Lei Ke, Syed Ali B, Zhu Xucheng, Pauly John M, Vasanawala Shreyas V
Electrical Engineering Department, Stanford University, Stanford, CA 94305, USA.
Radiology Department, Stanford University, Stanford, CA 94305, USA.
Bioengineering (Basel). 2023 Jan 10;10(1):92. doi: 10.3390/bioengineering10010092.
Manual prescription of the field of view (FOV) by MRI technologists is variable and prolongs the scanning process. Often, the FOV is too large or crops critical anatomy. We propose a deep learning framework, trained by radiologists' supervision, for automating FOV prescription. An intra-stack shared feature extraction network and an attention network are used to process a stack of 2D image inputs to generate scalars defining the location of a rectangular region of interest (ROI). The attention mechanism is used to make the model focus on a small number of informative slices in a stack. Then, the smallest FOV that makes the neural network predicted ROI free of aliasing is calculated by an algebraic operation derived from MR sampling theory. The framework's performance is examined quantitatively with intersection over union (IoU) and pixel error on position and qualitatively with a reader study. The proposed model achieves an average IoU of 0.867 and an average ROI position error of 9.06 out of 512 pixels on 80 test cases, significantly better than two baseline models and not significantly different from a radiologist. Finally, the FOV given by the proposed framework achieves an acceptance rate of 92% from an experienced radiologist.
MRI技术人员手动规定视野(FOV)具有变异性,并且会延长扫描过程。通常,视野过大或裁剪了关键解剖结构。我们提出了一种在放射科医生监督下训练的深度学习框架,用于自动规定视野。使用栈内共享特征提取网络和注意力网络来处理一叠二维图像输入,以生成定义矩形感兴趣区域(ROI)位置的标量。注意力机制用于使模型专注于一叠图像中的少量信息切片。然后,通过从MR采样理论推导的代数运算,计算出使神经网络预测的ROI无混叠的最小视野。使用交并比(IoU)和位置像素误差对框架性能进行定量检验,并通过读者研究进行定性检验。在80个测试案例上,所提出的模型实现了平均IoU为0.867,平均ROI位置误差在512个像素中为9.06,显著优于两个基线模型,且与放射科医生的结果无显著差异。最后,所提出框架给出的视野获得了经验丰富的放射科医生92%的接受率。