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
Department of Biomedical Engineering, Columbia University in the City of New York, New York, NY, United States.
Columbia University Magnetic Resonance Research Center, Columbia University in the City of New York, New York, NY, United States.
Front Neuroimaging. 2023 Apr 6;2:1072759. doi: 10.3389/fnimg.2023.1072759. eCollection 2023.
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 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 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.
磁共振成像(MR成像)常用于诊断阿尔茨海默病(AD),AD占痴呆病例的60 - 80%。然而,它耗时较长,且由于每个脉冲序列都涉及多个可配置参数,需要针对对比度、采集时间和信噪比(SNR)进行优化,因此加速MR成像的协议优化需要当地的专业知识。缺乏这种专业知识导致MRI服务利用效率极低,降低了其临床价值。在这项工作中,我们扩展了之前的努力,展示了对改良脑屏协议(称为黄金标准(GS)协议)的加速MRI智能协议制定。我们利用基于深度学习的特定对比度图像去噪来提高使用加速协议采集的数据的图像质量。由于MR采集的SNR取决于成像对象的体积,我们展示了针对特定对象(SS)的图像去噪。加速协议使成像通量提高了1.94倍。这转化为MR值增加了72.51%,在这项工作中,MR值定义为所有对比度下对象掩码局部SNR值之和与协议采集持续时间的比值。我们还在25个回顾性数据集中计算了PSNR、局部SNR、MS - SSIM和拉普拉斯值的方差用于图像质量评估。从基线和SS图像去噪模型分别得到的最小/最大PSNR增益(以dB为单位)为1.18/11.68和1.04/13.15。MS - SSIM增益为:0.003/0.065和0.01/0.066;拉普拉斯方差(越低越好):0.104/-0.135和0.13/-0.143。GS协议占欧洲预防阿尔茨海默病项目定义的综合AD成像协议的44.44%。因此,我们还展示了对相关脑解剖结构进行AD成像自动容积测量的潜力。我们对来自GS协议和加速协议的海马体和杏仁核的这些容积测量进行了统计分析,发现27个位置的结果高度一致。总之,展示了具有AD成像潜力的加速脑成像,并使用基于深度学习的图像去噪模型在采集后恢复了图像质量。