Generative AI for Rapid Diffusion MRI with Improved Image Quality, Reliability and Generalizability
Amir Sadikov, Xinlei Pan, Hannah Choi, Lanya T. Cai, Pratik Mukherjee

TL;DR
This paper introduces a Swin UNETR-based model that significantly enhances the quality, reliability, and speed of diffusion MRI, enabling rapid scans with high accuracy across diverse clinical and research settings.
Contribution
The study presents a novel transformer-based denoising method that generalizes across datasets and can be fine-tuned with a single example, outperforming existing techniques.
Findings
Achieves state-of-the-art denoising accuracy
Improves test-retest reliability of diffusion metrics
Enables rapid MRI scans in 90 seconds
Abstract
Diffusion MRI is a non-invasive, in-vivo biomedical imaging method for mapping tissue microstructure. Applications include structural connectivity imaging of the human brain and detecting microstructural neural changes. However, acquiring high signal-to-noise ratio dMRI datasets with high angular and spatial resolution requires prohibitively long scan times, limiting usage in many important clinical settings, especially for children, the elderly, and in acute neurological disorders that may require conscious sedation or general anesthesia. We employ a Swin UNEt Transformers model, trained on augmented Human Connectome Project data and conditioned on registered T1 scans, to perform generalized denoising of dMRI. We also qualitatively demonstrate super-resolution with artificially downsampled HCP data in normal adult volunteers. Remarkably, Swin UNETR can be fine-tuned for an…
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Taxonomy
TopicsAdvanced Neuroimaging Techniques and Applications · MRI in cancer diagnosis · Advanced MRI Techniques and Applications
MethodsMulti-Head Attention · Attention Is All You Need · Concatenated Skip Connection · Dense Connections · Max Pooling · U-Net · Softmax · Linear Layer · Position-Wise Feed-Forward Layer · Batch Normalization
