Ogawa Ryo, Kido Tomoyuki, Nakamura Masashi, Nozaki Atsushi, Lebel R Marc, Mochizuki Teruhito, Kido Teruhito
Department of Radiology, Ehime University Graduate School of Medicine, Toon, Japan.
MR Collaboration and Development, GE Healthcare, Tokyo, Japan.
Acta Radiol Open. 2021 Sep 26;10(9):20584601211044779. doi: 10.1177/20584601211044779. eCollection 2021 Sep.
Deep learning-based methods have been used to denoise magnetic resonance imaging.
The purpose of this study was to evaluate a deep learning reconstruction (DL Recon) in cardiovascular black-blood T2-weighted images and compare with intensity filtered images.
Forty-five DL Recon images were compared with intensity filtered and the original images. For quantitative image analysis, the signal to noise ratio (SNR) of the septum, contrast ratio (CR) of the septum to lumen, and sharpness of the endocardial border were calculated in each image. For qualitative image quality assessment, a 4-point subjective scale was assigned to each image (1 = poor, 2 = fair, 3 = good, 4 = excellent).
The SNR and CR were significantly higher in the DL Recon images than in the intensity filtered and the original images ( < .05 in each). Sharpness of the endocardial border was significantly higher in the DL Recon and intensity filtered images than in the original images ( < .05 in each). The image quality of the DL Recon images was significantly better than that of intensity filtered and original images ( < .001 in each).
DL Recon reduced image noise while improving image contrast and sharpness in the cardiovascular black-blood T2-weight sequence.
基于深度学习的方法已被用于磁共振成像去噪。
本研究旨在评估心血管黑血T2加权图像中的深度学习重建(DL Recon),并与强度滤波图像进行比较。
将45幅DL Recon图像与强度滤波图像和原始图像进行比较。对于定量图像分析,计算每幅图像中室间隔的信噪比(SNR)、室间隔与管腔的对比度(CR)以及心内膜边界的清晰度。对于定性图像质量评估,为每幅图像指定一个4分主观量表(1 = 差,2 = 一般,3 = 好,4 = 优秀)。
DL Recon图像中的SNR和CR显著高于强度滤波图像和原始图像(各P <.05)。DL Recon图像和强度滤波图像中心内膜边界的清晰度显著高于原始图像(各P <.05)。DL Recon图像的图像质量显著优于强度滤波图像和原始图像(各P <.001)。
DL Recon在心血管黑血T2加权序列中降低了图像噪声,同时提高了图像对比度和清晰度。