Machine learning (ML) applied to patient-reported (PROs) and clinical-assessed outcomes (CAOs) could favour a more predictive and personalized medicine. Our aim was to confirm the important role of applying ML to PROs and CAOs of people with relapsing-remitting (RR) and secondary progressive (SP) form of multiple sclerosis (MS), to promptly identifying information useful to predict disease progression. For our analysis, a dataset of 3398 evaluations from 810 persons with MS (PwMS) was adopted. Three steps were provided: course classification; extraction of the most relevant predictors at the next time point; prediction if the patient will experience the transition from RR to SP at the next time point. The Current Course Assignment (CCA) ste...
Multiple sclerosis is an idiopathic inflammatory disease of the central nervous system and the secon...
Multiple Sclerosis (MS) is a chronic disease that causes the disruption of the ability of the nervou...
To explore the value of machine learning methods for predicting multiple sclerosis disease course.16...
The course of multiple sclerosis begins with a relapsing-remitting phase, which evolves into a secon...
Background: Achieving an accurate clinical course description in Multiple Sclerosis (MS) is a very h...
Multiple Sclerosis (MS) progresses at an unpredictable rate, but predictions on the disease course i...
Background: Multiple sclerosis has an extremely variable natural course. In most patients, disease s...
Background: Multiple sclerosis has an extremely variable natural course. In most patients, disease s...
Multiple Sclerosis is a chronic inflammatory disease, affecting the Central Nervous System and leadi...
Multiple Sclerosis is a degenerative condition of the central nervous system that affects nearly 2.5...
BACKGROUND: At patient-level, the prognostic value of several features that are known to be associat...
Abstract The rate of disability accumulation varies across multiple sclerosis (MS) patients. Machine...
Background Multiple sclerosis (MS) is a neurological condition whose symptoms, severity, and progres...
The rate of disability accumulation varies across multiple sclerosis (MS) patients. Machine learning...
OBJECTIVE:To explore the value of machine learning methods for predicting multiple sclerosis disease...
Multiple sclerosis is an idiopathic inflammatory disease of the central nervous system and the secon...
Multiple Sclerosis (MS) is a chronic disease that causes the disruption of the ability of the nervou...
To explore the value of machine learning methods for predicting multiple sclerosis disease course.16...
The course of multiple sclerosis begins with a relapsing-remitting phase, which evolves into a secon...
Background: Achieving an accurate clinical course description in Multiple Sclerosis (MS) is a very h...
Multiple Sclerosis (MS) progresses at an unpredictable rate, but predictions on the disease course i...
Background: Multiple sclerosis has an extremely variable natural course. In most patients, disease s...
Background: Multiple sclerosis has an extremely variable natural course. In most patients, disease s...
Multiple Sclerosis is a chronic inflammatory disease, affecting the Central Nervous System and leadi...
Multiple Sclerosis is a degenerative condition of the central nervous system that affects nearly 2.5...
BACKGROUND: At patient-level, the prognostic value of several features that are known to be associat...
Abstract The rate of disability accumulation varies across multiple sclerosis (MS) patients. Machine...
Background Multiple sclerosis (MS) is a neurological condition whose symptoms, severity, and progres...
The rate of disability accumulation varies across multiple sclerosis (MS) patients. Machine learning...
OBJECTIVE:To explore the value of machine learning methods for predicting multiple sclerosis disease...
Multiple sclerosis is an idiopathic inflammatory disease of the central nervous system and the secon...
Multiple Sclerosis (MS) is a chronic disease that causes the disruption of the ability of the nervou...
To explore the value of machine learning methods for predicting multiple sclerosis disease course.16...