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Linear Invariant Tensor Interpolation Applied to Cardiac Diffusion Tensor MRI

机译:线性不变张量插值在心脏扩散张量MRI中的应用

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Purpose: Various methods exist for interpolating diffusion tensor fields, but none of them linearly interpolate tensor shape attributes. Linear interpolation is expected not to introduce spurious changes in tensor shape. Methods: Herein we define a new linear invariant (LI) tensor interpolation method that linearly interpolates components of tensor shape (tensor invariants) and recapitulates the interpolated tensor from the linearly interpolated tensor invariants and the eigenvectors of a linearly interpolated tensor. The LI tensor interpolation method is compared to the Euclidean (EU), affine-invariant Riemannian (AI), log-Euclidean (LE) and geodesic-loxodrome (GL) interpolation methods using both a synthetic tensor field and three experimentally measured cardiac DT-MRI datasets. Results: EU, AI, and LE introduce significant microstructural bias, which can be avoided through the use of GL or LI. Conclusion: GL introduces the least microstructural bias, but LI tensor interpolation performs very similarly and at substantially reduced computational cost.
机译:目的:存在多种内插扩散张量场的方法,但是没有一种方法可以线性内插张量形状属性。预期线性插值不会在张量形状中引入虚假变化。方法:本文中,我们定义了一种新的线性不变(LI)张量插值方法,该方法可线性插值张量形状的分量(张量不变量),并从线性插值张量不变量和线性插值张量的特征向量中概括插值张量。将LI张量插值方法与欧氏(EU),仿射不变黎曼(AI),对数欧式(LE)和测地线法(GL)插值方法进行了比较,同时使用了合成张量场和三个通过实验测量的心脏DT- MRI数据集。结果:EU,AI和LE引入了显着的微观结构偏差,可以通过使用GL或LI来避免。结论:GL引入了最小的微结构偏差,但是LI张量插值的执行非常相似,并且计算量大为减少。

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