4.7 Article

Incorporating outlier information into diffusion-weighted MRI modeling for robust microstructural imaging and structural brain connectivity analyses

Journal

NEUROIMAGE
Volume 247, Issue -, Pages -

Publisher

ACADEMIC PRESS INC ELSEVIER SCIENCE
DOI: 10.1016/j.neuroimage.2021.118802

Keywords

Magnetic resonance imaging; Diffusion; Tractography; Robust; Filtering; Commit; Outlier; Imputation; Structural connectivity; Microstructure; Movement; Weighted modeling

Funding

  1. Swiss National Science Foundation (SNSF) [PP00P3_176984]
  2. Stiftung zur Forderung der gastroenterologischen und allgemeinen klinischen Forschung, EUROSTAR [E!113682]
  3. Helsinki University Library

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This study introduces an enhanced filtering algorithm to address motion artefacts in human brain structural connectivity analysis, demonstrating its effectiveness through comprehensive Monte-Carlo simulations and infant data. This robust filtering method proves to be beneficial in clinical studies with uncooperative patient groups.
A B S T R A C T The white matter structures of the human brain can be represented using diffusion-weighted MRI tractography. Unfortunately, tractography is prone to find false-positive streamlines causing a severe decline in its specificity and limiting its feasibility in accurate structural brain connectivity analyses. Filtering algorithms have been pro-posed to reduce the number of invalid streamlines but the currently available filtering algorithms are not suitable to process data that contains motion artefacts which are typical in clinical research. We augmented the Con-vex Optimization Modelling for Microstructure Informed Tractography (COMMIT) algorithm to adjust for these signals drop-out motion artefacts. We demonstrate with comprehensive Monte-Carlo whole brain simulations and in vivo infant data that our robust algorithm is capable of properly filtering tractography reconstructions despite these artefacts. We evaluated the results using parametric and non-parametric statistics and our results demonstrate that if not accounted for, motion artefacts can have severe adverse effects in human brain structural connectivity analyses as well as in microstructural property mappings. In conclusion, the usage of robust filtering methods to mitigate motion related errors in tractogram filtering is highly beneficial, especially in clinical stud-ies with uncooperative patient groups such as infants. With our presented robust augmentation and open-source implementation, robust tractogram filtering is readily available.

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