Please use this identifier to cite or link to this item:
http://hdl.handle.net/1942/48006| Title: | Machine learning-based prediction of disability progression in multiple sclerosis using clinical, performance-based, and patient-reported outcomes | Authors: | ABASIYANIK, Zuhal Ozturk, Orhan Ozakbas, Serkan |
Issue Date: | 2025 | Publisher: | SAGE PUBLICATIONS LTD | Source: | Multiple Sclerosis Journal, 31 (3) , p. 1127 -1128 | Abstract: | Introduction: While clinical predictors of disability progres sion in people with multiple sclerosis (pwMS) are well-estab lished, the contribution of patient-reported outcome measures (PROMs) remains underexplored. Objectives/Aims: To develop a machine learning (ML) model for predicting disability progression-defined as a change in EDSS over three years-using clinical data, performance-based tests, and PROMs. Methods: Data were collected at baseline and at a 3-year fol low-up, including clinical&demographic outcomes (type of MS, baseline EDSS, sex), performance-based measures (Timed Results: Data from 182 pwMS (mean EDSS±:SD: 2.28±1.9, 69% female) were analyzed. Linear Regression demonstrated the best performance, achieving the lowest error rates and high est predictive accuracy (MAE: 0.321, MSE: 0.185, RMSE: 0.430, R 2 : 0.951). It was closely followed by Random Forest, which also showed strong predictive power (MAE: 0.347, MSE: 0.246, RMSE: 0.495, R 2 : 0.935. Decision Tree and SVR yielded less accurate predictions, with higher error rates and lower R 2 values (MAE: 0.432 and 0.547; R 2 : 0.879 and 0.844, respec tively). Visual inspection of prediction outputs confirmed that Linear Regression and Random Forest models closely tracked actual EDSS scores over time, particularly in the third year. Conclusion: Linear Regression's superior metrics suggest a strong linear relationship, likely driven by baseline EDSS, | Document URI: | http://hdl.handle.net/1942/48006 | ISSN: | 1352-4585 | e-ISSN: | 1477-0970 | ISI #: | 001603659903373 | Category: | M | Type: | Journal Contribution |
| Appears in Collections: | Research publications |
Show full item record
Google ScholarTM
Check
Items in DSpace are protected by copyright, with all rights reserved, unless otherwise indicated.