Yoshida Nobukiyo, Kageyama Hajime, Akai Hiroyuki, Kasai Satoshi, Sasaki Kei, Sakurai Noriko, Kodama Naoki
Faculty of Medical Technology, Department of Radiological Technology, Niigata University of Health and Welfare, Niigata, Japan.
Department of Radiology, Institute of Medical Science, The University of Tokyo, Tokyo, Japan.
Front Neurol. 2025 Jul 15;16:1507722. doi: 10.3389/fneur.2025.1507722. eCollection 2025.
Brain magnetic resonance imaging (MRI) is important for diagnosing Alzheimer's disease (AD), and MRI acquisition time should be reduced. The current study aimed to identify which Pix2Pix-based super-resolution images can reduce errors associated with brain anatomical analysis with diffeomorphic deformation examination and MRI acquisition time.
Fifty patients with dementia who uderwent scanning using a 3-T MRI scanner in the OASIS-3 database were used to construct a super-resolution network. Network training was performed using a scaled image (64 × 64) down-sampled from the original image as the input image and paired with the original high-resolution (256 × 256) supervised image. The hippocampal volume was measured using brain anatomical analysis with diffeomorphic deformation software, which employs machine learning algorithms and performs voxel-based morphometry. Peak signal-to-noise ratio (PSNR) and Multiscale structural similarity (MS-SSIM) score were used to objectively evaluate the generated images.
At = e, the PSNR and MS-SSIM score of the generated images were 27.91 ± 1.78 dB and 0.96 ± 0.0045, respectively. This finding indicated that the generated images had the highest objective evaluation. Using the images generated at = e, the left and right hippocampal volumes did not significantly differ between the original and generated super-resolution images ( = 0.76, = 0.19, respectively).
With super-resolution using the Pix2Pix network, the hippocampal volume can be accurately measured, and the MRI acquisition time can be reduced. The proposed method does not require special hardware and can be applied to previous images.
脑磁共振成像(MRI)对于阿尔茨海默病(AD)的诊断至关重要,且应缩短MRI采集时间。本研究旨在确定哪些基于Pix2Pix的超分辨率图像能够通过微分同胚变形检查减少与脑解剖分析相关的误差,并缩短MRI采集时间。
使用OASIS - 3数据库中50例接受3-T MRI扫描仪扫描的痴呆患者构建超分辨率网络。网络训练使用从原始图像下采样得到的缩放图像(64×64)作为输入图像,并与原始高分辨率(256×256)监督图像配对。使用采用机器学习算法并进行基于体素形态学测量的微分同胚变形软件,通过脑解剖分析来测量海马体积。使用峰值信噪比(PSNR)和多尺度结构相似性(MS - SSIM)分数客观评估生成的图像。
在 = e时,生成图像的PSNR和MS - SSIM分数分别为27.91±1.78 dB和0.96±0.0045。这一结果表明生成的图像具有最高的客观评估。使用在 = e时生成的图像,原始超分辨率图像和生成的超分辨率图像之间的左右海马体积无显著差异(分别为 = 0.76, = 0.19)。
通过使用Pix2Pix网络进行超分辨率处理,可以准确测量海马体积,并缩短MRI采集时间。所提出的方法不需要特殊硬件,并且可以应用于先前的图像。