论文标题
基于短期记忆的长期基于内存的复发性神经网络,用于介入MRI重建
A Long Short-term Memory Based Recurrent Neural Network for Interventional MRI Reconstruction
论文作者
论文摘要
用于手术指导的介入磁共振成像(I-MRI)可以帮助可视化介入过程,例如深脑刺激(DBS),改善手术性能和患者的预后。与常规动态成像中的回顾性重建不同,DBS的I-MRI必须依次在线获取和重建介入的介入图像。在这里,我们提出了一个基于卷积的长期记忆(CORV-LSTM)的复发性神经网络(RNN)或Convlr,以用金角径向采样重建介入的介入图像。通过使用初始化器和Cons-LSTM块,利用了术前参考图像和术中框架的先验来重建当前帧。径向采样的数据一致性是通过软预测方法实现的。为了提高重建精度,采用了对抗性学习策略。模拟了基于术前和术后MR图像的一组介入图像以进行算法验证。结果仅显示了10个径向辐条,与最先进的方法相比,Convlr提供了最佳性能,从而加速了高达40倍。所提出的算法有可能实现DBS实时I-MRI,可用于通用MR引导干预。
Interventional magnetic resonance imaging (i-MRI) for surgical guidance could help visualize the interventional process such as deep brain stimulation (DBS), improving the surgery performance and patient outcome. Different from retrospective reconstruction in conventional dynamic imaging, i-MRI for DBS has to acquire and reconstruct the interventional images sequentially online. Here we proposed a convolutional long short-term memory (Conv-LSTM) based recurrent neural network (RNN), or ConvLR, to reconstruct interventional images with golden-angle radial sampling. By using an initializer and Conv-LSTM blocks, the priors from the pre-operative reference image and intra-operative frames were exploited for reconstructing the current frame. Data consistency for radial sampling was implemented by a soft-projection method. To improve the reconstruction accuracy, an adversarial learning strategy was adopted. A set of interventional images based on the pre-operative and post-operative MR images were simulated for algorithm validation. Results showed with only 10 radial spokes, ConvLR provided the best performance compared with state-of-the-art methods, giving an acceleration up to 40 folds. The proposed algorithm has the potential to achieve real-time i-MRI for DBS and can be used for general purpose MR-guided intervention.