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RinQ Fingerprinting: Recurrence-Informed Quantile Networks for Magnetic Resonance Fingerprinting

机译:Rinq指纹识别:用于磁共振指纹识别的再次通知量子网络

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Recently, Magnetic Resonance Fingerprinting (MRF) was proposed as a quantitative imaging technique for the simultaneous acquisition of tissue parameters such as relaxation times T_2 and T_2. Although the acquisition is highly accelerated, the state-of-the-art reconstruction suffers from long computation times: Template matching methods are used to find the most similar signal to the measured one by comparing it to pre-simulated signals of possible parameter combinations in a discretized dictionary. Deep learning approaches can overcome this limitation, by providing the direct mapping from the measured signal to the underlying parameters by one forward pass through a network. In this work, we propose a Recurrent Neural Network (RNN) architecture in combination with a novel quantile layer. RNNs are well suited for the processing of time-dependent signals and the quantile layer helps to overcome the noisy outliers by considering the spatial neighbors of the signal. We evaluate our approach using in-vivo data from multiple brain slices and several volunteers, running various experiments. We show that the RNN approach with small patches of complex-valued input signals in combination with a quantile layer outperforms other architectures, e.g. previously proposed Convolutional Neural Networks for the MRF reconstruction reducing the error in T_1 and T_2 by more than 80%.
机译:最近,磁共振指纹(MRF),提出了作为用于同时采集的组织参数的定量成像技术诸如弛豫时间T_2和T_2。虽然收购高度加速,但最先进的重建遭受了长的计算时间:模板匹配方法通过将其与可能参数组合的预模拟信号进行比较来找到最多类似的信号。离散的词典。深入学习方法可以通过向下通过网络通过向下传递到基础参数来克服这种限制。在这项工作中,我们提出了一种与新型料理层组合的经常性神经网络(RNN)架构。 RNN非常适合处理时间相关信号,并且量子层通过考虑信号的空间邻居,有助于克服嘈杂的异常值。我们使用来自多个脑切片和几个志愿者的体内数据评估我们的方法,运行各种实验。我们展示了具有小斑块的复合值输入信号的RNN方法与分位数层占其他架构,例如,其他架构。以前提出了MRF重建的卷积神经网络,将T_1和T_2中的误差减少超过80%。

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