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REFERENCES.bib
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REFERENCES.bib
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% This file was created with JabRef 2.10.
% Encoding: UTF8
@Article{Aguirre2007,
Title = {Canine and human visual cortex intact and responsive despite early retinal blindness from RPE65 mutation.},
Author = {Geoffrey K Aguirre and Andres M Komeromy and Artur V Cideciyan and David H Brainard and Tomas S Aleman and Alejandro J Roman and Brian B Avants and James C Gee and Marc Korczykowski and William W Hauswirth and Gregory M Acland and Gustavo D Aguirre and Samuel G Jacobson},
Journal = {PLoS Med},
Year = {2007},
Month = {Jun},
Number = {6},
Pages = {e230},
Volume = {4},
Abstract = {BACKGROUND: RPE65 is an essential molecule in the retinoid-visual cycle, and RPE65 gene mutations cause the congenital human blindness known as Leber congenital amaurosis (LCA). Somatic gene therapy delivered to the retina of blind dogs with an RPE65 mutation dramatically restores retinal physiology and has sparked international interest in human treatment trials for this incurable disease. An unanswered question is how the visual cortex responds after prolonged sensory deprivation from retinal dysfunction. We therefore studied the cortex of RPE65-mutant dogs before and after retinal gene therapy. Then, we inquired whether there is visual pathway integrity and responsivity in adult humans with LCA due to RPE65 mutations (RPE65-LCA). METHODS AND FINDINGS: RPE65-mutant dogs were studied with fMRI. Prior to therapy, retinal and subcortical responses to light were markedly diminished, and there were minimal cortical responses within the primary visual areas of the lateral gyrus (activation amplitude mean +/- standard deviation [SD] = 0.07\% +/- 0.06\% and volume = 1.3 +/- 0.6 cm(3)). Following therapy, retinal and subcortical response restoration was accompanied by increased amplitude (0.18\% +/- 0.06\%) and volume (8.2 +/- 0.8 cm(3)) of activation within the lateral gyrus (p < 0.005 for both). Cortical recovery occurred rapidly (within a month of treatment) and was persistent (as long as 2.5 y after treatment). Recovery was present even when treatment was provided as late as 1-4 y of age. Human RPE65-LCA patients (ages 18-23 y) were studied with structural magnetic resonance imaging. Optic nerve diameter (3.2 +/- 0.5 mm) was within the normal range (3.2 +/- 0.3 mm), and occipital cortical white matter density as judged by voxel-based morphometry was slightly but significantly altered (1.3 SD below control average, p = 0.005). Functional magnetic resonance imaging in human RPE65-LCA patients revealed cortical responses with a markedly diminished activation volume (8.8 +/- 1.2 cm(3)) compared to controls (29.7 +/- 8.3 cm(3), p < 0.001) when stimulated with lower intensity light. Unexpectedly, cortical response volume (41.2 +/- 11.1 cm(3)) was comparable to normal (48.8 +/- 3.1 cm(3), p = 0.2) with higher intensity light stimulation. CONCLUSIONS: Visual cortical responses dramatically improve after retinal gene therapy in the canine model of RPE65-LCA. Human RPE65-LCA patients have preserved visual pathway anatomy and detectable cortical activation despite limited visual experience. Taken together, the results support the potential for human visual benefit from retinal therapies currently being aimed at restoring vision to the congenitally blind with genetic retinal disease.},
Bdsk-url-1 = {http://dx.doi.org/10.1371/journal.pmed.0040230},
Doi = {10.1371/journal.pmed.0040230},
Institution = {Department of Neurology, School of Medicine, University of Pennsylvania, Philadelphia, Pennsylvania, United States of America. aguirreg@mail.med.upenn.edu},
Keywords = {Adolescent; Adult; Animals; Blindness; Brain; Ca; Disease Models, Animal; Dogs; Eye Diseases, Hereditary; Eye Proteins; Female; Gene Therapy; Humans; Magnetic Resonance Imagin; Male; Mutation; Pigment Epithelium of Eye; Retina; Retinitis Pigmentosa; Visual Cortex; g; rrier Proteins},
Owner = {stnava},
Pii = {06-PLME-RA-1021},
Pmid = {17594175},
Timestamp = {2008.05.29},
Url = {http://dx.doi.org/10.1371/journal.pmed.0040230}
}
@InCollection{Arnold2014,
Title = {Topological methods in hydrodynamics},
Author = {Arnold, Vladimir I},
Booktitle = {Vladimir I. Arnold-Collected Works},
Publisher = {Springer},
Year = {2014},
Pages = {433--454},
Owner = {stnava},
Timestamp = {2014.08.26},
Url = {http://link.springer.com/chapter/10.1007/978-3-642-31031-7_42}
