Attention-Gated Convolutional Networks for Scanner-Agnostic Quality Assessment
Chinmay Bakhale, Anil Sao

TL;DR
This paper introduces an attention-gated CNN framework for MRI quality assessment that is robust across different sites and scanner types, achieving high accuracy and generalization without retraining.
Contribution
The proposed hybrid CNN-Attention model effectively captures universal MRI artifacts and generalizes well across unseen sites, addressing domain shift in quality assessment.
Findings
Achieved 99.20% accuracy on seen sites.
Maintained 75.5% accuracy on unseen sites without retraining.
Demonstrated robustness to site-specific variations and noise.
Abstract
Motion artifacts present a significant challenge in structural MRI (sMRI), often compromising clinical diagnostics and large-scale automated analysis. While manual quality control (QC) remains the gold standard, it is increasingly unscalable for massive longitudinal studies. To address this, we propose a hybrid CNN-Attention framework designed for robust, site-invariant MRI quality assessment. Our architecture integrates a hierarchical 2D CNN encoder for local spatial feature extraction with a multi-head cross-attention mechanism to model global dependencies. This synergy enables the model to prioritize motion relevant artifact signatures, such as ringing and blurring, while dynamically filtering out site-specific intensity variations and background noise. The framework was trained end-to-end on the MR-ART dataset using a balanced cohort of 200 subjects. Performance was evaluated across…
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