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Disentangling Neurodegeneration From Aging in Multiple Sclerosis Using Deep Learning: The Brain-Predicted Disease Duration Gap.

Authors :
Pontillo G
Prados F
Colman J
Kanber B
Abdel-Mannan O
Al-Araji S
Bellenberg B
Bianchi A
Bisecco A
Brownlee WJ
Brunetti A
Cagol A
Calabrese M
Castellaro M
Christensen R
Cocozza S
Colato E
Collorone S
Cortese R
De Stefano N
Enzinger C
Filippi M
Foster MA
Gallo A
Gasperini C
Gonzalez-Escamilla G
Granziera C
Groppa S
Hacohen Y
Harbo HFF
He A
Hogestol EA
Kuhle J
Llufriu S
Lukas C
Martinez-Heras E
Messina S
Moccia M
Mohamud S
Nistri R
Nygaard GO
Palace J
Petracca M
Pinter D
Rocca MA
Rovira A
Ruggieri S
Sastre-Garriga J
Strijbis EM
Toosy AT
Uher T
Valsasina P
Vaneckova M
Vrenken H
Wingrove J
Yam C
Schoonheim MM
Ciccarelli O
Cole JH
Barkhof F
Source :
Neurology [Neurology] 2024 Nov 26; Vol. 103 (10), pp. e209976. Date of Electronic Publication: 2024 Nov 04.
Publication Year :
2024

Abstract

Background and Objectives: Disentangling brain aging from disease-related neurodegeneration in patients with multiple sclerosis (PwMS) is increasingly topical. The brain-age paradigm offers a window into this problem but may miss disease-specific effects. In this study, we investigated whether a disease-specific model might complement the brain-age gap (BAG) by capturing aspects unique to MS.<br />Methods: In this retrospective study, we collected 3D T1-weighted brain MRI scans of PwMS to build (1) a cross-sectional multicentric cohort for age and disease duration (DD) modeling and (2) a longitudinal single-center cohort of patients with early MS as a clinical use case. We trained and evaluated a 3D DenseNet architecture to predict DD from minimally preprocessed images while age predictions were obtained with the DeepBrainNet model. The brain-predicted DD gap (the difference between predicted and actual duration) was proposed as a DD-adjusted global measure of MS-specific brain damage. Model predictions were scrutinized to assess the influence of lesions and brain volumes while the DD gap was biologically and clinically validated within a linear model framework assessing its relationship with BAG and physical disability measured with the Expanded Disability Status Scale (EDSS).<br />Results: We gathered MRI scans of 4,392 PwMS (69.7% female, age: 42.8 ± 10.6 years, DD: 11.4 ± 9.3 years) from 15 centers while the early MS cohort included 749 sessions from 252 patients (64.7% female, age: 34.5 ± 8.3 years, DD: 0.7 ± 1.2 years). Our model predicted DD better than chance (mean absolute error = 5.63 years, R <superscript>2</superscript> = 0.34) and was nearly orthogonal to the brain-age model (correlation between DD and BAGs: r = 0.06 [0.00-0.13], p = 0.07). Predictions were influenced by distributed variations in brain volume and, unlike brain-predicted age, were sensitive to MS lesions (difference between unfilled and filled scans: 0.55 years [0.51-0.59], p < 0.001). DD gap significantly explained EDSS changes ( B = 0.060 [0.038-0.082], p < 0.001), adding to BAG (Δ R <superscript>2</superscript> = 0.012, p < 0.001). Longitudinally, increasing DD gap was associated with greater annualized EDSS change ( r = 0.50 [0.39-0.60], p < 0.001), with an incremental contribution in explaining disability worsening compared with changes in BAG alone (Δ R <superscript>2</superscript> = 0.064, p < 0.001).<br />Discussion: The brain-predicted DD gap is sensitive to MS-related lesions and brain atrophy, adds to the brain-age paradigm in explaining physical disability both cross-sectionally and longitudinally, and may be used as an MS-specific biomarker of disease severity and progression.

Details

Language :
English
ISSN :
1526-632X
Volume :
103
Issue :
10
Database :
MEDLINE
Journal :
Neurology
Publication Type :
Academic Journal
Accession number :
39496109
Full Text :
https://doi.org/10.1212/WNL.0000000000209976