}
@Article{Ashburner2012,
Title = {SPM: a history.},
Author = {Ashburner, John},
Journal = {Neuroimage},
Year = {2012},
Month = {Aug},
Number = {2},
Pages = {791--800},
Volume = {62},
Abstract = {Karl Friston began the SPM project around 1991. The rest is history.},
Doi = {10.1016/j.neuroimage.2011.10.025},
Institution = {Wellcome Trust Centre for Neuroimaging, 12 Queen Square, London WC1N 3BG, UK. john@fil.ion.ucl.ac.uk},
Keywords = {Brain Mapping, history/methods; Brain, anatomy /&/ histology/physiology; History, 20th Century; History, 21st Century; Humans; Image Processing, Computer-Assisted, history/methods; Magnetic Resonance Imaging, history/methods; Software, history},
Language = {eng},
Medline-pst = {ppublish},
Owner = {stnava},
Pii = {S1053-8119(11)01188-8},
Pmid = {22023741},
Timestamp = {2014.08.26},
Url = {http://dx.doi.org/10.1016/j.neuroimage.2011.10.025}
}
@PhdThesis{Avants2005,
Title = {Shape optimizing diffeomorphisms for medical image analysis},
Author = {B. Avants},
School = {University of Pennsylvania},
Year = {2005}
}
@InProceedings{Avants2005a,
Title = {Unbiased Diffeomorphic Shape and Intensity Atlas Creation},
Author = {B. Avants and J. Aguirre and J. Walker and J. C. Gee},
Booktitle = {ISMRM},
Year = {2005}
}
@Conference{Avants2007,
Title = {Tauopathic Longitudinal Gray Matter Atrophy Predicts Declining Verbal Fluency: A Symmetric Normalization Study},
Author = {B. Avants and C. Anderson and M. Grossman},
Booktitle = {Human Brain Mapping},
Year = {2007},
Owner = {stnava},
Timestamp = {2007.02.23}
}
@Article{Avants2007a,
Title = {Spatiotemporal normalization for longitudinal analysis of gray matter atrophy in frontotemporal dementia.},
Author = {Brian Avants and Chivon Anderson and Murray Grossman and James C Gee},
Journal = {Med Image Comput Comput Assist Interv Int Conf Med Image Comput Comput Assist Interv},
Year = {2007},
Number = {Pt 2},
Pages = {303--310},
Volume = {10},
Abstract = {We present a unified method, based on symmetric diffeomorphisms, for studying longitudinal neurodegeneration. Our method first uses symmetric diffeomorphic normalization to find a spatiotemporal parameterization of an individual's image time series. The second step involves mapping a representative image or set of images from the time series into an optimal template space. The template mapping is then combined with the intrasubject spatiotemporal map to enable pairwise statistical tests to be performed on a population of normalized time series images. Here, we apply this longitudinal analysis protocol to study the gray matter atrophy patterns induced by frontotemporal dementia (FTD). We sample our normalized spatiotemporal maps at baseline (time zero) and time one year to generate an annualized atrophy map (AAM) that estimates the annual effect of FTD. This spatiotemporal normalization enables us to locate neuroanatomical regions that consistently undergo significant annual gray matter atrophy across the population. We found the majority of annual atrophy to occur in the frontal and temporal lobes in our population of 20 subjects. We also found significant effects in the hippocampus, insula and cingulate gyrus. Our novel results, significant at p < 0.05 after false discovery rate correction, are represented in local template space but also assigned Talairach coordinates and Brodmann and Anatomical Automatic Labeling (AAL) labels. This paper shows the statistical power of symmetric diffeomorphic normalization for performing deformation-based studies of longitudinal atrophy.},
Institution = {Dept. of Radiology, University of Pennsylvania, Philadelphia, PA 19104-6389, USA. avants@grasp.cis.upenn.edu},
Keywords = {Alg; Atrophy; Cerebral Cortex; Dementia; Humans; Image Enhancement; Image Interpretation, Computer-Assisted; Imaging, Three-Dimensional; Longitudinal Studies; Magnetic Resonance Imaging; Neurons; Reproducibility of Results; Sensitivity and Specificity; orithms},
Owner = {stnava},
Pmid = {18044582},
Timestamp = {2008.02.25}
}
@Conference{Avants2007b,
Title = {Symmetric normalization for patient-specific tracking of longitudinal change in frontotemporal dementia},
Author = {B. Avants and C. Anderson and M. Grossman and J. C. Gee},
Booktitle = {Medical Image Computing and Computer Aided Intervention},
Year = {2007},
Pages = {303-310},
Volume = {2},
Owner = {stnava},
Timestamp = {2007.05.01}
}
@Article{Avants2010,
Title = {Sparse unbiased analysis of anatomical variance in longitudinal imaging.},
