Three-dimensional end-to-end deep learning for brain MRI analysis
Radhika Juglan, Marta Ligero, Zunamys I. Carrero, Asier Rabasco, Tim Lenz, Leo Misera, Gregory Patrick Veldhuizen, Paul Kuntke, Hagen H. Kitzler, Sven Nebelung, Daniel Truhn, Jakob Nikolas Kather

TL;DR
This study compares three 3D deep learning architectures for brain MRI analysis, finding that simpler convolutional networks outperform complex attention-based models in age and sex prediction across multiple datasets.
Contribution
It provides a comprehensive evaluation of existing 3D DL models, highlighting the superior generalizability of simpler convolutional networks like SFCN for brain MRI analysis.
Findings
SFCN achieved perfect AUC in internal test set.
SFCN outperformed complex models in external datasets.
Simpler models showed better generalizability.
Abstract
Deep learning (DL) methods are increasingly outperforming classical approaches in brain imaging, yet their generalizability across diverse imaging cohorts remains inadequately assessed. As age and sex are key neurobiological markers in clinical neuroscience, influencing brain structure and disease risk, this study evaluates three of the existing three-dimensional architectures, namely Simple Fully Connected Network (SFCN), DenseNet, and Shifted Window (Swin) Transformers, for age and sex prediction using T1-weighted MRI from four independent cohorts: UK Biobank (UKB, n=47,390), Dallas Lifespan Brain Study (DLBS, n=132), Parkinson's Progression Markers Initiative (PPMI, n=108 healthy controls), and Information eXtraction from Images (IXI, n=319). We found that SFCN consistently outperformed more complex architectures with AUC of 1.00 [1.00-1.00] in UKB (internal test set) and 0.85-0.91…
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Taxonomy
TopicsFunctional Brain Connectivity Studies · Generative Adversarial Networks and Image Synthesis · Machine Learning in Healthcare
