Elke Maurer, Susanne Rospleszcz, Wolfgang Rathmann, Barbara Thorand, Annette Peters, Christopher L Schlett, Fabian Bamberg, Lena Sophie Kiefer
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引用次数: 0
Abstract
Objective: Imaging biomarkers of bone, muscle, and fat by magnetic resonance imaging (MRI) may depict osteopenia, sarcopenia, and adiposity as the three different conditions of osteosarcopenic adiposity (OSA). Methods: Subjects from a prospective, population-based case-control study underwent a health assessment and 3 Tesla whole-body MRI scan. Imaging biomarkers of bone (bone marrow fat-fraction (BMFF)), skeletal muscle (skeletal muscle FF (SMFF)), and fat (total adipose tissue (TAT)) were determined. Participants were allocated to one phenotype according to the OSA complex. Results: Among 363 participants forming the study cohort, 81 (22.3%, 48.1% males, 62.4 ± 6.9 years) were allocated into the OSA subgroup. Participants with an OSA phenotype were significantly older compared to all remaining subjects and showed the highest grades of SMFF (all p < 0.005). Together with subjects from the osteopenic sarcopenia group, OSA subjects exhibited the highest amounts of BMFF and together with the three other adiposity-containing subgroups also exhibited the highest BMIs. The highest prevalence of an impaired glucose tolerance as well as significantly higher blood pressure, blood dyslipidemia, and hepatic steatosis was found in the OSA subgroup (all p < 0.005). Conclusions: MR biomarkers of bone, skeletal muscle and fat are feasible for body composition phenotyping and may allow for targeted risk stratification in suspected OSA syndrome.
期刊介绍:
• Geriatric biology
• Geriatric health services research
• Geriatric medicine research
• Geriatric neurology, stroke, cognition and oncology
• Geriatric surgery
• Geriatric physical functioning, physical health and activity
• Geriatric psychiatry and psychology
• Geriatric nutrition
• Geriatric epidemiology
• Geriatric rehabilitation