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使用多发性硬化症步行量表-12预测多发性硬化症患者的跌倒状态。

Predicting faller status in persons with multiple sclerosis using the Multiple Sclerosis Walking Scale-12.

作者信息

Abate Caterina, Gromisch Elizabeth S, Campo Marc, Ruiz Jennifer A, DelMastro Heather M

机构信息

Mercy University, 555 Broadway, Dobbs Ferry, NY, USA.

Mandell Center for Multiple Sclerosis, Mount Sinai Rehabilitation Hospital, Trinity Health Of New England, 490 Blue Hills Avenue, Hartford, CT, USA; Department of Rehabilitation Medicine, Frank H. Netter MD School of Medicine at Quinnipiac University, 370 Bassett Road, North Haven, CT, USA; Department of Medical Sciences, Frank H. Netter MD School of Medicine at Quinnipiac University, 370 Bassett Road, North Haven, CT, USA; Department of Neurology, University of Connecticut School of Medicine, 263 Farmington Avenue, Farmington, CT, USA.

出版信息

Mult Scler Relat Disord. 2024 Dec;92:105924. doi: 10.1016/j.msard.2024.105924. Epub 2024 Oct 9.

Abstract

BACKGROUND

Persons with multiple sclerosis (PwMS) are at an increased risk for falling, making it necessary to identify useful screening tools. The aims of this study were to 1) determine a cut-off score for the 12-item Multiple Sclerosis Walking Scale (MSWS-12) for identifying PwMS as fallers and 2) evaluate its predictive ability of faller status after controlling for other potential contributing factors.

METHODS

Participant characteristics, MSWS-12, and falls in the last six months were collected on PwMS (n = 171) during a single session. Fallers (53.8 %; n = 92) were individuals reporting ≥ 1 fall in the past six months. A receiver-operating-characteristic (ROC) curve was performed to estimate the classification accuracy (area under the curve; AUC) of the MSWS-12 at detecting fallers. Optimal cut-off scores were calculated using the Youden Index and Index of Union methods. The dichotomized MSWS-12 cut-off score was then entered into a logistic regression, with faller status as the outcome, and age, gender, body mass index, disease duration, and fatigue as covariates.

RESULTS

The MSWS-12 had a fair classification accuracy for identifying fallers (AUC = 0.74), with the cut-off score of ≥ 46 % having 76.1 % sensitivity and 64.6 % specificity. The MSWS-12 cut-off score remained a significant predictor of faller status in the adjusted model (adjusted odds ratio [aOR]: 3.77, 95 % CI: 1.75, 8.15, P = .001), along with higher fatigue (aOR: 1.11, 95 % CI: 1.02, 1.20, P = .015).

CONCLUSION

PwMS with MSWS-12 scores ≥ 46 % were more likely to be fallers than those with lower scores. When used in conjunction with a clinician's judgement and other assessments, the MSWS-12 may be a useful screening tool for identifying PwMS who are fallers.

摘要

背景

多发性硬化症患者(PwMS)跌倒风险增加,因此有必要确定有效的筛查工具。本研究的目的是:1)确定用于识别PwMS跌倒者的12项多发性硬化症步行量表(MSWS-12)的临界值;2)在控制其他潜在影响因素后,评估其对跌倒状态的预测能力。

方法

在一次就诊期间收集了171例PwMS的参与者特征、MSWS-12得分以及过去六个月内的跌倒情况。跌倒者(53.8%;n = 92)是指过去六个月内报告跌倒≥1次的个体。绘制受试者工作特征(ROC)曲线以估计MSWS-12检测跌倒者的分类准确性(曲线下面积;AUC)。使用约登指数和联合指数法计算最佳临界值。然后将二分法的MSWS-12临界值纳入逻辑回归,以跌倒状态为结果,年龄、性别、体重指数、疾病持续时间和疲劳作为协变量。

结果

MSWS-12在识别跌倒者方面具有中等分类准确性(AUC = 0.74),临界值≥46%时,灵敏度为76.1%,特异度为64.6%。在调整模型中,MSWS-12临界值仍然是跌倒状态的显著预测因素(调整比值比[aOR]:3.77,95%可信区间:1.75,8.15,P = 0.001),同时疲劳程度较高也是预测因素(aOR:1.11,95%可信区间:1.02,1.20,P = 0.015)。

结论

MSWS-12得分≥46%的PwMS比得分较低者更有可能是跌倒者。当与临床医生的判断及其他评估相结合时,MSWS-12可能是识别PwMS跌倒者的有用筛查工具。

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