Author = {Avants, Brian and Cook, Philip A. and McMillan, Corey and Grossman, Murray and Tustison, Nicholas J. and Zheng, Yuanjie and Gee, James C.},
Journal = {Med Image Comput Comput Assist Interv},
Year = {2010},
Number = {Pt 1},
Pages = {324--331},
Volume = {13},
Abstract = {We present a new algorithm for reliable, unbiased, multivariate longitudinal analysis of cortical and white matter atrophy rates with penalized statistical methods. The pipeline uses a step-wise approach to transform and personalize template information first to a single-subject template (SST) and then to the individual's time series data. The first stream of information flows from group template to the SST; the second flows from the SST to the individual time-points and provides unbiased, prior-based segmentation and measurement of cortical thickness. MRI-bias correction, consistent longitudinal segmentation, cortical parcellation and cortical thickness estimation are all based on strong use of the subject-specific priors built from initial diffeomorphic mapping between the SST and optimal group template. We evaluate our approach with both test-retest data and with application to a driving biological problem. We use test-retest data to show that this approach produces (a) zero change when the retest data contains the same image content as the test data and (b) produces normally distributed, low variance estimates of thickness change centered at zero when test-retest data is collected near in time to test data. We also show that our approach--when combined with sparse canonical correlation analysis--reveals plausible, significant, annualized decline in cortical thickness and white matter volume when contrasting frontotemporal dementia and normal aging.},
Institution = {Dept. of Radiology, University of Pennsylvania, Philadelphia, PA 19104-6389 USA. avants@grasp.cis.upenn.edu},
Keywords = {Algorithms; Analysis of Variance; Brain Diseases, pathology; Brain, pathology; Humans; Image Enhancement, methods; Image Interpretation, Computer-Assisted, methods; Longitudinal Studies; Magnetic Resonance Imaging, methods; Pattern Recognition, Automated, methods; Prognosis; Reproducibility of Results; Sensitivity and Specificity; Subtraction Technique},
Language = {eng},
Medline-pst = {ppublish},
Owner = {stnava},
Pmid = {20879247},
Timestamp = {2014.04.29}
}
@Conference{Avants2009a,
Title = {Multivariate Diffeomorphic Analysis of Longitudinal Increase in White Matter Directionality and Decrease in Cortical Thickness between Ages 14 and 18},
Author = {Avants, B. and Cook, P. A. and Pluta, J. nad Duda, J. T. and Rao, H. and Giannetta, J. and Hurt, H. and Das, S. and Gee, J.},
Booktitle = {Human Brain Mapping, 15th Annual Meeting, oral presentation.},
Year = {2009},
Owner = {stnava},
Timestamp = {2009.03.24}
}
@Conference{Avants2009b,
Title = {Follow-up on Long Term Effects of Prenatal Cocaine Exposure/Poly-Substance Abuse on the Young Adult Brain},
Author = {Avants, B. and Cook, P. A. and Pluta, J. nad Duda, J. T. and Rao, H. and Giannetta, J. and Hurt, H. and Das, S. and Gee, J.},
Booktitle = {Pediatric Academic Society, Annual Meeting},
Year = {2009},
Owner = {stnava},
Timestamp = {2009.03.24}
}
@Article{Avants2008,
Title = {Multivariate analysis of structural and diffusion imaging in traumatic brain injury.},
Author = {Brian Avants and Jeffrey T Duda and Junghoon Kim and Hui Zhang and John Pluta and James C Gee and John Whyte},
Journal = {Acad Radiol},
Year = {2008},
Month = {Nov},
Number = {11},
Pages = {1360--1375},
Volume = {15},
Abstract = {RATIONALE AND OBJECTIVES: Diffusion tensor (DT) and T1 structural magnetic resonance images provide unique and complementary tools for quantifying the living brain. We leverage both modalities in a diffeomorphic normalization method that unifies analysis of clinical datasets in a consistent and inherently multivariate (MV) statistical framework. We use this technique to study MV effects of traumatic brain injury (TBI). MATERIALS AND METHODS: We contrast T1 and DT image-based measurements in the thalamus and hippocampus of 12 TBI survivors and nine matched controls normalized to a combined DT and T1 template space. The normalization method uses maps that are topology-preserving and unbiased. Normalization is based on the full tensor of information at each voxel and, simultaneously, the similarity between high-resolution features derived from T1 data. The technique is termed symmetric normalization for MV neuroanatomy (SyNMN). Voxel-wise MV statistics on the local volume and mean diffusion are assessed with Hotelling's T(2) test with correction for multiple comparisons. RESULTS: TBI significantly (false discovery rate P < .05) reduces volume and increases mean diffusion at coincident locations in the mediodorsal thalamus and anterior hippocampus. CONCLUSIONS: SyNMN reveals evidence that TBI compromises the limbic system. This TBI morphometry study and an additional performance evaluation contrasting SyNMN with other methods suggest that the DT component may aid normalization quality.},
