Prospective deployment of deep learning in MRI: a framework for important considerations, challenges, and recommendations for best practices
Artificial intelligence algorithms based on principles of deep learning (DL) have made a
large impact on the acquisition, reconstruction, and interpretation of MRI data. Despite the …
large impact on the acquisition, reconstruction, and interpretation of MRI data. Despite the …
Rapid knee MRI acquisition and analysis techniques for imaging osteoarthritis
Osteoarthritis (OA) of the knee is a major source of disability that has no known treatment or
cure. Morphological and compositional MRI is commonly used for assessing the bone and …
cure. Morphological and compositional MRI is commonly used for assessing the bone and …
[HTML][HTML] SDnDTI: Self-supervised deep learning-based denoising for diffusion tensor MRI
Diffusion tensor magnetic resonance imaging (DTI) is a widely adopted neuroimaging
method for the in vivo mapping of brain tissue microstructure and white matter tracts …
method for the in vivo mapping of brain tissue microstructure and white matter tracts …
[HTML][HTML] DeepDTI: High-fidelity six-direction diffusion tensor imaging using deep learning
Diffusion tensor magnetic resonance imaging (DTI) is unsurpassed in its ability to map tissue
microstructure and structural connectivity in the living human brain. Nonetheless, the …
microstructure and structural connectivity in the living human brain. Nonetheless, the …
[HTML][HTML] MTE-NODDI: Multi-TE NODDI for disentangling non-T2-weighted signal fractions from compartment-specific T2 relaxation times
Neurite orientation dispersion and density imaging (NODDI) has become a popular diffusion
MRI technique for investigating microstructural alternations during brain development …
MRI technique for investigating microstructural alternations during brain development …
[HTML][HTML] Deep learning-based parameter estimation in fetal diffusion-weighted MRI
Diffusion-weighted magnetic resonance imaging (DW-MRI) of fetal brain is challenged by
frequent fetal motion and signal to noise ratio that is much lower than non-fetal imaging. As a …
frequent fetal motion and signal to noise ratio that is much lower than non-fetal imaging. As a …
[HTML][HTML] Learning to estimate the fiber orientation distribution function from diffusion-weighted MRI
Estimation of white matter fiber orientation distribution function (fODF) is the essential first
step for reliable brain tractography and connectivity analysis. Most of the existing fODF …
step for reliable brain tractography and connectivity analysis. Most of the existing fODF …
[HTML][HTML] Deep learning prediction of diffusion MRI data with microstructure-sensitive loss functions
Deep learning prediction of diffusion MRI (DMRI) data relies on the utilization of effective
loss functions. Existing losses typically measure the signal-wise differences between the …
loss functions. Existing losses typically measure the signal-wise differences between the …
SuperDTI: Ultrafast DTI and fiber tractography with deep learning
Purpose To develop a deep learning–based reconstruction framework for ultrafast and
robust diffusion tensor imaging and fiber tractography. Methods SuperDTI was developed to …
robust diffusion tensor imaging and fiber tractography. Methods SuperDTI was developed to …
Systematic review of reconstruction techniques for accelerated quantitative MRI
Purpose To systematically review the techniques that address undersampling artifacts in
accelerated quantitative magnetic resonance imaging (qMRI). Methods A literature search …
accelerated quantitative magnetic resonance imaging (qMRI). Methods A literature search …