Department of Electrical Engineering, Yale University, New Haven, Connecticut, USA.
Department of Radiology and Biomedical Imaging, Yale University, New Haven, Connecticut, USA.
NMR Biomed. 2024 Aug;37(8):e5145. doi: 10.1002/nbm.5145. Epub 2024 Mar 15.
Noninvasive extracellular pH (pH) mapping with Biosensor Imaging of Redundant Deviation in Shifts (BIRDS) using MR spectroscopic imaging (MRSI) has been demonstrated on 3T clinical MR scanners at 8 mm spatial resolution and applied to study various liver cancer treatments. Although pH imaging at higher resolution can be achieved by extending the acquisition time, a postprocessing method to increase the resolution is preferable, to minimize the duration spent by the subject in the MR scanner. In this work, we propose to improve the spatial resolution of pH mapping with BIRDS by incorporating anatomical information in the form of multiparametric MRI and using an unsupervised deep-learning technique, Deep Image Prior (DIP). Specifically, we used high-resolution , , and diffusion-weighted imaging (DWI) MR images of rabbits with VX2 liver tumors as inputs to a U-Net architecture to provide anatomical information. U-Net parameters were optimized to minimize the difference between the output super-resolution image and the experimentally acquired low-resolution pH image using the mean-absolute error. In this way, the super-resolution pH image would be consistent with both anatomical MR images and the low-resolution pH measurement from the scanner. The method was developed based on data from 49 rabbits implanted with VX2 liver tumors. For evaluation, we also acquired high-resolution pH images from two rabbits, which were used as ground truth. The results indicate a good match between the spatial characteristics of the super-resolution images and the high-resolution ground truth, supported by the low pixelwise absolute error.
使用磁共振波谱成像 (MRSI) 的冗余偏移生物传感器成像 (BIRDS) 进行非侵入性细胞外 pH (pH) 测绘已在 3T 临床磁共振扫描仪上以 8mm 的空间分辨率进行了演示,并应用于研究各种肝癌治疗方法。尽管可以通过延长采集时间来实现更高分辨率的 pH 成像,但首选使用后处理方法来提高分辨率,以尽量减少受试者在磁共振扫描仪中花费的时间。在这项工作中,我们建议通过以多参数 MRI 的形式合并解剖学信息并使用无监督深度学习技术 Deep Image Prior (DIP) 来提高 BIRDS 的 pH 测绘空间分辨率。具体来说,我们使用带有 VX2 肝肿瘤的兔子的高分辨率 T1 加权、T2 加权和扩散加权成像 (DWI) MRI 图像作为 U-Net 架构的输入,提供解剖学信息。使用均方误差最小化 U-Net 参数,以将输出超分辨率图像与使用扫描仪获得的低分辨率 pH 图像之间的差异最小化。这样,超分辨率 pH 图像将与解剖学 MRI 图像和来自扫描仪的低分辨率 pH 测量值一致。该方法是基于 49 只植入 VX2 肝肿瘤的兔子的数据开发的。为了进行评估,我们还从两只兔子中获取了高分辨率 pH 图像,用作地面实况。结果表明,超分辨率图像的空间特征与高分辨率地面实况之间存在很好的匹配,这得到了低像素绝对误差的支持。