scholarly journals Super-Resolution Whole-Brain 3D MR Spectroscopic Imaging for Mapping D-2-Hydroxyglutarate and Tumor Metabolism in Isocitrate Dehydrogenase 1–mutated Human Gliomas

Radiology ◽  
2020 ◽  
Vol 294 (3) ◽  
pp. 589-597 ◽  
Author(s):  
Xianqi Li ◽  
Bernhard Strasser ◽  
Kourosh Jafari-Khouzani ◽  
Bijaya Thapa ◽  
Julia Small ◽  
...  
2020 ◽  
Vol 3 (Supplement_1) ◽  
pp. i5-i6
Author(s):  
Xianqi Li ◽  
Ovidiu Andronesi ◽  
Bernhard Strasser ◽  
Kourosh Jafari-Khouzani ◽  
Daniel Cahill ◽  
...  

Abstract Metabolic imaging can map spatially abnormal molecular pathways with higher specificity for cancer compared to anatomical imaging. However, acquiring high resolution metabolic maps similar to anatomical MRI is challenging due to low metabolite concentrations, and alternative approaches that increase resolution by post-acquisition image processing can mitigate this limitation. We developed deep learning super-resolution MR spectroscopic imaging (MRSI) to map tumor metabolism in patients with mutant IDH glioma. We used a generative adversarial network (GAN) architecture comprised of a UNet neural network as the generator network and a discriminator network for adversarial training. For training we simulated a large data set of 9600 images with realistic quality for acquired MRSI to effectively train the deep learning model to upsample by a factor of four. Two types of training were performed: 1) using only the MRSI data, and 2) using MRSI and prior information from anatomical MRI to further enhance structural details. The performance of super-resolution methods was evaluated by peak SNR (PSNR), structure similarity index (SSIM), and feature similarity index (FSIM). After training on simulations, GAN was evaluated on measured MRSI metabolic maps acquired with resolution 5.2×5.2 mm2 and upsampled to 1.3×1.3 mm2. The GAN trained only on MRSI achieved PSNR = 27.94, SSIM = 0.88, FSIM = 0.89. Using prior anatomical MRI improved GAN performance to PSNR = 30.75, SSIM = 0.90, FSIM = 0.92. In the patient measured data, GAN super-resolution metabolic images provided clearer tumor margins and made apparent the tumor metabolic heterogeneity. Compared to conventional image interpolation such as bicubic or total variation, deep learning methods provided sharper edges and less blurring of structural details. Our results indicate that the proposed deep learning method is effective in enhancing the spatial resolution of metabolite maps which may better guide treatment in mutant IDH glioma patients.


2021 ◽  
Vol 23 (Supplement_6) ◽  
pp. vi131-vi131
Author(s):  
Xianqi Li ◽  
Ovidiu Andronesi

Abstract Metabolic imaging can map spatially abnormal molecular pathways with higher specificity for cancer compared to anatomical imaging. However, acquiring high resolution metabolic maps similar to anatomical MRI is challenging in patients due to low metabolite concentrations, and alternative approaches that increase resolution by post-acquisition image processing can mitigate this limitation. We developed deep learning super-resolution MR spectroscopic imaging (MRSI) to map tumor metabolism in patients with mutant IDH glioma. We used a generative adversarial network (GAN) architecture comprised of a UNet neural network as the generator network and a discriminator network for adversarial training. For initial training we simulated a large data set of 9600 images with realistic quality for acquired MRSI to effectively train the deep learning model to upsample by a factor of four. Two types of training were performed: 1) using only the MRSI data, and 2) using MRSI and prior information from anatomical MRI to further enhance structural details. The performance of super-resolution methods was evaluated by peak SNR (PSNR), structure similarity index (SSIM), and feature similarity index (FSIM). After training on simulations, GAN was evaluated on measured MRSI metabolic maps acquired with resolution 5.2×5.2 mm2 and upsampled to 1.3×1.3 mm2. The GAN trained only on MRSI achieved PSNR = 27.94, SSIM = 0.88, FSIM = 0.89. Using prior anatomical MRI improved GAN performance to PSNR = 30.75, SSIM = 0.90, FSIM = 0.92. In the patient measured data, GAN super-resolution metabolic images provided clearer tumor margins and made apparent the tumor metabolic heterogeneity. Compared to conventional image interpolation such as bicubic or total variation, deep learning methods provided sharper edges and less blurring of structural details. Our results indicate that the proposed deep learning method is effective in enhancing the spatial resolution of metabolite maps which may better guide treatment in mutant IDH glioma patients.


2015 ◽  
Vol 17 (suppl 3) ◽  
pp. iii5-iii5
Author(s):  
I. Park ◽  
R. Hashizume ◽  
X. Yang ◽  
P. Larson ◽  
C. D. James ◽  
...  

2019 ◽  
Vol 30 (2) ◽  
pp. 251-261 ◽  
Author(s):  
Helen Maghsudi ◽  
Birte Schmitz ◽  
Andrew A. Maudsley ◽  
Sulaiman Sheriff ◽  
Paul Bronzlik ◽  
...  

2009 ◽  
pp. n/a-n/a ◽  
Author(s):  
A. A. Maudsley ◽  
C. Domenig ◽  
S. Sheriff

2018 ◽  
Vol 33 (1) ◽  
pp. 557-571 ◽  
Author(s):  
Krissie Lenting ◽  
Mohammed Khurshed ◽  
Tom H. Peeters ◽  
Corina N. A. M. Heuvel ◽  
Sanne A. M. Lith ◽  
...  

NeuroImage ◽  
2016 ◽  
Vol 137 ◽  
pp. 45-51 ◽  
Author(s):  
Xiao-Qi Ding ◽  
Andrew A. Maudsley ◽  
Mohammad Sabati ◽  
Sulaiman Sheriff ◽  
Birte Schmitz ◽  
...  

2014 ◽  
Vol 74 (5) ◽  
pp. 1209-1220 ◽  
Author(s):  
Mohammad Sabati ◽  
Sulaiman Sheriff ◽  
Meng Gu ◽  
Juan Wei ◽  
Henry Zhu ◽  
...  

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