Abstract

Tractography uses diffusion MRI to estimate the trajectory and cortical projection zones of white matter fascicles in the living human brain. There are many different tractography algorithms and each requires the user to set several parameters, such as curvature threshold. Choosing a single algorithm with specific parameters poses two challenges. First, different algorithms and parameter values produce different results. Second, the optimal choice of algorithm and parameter value may differ between different white matter regions or different fascicles, subjects, and acquisition parameters. We propose using ensemble methods to reduce algorithm and parameter dependencies. To do so we separate the processes of fascicle generation and evaluation. Specifically, we analyze the value of creating optimized connectomes by systematically combining candidate streamlines from an ensemble of algorithms (deterministic and probabilistic) and systematically varying parameters (curvature and stopping criterion). The ensemble approach leads to optimized connectomes that provide better cross-validated prediction error of the diffusion MRI data than optimized connectomes generated using a single-algorithm or parameter set. Furthermore, the ensemble approach produces connectomes that contain both short- and long-range fascicles, whereas single-parameter connectomes are biased towards one or the other. In summary, a systematic ensemble tractography approach can produce connectomes that are superior to standard single parameter estimates both for predicting the diffusion measurements and estimating white matter fascicles.

Highlights

  • Tractography uses diffusion-weighted magnetic resonance imaging data to identify specific white matter fascicles as well as the connections these fascicles make between cortical regions [1,2,3,4,5,6]

  • Diffusion MRI and tractography opened a new avenue for studying white matter fascicles and their tissue properties in the living human brain

  • We analyze an ensemble method, Ensemble Tractography (ET), that reduces the effect of algorithm

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Summary

Introduction

Tractography uses diffusion-weighted magnetic resonance imaging (diffusion MRI) data to identify specific white matter fascicles as well as the connections these fascicles make between cortical regions [1,2,3,4,5,6]. One of the major goals of tractography is to establish a model of the complete collections of white matter tracts and connections (“structural connectome”, referred as “tractogram”) in the human brain. A variety of tractography algorithms are in wide use [10,11,12,13,14,15,16,17,18](see “Related literature” in Discussion). These algorithms calculate streamlines ( called “estimated fascicles”) through the white matter using somewhat different principles.

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