Skip to main content
Top
Published in: Neurological Sciences 2/2020

Open Access 01-02-2020 | Multiple Sclerosis | Brief Communication

The hidden information in patient-reported outcomes and clinician-assessed outcomes: multiple sclerosis as a proof of concept of a machine learning approach

Authors: Giampaolo Brichetto, Margherita Monti Bragadin, Samuele Fiorini, Mario Alberto Battaglia, Giovanna Konrad, Michela Ponzio, Ludovico Pedullà, Alessandro Verri, Annalisa Barla, Andrea Tacchino

Published in: Neurological Sciences | Issue 2/2020

Login to get access

Abstract

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) step correctly assigned the current MS course with an accuracy of about 86.0%. The MS course at the next time point can be predicted using the predictors selected in CCA. PROs/CAOs Evolution Prediction (PEP) followed by Future Course Assignment (FCA) was able to foresee the course at the next time point with an accuracy of 82.6%. Our results suggest that PROs and CAOs could help the clinician decision-making in their practice.
Literature
1.
go back to reference Miller A, Avidan N, Tzunz-Henig N, Glass-Marmor L, Lejbkowicz I, Pinter RY, Paperna T (2008) Translation towards personalized medicine in multiple sclerosis. J Neurol Sci 274(1-2):68–75CrossRef Miller A, Avidan N, Tzunz-Henig N, Glass-Marmor L, Lejbkowicz I, Pinter RY, Paperna T (2008) Translation towards personalized medicine in multiple sclerosis. J Neurol Sci 274(1-2):68–75CrossRef
2.
go back to reference Giovannoni G (2017) Personalized medicine in multiple sclerosis. Neurodegener Dis Manag 7(6s):13–17CrossRef Giovannoni G (2017) Personalized medicine in multiple sclerosis. Neurodegener Dis Manag 7(6s):13–17CrossRef
3.
go back to reference Lejbkowicz I, Caspi O, Miller A (2012) Participatory medicine and patient empowerment towards personalized healthcare in multiple sclerosis. Expert Rev Neurother 12(3):343–352CrossRef Lejbkowicz I, Caspi O, Miller A (2012) Participatory medicine and patient empowerment towards personalized healthcare in multiple sclerosis. Expert Rev Neurother 12(3):343–352CrossRef
4.
go back to reference Bishop CM (2012) Model-based machine learning. Philos Trans A Math Phys Eng Sci 371(1984):20120222CrossRef Bishop CM (2012) Model-based machine learning. Philos Trans A Math Phys Eng Sci 371(1984):20120222CrossRef
5.
go back to reference Speicher NK, Pfeifer N (2015) Integrating different data types by regularized unsupervised multiple kernel learning with application to cancer subtype discovery. Bioinformatics 31(12):i268–i275CrossRef Speicher NK, Pfeifer N (2015) Integrating different data types by regularized unsupervised multiple kernel learning with application to cancer subtype discovery. Bioinformatics 31(12):i268–i275CrossRef
6.
go back to reference Di Camillo B, Sanavia T, Martini M et al (2012) Effect of size and heterogeneity of samples on biomarker discovery: synthetic and real data assessment. PLoS One 7(3):e32200CrossRef Di Camillo B, Sanavia T, Martini M et al (2012) Effect of size and heterogeneity of samples on biomarker discovery: synthetic and real data assessment. PLoS One 7(3):e32200CrossRef
8.
go back to reference Filippi M, Agosta F (2010) Imaging biomarkers in multiple sclerosis. J Magn Reson Imaging 31(4):770–788CrossRef Filippi M, Agosta F (2010) Imaging biomarkers in multiple sclerosis. J Magn Reson Imaging 31(4):770–788CrossRef
9.
go back to reference Bebo BF Jr, Fox RJ, Lee K et al (2018) Landscape of MS patient cohorts and registries: recommendations for maximizing impact. Mult Scler 24(5):579–586CrossRef Bebo BF Jr, Fox RJ, Lee K et al (2018) Landscape of MS patient cohorts and registries: recommendations for maximizing impact. Mult Scler 24(5):579–586CrossRef
Metadata
Title
The hidden information in patient-reported outcomes and clinician-assessed outcomes: multiple sclerosis as a proof of concept of a machine learning approach
Authors
Giampaolo Brichetto
Margherita Monti Bragadin
Samuele Fiorini
Mario Alberto Battaglia
Giovanna Konrad
Michela Ponzio
Ludovico Pedullà
Alessandro Verri
Annalisa Barla
Andrea Tacchino
Publication date
01-02-2020
Publisher
Springer International Publishing
Published in
Neurological Sciences / Issue 2/2020
Print ISSN: 1590-1874
Electronic ISSN: 1590-3478
DOI
https://doi.org/10.1007/s10072-019-04093-x

Other articles of this Issue 2/2020

Neurological Sciences 2/2020 Go to the issue