Bundle-specific Tractogram Distribution Estimation Using Higher-order Streamline Differential Equation
Yuanjing Feng, Lei Xie, Jingqiang Wang, Qiyuan Tian, Jianzhong He,, Qingrun Zeng, Fei Gao

TL;DR
This paper introduces a novel bundle-specific tractogram distribution method using higher-order streamline differential equations, improving global fiber bundle reconstruction in diffusion MRI tractography.
Contribution
It proposes a global, bundle-specific tractography framework based on higher-order differential equations, addressing limitations of local peak-based methods.
Findings
Better reconstruction of complex fiber bundles
Reduced local error deviation and accumulation
Improved accuracy in long-range and twisting tracts
Abstract
Tractography traces the peak directions extracted from fiber orientation distribution (FOD) suffering from ambiguous spatial correspondences between diffusion directions and fiber geometry, which is prone to producing erroneous tracks while missing true positive connections. The peaks-based tractography methods 'locally' reconstructed streamlines in 'single to single' manner, thus lacking of global information about the trend of the whole fiber bundle. In this work, we propose a novel tractography method based on a bundle-specific tractogram distribution function by using a higher-order streamline differential equation, which reconstructs the streamline bundles in 'cluster to cluster' manner. A unified framework for any higher-order streamline differential equation is presented to describe the fiber bundles with disjoint streamlines defined based on the diffusion tensor vector field. At…
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Taxonomy
TopicsAdvanced Neuroimaging Techniques and Applications
MethodsDiffusion
