: Advance assessment of the potential functional improvement of patients undergoing a rehabilitation program is crucial in developing precision medicine tools and patient-oriented rehabilitation programs, as well as in better allocating resources in hospitals. In this work, we propose a novel approach to this problem using machine learning algorithms focused on assessing the modified Barthel index (mBI) as an indicator of functional ability. We build four tree-based ensemble machine learning models and train them on a private training cohort of orthopedic (OP) and neurological (NP) hospital discharges. Moreover, we evaluate the models using a validation set for each category of patients using root mean squared error (RMSE) as an absolute error indicator between the predicted mBI and the actual values. The best results obtained from the study are an RMSE of 6.58 for OP patients and 8.66 for NP patients, which shows the potential of artificial intelligence in predicting the functional improvement of patients undergoing rehabilitation.

The use of machine learning for inferencing the effectiveness of a rehabilitation program for orthopedic and neurological patients / Santilli, Valter; Mangone, Massimiliano; Diko, Anxhelo; Alviti, Federica; Bernetti, Andrea; Agostini, Francesco; Palagi, Laura; Servidio, Marila; Paoloni, Marco; Goffredo, Michela; Infarinato, Francesco; Pournajaf, Sanaz; Franceschini, Marco; Fini, Massimo; Damiani, Carlo. - In: INTERNATIONAL JOURNAL OF ENVIRONMENTAL RESEARCH AND PUBLIC HEALTH. - ISSN 1660-4601. - 20:8(2023), pp. 1-16. [10.3390/ijerph20085575]

The use of machine learning for inferencing the effectiveness of a rehabilitation program for orthopedic and neurological patients

Valter Santilli;Massimiliano Mangone
;
Anxhelo Diko;Federica Alviti;Andrea Bernetti;Francesco Agostini
;
Laura Palagi;Marila Servidio;Marco Paoloni;Francesco Infarinato;
2023

Abstract

: Advance assessment of the potential functional improvement of patients undergoing a rehabilitation program is crucial in developing precision medicine tools and patient-oriented rehabilitation programs, as well as in better allocating resources in hospitals. In this work, we propose a novel approach to this problem using machine learning algorithms focused on assessing the modified Barthel index (mBI) as an indicator of functional ability. We build four tree-based ensemble machine learning models and train them on a private training cohort of orthopedic (OP) and neurological (NP) hospital discharges. Moreover, we evaluate the models using a validation set for each category of patients using root mean squared error (RMSE) as an absolute error indicator between the predicted mBI and the actual values. The best results obtained from the study are an RMSE of 6.58 for OP patients and 8.66 for NP patients, which shows the potential of artificial intelligence in predicting the functional improvement of patients undergoing rehabilitation.
2023
barthel index; algorithms; artificial intelligence; functional improvement; machine learning; rehabilitation
01 Pubblicazione su rivista::01a Articolo in rivista
The use of machine learning for inferencing the effectiveness of a rehabilitation program for orthopedic and neurological patients / Santilli, Valter; Mangone, Massimiliano; Diko, Anxhelo; Alviti, Federica; Bernetti, Andrea; Agostini, Francesco; Palagi, Laura; Servidio, Marila; Paoloni, Marco; Goffredo, Michela; Infarinato, Francesco; Pournajaf, Sanaz; Franceschini, Marco; Fini, Massimo; Damiani, Carlo. - In: INTERNATIONAL JOURNAL OF ENVIRONMENTAL RESEARCH AND PUBLIC HEALTH. - ISSN 1660-4601. - 20:8(2023), pp. 1-16. [10.3390/ijerph20085575]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1691701
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