Improvement of predictive accuracies of functional outcomes after subacute stroke inpatient rehabilitation by machine learning models
ConclusionsThis study suggested that the machine learning models outperformed SLR for predicting FIM prognosis. The machine learning models used only patients ’ background characteristics and FIM scores at admission and more accurately predicted FIM gain than previous studies. ANN, SVR, and GPR outperformed RT and EL. GPR could have the best predictive accuracy for FIM prognosis.
Source: PLoS One - Category: Biomedical Science Authors: Yuta Miyazaki Source Type: research
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