Can convolutional neural networks accurately predict abdominal age from liver and pancreas MRIs?
45,552 liver magnetic resonance images (MRIs) and 36,784 pancreas MRIs
Convolutional neural networks trained to predict abdominal age
Prediction of abdominal age (AbdAge)surrogate
Deep learning models can accurately predict abdominal age from liver and pancreas MRIs, demonstrating that abdominal aging is a partially heritable trait associated with multiple genetic, clinical, and socioeconomic factors.
With age, the prevalence of diseases such as fatty liver disease, cirrhosis, and type two diabetes increases. Approaches to both predict abdominal age and identify risk factors for accelerated abdominal age may ultimately lead to advances that will delay the onset of these diseases. We build an abdominal age predictor by training convolutional neural networks to predict abdominal age (or "AbdAge") from 45, 552 liver magnetic resonance images MRIs and 36, 784 pancreas MRIs (R-Squared = 73. 3 ± 0. 6; mean absolute error = 2. 94 ± 0. 03 years). Attention maps show that the prediction is driven by both liver and pancreas anatomical features, and surrounding organs and tissue. Abdominal aging is a complex trait, partially heritable (hg2 = 26. 3 ± 1. 9%), and associated with 16 genetic loci (e. g. in PLEKHA1 and EFEMP1), biomarkers (e. g body impedance), clinical phenotypes (e. g, chest pain), diseases (e. g. hypertension), environmental (e. g smoking), and socioeconomic (e. g education, income) factors.
Building similarity graph...
Analyzing shared references across papers
Loading...
Alan Le Goallec
Samuel Diai
Sasha Collin
Nature Communications
SHILAP Revista de lepidopterología
Harvard University
Quantitative BioSciences
Building similarity graph...
Analyzing shared references across papers
Loading...
Goallec et al. (Wed,) studied this question.
www.synapsesocial.com/papers/69db0f0178a3e0e288684b53 — DOI: https://doi.org/10.1038/s41467-022-29525-9