Inpatient stroke rehabilitation: prediction of clinical outcomes using a machine-learning approach

被引:46
|
作者
Harari, Yaar [1 ,2 ]
O'Brien, Megan K. [1 ,2 ]
Lieber, Richard L. [2 ,3 ,4 ]
Jayaraman, Arun [1 ,2 ]
机构
[1] Shirley Ryan AbilityLab, Max Nader Lab Rehabil Technol & Outcomes Res, 355 E Erie St, Chicago, IL 60611 USA
[2] Northwestern Univ, Dept Phys Med & Rehabil, Chicago, IL 60611 USA
[3] Northwestern Univ, Dept Biomed Engn, Evanston, IL 60208 USA
[4] Shirley Ryan AbilityLab, Chicago, IL 60611 USA
关键词
Physical therapy; Functional Independence measure; Gait; Balance; Lasso regression; MOTOR-ASSESSMENT SCALE; WALKING SPEED; DISCHARGE; RECOVERY; GAIT; SELECTION; INDEX; INDIVIDUALS; RELIABILITY; ADMISSION;
D O I
10.1186/s12984-020-00704-3
中图分类号
R318 [生物医学工程];
学科分类号
0831 ;
摘要
Background In clinical practice, therapists often rely on clinical outcome measures to quantify a patient's impairment and function. Predicting a patient's discharge outcome using baseline clinical information may help clinicians design more targeted treatment strategies and better anticipate the patient's assistive needs and discharge care plan. The objective of this study was to develop predictive models for four standardized clinical outcome measures (Functional Independence Measure, Ten-Meter Walk Test, Six-Minute Walk Test, Berg Balance Scale) during inpatient rehabilitation. Methods Fifty stroke survivors admitted to a United States inpatient rehabilitation hospital participated in this study. Predictors chosen for the clinical discharge scores included demographics, stroke characteristics, and scores of clinical tests at admission. We used the Pearson product-moment and Spearman's rank correlation coefficients to calculate correlations among clinical outcome measures and predictors, a cross-validated Lasso regression to develop predictive equations for discharge scores of each clinical outcome measure, and a Random Forest based permutation analysis to compare the relative importance of the predictors. Results The predictive equations explained 70-77% of the variance in discharge scores and resulted in a normalized error of 13-15% for predicting the outcomes of new patients. The most important predictors were clinical test scores at admission. Additional variables that affected the discharge score of at least one clinical outcome were time from stroke onset to rehabilitation admission, age, sex, body mass index, race, and diagnosis of dysphasia or speech impairment. Conclusions The models presented in this study could help clinicians and researchers to predict the discharge scores of clinical outcomes for individuals enrolled in an inpatient stroke rehabilitation program that adheres to U.S. Medicare standards.
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页数:10
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