首页> 外文期刊>Magnetic resonance in medicine: official journal of the Society of Magnetic Resonance in Medicine >Network Accelerated Motion Estimation and Reduction (NAMER): Convolutional neural network guided retrospective motion correction using a separable motion model
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Network Accelerated Motion Estimation and Reduction (NAMER): Convolutional neural network guided retrospective motion correction using a separable motion model

机译:网络加速运动估计和减少(纳米):卷积神经网络使用可分离运动模型的回顾运动校正

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Purpose We introduce and validate a scalable retrospective motion correction technique for brain imaging that incorporates a machine learning component into a model‐based motion minimization. Methods A convolutional neural network (CNN) trained to remove motion artifacts from 2D T 2 ‐weighted rapid acquisition with refocused echoes (RARE) images is introduced into a model‐based data‐consistency optimization to jointly search for 2D motion parameters and the uncorrupted image. Our separable motion model allows for efficient intrashot (line‐by‐line) motion correction of highly corrupted shots, as opposed to previous methods which do not scale well with this refinement of the motion model. Final image generation incorporates the motion parameters within a model‐based image reconstruction. The method is tested in simulations and in vivo motion experiments of in‐plane motion corruption. Results While the convolutional neural network alone provides some motion mitigation (at the expense of introduced blurring), allowing it to guide the iterative joint‐optimization both improves the search convergence and renders the joint‐optimization separable. This enables rapid mitigation within shots in addition to between shots. For 2D in‐plane motion correction experiments, the result is a significant reduction of both image space root mean square error in simulations, and a reduction of motion artifacts in the in vivo motion tests. Conclusion The separability and convergence improvements afforded by the combined convolutional neural network+model‐based method shows the potential for meaningful postacquisition motion mitigation in clinical MRI.
机译:目的,我们介绍和验证用于脑成像的可扩展回顾性运动校正技术,其将机器学习组件结合到基于模型的运动最小化。方法使用从2D T 2从分叉回声(罕见)图像的2D T 2 - 重量快速采集训练的卷积神经网络(CNN)被引入基于模型的数据一致性优化,以共同搜索2D运动参数和未损坏的图像。我们可分离运动模型允许高效的intrashot(逐行线)运动校正高度损坏的镜头,而不是在运动模型的这种细化方面不符号的先前方法。最终图像生成包括基于模型的图像重建内的运动参数。该方法在模拟和平面内运动损坏的体内运动实验中进行测试。结果单独卷积神经网络提供了一些运动缓解(以引进的模糊为代价),允许它引导迭代关节优化,这两种都改善了搜索收敛性,并使关节优化可分离。除了镜头之间,这可以在镜头内快速缓解。对于2D在平面运动校正实验,结果是模拟中的图像空间根部均方误差的显着降低,以及在体内运动测试中的运动伪影的减少。结论组合卷积神经网络+模型的方法提供的可分离性和收敛性改进表明了临床MRI中有意义的后矛盾运动缓解的可能性。

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