TY - JOUR
T1 - Fast and accurate Slicewise OutLIer Detection (SOLID) with informed model estimation for diffusion MRI data
AU - Sairanen, V.
AU - Leemans, A.
AU - Tax, C. M.W.
N1 - Funding Information:
The authors thank Derek Jones for the valuable discussions and comments on the manuscript and Antti Kuronen for supporting the usage of the Alcyone computing cluster of the University of Helsinki Department of Physics for the computational tasks in this study. V.S is supported by Helsinki University Hospital , Juselius Foundation , Finnish Cultural Foundation , the Academy of Finland grant ( 288220 and 276523 ). C.T. is supported by a Rubicon grant ( 680-50-1527 ) from the Netherlands Organisation for Scientific Research and Wellcome Trust grant ( 096646/Z/11/Z ). A.L. is supported by VIDI Grant 639.072.411 from the Netherlands Organisation for Scientific Research .
Publisher Copyright:
© 2018 Elsevier Inc.
PY - 2018/11/1
Y1 - 2018/11/1
N2 - The accurate characterization of the diffusion process in tissue using diffusion MRI is greatly challenged by the presence of artefacts. Subject motion causes not only spatial misalignments between diffusion weighted images, but often also slicewise signal intensity errors. Voxelwise robust model estimation is commonly used to exclude intensity errors as outliers. Slicewise outliers, however, become distributed over multiple adjacent slices after image registration and transformation. This challenges outlier detection with voxelwise procedures due to partial volume effects. Detecting the outlier slices before any transformations are applied to diffusion weighted images is therefore required. In this work, we present i) an automated tool coined SOLID for slicewise outlier detection prior to geometrical image transformation, and ii) a framework to naturally interpret data uncertainty information from SOLID and include it as such in model estimators. SOLID uses a straightforward intensity metric, is independent of the choice of the diffusion MRI model, and can handle datasets with a few or irregularly distributed gradient directions. The SOLID-informed estimation framework prevents the need to completely reject diffusion weighted images or individual voxel measurements by downweighting measurements with their degree of uncertainty, thereby supporting convergence and well-conditioning of iterative estimation algorithms. In comprehensive simulation experiments, SOLID detects outliers with a high sensitivity and specificity, and can achieve higher or at least similar sensitivity and specificity compared to other tools that are based on more complex and time-consuming procedures for the scenarios investigated. SOLID was further validated on data from 54 neonatal subjects which were visually inspected for outlier slices with the interactive tool developed as part of this study, showing its potential to quickly highlight problematic volumes and slices in large population studies. The informed model estimation framework was evaluated both in simulations and in vivo human data.
AB - The accurate characterization of the diffusion process in tissue using diffusion MRI is greatly challenged by the presence of artefacts. Subject motion causes not only spatial misalignments between diffusion weighted images, but often also slicewise signal intensity errors. Voxelwise robust model estimation is commonly used to exclude intensity errors as outliers. Slicewise outliers, however, become distributed over multiple adjacent slices after image registration and transformation. This challenges outlier detection with voxelwise procedures due to partial volume effects. Detecting the outlier slices before any transformations are applied to diffusion weighted images is therefore required. In this work, we present i) an automated tool coined SOLID for slicewise outlier detection prior to geometrical image transformation, and ii) a framework to naturally interpret data uncertainty information from SOLID and include it as such in model estimators. SOLID uses a straightforward intensity metric, is independent of the choice of the diffusion MRI model, and can handle datasets with a few or irregularly distributed gradient directions. The SOLID-informed estimation framework prevents the need to completely reject diffusion weighted images or individual voxel measurements by downweighting measurements with their degree of uncertainty, thereby supporting convergence and well-conditioning of iterative estimation algorithms. In comprehensive simulation experiments, SOLID detects outliers with a high sensitivity and specificity, and can achieve higher or at least similar sensitivity and specificity compared to other tools that are based on more complex and time-consuming procedures for the scenarios investigated. SOLID was further validated on data from 54 neonatal subjects which were visually inspected for outlier slices with the interactive tool developed as part of this study, showing its potential to quickly highlight problematic volumes and slices in large population studies. The informed model estimation framework was evaluated both in simulations and in vivo human data.
UR - http://www.scopus.com/inward/record.url?scp=85049881958&partnerID=8YFLogxK
U2 - 10.1016/j.neuroimage.2018.07.003
DO - 10.1016/j.neuroimage.2018.07.003
M3 - Article
AN - SCOPUS:85049881958
SN - 1053-8119
VL - 181
SP - 331
EP - 346
JO - NeuroImage
JF - NeuroImage
ER -