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Retrospective local artefacts detection in diffusion-weighted images using the Random Sample Consensus (RANSAC) paradigm

机译:使用随机样本共识(RANSAC)范式的追溯本地人工制品检测扩散加权图像

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Robust estimation of diffusion models in presence of local artefacts that corrupt only a subset of gradient directions is essential in diffusion weighted imaging to accurately assess the brain connectivity and white-matter characteristics. In this work we investigate the estimation of diffusion tensors in the Random Sample Consensus (RANSAC) paradigm. First, we show that it enables robust estimation to artefacts such as patient motion during the images' acquisition and local signal loss due to the vibration artefact. Second, it provides us with a set containing only the reliable gradient directions at each voxel. This may enable robust but computationally efficient estimation of more complicated diffusion models by considering only the gradient directions identified as reliable at each voxel from the RANSAC tensor estimation.
机译:在存在局部人工制品的鲁棒估计损坏梯度方向子集的局部人工制品在扩散加权成像中是必需的,以精确评估脑连接和白品特征。在这项工作中,我们调查随机样本共识(RANSAC)范式的扩散张量的估计。首先,我们表明它能够在图像获取和局部信号损失期间诸如患者运动的诸如患者运动的人工制品的稳健估计。其次,它为我们提供了一个仅包含每个体素的可靠梯度方向的集合。这可以通过考虑仅在来自RANSAC张量估计的每个体素处识别的梯度方向识别为可靠的梯度方向来实现更加复杂的扩散模型的稳健而计算地估计。

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