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A Bayesian Approach to Distinguishing Interdigitated Muscles in the Tongue from Limited Diffusion Weighted Imaging

机译:贝叶斯方法从有限的扩散加权成像中区分舌中的交叉指肌。

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Fiber tracking in crossing regions is a well known issue in diffusion tensor imaging (DTI). Multi-tensor models have been proposed to cope with the issue. However, in cases where only a limited number of gradient directions can be acquired, for example in the tongue, the multi-tensor models fail to resolve the crossing correctly due to insufficient information. In this work, we address this challenge by using a fixed tensor basis and incorporating prior directional knowledge. Within a maximum a posteriori (MAP) framework, sparsity of the basis and prior directional knowledge are incorporated in the prior distribution, and data fidelity is encoded in the likelihood term. An objective function can then be obtained and solved using a noise-aware weighted ℓ_1-norm minimization. Experiments on a digital phantom and in vivo tongue diffusion data demonstrate that the proposed method is able to resolve crossing fibers with limited gradient directions.
机译:交叉区域中的光纤跟踪是扩散张量成像(DTI)中的一个众所周知的问题。已经提出了多张量模型来解决该问题。但是,在只能获取有限数量的梯度方向的情况下(例如在舌头中),由于信息不足,多张量模型无法正确解决交叉问题。在这项工作中,我们通过使用固定的张量基础并结合先前的方向知识来应对这一挑战。在最大后验(MAP)框架内,将基础的稀疏性和先验方向知识合并到先验分布中,并在似然项中编码数据保真度。然后可以使用噪声感知加权的ℓ_1范数最小化来获得和求解目标函数。在数字体模和体内舌头扩散数据上进行的实验表明,该方法能够解决梯度方向有限的交叉纤维。

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