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White matter structure assessment from reduced HARDI data using low-rank polynomial approximations

机译:使用低等级多项式逼近减少HaRDI数据脑白质结构评估

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摘要

Assessing white matter fiber orientations directly from DWI measurements in single-shell HARDI has many advantages. One of these advantages is the ability to model multiple fibers using fewer parameters than are required to describe an ODF and, thus, reduce the number of DW samples needed for the reconstruction. However, fitting a model directly to the data using Gaussian mixture, for instance, is known as an initialization-dependent unstable process. This paper presents a novel direct fitting technique for single-shell HARDI that enjoys the advantages of direct fitting without sacrificing the accuracy and stability even when the number of gradient directions is relatively low. This technique is based on a spherical deconvolution technique and decomposition of a homogeneous polynomial into a sum of powers of linear forms, known as a symmetric tensor decomposition. The fiber-ODF (fODF), which is described by a homogeneous polynomial, is approximated here by a discrete sum of even-order linear-forms that are directly related to rank-1 tensors and represent single-fibers. This polynomial approximation is convolved to a single-fiber response function, and the result is optimized against the DWI measurements to assess the fiber orientations and the volume fractions directly. This formulation is accompanied by a robust iterative alternating numerical scheme which is based on the Levenberg-Marquardt technique. Using simulated data and in vivo, human brain data we show that the proposed algorithm is stable, accurate and can model complex fiber structures using only 12 gradient directions.
机译:直接从单壳式HARDI中的DWI测量中评估白质纤维取向具有许多优势。这些优点之一是能够使用比描述ODF所需的参数更少的参数对多根光纤进行建模,从而减少重建所需的DW样本数量。但是,例如,使用高斯混合将模型直接拟合至数据被称为依赖初始化的不稳定过程。本文提出了一种新颖的单壳HARDI直接拟合技术,即使在梯度方向数量相对较少的情况下,该技术也具有直接拟合的优点,而不会牺牲精度和稳定性。该技术基于球面反卷积技术,并将齐次多项式分解为线性形式的幂之和,称为对称张量分解。光纤-ODF(fODF)(由齐次多项式描述)在这里由与1级张量直接相关并代表单纤维的偶数阶线性形式的离散总和近似。该多项式近似被卷积为单纤维响应函数,并且针对DWI测量对结果进行了优化,以直接评估纤维取向和体积分数。这种表述伴随着基于Levenberg-Marquardt技术的健壮的迭代交替数值方案。使用模拟数据和体内人脑数据,我们证明了该算法稳定,准确,并且仅使用12个梯度方向即可建模复杂的纤维结构。

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