Discovering functional connectivity features characterizing multiple sclerosis phenotypes using explainable artificial intelligence
Muhammad Abubakar Yamin,Paola Valsasina,Jacopo Tessadori,Massimo Filippi,Vittorio Murino,Maria A. Rocca,Diego Sona +6 more
TL;DR: In this article , a system exploiting machine learning on Resting-state functional connectivity matrices was proposed to discriminate different MS phenotypes and to identify relevant functional connections for MS stage characterization.
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Abstract: Multiple sclerosis (MS) is a neurological condition characterized by severe structural brain damage and by functional reorganization of the main brain networks that try to limit the clinical consequences of structural burden. Resting‐state (RS) functional connectivity (FC) abnormalities found in this condition were shown to be variable across different MS phases, according to the severity of clinical manifestations. The article describes a system exploiting machine learning on RS FC matrices to discriminate different MS phenotypes and to identify relevant functional connections for MS stage characterization. To this end, the system exploits some mathematical properties of covariance‐based RS FC representation, which can be described by a Riemannian manifold. The classification performance of the proposed framework was significantly above the chance level for all MS phenotypes. Moreover, the proposed system was successful in identifying relevant RS FC alterations contributing to an accurate phenotype classification.
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Citations
Cognitive rehabilitation effects on grey matter volume and Go-NoGo activity in progressive multiple sclerosis: results from the CogEx trial.
M. Rocca,Paola Valsasina,Francesco Romanò,Nicolò Tedone,Maria-Pia Amato,Giampaolo Brichetto,VD Boccia,Jeremy Chataway,Nancy D. Chiaravalloti,Gary R Cutter,Ulrik Dalgas,John DeLuca,Rachel Farrell,Peter Feys,Jennifer Freeman,M. Inglese,Cecilia Meza,Robert W. Motl,Amber Salter,Brian M. Sandroff,Anthony Feinstein,Massimo Filippi +21 more
TL;DR: CogEx trial MRI substudy findings show that cognitive rehabilitation (CR) modulated grey matter volume and insular activity in progressive multiple sclerosis (PMS).
Discovering functional connectivity features characterizing multiple sclerosis phenotypes using explainable artificial intelligence
Muhammad Abubakar Yamin,Paola Valsasina,Jacopo Tessadori,Massimo Filippi,Vittorio Murino,Maria A. Rocca,Diego Sona +6 more
TL;DR: In this article , a system exploiting machine learning on Resting-state functional connectivity matrices was proposed to discriminate different MS phenotypes and to identify relevant functional connections for MS stage characterization.
Artificial intelligence applied to MRI data to tackle key challenges in multiple sclerosis.
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TL;DR: AI applied to MRI data in MS holds promise for improving diagnosis, prognosis, and treatment.
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