Accelerated MRI using intelligent protocolling and subject-specific denoising applied to Alzheimer's disease imaging

Magnetic Resonance Imaging (MR Imaging) is routinely employed in diagnosing Alzheimer's Disease (AD), which accounts for up to 60–80% of dementia cases. However, it is time-consuming, and protocol optimization to accelerate MR Imaging requires local expertise since each pulse sequence involves...

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Published inFrontiers in neuroimaging Vol. 2; p. 1072759
Main Authors Ravi, Keerthi Sravan, Nandakumar, Gautham, Thomas, Nikita, Lim, Mason, Qian, Enlin, Jimeno, Marina Manso, Poojar, Pavan, Jin, Zhezhen, Quarterman, Patrick, Srinivasan, Girish, Fung, Maggie, Vaughan, John Thomas, Geethanath, Sairam
Format Journal Article
LanguageEnglish
Published Switzerland Frontiers Media S.A 06.04.2023
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ISSN2813-1193
2813-1193
DOI10.3389/fnimg.2023.1072759

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Summary:Magnetic Resonance Imaging (MR Imaging) is routinely employed in diagnosing Alzheimer's Disease (AD), which accounts for up to 60–80% of dementia cases. However, it is time-consuming, and protocol optimization to accelerate MR Imaging requires local expertise since each pulse sequence involves multiple configurable parameters that need optimization for contrast, acquisition time, and signal-to-noise ratio (SNR). The lack of this expertise contributes to the highly inefficient utilization of MRI services diminishing their clinical value. In this work, we extend our previous effort and demonstrate accelerated MRI via intelligent protocolling of the modified brain screen protocol, referred to as the Gold Standard (GS) protocol. We leverage deep learning-based contrast-specific image-denoising to improve the image quality of data acquired using the accelerated protocol. Since the SNR of MR acquisitions depends on the volume of the object being imaged, we demonstrate subject-specific (SS) image-denoising. The accelerated protocol resulted in a 1.94 × gain in imaging throughput. This translated to a 72.51% increase in MR Value—defined in this work as the ratio of the sum of median object-masked local SNR values across all contrasts to the protocol's acquisition duration. We also computed PSNR, local SNR, MS-SSIM, and variance of the Laplacian values for image quality evaluation on 25 retrospective datasets. The minimum/maximum PSNR gains (measured in dB) were 1.18/11.68 and 1.04/13.15, from the baseline and SS image-denoising models, respectively. MS-SSIM gains were: 0.003/0.065 and 0.01/0.066; variance of the Laplacian (lower is better): 0.104/−0.135 and 0.13/−0.143. The GS protocol constitutes 44.44% of the comprehensive AD imaging protocol defined by the European Prevention of Alzheimer's Disease project. Therefore, we also demonstrate the potential for AD-imaging via automated volumetry of relevant brain anatomies. We performed statistical analysis on these volumetric measurements of the hippocampus and amygdala from the GS and accelerated protocols, and found that 27 locations were in excellent agreement. In conclusion, accelerated brain imaging with the potential for AD imaging was demonstrated, and image quality was recovered post-acquisition using DL-based image denoising models.
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Edited by: Jon-Fredrik Nielsen, University of Michigan, United States
Reviewed by: Hamid Osman, Taif University, Saudi Arabia; Manas Gaur, University of Maryland, Baltimore County, United States; Deepa Tilwani, Artificial Intelligence Institute at University of South Carolina, United States in collaboration with reviewer MG
This article was submitted to Brain Imaging Methods, a section of the journal Frontiers in Neuroimaging
ISSN:2813-1193
2813-1193
DOI:10.3389/fnimg.2023.1072759