The association between the physical living environment and brain structural changes in older adults remains considerably unexplored despite its potential to benefit a rapidly-growing proportion of the world’s population. We investigated whether neighborhood-level environmental features are associated with changes in whole-brain structure and microstructure during healthy aging. By means of structural equation modeling, we estimated change in gross brain features over about two years in a longitudinal sample of participants from the Berlin Aging Study II (at T1: N=334, mean age = 70 years, 128 women; https://www.base2.mpg.de/en). We used the machine learning algorithm BORUTA on neighborhood-level (Lifeworld-Oriented Spaces) environmental information (N = 201) to identify correlates of brain absolute measures and brain change. We observed typical trajectories of brain aging at the construct and measurement levels. Our findings indicate that of the 25 neighborhood features examined, air pollutants, population density and the land-use composition of individuals’ neighborhood are associated with changes in subcortical gray matter volume, cortical integrity, white matter volume, and ventricle size. Weaker associations were found for mean diffusivity and cortical thickness. These findings underscore the relevance of the physical environment for neural outcomes during aging. • Neighborhood features are associated with brain changes during aging. • Neighborhood features are mostly associated with gross structural rather than microstructural brain changes. • Neighborhood features associated with brain changes include air pollutants and urban-land uses among others. • Neighborhood features predictive of absolute brain measures show considerable differences as compared to brain change.
Quinones et al. (Fri,) studied this question.