Diffusion Tensor Estimation with Transformer Neural Networks
Davood Karimi, Ali Gholipour

TL;DR
This paper introduces a transformer-based neural network method for accurate diffusion tensor estimation from only six measurements, enabling shorter MRI scans especially beneficial for neonates and infants.
Contribution
It presents a novel transformer neural network approach that estimates diffusion tensors from minimal measurements by leveraging spatial relationships between neighboring voxels.
Findings
Achieves high accuracy with only six measurements.
Outperforms three competing methods in experiments.
Comparable to standard methods with many more measurements.
Abstract
Diffusion tensor imaging (DTI) is a widely used method for studying brain white matter development and degeneration. However, standard DTI estimation methods depend on a large number of high-quality measurements. This would require long scan times and can be particularly difficult to achieve with certain patient populations such as neonates. Here, we propose a method that can accurately estimate the diffusion tensor from only six diffusion-weighted measurements. Our method achieves this by learning to exploit the relationships between the diffusion signals and tensors in neighboring voxels. Our model is based on transformer networks, which represent the state of the art in modeling the relationship between signals in a sequence. In particular, our model consists of two such networks. The first network estimates the diffusion tensor based on the diffusion signals in a neighborhood of…
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Taxonomy
TopicsAdvanced Neuroimaging Techniques and Applications · Fetal and Pediatric Neurological Disorders · Tensor decomposition and applications
MethodsDiffusion
