Affiliation:
1. Department of Biomedical Engineering, College of Chemistry and Life Science, Beijing University of Technology, Beijing 100124, China
Abstract
The concept of ‘brain age’, derived from neuroimaging data, serves as a crucial biomarker reflecting cognitive vitality and neurodegenerative trajectories. In the past decade, machine learning (ML) and deep learning (DL) integration has transformed the field, providing advanced models for brain age estimation. However, achieving precise brain age prediction across all ages remains a significant analytical challenge. This comprehensive review scrutinizes advancements in ML- and DL-based brain age prediction, analyzing 52 peer-reviewed studies from 2020 to 2024. It assesses various model architectures, highlighting their effectiveness and nuances in lifespan brain age studies. By comparing ML and DL, strengths in forecasting and methodological limitations are revealed. Finally, key findings from the reviewed articles are summarized and a number of major issues related to ML/DL-based lifespan brain age prediction are discussed. Through this study, we aim at the synthesis of the current state of brain age prediction, emphasizing both advancements and persistent challenges, guiding future research, technological advancements, and improving early intervention strategies for neurodegenerative diseases.
Funder
National Natural Science Foundation of China
Reference91 articles.
1. Han, H., Ge, S., and Wang, H. (2023). Prediction of Brain Age Based on the Community Structure of Functional Networks. Biomed. Signal Process. Control, 79.
2. Deep Learning for Brain Age Estimation: A Systematic Review;Tanveer;Inf. Fusion,2023
3. Investigating the Relationship Between Smoking Behavior and Global Brain Volume;Chang;Biol. Psychiatry Glob. Open Sci.,2024
4. Associations between Alcohol Consumption and Gray and White Matter Volumes in the UK Biobank;Daviet;Nat. Commun.,2022
5. Somatosensory Brain Function and Gray Matter Regional Volumes Differ According to Exercise History: Evidence from Monozygotic Twins;Hautasaari;Brain Topogr.,2017