TY - CONF
AU - Mahdipour, Mostafa
AU - Maleki Balajoo, Somayeh
AU - Raimondo, Federico
AU - Nicolaisen, Eliana
AU - More, Shammi
AU - Hoffstaedter, Felix
AU - Tahmasian, Masoud
AU - Eickhoff, Simon
AU - GENON, Sarah
TI - Predicting Brain Aging (Brain Age Gap) from Biomedical and Lifestyle Variables
M1 - FZJ-2024-05128
PY - 2024
AB - The Brain Age Gap (BAG) can be considered as an indicator of the brain health [1, 2]. BAG is defi ned as thedifference between an individual's chronological age and the age predicted by a machine learning (ML)algorithm based on individual brain features. While some studies demonstrated univariate associationsbetween the BAG and several lifestyle and biomedical variables [2, 3], a substantial gap persists inunderstanding the multivariate association between these factors and BAG. Here, we addressed this questionby using a wide range of biomedical, lifestyle, and sociodemographic variables conjointly to predict the BAG ina large population of the UK Biobank.
T2 - Organization for Human Brain Mapping (OHBM) Annual Meeting 2024
CY - 23 Jun 2024 - 27 Jun 2024, Seoul (South Korea)
Y2 - 23 Jun 2024 - 27 Jun 2024
M2 - Seoul, South Korea
LB - PUB:(DE-HGF)24
DO - DOI:10.34734/FZJ-2024-05128
UR - https://juser.fz-juelich.de/record/1029439
ER -