IEEE Trans Cybern. 2021 Jul;51(7):3441-3454. doi: 10.1109/TCYB.2019.2933633. Epub 2021 Jun 23.
Thin-section magnetic resonance imaging (MRI) can provide higher resolution anatomical structures and more precise clinical information than thick-section images. However, thin-section MRI is not always available due to the imaging cost issue. In multicenter retrospective studies, a large number of data are often in thick-section manner with different section thickness. The lack of thin-section data and the difference in section thickness bring considerable difficulties in the study based on the image big data. In this article, we introduce DeepVolume, a two-step deep learning architecture to address the challenge of accurate thin-section MR image reconstruction. The first stage is the brain structure-aware network, in which the thick-section MR images in axial and sagittal planes are fused by a multitask 3-D U-net with prior knowledge of brain volume segmentation, which encourages the reconstruction result to have correct brain structure. The second stage is the spatial connection-aware network, in which the preliminary reconstruction results are adjusted slice-by-slice by a recurrent convolutional network embedding convolutional long short-term memory (LSTM) block, which enhances the precision of the reconstruction by utilizing the previously unassessed sagittal information. We used 305 paired brain MRI samples with thickness of 1.0 mm and 6.5 mm in this article. Extensive experiments illustrate that DeepVolume can produce the state-of-the-art reconstruction results by embedding more anatomical knowledge. Furthermore, considering DeepVolume as an intermediate step, the practical and clinical value of our method is validated by applying the brain volume estimation and voxel-based morphometry. The results show that DeepVolume can provide much more reliable brain volume estimation in the normalized space based on the thick-section MR images compared with the traditional solutions.
薄层磁共振成像 (MRI) 可以提供比厚层图像更高分辨率的解剖结构和更精确的临床信息。然而,由于成像成本问题,薄层 MRI 并不总是可用。在多中心回顾性研究中,大量数据通常以厚层方式存在,且层厚不同。缺乏薄层数据和层厚差异给基于图像大数据的研究带来了相当大的困难。在本文中,我们介绍了 DeepVolume,这是一种两步深度学习架构,用于解决准确的薄层磁共振图像重建的挑战。第一阶段是大脑结构感知网络,其中轴向和矢状位的厚层 MRI 图像通过具有大脑体积分割先验知识的多任务 3D U-Net 融合,鼓励重建结果具有正确的大脑结构。第二阶段是空间连接感知网络,其中初步重建结果通过递归卷积网络进行逐片调整,该网络嵌入卷积长短期记忆 (LSTM) 块,通过利用以前未评估的矢状信息来提高重建的精度。我们在本文中使用了 305 对厚度为 1.0mm 和 6.5mm 的脑 MRI 样本。广泛的实验表明,通过嵌入更多的解剖学知识,DeepVolume 可以产生最先进的重建结果。此外,考虑到 DeepVolume 作为中间步骤,通过应用脑容量估计和体素形态计量学,验证了我们的方法的实际和临床价值。结果表明,与传统方法相比,DeepVolume 可以在基于厚层 MRI 的归一化空间中提供更可靠的脑容量估计。