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      Sparse Reconstruction Challenge for diffusion MRI: Validation on a physical phantom to determine which acquisition scheme and analysis method to use?

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          Abstract

          Diffusion magnetic resonance imaging (dMRI) is the modality of choice for investigating in-vivo white matter connectivity and neural tissue architecture of the brain. The diffusion-weighted signal in dMRI reflects the diffusivity of water molecules in brain tissue and can be utilized to produce image-based biomarkers for clinical research. Due to the constraints on scanning time, a limited number of measurements can be acquired within a clinically feasible scan time. In order to reconstruct the dMRI signal from a discrete set of measurements, a large number of algorithms have been proposed in recent years in conjunction with varying sampling schemes, i.e., with varying b-values and gradient directions. Thus, it is imperative to compare the performance of these reconstruction methods on a single data set to provide appropriate guidelines to neuroscientists on making an informed decision while designing their acquisition protocols. For this purpose, the SParse Reconstruction Challenge (SPARC) was held along with the workshop on Computational Diffusion MRI (at MICCAI 2014) to validate the performance of multiple reconstruction methods using data acquired from a physical phantom. A total of 16 reconstruction algorithms (9 teams) participated in this community challenge. The goal was to reconstruct single b-value and/or multiple b-value data from a sparse set of measurements. In particular, the aim was to determine an appropriate acquisition protocol (in terms of the number of measurements, b-values) and the analysis method to use for a neuroimaging study. The challenge did not delve on the accuracy of these methods in estimating model specific measures such as fractional anisotropy (FA) or mean diffusivity, but on the accuracy of these methods to fit the data. This paper presents several quantitative results pertaining to each reconstruction algorithm. The conclusions in this paper provide a valuable guideline for choosing a suitable algorithm and the corresponding data-sampling scheme for clinical neuroscience applications.

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          Author and article information

          Journal
          9713490
          21159
          Med Image Anal
          Med Image Anal
          Medical image analysis
          1361-8415
          1361-8423
          19 November 2015
          10 November 2015
          December 2015
          01 December 2016
          : 26
          : 1
          : 316-331
          Affiliations
          [a ]Brigham and Women’s Hospital, Harvard Medical School, Boston
          [b ]German Cancer Research Institute, Germany
          [c ]SCI Institute, University of Utah
          [d ]School of Electrical and Electronic Engineering, Nanyang Technological University, Singapore
          [e ]ParIMed Team, LRPE, USTHB, Algiers, Algeria
          [f ]Department of Computer Science, University of Verona, Italy
          [g ]Athena Project-Team, Inria Sophia Antipolis-Méditerranée, France
          [h ]Université de Sherbrooke, Canada
          [i ]Centro de Investigation en Matematicas, Department of Computer Science, Mexico
          [j ]IBM Almaden Research Center, San Jose
          Author notes
          [* ]Corresponding author: Lipeng Ning, Telephone: 617-525-6122, Fax: 617-525-6214, lning@ 123456bwh.harvard.edu
          Article
          PMC4679726 PMC4679726 4679726 nihpa736441
          10.1016/j.media.2015.10.012
          4679726
          26606457
          5ff2e840-69d3-4d43-a960-4f4e974888a7
          History
          Categories
          Article

          normalized mean square error,diffusion MRI,physical phantom,angular error

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