DeepSTI: Towards Tensor Reconstruction using Fewer Orientations in Susceptibility Tensor Imaging
Zhenghan Fang, Kuo-Wei Lai, Peter van Zijl, Xu Li, Jeremias Sulam

TL;DR
DeepSTI introduces a neural network-based reconstruction method for susceptibility tensor imaging that significantly reduces the number of required head orientations, enabling in vivo human brain applications with fewer measurements.
Contribution
The paper presents DeepSTI, a novel deep learning approach that improves STI reconstruction from limited orientations, addressing practical acquisition challenges.
Findings
Outperforms existing algorithms in tensor and tractography quality.
Achieves accurate reconstruction from only one orientation in vivo.
Demonstrates potential for lesion susceptibility analysis in multiple sclerosis.
Abstract
Susceptibility tensor imaging (STI) is an emerging magnetic resonance imaging technique that characterizes the anisotropic tissue magnetic susceptibility with a second-order tensor model. STI has the potential to provide information for both the reconstruction of white matter fiber pathways and detection of myelin changes in the brain at mm resolution or less, which would be of great value for understanding brain structure and function in healthy and diseased brain. However, the application of STI in vivo has been hindered by its cumbersome and time-consuming acquisition requirement of measuring susceptibility induced MR phase changes at multiple (usually more than six) head orientations. This complexity is enhanced by the limitation in head rotation angles due to physical constraints of the head coil. As a result, STI has not yet been widely applied in human studies in vivo. In this…
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Taxonomy
TopicsAdvanced Neuroimaging Techniques and Applications · Advanced MRI Techniques and Applications · Fetal and Pediatric Neurological Disorders
