School of Physics, Huazhong University of Science and Technology, Wuhan, China.
State Key Laboratory of Magnetic Resonance and Atomic and Molecular Physics, National Center for Magnetic Resonance in Wuhan, Wuhan Institute of Physics and Mathematics, Innovation Academy for Precision Measurement Science and Technology, Chinese Academy of Sciences, Wuhan National Laboratory for Optoelectronics, Wuhan, China.
Med Phys. 2024 Jan;51(1):378-393. doi: 10.1002/mp.16591. Epub 2023 Jul 3.
Hyperpolarized (HP) gas MRI enables the clear visualization of lung structure and function. Clinically relevant biomarkers, such as ventilated defect percentage (VDP) derived from this modality can quantify lung ventilation function. However, long imaging time leads to image quality degradation and causes discomfort to the patients. Although accelerating MRI by undersampling k-space data is available, accurate reconstruction and segmentation of lung images are quite challenging at high acceleration factors.
To simultaneously improve the performance of reconstruction and segmentation of pulmonary gas MRI at high acceleration factors by effectively utilizing the complementary information in different tasks.
A complementation-reinforced network is proposed, which takes the undersampled images as input and outputs both the reconstructed images and the segmentation results of lung ventilation defects. The proposed network comprises a reconstruction branch and a segmentation branch. To effectively exploit the complementary information, several strategies are designed in the proposed network. Firstly, both branches adopt the encoder-decoder architecture, and their encoders are designed to share convolutional weights for facilitating knowledge transfer. Secondly, a designed feature-selecting block discriminately feeds shared features into decoders of both branches, which can adaptively pick suitable features for each task. Thirdly, the segmentation branch incorporates the lung mask obtained from the reconstructed images to enhance the accuracy of the segmentation results. Lastly, the proposed network is optimized by a tailored loss function that efficiently combines and balances these two tasks, in order to achieve mutual benefits.
Experimental results on the pulmonary HP Xe MRI dataset (including 43 healthy subjects and 42 patients) show that the proposed network outperforms state-of-the-art methods at high acceleration factors (4, 5, and 6). The peak signal-to-noise ratio (PSNR), structural similarity (SSIM), and Dice score of the proposed network are enhanced to 30.89, 0.875, and 0.892, respectively. Additionally, the VDP obtained from the proposed network has good correlations with that obtained from fully sampled images (r = 0.984). At the highest acceleration factor of 6, the proposed network promotes PSNR, SSIM, and Dice score by 7.79%, 5.39%, and 9.52%, respectively, in comparison to the single-task models.
The proposed method effectively enhances the reconstruction and segmentation performance at high acceleration factors up to 6. It facilitates fast and high-quality lung imaging and segmentation, and provides valuable support in the clinical diagnosis of lung diseases.
超极化(HP)气体 MRI 能够清晰地显示肺部结构和功能。该模态衍生的临床相关生物标志物,如通气缺陷百分比(VDP),可定量评估肺通气功能。然而,较长的成像时间会导致图像质量下降,并使患者感到不适。尽管可以通过欠采样 k 空间数据来加速 MRI,但在高加速因子下,准确重建和分割肺部图像仍然极具挑战性。
通过有效利用不同任务中的互补信息,同时提高高加速因子下肺部气体 MRI 的重建和分割性能。
提出了一种互补增强网络,它以欠采样图像作为输入,输出重建图像和肺部通气缺陷的分割结果。该网络由重建分支和分割分支组成。为了有效地利用互补信息,在提出的网络中设计了几种策略。首先,两个分支都采用编解码器结构,其编码器被设计为共享卷积权重,以促进知识转移。其次,设计的特征选择块有选择地将共享特征输入到两个分支的解码器中,这可以自适应地为每个任务选择合适的特征。第三,分割分支将从重建图像中获得的肺掩模纳入其中,以提高分割结果的准确性。最后,通过一个精心设计的损失函数来优化网络,该损失函数可以有效地组合和平衡这两个任务,以实现相互促进。
在肺部 HP Xe MRI 数据集(包括 43 名健康受试者和 42 名患者)上的实验结果表明,在高加速因子(4、5 和 6)下,所提出的网络优于最先进的方法。所提出的网络的峰值信噪比(PSNR)、结构相似性(SSIM)和 Dice 分数分别提高到 30.89、0.875 和 0.892。此外,从所提出的网络获得的 VDP 与从完全采样图像获得的 VDP 具有很好的相关性(r=0.984)。在最高的加速因子 6 下,与单任务模型相比,所提出的网络分别提高了 7.79%、5.39%和 9.52%的 PSNR、SSIM 和 Dice 分数。
所提出的方法有效地提高了高加速因子下的重建和分割性能,最高可达 6。它促进了快速和高质量的肺部成像和分割,为肺部疾病的临床诊断提供了有价值的支持。