Evaluation of Disability Progression in Multiple Sclerosis via Magnetic-Resonance-Based Deep Learning Techniques
Articolo
Data di Pubblicazione:
2022
Abstract:
Short-term disability progression was predicted from a baseline evaluation in patients
with multiple sclerosis (MS) using their three-dimensional T1-weighted (3DT1) magnetic resonance
images (MRI). One-hundred-and-eighty-one subjects diagnosed with MS underwent 3T-MRI and
were followed up for two to six years at two sites, with disability progression defined according to
the expanded-disability-status-scale (EDSS) increment at the follow-up. The patients' 3DT1 images
were bias-corrected, brain-extracted, registered onto MNI space, and divided into slices along
coronal, sagittal, and axial projections. Deep learning image classification models were applied on
slices and devised as ResNet50 fine-tuned adaptations at first on a large independent dataset and
secondly on the study sample. The final classifiers' performance was evaluated via the area under
the curve (AUC) of the false versus true positive diagram. Each model was also tested against its
null model, obtained by reshuffling patients' labels in the training set. Informative areas were found
by intersecting slices corresponding to models fulfilling the disability progression prediction
criteria. At follow-up, 34% of patients had disability progression. Five coronal and five sagittal slices
had one classifier surviving the AUC evaluation and null test and predicted disability progression
(AUC > 0.72 and AUC > 0.81, respectively). Likewise, fifteen combinations of classifiers and axial
slices predicted disability progression in patients (AUC > 0.69). Informative areas were the frontal
areas, mainly within the grey matter. Briefly, 3DT1 images may give hints on disability progression
in MS patients, exploiting the information hidden in the MRI of specific areas of the brain.
Tipologia CRIS:
01.01 Articolo in rivista
Keywords:
deep learning; disability; magnetic resonance imaging; multiple sclerosis; neuroimaging
Elenco autori:
Farrelly, FRANCIS ALLEN; Taloni, Alessandro
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