A novel deep learning-based brain age prediction framework for routine clinical MRI scans

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Abstract

Physiological brain aging is associated with cognitive impairment and neuroanatomical changes. Brain age prediction of routine clinical 2D brain MRI scans were understudied and often unsuccessful. We developed a novel brain age prediction framework for clinical 2D T1-weighted MRI scans using a deep learning-based model trained with research grade 3D MRI scans mostly from publicly available datasets (N = 8681; age = 51.76 ± 21.74). Our model showed accurate and fast brain age prediction on clinical 2D MRI scans from cognitively unimpaired (CU) subjects (N = 175) with MAE of 2.73 years after age bias correction (Pearson’s r = 0.918). Brain age gap of Alzheimer’s disease (AD) subjects was significantly greater than CU subjects (p < 0.001) and increase in brain age gap was associated with disease progression in both AD (p < 0.05) and Parkinson’s disease (p < 0.01). Our framework can be extended to other MRI modalities and potentially applied to routine clinical examinations, enabling early detection of structural anomalies and improve patient outcome.

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APA

Kim, H., Park, S., Seo, S. W., Na, D. L., Jang, H., Kim, J. P., … Kwak, K. (2025). A novel deep learning-based brain age prediction framework for routine clinical MRI scans. Npj Aging, 11(1). https://doi.org/10.1038/s41514-025-00260-x

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