首页> 外文会议>International conference on medical image computing and computer-assisted intervention;MICCAI 2009 >Bias of Least Squares Approaches for Diffusion Tensor Estimation from Array Coils in DT-MRI
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Bias of Least Squares Approaches for Diffusion Tensor Estimation from Array Coils in DT-MRI

机译:DT-MRI中阵列线圈扩散张量估计的最小二乘方法偏差

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Least Squares (LS) and its weighted version are standard techniques to estimate the Diffusion Tensor (DT) from Diffusion Weighted Images (DWI). They require to linearize the problem by computing the logarithm of the DWI. For the single-coil Rician noise model it has been shown that this model does not introduce a significant bias, but for multiple array coils and parallel imaging, the noise cannot longer be modeled as Rician. As a result the validity of LS approaches is not assured. An analytical study of noise statistics for a multiple coil system is carried out, together with the Weighted LS formulation and noise analysis for this model. Results show that the bias in the computation of the components of the DT may be comparable to their variance in many cases, stressing the importance of unbiased filtering previous to DT estimation.
机译:最小二乘(LS)及其加权版本是从扩散加权图像(DWI)估计扩散张量(DT)的标准技术。他们需要通过计算DWI的对数来线性化问题。对于单线圈Rician噪声模型,已表明该模型不会引入明显的偏差,但是对于多阵列线圈和并行成像,则不能再将噪声建模为Rician。结果,不能保证LS方法的有效性。进行了多线圈系统噪声统计数据的分析研究,以及该模型的加权LS公式和噪声分析。结果表明,在许多情况下,DT分量的计算中的偏差可能与其方差相当,从而强调了在DT估计之前进行无偏滤波的重要性。

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