Publication: Muscle imaging in laminopathies: Synthesis study identifies meaningful muscles for follow-up.
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Date
2018-11-18
Authors
GóMez-Andrés, David
Díaz-Manera, Jordi
Alejaldre, Aida
Pulido-Valdeolivas, Irene
GonzáLez-Mera, Laura
Olivé, Montse
Vilchez, Juan José
De Munain, Adolfo LóPez
Paradas, Carmen
Muelas, Nuria
Advisors
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Volume Title
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Abstract
Particular fibroadipose infiltration patterns have been recently described by muscle imaging in congenital and later onset forms of LMNA-related muscular dystrophies (LMNA-RD). Scores for fibroadipose infiltration of 23 lower limb muscles in 34 patients with LMNA-RD were collected from heat maps of 2 previous studies. Scoring systems were homogenized. Relationships between muscle infiltration and disease duration and age of onset were modeled with random forests. The pattern of infiltration differs according to disease duration but not to age of disease onset. The muscles whose progression best predicts disease duration were semitendinosus, biceps femoris long head, gluteus medius, and semimembranosus. In LMNA-RD, our synthetic analysis of lower limb muscle infiltration did not find major differences between forms with different ages of onset but allowed the identification of muscles with characteristic infiltration during disease progression. Monitoring of these specific muscles by quantitative MRI may provide useful imaging biomarkers in LMNA-RD. Muscle Nerve 58:812-817, 2018.
Description
MeSH Terms
Adolescent
Adult
Aged
Child
Cohort Studies
Disease Progression
Extremities
Female
Humans
Magnetic Resonance Imaging
Male
Middle Aged
Muscle, Skeletal
Muscular Atrophy, Spinal
Statistics, Nonparametric
Tomography, X-Ray Computed
Young Adult
Adult
Aged
Child
Cohort Studies
Disease Progression
Extremities
Female
Humans
Magnetic Resonance Imaging
Male
Middle Aged
Muscle, Skeletal
Muscular Atrophy, Spinal
Statistics, Nonparametric
Tomography, X-Ray Computed
Young Adult
DeCS Terms
CIE Terms
Keywords
LMNA, machine learning, magnetic resonance, biomarker, imaging, laminopathy