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The progressive loss of brain network fingerprints in Amyotrophic Lateral Sclerosis predicts clinical impairment

Antonella Romano, Emahnuel Troisi Lopez, Marianna Liparoti, Arianna Polverino, Roberta Minino, Francesca Trojsi, Simona Bonavita, Laura Mandolesi, C. Granata, Enrico Amico, Giuseppe Sorrentino, Pierpaolo Sorrentino

2022NeuroImage Clinical32 citationsDOIOpen Access PDF

Abstract

Amyotrophic lateral sclerosis (ALS) is a neurodegenerative disease characterised by functional connectivity alterations in both motor and extra-motor brain regions. Within the framework of network analysis, fingerprinting represents a reliable approach to assess subject-specific connectivity features within a given population (healthy or diseased). Here, we applied the Clinical Connectome Fingerprint (CCF) analysis to source-reconstructed magnetoencephalography (MEG) signals in a cohort of seventy-eight subjects: thirty-nine ALS patients and thirty-nine healthy controls. We set out to develop an identifiability matrix to assess the extent to which each patient was recognisable based on his/her connectome, as compared to healthy controls. The analysis was performed in the five canonical frequency bands. Then, we built a multilinear regression model to test the ability of the "clinical fingerprint" to predict the clinical evolution of the disease, as assessed by the Amyotrophic Lateral Sclerosis Functional Rating Scale-Revised (ALSFRS-r), the King's disease staging system, and the Milano-Torino Staging (MiToS) disease staging system. We found a drop in the identifiability of patients in the alpha band compared to the healthy controls. Furthermore, the "clinical fingerprint" was predictive of the ALSFRS-r (p = 0.0397; β = 32.8), the King's (p = 0.0001; β = -7.40), and the MiToS (p = 0.0025; β = -4.9) scores. Accordingly, it negatively correlated with the King's (Spearman's rho = -0.6041, p = 0.0003) and MiToS scales (Spearman's rho = -0.4953, p = 0.0040). Our results demonstrated the ability of the CCF approach to predict the individual motor impairment in patients affected by ALS. Given the subject-specificity of our approach, we hope to further exploit it to improve disease management.

Topics & Concepts

Amyotrophic lateral sclerosisNeuroscienceMedicineMultiple sclerosisPsychologyPhysical medicine and rehabilitationAudiologyPathologyDiseasePsychiatryAmyotrophic Lateral Sclerosis ResearchGenetic Neurodegenerative DiseasesNeurological disorders and treatments