AI driven analysis of MRI to measure health and disease progression in FSHD

Author:

Riem Lara,DuCharme Olivia,Cousins Matthew,Feng Xue,Kenney Allison,Morris Jacob,Tapscott Stephen J.,Tawil Rabi,Statland Jeff,Shaw Dennis,Wang Leo,Walker Michaela,Lewis Leann,Jacobs Michael A.,Leung Doris G.,Friedman Seth D.,Blemker Silvia S.

Abstract

AbstractFacioscapulohumeral muscular dystrophy (FSHD) affects roughly 1 in 7500 individuals. While at the population level there is a general pattern of affected muscles, there is substantial heterogeneity in muscle expression across- and within-patients. There can also be substantial variation in the pattern of fat and water signal intensity within a single muscle. While quantifying individual muscles across their full length using magnetic resonance imaging (MRI) represents the optimal approach to follow disease progression and evaluate therapeutic response, the ability to automate this process has been limited. The goal of this work was to develop and optimize an artificial intelligence-based image segmentation approach to comprehensively measure muscle volume, fat fraction, fat fraction distribution, and elevated short-tau inversion recovery signal in the musculature of patients with FSHD. Intra-rater, inter-rater, and scan-rescan analyses demonstrated that the developed methods are robust and precise. Representative cases and derived metrics of volume, cross-sectional area, and 3D pixel-maps demonstrate unique intramuscular patterns of disease. Future work focuses on leveraging these AI methods to include upper body output and aggregating individual muscle data across studies to determine best-fit models for characterizing progression and monitoring therapeutic modulation of MRI biomarkers.

Funder

Friends of FSH Research

NIH Wellstone

NIH

Publisher

Springer Science and Business Media LLC

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