Sex differences in predictors and regional patterns of brain age gap estimates.
Nicole SanfordRuiyang GeMathilde AntoniadesAmirhossein ModabberniaShalaila S HaasHeather C WhalleyLiisa GaleaSebastian G PopescuJames H ColeSophia FrangouPublished in: Human brain mapping (2022)
The brain-age-gap estimate (brainAGE) quantifies the difference between chronological age and age predicted by applying machine-learning models to neuroimaging data and is considered a biomarker of brain health. Understanding sex differences in brainAGE is a significant step toward precision medicine. Global and local brainAGE (G-brainAGE and L-brainAGE, respectively) were computed by applying machine learning algorithms to brain structural magnetic resonance imaging data from 1113 healthy young adults (54.45% females; age range: 22-37 years) participating in the Human Connectome Project. Sex differences were determined in G-brainAGE and L-brainAGE. Random forest regression was used to determine sex-specific associations between G-brainAGE and non-imaging measures pertaining to sociodemographic characteristics and mental, physical, and cognitive functions. L-brainAGE showed sex-specific differences; in females, compared to males, L-brainAGE was higher in the cerebellum and brainstem and lower in the prefrontal cortex and insula. Although sex differences in G-brainAGE were minimal, associations between G-brainAGE and non-imaging measures differed between sexes with the exception of poor sleep quality, which was common to both. While univariate relationships were small, the most important predictor of higher G-brainAGE was self-identification as non-white in males and systolic blood pressure in females. The results demonstrate the value of applying sex-specific analyses and machine learning methods to advance our understanding of sex-related differences in factors that influence the rate of brain aging and provide a foundation for targeted interventions.
Keyphrases
- machine learning
- resting state
- blood pressure
- magnetic resonance imaging
- white matter
- functional connectivity
- sleep quality
- big data
- healthcare
- mental health
- high resolution
- artificial intelligence
- depressive symptoms
- endothelial cells
- prefrontal cortex
- magnetic resonance
- cerebral ischemia
- adipose tissue
- electronic health record
- deep learning
- brain injury
- cancer therapy
- blood brain barrier
- mass spectrometry
- skeletal muscle
- drug delivery
- diffusion weighted imaging
- heart rate
- hypertensive patients