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采用机器学习方法开发 13 项简化版 Fugl-Meyer 上肢评估量表。

Development of a 13-item Short Form for Fugl-Meyer Assessment of Upper Extremity Scale Using a Machine Learning Approach.

机构信息

International Ph.D. Program in Gerontology and Long-Term Care, College of Nursing, Taipei Medical University, Taipei, Taiwan.

Department of Rehabilitation Sciences & Technology, University of Wisconsin-Milwaukee, Milwaukee, WI.

出版信息

Arch Phys Med Rehabil. 2023 Aug;104(8):1219-1226. doi: 10.1016/j.apmr.2023.01.005. Epub 2023 Feb 1.

Abstract

OBJECTIVE

To develop and validate a short form of the Fugl-Meyer Assessment of Upper Extremity Scale (FMA-UE) using a machine learning approach (FMA-UE-ML). In addition, scores of items not included in the FMA-UE-ML were predicted.

DESIGN

Secondary data from a previous study, which assessed individuals post-stroke using the FMA-UE at 4 time points: 5-30 days post-stroke screen, 2-month post-stroke baseline assessment, 6-month post-stroke assessment, and 12-month post-stroke assessment.

SETTING

Rehabilitation units in hospitals.

PARTICIPANTS

A total of 408 individuals post-stroke (N=408).

INTERVENTIONS

Not applicable.

MAIN OUTCOME MEASURES

The 30-item FMA-UE.

RESULTS

We established 29 candidate versions of the FMA-UE-ML with different numbers of items, from 1 to 29, and examined their concurrent validity and responsiveness. We found that the responsiveness of the candidate versions obviously declined when the number of items was less than 13. Thus, the 13-item version was selected as the FMA-UE-ML. The concurrent validity was good (intra-class correlation coefficients ≥0.99). The standardized response means of the FMA-UE-ML and FMA-UE were 0.54-0.88 and 0.52-0.91, respectively. The Pearson's rs between the change scores of the FMA-UE-ML and those of the FMA-UE were 0.96-0.98. The predicted item scores had acceptable to good accuracy (Kappa=0.50-0.92).

CONCLUSIONS

The FMA-UE-ML seems a promising short form to improve administrative efficiency while retaining good concurrent validity and responsiveness. In addition, the FAM-UE-ML can provide all item scores of the FMA-UE for users.

摘要

目的

采用机器学习方法(FMA-UE-ML)开发和验证简化版 Fugl-Meyer 上肢评估量表(FMA-UE)。此外,还预测了未包含在 FMA-UE-ML 中的项目的分数。

设计

来自先前研究的二次数据,该研究在 4 个时间点使用 FMA-UE 评估脑卒中后个体:脑卒中后 5-30 天筛查、2 个月脑卒中后基线评估、6 个月脑卒中后评估和 12 个月脑卒中后评估。

地点

医院的康复病房。

参与者

共 408 名脑卒中后患者(N=408)。

干预措施

无。

主要观察指标

30 项 FMA-UE。

结果

我们建立了 29 个具有不同项目数量的 FMA-UE-ML 候选版本,从 1 到 29 个,并检查了它们的同时效度和反应度。我们发现,当项目数量少于 13 个时,候选版本的反应度明显下降。因此,选择 13 项版本作为 FMA-UE-ML。同时效度良好(组内相关系数≥0.99)。FMA-UE-ML 和 FMA-UE 的标准化反应均值分别为 0.54-0.88 和 0.52-0.91。FMA-UE-ML 和 FMA-UE 的变化分数之间的 Pearson rs 为 0.96-0.98。预测项目分数具有可接受至良好的准确性(Kappa=0.50-0.92)。

结论

FMA-UE-ML 似乎是一种很有前途的简化形式,可以在保留良好同时效度和反应度的同时提高行政效率。此外,FAM-UE-ML 可为用户提供 FMA-UE 的所有项目分数。

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