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📄 Abstract
Abstract: Diffusion MRI (dMRI) is a valuable tool to map brain microstructure and
connectivity by analyzing water molecule diffusion in tissue. However,
acquiring dMRI data requires to capture multiple 3D brain volumes in a short
time, often leading to trade-offs in image quality. One challenging artifact is
susceptibility-induced distortion, which introduces significant geometric and
intensity deformations. Traditional correction methods, such as topup, rely on
having access to blip-up and blip-down image pairs, limiting their
applicability to retrospective data acquired with a single phase encoding
direction. In this work, we propose a deep learning-based approach to correct
susceptibility distortions using only a single acquisition (either blip-up or
blip-down), eliminating the need for paired acquisitions. Experimental results
show that our method achieves performance comparable to topup, demonstrating
its potential as an efficient and practical alternative for susceptibility
distortion correction in dMRI.