IVCVJun 1, 2024

SynthBA: Reliable Brain Age Estimation Across Multiple MRI Sequences and Resolutions

arXiv:2406.00365v21 citationsHas Code
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This addresses the limitation of existing brain age prediction methods in heterogeneous clinical settings where acquisition protocols vary.

The researchers tackled the problem of brain age estimation being sensitive to MRI acquisition variabilities by developing SynthBA, a deep-learning model using domain randomization that achieved robust performance across multiple MRI sequences and resolutions, demonstrating significant correlation with Alzheimer's Disease cognitive dysfunction measures.

Brain age is a critical measure that reflects the biological ageing process of the brain. The gap between brain age and chronological age, referred to as brain PAD (Predicted Age Difference), has been utilized to investigate neurodegenerative conditions. Brain age can be predicted using MRIs and machine learning techniques. However, existing methods are often sensitive to acquisition-related variabilities, such as differences in acquisition protocols, scanners, MRI sequences, and resolutions, significantly limiting their application in highly heterogeneous clinical settings. In this study, we introduce Synthetic Brain Age (SynthBA), a robust deep-learning model designed for predicting brain age. SynthBA utilizes an advanced domain randomization technique, ensuring effective operation across a wide array of acquisition-related variabilities. To assess the effectiveness and robustness of SynthBA, we evaluate its predictive capabilities on internal and external datasets, encompassing various MRI sequences and resolutions, and compare it with state-of-the-art techniques. Additionally, we calculate the brain PAD in a large cohort of subjects with Alzheimer's Disease (AD), demonstrating a significant correlation with AD-related measures of cognitive dysfunction. SynthBA holds the potential to facilitate the broader adoption of brain age prediction in clinical settings, where re-training or fine-tuning is often unfeasible. The SynthBA source code and pre-trained models are publicly available at https://github.com/LemuelPuglisi/SynthBA.

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