Analysis of volume and topography of adipose tissue in the trunk: Results of MRI of 11,141 participants in the German National Cohort.
Tobias HaueiseFritz SchickNorbert StefanChristopher L SchlettJakob B WeissJohanna NattenmüllerKatharina Göbel-GuéniotTobias NorajitraTobias NonnenmacherHans-Ulrich KauczorKlaus H Maier-HeinThoralf NiendorfTobias PischonKarl-Heinz JöckelLale UmutluAnnette PetersSusanne RospleszczThomas J KrönckeNorbert HostenHenry VölzkeLilian KristStefan N WillichFabian BambergJuergen MachannPublished in: Science advances (2023)
This research addresses the assessment of adipose tissue (AT) and spatial distribution of visceral (VAT) and subcutaneous fat (SAT) in the trunk from standardized magnetic resonance imaging at 3 T, thereby demonstrating the feasibility of deep learning (DL)-based image segmentation in a large population-based cohort in Germany (five sites). Volume and distribution of AT play an essential role in the pathogenesis of insulin resistance, a risk factor of developing metabolic/cardiovascular diseases. Cross-validated training of the DL-segmentation model led to a mean Dice similarity coefficient of >0.94, corresponding to a mean absolute volume deviation of about 22 ml. SAT is significantly increased in women compared to men, whereas VAT is increased in males. Spatial distribution shows age- and body mass index-related displacements. DL-based image segmentation provides robust and fast quantification of AT (≈15 s per dataset versus 3 to 4 hours for manual processing) and assessment of its spatial distribution from magnetic resonance images in large cohort studies.
Keyphrases
- deep learning
- adipose tissue
- insulin resistance
- convolutional neural network
- magnetic resonance imaging
- polycystic ovary syndrome
- magnetic resonance
- artificial intelligence
- high fat diet
- body mass index
- contrast enhanced
- machine learning
- diffusion weighted imaging
- cardiovascular disease
- metabolic syndrome
- skeletal muscle
- lower limb
- high fat diet induced
- coronary artery disease
- quality improvement
- virtual reality
- pregnancy outcomes
- glycemic control