BMI-adjusted adipose tissue volumes exhibit depot-specific and divergent associations with cardiometabolic diseases.
Saaket AgrawalMarcus D R KlarqvistNathaniel DiamantTakara L StanleyPatrick T EllinorNehal N MehtaAnthony A PhilippakisKenney NgMelina ClaussnitzerSteven K GrinspoonPuneet BatraAmit V KheraPublished in: Nature communications (2023)
For any given body mass index (BMI), individuals vary substantially in fat distribution, and this variation may have important implications for cardiometabolic risk. Here, we study disease associations with BMI-independent variation in visceral (VAT), abdominal subcutaneous (ASAT), and gluteofemoral (GFAT) fat depots in 40,032 individuals of the UK Biobank with body MRI. We apply deep learning models based on two-dimensional body MRI projections to enable near-perfect estimation of fat depot volumes (R 2 in heldout dataset = 0.978-0.991 for VAT, ASAT, and GFAT). Next, we derive BMI-adjusted metrics for each fat depot (e.g. VAT adjusted for BMI, VATadjBMI) to quantify local adiposity burden. VATadjBMI is associated with increased risk of type 2 diabetes and coronary artery disease, ASATadjBMI is largely neutral, and GFATadjBMI is associated with reduced risk. These results - describing three metabolically distinct fat depots at scale - clarify the cardiometabolic impact of BMI-independent differences in body fat distribution.
Keyphrases
- body mass index
- adipose tissue
- weight gain
- insulin resistance
- coronary artery disease
- deep learning
- fatty acid
- magnetic resonance imaging
- high fat diet
- contrast enhanced
- heart failure
- metabolic syndrome
- cardiovascular disease
- diffusion weighted imaging
- left ventricular
- type diabetes
- machine learning
- skeletal muscle
- computed tomography
- atrial fibrillation
- coronary artery bypass grafting
- transcatheter aortic valve replacement
- convolutional neural network