Literature DB >> 17117770

Twenty new digital brain phantoms for creation of validation image data bases.

Berengère Aubert-Broche1, Mark Griffin, G Bruce Pike, Alan C Evans, D Louis Collins.   

Abstract

Simulations provide a way of generating data where ground truth is known, enabling quantitative testing of image processing methods. In this paper, we present the construction of 20 realistic digital brain phantoms that can be used to simulate medical imaging data. The phantoms are made from 20 normal adults to take into account intersubject anatomical variabilities. Each digital brain phantom was created by registering and averaging four T1, T2, and proton density (PD)-weighted magnetic resonance imaging (MRI) scans from each subject. A fuzzy minimum distance classification was used to classify voxel intensities from T1, T2, and PD average volumes into grey-matter, white matter, cerebro-spinal fluid, and fat. Automatically generated mask volumes were required to separate brain from nonbrain structures and ten fuzzy tissue volumes were created: grey matter, white matter, cerebro-spinal fluid, skull, marrow within the bone, dura, fat, tissue around the fat, muscles, and skin/muscles. A fuzzy vessel class was also obtained from the segmentation of the magnetic resonance angiography scan of the subject. These eleven fuzzy volumes that describe the spatial distribution of anatomical tissues define the digital phantom, where voxel intensity is proportional to the fraction of tissue within the voxel. These fuzzy volumes can be used to drive simulators for different modalities including MRI, PET, or SPECT. These phantoms were used to construct 20 simulated T1-weighted MR scans. To evaluate the realism of these simulations, we propose two approaches to compare them to real data acquired with the same acquisition parameters. The first approach consists of comparing the intensities within the segmented classes in both real and simulated data. In the second approach, a whole brain voxel-wise comparison between simulations and real T1-weighted data is performed. The first comparison underlines that segmented classes appear to properly represent the anatomy on average, and that inside these classes, the simulated and real intensity values are quite similar. The second comparison enables the study of the regional variations with no a priori class. The experiments demonstrate that these variations are small when real data are corrected for intensity nonuniformity.

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Year:  2006        PMID: 17117770     DOI: 10.1109/TMI.2006.883453

Source DB:  PubMed          Journal:  IEEE Trans Med Imaging        ISSN: 0278-0062            Impact factor:   10.048


  40 in total

1.  3D Auto-Context-Based Locality Adaptive Multi-Modality GANs for PET Synthesis.

Authors:  Yan Wang; Luping Zhou; Biting Yu; Lei Wang; Chen Zu; David S Lalush; Weili Lin; Xi Wu; Jiliu Zhou; Dinggang Shen
Journal:  IEEE Trans Med Imaging       Date:  2018-11-29       Impact factor: 10.048

2.  Evaluation of automated brain MR image segmentation and volumetry methods.

Authors:  Frederick Klauschen; Aaron Goldman; Vincent Barra; Andreas Meyer-Lindenberg; Arvid Lundervold
Journal:  Hum Brain Mapp       Date:  2009-04       Impact factor: 5.038

3.  PET Image Reconstruction Using Deep Image Prior.

Authors:  Kuang Gong; Ciprian Catana; Jinyi Qi; Quanzheng Li
Journal:  IEEE Trans Med Imaging       Date:  2018-12-19       Impact factor: 10.048

4.  An Optimal, Generative Model for Estimating Multi-Label Probabilistic Maps.

Authors:  Praful Agrawal; Ross T Whitaker; Shireen Y Elhabian
Journal:  IEEE Trans Med Imaging       Date:  2020-01-23       Impact factor: 10.048

5.  Algorithm to find high density EEG scalp coordinates and analysis of their correspondence to structural and functional regions of the brain.

Authors:  Paolo Giacometti; Katherine L Perdue; Solomon G Diamond
Journal:  J Neurosci Methods       Date:  2014-04-24       Impact factor: 2.390

6.  An open source multivariate framework for n-tissue segmentation with evaluation on public data.

Authors:  Brian B Avants; Nicholas J Tustison; Jue Wu; Philip A Cook; James C Gee
Journal:  Neuroinformatics       Date:  2011-12

7.  Off-line determination of the optimal number of iterations of the robust anisotropic diffusion filter applied to denoising of brain MR images.

Authors:  Ricardo J Ferrari
Journal:  Med Biol Eng Comput       Date:  2012-11-03       Impact factor: 2.602

8.  Comparative evaluation of registration algorithms in different brain databases with varying difficulty: results and insights.

Authors:  Yangming Ou; Hamed Akbari; Michel Bilello; Xiao Da; Christos Davatzikos
Journal:  IEEE Trans Med Imaging       Date:  2014-06-13       Impact factor: 10.048

9.  Automatic brain segmentation using fractional signal modeling of a multiple flip angle, spoiled gradient-recalled echo acquisition.

Authors:  André Ahlgren; Ronnie Wirestam; Freddy Ståhlberg; Linda Knutsson
Journal:  MAGMA       Date:  2014-03-18       Impact factor: 2.310

10.  Online resource for validation of brain segmentation methods.

Authors:  David W Shattuck; Gautam Prasad; Mubeena Mirza; Katherine L Narr; Arthur W Toga
Journal:  Neuroimage       Date:  2008-11-25       Impact factor: 6.556

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