论文标题
具有可分离时空神经网络的加速呼吸道分辨的4D-MRI
Accelerated respiratory-resolved 4D-MRI with separable spatio-temporal neural networks
论文作者
论文摘要
背景:呼吸道分辨的四维磁共振成像(4D-MRI)提供了必不可少的运动信息,以准确地放射移动肿瘤。但是,获得高质量的4D-MRI遭受了长时间的收购和重建时间。 目的:开发深度学习结构以快速获取和重建高质量的4D-MRI,从而实现MRI引导放射疗法的准确运动定量。 方法:提出了一个小的卷积神经网络,提出了通过执行空间和时间分解来重建4D-MRI,从而忽略了4D卷积的需求,以使用4D-MRI中存在的所有时空信息。该网络在呼吸道结合后对未采样的4D-MRI进行了训练,以重建通过压缩感测重建获得的高质量的4D-MRI。该网络对28例使用T1加权的金角径向堆栈序列的28例肺癌患者进行了训练,验证和测试。 18、5和5名患者的4D-MRI用于培训,验证和测试。通过比较呼吸固定前后的肺透明界面在不足的4D-MRI上的位置,评估了通过结构相似性指数(SSIM)和运动一致性测量的图像质量评估网络性能。将网络与常规体系结构(例如U-NET)进行比较,U-NET具有30倍可训练的参数。 结果:尽管可训练的参数降低了33倍,但适度的高质量4D-MRI具有比U-NET更高的图像质量。高质量的4D-MRI可以在大约2.5分钟内使用谦虚获得,包括采集,处理和重建。 结论:可以使用谦虚获得高质量的加速4D-MRI,这对于MRI引导的放射疗法特别有趣。
Background: Respiratory-resolved four-dimensional magnetic resonance imaging (4D-MRI) provides essential motion information for accurate radiation treatments of mobile tumors. However, obtaining high-quality 4D-MRI suffers from long acquisition and reconstruction times. Purpose: To develop a deep learning architecture to quickly acquire and reconstruct high-quality 4D-MRI, enabling accurate motion quantification for MRI-guided radiotherapy. Methods: A small convolutional neural network called MODEST is proposed to reconstruct 4D-MRI by performing a spatial and temporal decomposition, omitting the need for 4D convolutions to use all the spatio-temporal information present in 4D-MRI. This network is trained on undersampled 4D-MRI after respiratory binning to reconstruct high-quality 4D-MRI obtained by compressed sensing reconstruction. The network is trained, validated, and tested on 4D-MRI of 28 lung cancer patients acquired with a T1-weighted golden-angle radial stack-of-stars sequence. The 4D-MRI of 18, 5, and 5 patients were used for training, validation, and testing. Network performances are evaluated on image quality measured by the structural similarity index (SSIM) and motion consistency by comparing the position of the lung-liver interface on undersampled 4D-MRI before and after respiratory binning. The network is compared to conventional architectures such as a U-Net, which has 30 times more trainable parameters. Results: MODEST can reconstruct high-quality 4D-MRI with higher image quality than a U-Net, despite a thirty-fold reduction in trainable parameters. High-quality 4D-MRI can be obtained using MODEST in approximately 2.5 minutes, including acquisition, processing, and reconstruction. Conclusion: High-quality accelerated 4D-MRI can be obtained using MODEST, which is particularly interesting for MRI-guided radiotherapy.