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A Polynomial Approach for Maxima Extraction and Its Application to Tractography in HARDI

机译:最大值提取的多项式方法及其在HARDI术中的应用

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A number of non-parametrically represented High Angular Resolution Diffusion Imaging (HARDI) spherical diffusion functions have been proposed to infer more and more accurately the heterogeneous and complex tissue microarchitecture of the cerebral white-matter. These spherical functions overcome the limitation of Diffusion Tensor Imaging (DTI) at discerning crossing, merging and fanning axonal fiber bundle configurations inside a voxel. Tractography graphically reconstructs the axonal connectivity of the cerebral white-matter in vivo and non-invasively, by integrating along the direction indicated by the local geometry of the spherical diffusion functions. Tractography is acutely sensitive to the local geometry and its correct estimation. In this paper we first propose a polynomial approach for analytically bracketing and numerically refining with high precision all the maxima, or fiber directions, of any spherical diffusion function represented non-parametrically. This permits an accurate inference of the fiber layout from the spherical diffusion function. Then we propose an extension of the deterministic Streamline tractography to HARDI diffusion functions that clearly discern fiber crossings. We also extend the Tensorline algorithm to these HARDI functions, to improve on the extended Streamline tractography. We illustrate our proposed methods using the Solid Angle diffusion Orientation Distribution Function (ODF-SA). We present results on multi-tensor synthetic data, and real in vivo data of the cerebral white-matter that show markedly improved tractography results.
机译:已经提出了许多非参数表示的高角度分辨率扩散成像(HARDI)球形扩散函数,以越来越准确地推断出大脑白质的异质和复杂组织微体系结构。这些球面功能克服了弥散张量成像(DTI)的局限性,可分辨体素内部的交叉,合并和扇形轴突纤维束配置。通过沿球形扩散功能的局部几何形状指示的方向进行积分,Tractography以图形方式在体内和非侵入性地重建了脑白质的轴突连接性。形变术对局部几何形状及其正确估计非常敏感。在本文中,我们首先提出一种多项式方法,以便对非参数表示的任何球形扩散函数的所有最大值或纤维方向进行高精度的包围式分析和数值精化。这允许从球形扩散函数准确推断出纤维布局。然后,我们提出将确定性流线束摄影术扩展到可清楚辨别纤维交叉的HARDI扩散函数。我们还将Tensorline算法扩展到这些HARDI函数,以改进扩展的Streamline图像。我们用立体角扩散取向分布函数(ODF-SA)说明了我们提出的方法。我们目前在多张量合成数据和大脑白质的实际体内数据上显示结果,这些数据显示了显着改善的术前检查结果。

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