|
學院 |
醫學院 |
|
系所 |
職能治療學系 |
|
題名 |
Machine learning-based study of the
predictors of clinically important change in patient-reported outcomes in
bilateral upper-limb function in patients receiving robotic stroke
rehabilitation. |
|
作者 |
Chen, Y-W., Lin, K-C.* |
|
期刊名稱 |
Frontiers in
Rehabilitation Sciences |
|
發表日期 |
2026 |
|
著作性質 |
原著 |
|
語文 |
英文 |
|
關鍵字 |
activities of daily living, machine learning,
patient-reported outcome measures, prognosis, robotics, stroke
rehabilitation, upper extremity |
|
摘要 |
Introduction: Robotic therapy is an effective approach for poststroke
rehabilitation of upper-limb function. There is a need for research on
predictors of clinically meaningful change in patient-reported outcome
measures of bilateral arm function relevant for daily life function in stroke
patients receiving robotic therapy. Methods: This secondary analysis included data from 123 participants
who received robotic therapy. We constructed machine learning classification
models to predict the achievement of meaningful recovery of patient-perceived
outcome of bilateral upper limb function based on the ABILHAND questionnaire.
Clinically meaningful recovery was defined using the minimal clinically
important difference (MCID). The prediction models included 14 potential
predictors of three categories: demographic characteristics, stroke characteristics,
and baseline assessment scores. The prediction models were built using four
algorithms: logistic regression, k-nearest neighbors, support vector machine,
and the random forest. Full models were built with all 14 potential
predictors, and parsimonious models were built with the most important
predictors identified by feature selection. Results: The prediction accuracy of the best-performing full models
was 0.76 for the anchor-based MCID and 0.80 for the distribution-based MCID;
the corresponding areas under the receiver operating characteristic curve
were 0.75 and 0.84, respectively. The parsimonious models performed worse
overall. For both MCID values, the most important predictors of recovery were
time since stroke, the Wolf Motor Function Test-Time score, and the Stroke
Impact Scale-Physical function score. When recovery was defined by the anchor-based
MCID, the baseline ABILHAND and Chedoke Arm and
Hand Activity Inventory scores were among the most important predictors. When
recovery was defined by the distribution-based MCID, sex and stroke diagnosis
were predictive of recovery. Conclusions: The time post onset of stroke, the speed of performing functional tasks, and self-perceived physical function were identified as the most important predictors of improvements in self-perceived function of bilateral upper limbs in daily activities after robotic therapy. The findings may inform clinicians about characteristics of patients with stroke who are more likely to benefit from robotic therapy. |