Evaluation of reference-free and model-free spectral-based quantitative ultrasound in vivo

2019 ◽  
Vol 146 (4) ◽  
pp. 2810-2810
Author(s):  
Michael L. Oelze ◽  
Trong N. Nguyen
Author(s):  
Masaaki Omura ◽  
Wakana Saito ◽  
Shinsuke Akita ◽  
Kenji Yoshida ◽  
Tadashi Yamaguchi

2019 ◽  
Vol 45 (8) ◽  
pp. 2049-2062 ◽  
Author(s):  
Trong N. Nguyen ◽  
Anthony S. Podkowa ◽  
Alex Y. Tam ◽  
Eben C. Arnold ◽  
Rita J. Miller ◽  
...  

2020 ◽  
Author(s):  
Francesco Grussu ◽  
Stefano B. Blumberg ◽  
Marco Battiston ◽  
Lebina S. Kakkar ◽  
Hongxiang Lin ◽  
...  

AbstractPurposeWe introduce “Select and retrieve via direct upsampling” network (SARDU-Net), a data-driven framework for model-free quantitative MRI (qMRI) protocol design, and demonstrate it on in vivo brain and prostate diffusion-relaxation imaging (DRI).MethodsSARDU-Net selects subsets of informative measurements within lengthy pilot scans, without the requirement to identify tissue parameters for which to optimise for. The algorithm consists of a selector, identifying measurement subsets, and a predictor, estimating fully-sampled signals from the subsets. We implement both using deep neural networks, which are trained jointly end-to-end. We demonstrate the algorithm on brain (32 diffusion-/T1-weightings) and prostate (16 diffusion-/T2-weightings) DRI scans acquired on 3 healthy volunteers on two separate 3T Philips systems each. We used SARDU-Net to identify sub-protocols of fixed size, assessing the reproducibility of the procedure and testing sub-protocols for their potential to inform multi-contrast analyses via T1-weighted spherical mean diffusion tensor (T1-SMDT, brain) and hybrid multi-dimensional MRI (HM-MRI, prostate) modelling.ResultsIn both brain and prostate, SARDU-Net identifies sub-protocols that maximise information content in a reproducible manner across training instantiations. The sub-protocols enable multi-contrast modelling for which they were not optimised explicitly, providing robust T1-SMDT and HM-MRI maps and goodness-of-fit in the top 5% against extensive sub-protocol comparisons.ConclusionsSARDU-Net gives new opportunities to identify economical but informative qMRI protocols from a subset of the pilot scans that can be used for acquisition-time-sensitive applications. The simple architecture makes the algorithm easy to train when exhaustive searches are intractable, and applicable to a variety of anatomical contexts.


2013 ◽  
Vol 134 (5) ◽  
pp. 4011-4011 ◽  
Author(s):  
Ivan Nenadic ◽  
Matthew W. Urban ◽  
Bo Qiang ◽  
Shigao Chen ◽  
James Greenleaf

Author(s):  
Lauren A. Wirtzfeld ◽  
Sandhya Sarwate ◽  
Douglas G. Simpson ◽  
James A. Zagzebski ◽  
Timothy A. Bigelow ◽  
...  

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