IVLGMED-PHFeb 3, 2020

SuperDTI: Ultrafast diffusion tensor imaging and fiber tractography with deep learning

arXiv:2002.01031v457 citations
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This work addresses the need for faster and more reliable DTI in clinical settings, potentially enabling routine use, though it is incremental as it builds on existing deep learning methods for medical imaging.

The authors tackled the problem of slow and noise-sensitive diffusion tensor imaging (DTI) by proposing SuperDTI, a deep learning framework that reconstructs quantitative maps and fiber tractography from as few as six diffusion-weighted images, achieving less than 5% quantification error and robustness to noise and motion.

Purpose: To propose a deep learning-based reconstruction framework for ultrafast and robust diffusion tensor imaging and fiber tractography. Methods: We propose SuperDTI to learn the nonlinear relationship between diffusion-weighted images (DWIs) and the corresponding tensor-derived quantitative maps as well as the fiber tractography. Super DTI bypasses the tensor fitting procedure, which is well known to be highly susceptible to noise and motion in DWIs. The network is trained and tested using datasets from Human Connectome Project and patients with ischemic stroke. SuperDTI is compared against the state-of-the-art methods for diffusion map reconstruction and fiber tracking. Results: Using training and testing data both from the same protocol and scanner, SuperDTI is shown to generate fractional anisotropy and mean diffusivity maps, as well as fiber tractography, from as few as six raw DWIs. The method achieves a quantification error of less than 5% in all regions of interest in white matter and gray matter structures. We also demonstrate that the trained neural network is robust to noise and motion in the testing data, and the network trained using healthy volunteer data can be directly applied to stroke patient data without compromising the lesion detectability. Conclusion: This paper demonstrates the feasibility of superfast diffusion tensor imaging and fiber tractography using deep learning with as few as six DWIs directly, bypassing tensor fitting. Such a significant reduction in scan time may allow the inclusion of DTI into the clinical routine for many potential applications.

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