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剪辑深度控制:带有幅度约束层的深度神经网络二维脉冲设计。

Clipped DeepControl: Deep neural network two-dimensional pulse design with an amplitude constraint layer.

机构信息

Center of Functionally Integrative Neuroscience (CFIN), Department of Clinical Medicine, Faculty of Health, Aarhus University, Denmark.

Center of Functionally Integrative Neuroscience (CFIN), Department of Clinical Medicine, Faculty of Health, Aarhus University, Denmark.

出版信息

Artif Intell Med. 2023 Jan;135:102460. doi: 10.1016/j.artmed.2022.102460. Epub 2022 Nov 24.

Abstract

Advanced radio-frequency pulse design used in magnetic resonance imaging has recently been demonstrated with deep learning of (convolutional) neural networks and reinforcement learning. For two-dimensionally selective radio-frequency pulses, the (convolutional) neural network pulse prediction time (a few milliseconds) was in comparison more than three orders of magnitude faster than the conventional optimal control computation. The network pulses were from the supervised training capable of compensating scan-subject dependent inhomogeneities of B and B fields. Unfortunately, the network presented with a small percentage of pulse amplitude overshoots in the test subset, despite the optimal control pulses used in training were fully constrained. Here, we have extended the convolutional neural network with a custom-made clipping layer that completely eliminates the risk of pulse amplitude overshoots, while preserving the ability to compensate for the inhomogeneous field conditions.

摘要

最近,深度学习(卷积)神经网络和强化学习在磁共振成像中的高级射频脉冲设计方面取得了进展。对于二维选择性射频脉冲,(卷积)神经网络脉冲预测时间(几毫秒)比传统的最佳控制计算快三个数量级以上。该网络的脉冲是通过监督训练得到的,能够补偿 B 和 B 场的扫描对象相关的不均匀性。不幸的是,尽管在训练中使用的最佳控制脉冲受到完全约束,但网络在测试子集中仍呈现出小比例的脉冲幅度超调。在这里,我们使用定制的裁剪层扩展了卷积神经网络,该层完全消除了脉冲幅度超调的风险,同时保持了补偿不均匀场条件的能力。

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