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Learning-Based Ensemble Average Propagator Estimation

机译:基于学习的集合平均传播者估计

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摘要

By capturing the anisotropic water diffusion in tissue, diffusion magnetic resonance imaging (dMRI) provides a unique tool for noninvasively probing the tissue microstructure and orientation in the human brain. The diffusion profile can be described by the ensemble average propagator (EAP), which is inferred from observed diffusion signals. However, accurate EAP estimation using the number of diffusion gradients that is clinically practical can be challenging. In this work, we propose a deep learning algorithm for EAP estimation, which is named learning-based ensemble average propagator estimation (LEAPE). The EAP is commonly represented by a basis and its associated coefficients, and here we choose the SHORE basis and design a deep network to estimate the coefficients. The network comprises two cascaded components. The first component is a multiple layer perceptron (MLP) that simultaneously predicts the unknown coefficients. However, typical training loss functions, such as mean squared errors, may not properly represent the geometry of the possibly non-Euclidean space of the coefficients, which in particular causes problems for the extraction of directional information from the EAP. Therefore, to regularize the training, in the second component we compute an auxiliary output of approximated fiber orientation (FO) errors with the aid of a second MLP that is trained separately. We performed experiments using dMRI data that resemble clinically achievable g-space sampling, and observed promising results compared with the conventional EAP estimation method.
机译:通过捕获组织中的各向异性水扩散,扩散磁共振成像(dMRI)提供了一种独特的工具,可以无创地探测人脑中的组织微观结构和方向。可以由整体平均传播器(EAP)来描述扩散曲线,它是从观察到的扩散信号中推断出来的。但是,使用临床上实际可行的扩散梯度数进行准确的EAP估计可能具有挑战性。在这项工作中,我们提出了一种用于EAP估计的深度学习算法,该算法称为基于学习的集成平均传播者估计(LEAPE)。 EAP通常由一个基础及其相关系数表示,在这里我们选择SHORE基础并设计一个深度网络来估算系数。该网络包括两个级联组件。第一个组件是同时感知未知系数的多层感知器(MLP)。但是,典型的训练损失函数(例如均方误差)可能无法正确表示系数的可能非欧几里德空间的几何形状,这尤其会导致从EAP提取方向信息时出现问题。因此,为了规范化训练,在第二个组件中,我们借助单独训练的第二个MLP计算近似光纤方向(FO)误差的辅助输出。我们使用类似于临床上可实现的g空间采样的dMRI数据进行了实验,与常规EAP估计方法相比,观察到了可喜的结果。

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