faculty of Health Sciences, Hiroshima Cosmopolitan University, 3-2-1, Otsuka-higashi, Hiroshima 731-3166, Japan; Graduate School of Humanities and Social Sciences, Hiroshima University, 1-3-2, Kagamiyama, Higashihiroshima 739-8511, Japan.

出版信息

Spine J. 2022 Feb;22(2):321-328. doi: 10.1016/j.spinee.2021.08.010. Epub 2021 Sep 3.

Abstract

BACKGROUND CONTEXT

A simple and easy to use clinical prediction rule (CPR) to detect patients with a cervical spinal cord injury (SCI) who would have difficulty in obtaining independent living status is vital for providing the optimal rehabilitation and education in both care recipients and caregivers. A machine learning approach was recently applied to the field of rehabilitation and has the possibility to develop an accurate and useful CPR.

PURPOSE

The aim of this study was to develop and assess a CPR using a decision tree algorithm for predicting which patients with a cervical SCI would have difficulty in obtaining an independent living.

STUDY DESIGN

The present study was a cohort study.

PATIENT SAMPLE

In the present study, the data was obtained from the nationwide Japan Rehabilitation Database (JRD). The data on the SCIs was collected from 10 hospitals and the data was collected from the registries obtained between 2005 and 2015. The severity of SCI can vary, and patient prognosis differs depending on the damage site. In this study, the patients with cervical SCI were included.

OUTCOME MEASURES

In this study, the degree of the independent living at discharge was investigated. The degree of the independent living was classified and listed as below: independent in social, independent at home, need care at home, independent at facility, need care at facility. In this study, the independent in social and independent at home were defined as "independent," and the other situations were defined as "non-independent."

METHODS

We performed a classification and regression tree (CART) analysis to develop the CPR to predict whether the cervical SCI patients obtain an independent living at discharge. The area under the curve, the classification accuracy, sensitivity, specificity, and positive predictive value were used for model evaluation.

RESULTS

A total of 4181 patients with SCI were registered in the JRD and the CART analysis was performed for 1282 patients with the cervical SCI. The Functional Independence Measure (FIM) total score and the American Spinal Injury Association impairment scale were identified as the first and second discriminators for predicting the degree of the independence, respectively. Subsequently, the CART model identified FIM eating, the residual function level, and the FIM bed to chair transfer as next discriminators. Each parameter for evaluating the CART model were the area under the curve 0.813, the classification accuracy 78.6%, the sensitivity 80.7%, the specificity 75.1%, and the positive predictive value 84.5%.

CONCLUSIONS

In this study, we developed a clinically useful CPR with moderate accuracy to predict whether the cervical SCI patients obtain independent living at the discharge.

摘要

背景

一种简单易用的临床预测规则(CPR)对于检测颈椎脊髓损伤(SCI)患者能否获得独立生活状态至关重要,这有助于为患者及其护理人员提供最佳的康复和教育。机器学习方法最近已应用于康复领域,并且有可能开发出准确且有用的CPR。

目的

本研究旨在使用决策树算法开发并评估一种CPR,以预测哪些颈椎SCI患者在获得独立生活方面会有困难。

研究设计

本研究为队列研究。

患者样本

在本研究中,数据来自全国性的日本康复数据库(JRD)。关于SCI的数据从10家医院收集,数据收集自2005年至2015年期间的登记处。SCI的严重程度可能不同,患者预后因损伤部位而异。在本研究中,纳入了颈椎SCI患者。

结局指标

在本研究中,调查了出院时的独立生活程度。独立生活程度分类如下:社会独立、家庭独立、家庭需要护理、机构独立、机构需要护理。在本研究中,社会独立和家庭独立被定义为“独立”,其他情况被定义为“不独立”。

方法

我们进行了分类回归树(CART)分析以开发CPR,预测颈椎SCI患者出院时是否能获得独立生活。曲线下面积、分类准确率、敏感性、特异性和阳性预测值用于模型评估。

结果

共有4181例SCI患者登记在JRD中,对1282例颈椎SCI患者进行了CART分析。功能独立性测量(FIM)总分和美国脊髓损伤协会损伤量表分别被确定为预测独立程度的第一和第二判别因素。随后,CART模型将FIM进食、残余功能水平和FIM床到椅转移确定为接下来的判别因素。评估CART模型的各项参数分别为:曲线下面积0.813、分类准确率78.6%、敏感性80.7%、特异性75.1%和阳性预测值84.5%。

结论

在本研究中,我们开发了一种具有中等准确性的临床有用CPR,以预测颈椎SCI患者出院时是否能获得独立生活。

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