Q-space trajectory imaging with positivity constraints (QTI+)

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Dokumenter

  • Magnus Herberthson
  • Deneb Boito
  • Tom Dela Haije
  • Aasa Feragen
  • Carl Fredrik Westin
  • Evren Özarslan

Q-space trajectory imaging (QTI) enables the estimation of useful scalar measures indicative of the local tissue structure. This is accomplished by employing generalized gradient waveforms for diffusion sensitization alongside a diffusion tensor distribution (DTD) model. The first two moments of the underlying DTD are made available by acquisitions at low diffusion sensitivity (b-values). Here, we show that three independent conditions have to be fulfilled by the mean and covariance tensors associated with distributions of symmetric positive semidefinite tensors. We introduce an estimation framework utilizing semi-definite programming (SDP) to guarantee that these conditions are met. Applying the framework on simulated signal profiles for diffusion tensors distributed according to non-central Wishart distributions demonstrates the improved noise resilience of QTI+ over the commonly employed estimation methods. Our findings on a human brain data set also reveal pronounced improvements, especially so for acquisition protocols featuring few number of volumes. Our method's robustness to noise is expected to not only improve the accuracy of the estimates, but also enable a meaningful interpretation of contrast in the derived scalar maps. The technique's performance on shorter acquisitions could make it feasible in routine clinical practice.

OriginalsprogEngelsk
Artikelnummer118198
TidsskriftNeuroImage
Vol/bind238
Antal sider20
ISSN1053-8119
DOI
StatusUdgivet - 2021

Bibliografisk note

Funding Information:
Tom Dela Haije and Aasa Feragen were supported by the Center for Stochastic Geometry and Advanced Bioimaging and by a block stipendium, both funded by the Villum Foundation (Denmark).

Funding Information:
This project was financially supported by Linköping University (LiU) Center for Industrial Information Technology (CENIIT), LiU Cancer, VINNOVA/ITEA3 17021 IMPACT, Analytic Imaging Diagnostic Arena (AIDA), the Swedish Foundation for Strategic Research (RMX18-0056), and the Swedish Research Council 2016-04482.

Publisher Copyright:
© 2021

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