Prediction of Chronological Age in Healthy Elderly Subjects with Machine Learning from MRI Brain Segmentation and Cortical Parcellation

Brain Sci. 2022 Apr 29;12(5):579. doi: 10.3390/brainsci12050579.

Abstract

Normal aging is associated with changes in volumetric indices of brain atrophy. A quantitative understanding of age-related brain changes can shed light on successful aging. To investigate the effect of age on global and regional brain volumes and cortical thickness, 3514 magnetic resonance imaging scans were analyzed using automated brain segmentation and parcellation methods in elderly healthy individuals (69-88 years of age). The machine learning algorithm extreme gradient boosting (XGBoost) achieved a mean absolute error of 2 years in predicting the age of new subjects. Feature importance analysis showed that the brain-to-intracranial-volume ratio is the most important feature in predicting age, followed by the hippocampi volumes. The cortical thickness in temporal and parietal lobes showed a superior predictive value than frontal and occipital lobes. Insights from this approach that integrate model prediction and interpretation may help to shorten the current explanatory gap between chronological age and biological brain age.

Keywords: MRI; XGBoost; age prediction; aging; biological aging; brain segmentation; cortical parcellation; feature importance; machine learning; shapley values.

Grants and funding

This research was funded by the Spanish Ministry of Economy, Industry and Competitiveness (MINECO) under grant (RYC-2015-18467), the European Regional Development Fund through the Andalusian Ministry of Health and Families under grant (PI-0034-2019) and the Spanish Ministry of Science, Innovation and Universities under grant RTI2018-098762-B-C31.