Monash Biomedical Imaging, Monash University, Melbourne, Australia; School of Psychological Sciences, Monash University, Melbourne, Australia.
Monash Biomedical Imaging, Monash University, Melbourne, Australia; Department of Electrical and Computer Systems Engineering, Monash University, Melbourne, Australia.
Eur J Radiol. 2020 Dec;133:109384. doi: 10.1016/j.ejrad.2020.109384. Epub 2020 Oct 27.
To evaluate the clinical utility of the application of a deep learning motion correction technique on 3D MPRAGE magnetic resonance images acquired in routine clinical practice.
An encoder-decoder deep learning network inspired by InceptionResnet was trained on public datasets. The clinical utility of the trained network was evaluated retrospectively on 27 3D MPRAGE T1 weighted motion degraded MR images identified by radiologists during reporting. The assessment of image quality was performed by one board-certified radiologist and one senior radiology trainee for nine neuroanatomical regions of the brain using a five-point visual grading scale.
The deep learning motion correction technique resulted in reduced ghosting, ringing and blurring for all the brain regions investigated. The larger regions of interest such as ventricles improved the least (1.81 to 1.16, p-value: < 0.0001) while the smaller but complex regions such as the hippocampus improved most (3.0 to 1.67, p-value: < 0.0001). The Wilcox rank tests of image quality differences for the nine neuroanatomical regions were all statistically significant (p < 0.001). Overall, 60 % of the neuroanatomical regions were improved, 39 % were unchanged and 1 % were degraded. Out of the unchanged cases, 28 % were already scored at the highest image quality before motion correction. It was found that approximately 13 % of repeated scans could be avoided using the DL motion correction approach.
The deep learning motion correction technique improved the overall visual perception of the 3D T1 weighted MPRAGE brain images. This would improve the clinical utility of otherwise motion degraded images and allow visualisation of normal anatomy and even subtle pathology.
评估深度学习运动校正技术在常规临床实践中采集的 3D MPRAGE 磁共振图像中的应用的临床实用性。
受 InceptionResnet 启发的编码器-解码器深度学习网络在公共数据集上进行训练。通过放射科医生在报告期间识别的 27 个 3D MPRAGE T1 加权运动退化 MR 图像的回顾性评估,评估训练后的网络的临床实用性。使用五分制视觉分级量表,由一名具有董事会认证的放射科医生和一名高级放射科受训人员对大脑的九个神经解剖区域的图像质量进行评估。
深度学习运动校正技术减少了所有研究的脑区的重影、振铃和模糊。较大的感兴趣区域(如脑室)改善最少(1.81 至 1.16,p 值:<0.0001),而较小但复杂的区域(如海马体)改善最多(3.0 至 1.67,p 值:<0.0001)。九个神经解剖区域的图像质量差异的 Wilcox 秩检验均具有统计学意义(p<0.001)。总体而言,60%的神经解剖区域得到改善,39%保持不变,1%恶化。在不变的病例中,28%在运动校正前已经达到了最高的图像质量评分。结果发现,约有 13%的重复扫描可以通过 DL 运动校正方法避免。
深度学习运动校正技术改善了 3D T1 加权 MPRAGE 脑图像的整体视觉感知。这将提高运动退化图像的临床实用性,并允许显示正常解剖结构,甚至细微的病理。