| Literature DB >> 32993692 |
Hiren Kumar Thakkar1, Wan-Wen Liao2, Ching-Yi Wu3,4,5, Yu-Wei Hsieh6,7,8, Tsong-Hai Lee9,10.
Abstract
BACKGROUND: Accurate prediction of motor recovery after stroke is critical for treatment decisions and planning. Machine learning has been proposed to be a promising technique for outcome prediction because of its high accuracy and ability to process large volumes of data. It has been used to predict acute stroke recovery; however, whether machine learning would be effective for predicting rehabilitation outcomes in chronic stroke patients for common contemporary task-oriented interventions remains largely unexplored. This study aimed to determine the accuracy and performance of machine learning to predict clinically significant motor function improvements after contemporary task-oriented intervention in chronic stroke patients and identify important predictors for building machine learning prediction models.Entities:
Keywords: Machine learning; Motor function; Prognosis; Rehabilitation; Stroke
Mesh:
Year: 2020 PMID: 32993692 PMCID: PMC7523081 DOI: 10.1186/s12984-020-00758-3
Source DB: PubMed Journal: J Neuroeng Rehabil ISSN: 1743-0003 Impact factor: 4.262
Demographics and clinical characteristics of participants
| Baseline variables | Participants (N = 239) |
|---|---|
| Age (years) | 54.72 ± 11.12 |
| Gender (male/female) | 176/63 |
| Side of lesion (right/left) | 108/131 |
| Time since stroke (months) | 17.95 ± 13.55 |
| FMA | 40.68 ± 12.29 |
| NHISS | 2.92 ± 2.51 |
| Brunnstrom stage proximal | 4.05 ± 0.81 |
| Brunnstrom stage distal | 3.99 ± 1.04 |
| MAL AOU | 0.82 ± 0.84 |
| MAL QOM | 0.86 ± 0.9 |
| FIM | 114.18 ± 11.39 |
| SIS mean scores | 48.95 ± 18.29 |
| SIS recovery scores (%) | 64.15 ± 11.78 |
Value is mean ± standard deviation
FMA Fugl-Meyer Assessment Scale of Upper Extremity, NIHSS National Institutes of Health Stroke Scale, MAL AOU motor activity log-amount of use, MAL QOM motor activity log-quality of movement, FIM functional independence measure, SIS stroke impact scale
Fig. 1The flow chart of model development and validation process
Model performance metrics of KNN and ANN models with the 3 and 13 attributes
| Models | Accuracy (%) | Recall (sensitivity) | Specificity | Precision (PPV) | NPV | F1 scores | AUC-ROC |
|---|---|---|---|---|---|---|---|
| 3 attributes | |||||||
| KNN | 85.42 | 0.85 | 0.67 | 0.85 | 0.8 | 0.85 | 0.89 |
| ANN | 81.25 | 0.81 | 0.49 | 0.80 | 0.8 | 0.79 | 0.77 |
| 13 attributes | |||||||
| KNN | 60.42 | 0.6 | 0.37 | 0.62 | 0.36 | 0.61 | 0.48 |
| ANN | 68.75 | 0.69 | 0.51 | 0.7 | 0.49 | 0.69 | 0.71 |
KNN k-nearest neighbors, ANN artificial neural network, PPV positive predictive value, NPV negative predictive value, AUC-ROC area under the receiver operating characteristic curve
Confusion matrix of the test samples (N = 48)
| Confusion matrix (3 attributes) | ||
|---|---|---|
| Predicted: low responders | Predicted: high responders | |
| KNN | ||
| Actual: low responders | 7 | 5 |
| Actual: high responders | 2 | 34 |
| ANN | ||
| Actual: low responders | 4 | 8 |
| Actual: high responders | 1 | 35 |
KNN k-nearest neighbors, ANN artificial neural network