Bdsk-url-1 = {http://dx.doi.org/10.1016/j.acra.2008.07.007},
Doi = {10.1016/j.acra.2008.07.007},
Institution = {Department of Radiology, University of Pennsylvania, Philadelphia, PA 19104, USA.},
Keywords = {Adult; Brain; Brain Injuries; Cohort Studies; Diffusion Magnetic Resonance Imaging; Echo-Planar Imaging; Female; Hippocampus; Humans; Image Processing, Computer-Assisted; Male; Middle Aged; Multivariate Analysis; Thalamus},
Owner = {stnava},
Pii = {S1076-6332(08)00395-4},
Pmid = {18995188},
Timestamp = {2009.02.14},
Url = {http://dx.doi.org/10.1016/j.acra.2008.07.007}
}
@Article{Avants2008c,
Title = {Multivariate analysis of structural and diffusion imaging in traumatic brain injury.},
Author = {Brian Avants and Jeffrey T Duda and Junghoon Kim and Hui Zhang and John Pluta and James C Gee and John Whyte},
Journal = {Acad Radiol},
Year = {2008},
Month = {Nov},
Number = {11},
Pages = {1360--1375},
Volume = {15},
Abstract = {RATIONALE AND OBJECTIVES: Diffusion tensor (DT) and T1 structural magnetic resonance images provide unique and complementary tools for quantifying the living brain. We leverage both modalities in a diffeomorphic normalization method that unifies analysis of clinical datasets in a consistent and inherently multivariate (MV) statistical framework. We use this technique to study MV effects of traumatic brain injury (TBI). MATERIALS AND METHODS: We contrast T1 and DT image-based measurements in the thalamus and hippocampus of 12 TBI survivors and nine matched controls normalized to a combined DT and T1 template space. The normalization method uses maps that are topology-preserving and unbiased. Normalization is based on the full tensor of information at each voxel and, simultaneously, the similarity between high-resolution features derived from T1 data. The technique is termed symmetric normalization for MV neuroanatomy (SyNMN). Voxel-wise MV statistics on the local volume and mean diffusion are assessed with Hotelling's T(2) test with correction for multiple comparisons. RESULTS: TBI significantly (false discovery rate P < .05) reduces volume and increases mean diffusion at coincident locations in the mediodorsal thalamus and anterior hippocampus. CONCLUSIONS: SyNMN reveals evidence that TBI compromises the limbic system. This TBI morphometry study and an additional performance evaluation contrasting SyNMN with other methods suggest that the DT component may aid normalization quality.},
Bdsk-url-1 = {http://dx.doi.org/10.1016/j.acra.2008.07.007},
Doi = {10.1016/j.acra.2008.07.007},
Institution = {Department of Radiology, University of Pennsylvania, Philadelphia, PA 19104, USA.},
Keywords = {Adult; Brain; Brain Injuries; Cohort Studies; Diffusion Magnetic Resonance Imaging; Echo-Planar Imaging; Female; Hippocampus; Humans; Image Processing, Computer-Assisted; Male; Middle Aged; Multivariate Analysis; Thalamus},
Owner = {stnava},
Pii = {S1076-6332(08)00395-4},
Pmid = {18995188},
Timestamp = {2009.02.14},
Url = {http://dx.doi.org/10.1016/j.acra.2008.07.007}
}
@Conference{Avants2007c,
Title = {Multivariate normalization with symmetric diffeomorphisms: An integrative approach},
Author = {B. Avants and J. T. Duda and H. Zhang and J. C. Gee},
Booktitle = {Medical Image Computing and Computer Aided Intervention},
Year = {2007},
Pages = {359-366},
Volume = {2},
Owner = {stnava},
Timestamp = {2007.05.01}
}
@Conference{Avants2007d,
Title = {Symmetric Shape Averaging in the Diffeomorphic Space},
Author = {B. Avants and C. L. Epstein and J. C. Gee},
Booktitle = {IEEE Symposium on Biomedical Imaging},
Year = {2007},
Owner = {stnava},
Timestamp = {2007.02.23}
}
@Article{Avants2006,
Title = {Geodesic image normalization in the space of diffeomorphisms},
Author = {B. Avants and C. L. Epstein and J. C. Gee},
Journal = {Mathematical Foundations of Computational Anatomy},
Year = {2006},
Pages = {125-133}
}
@InProceedings{Avants2005b,
Title = {Geodesic image interpolation: {P}arameterizing and interpolating spatiotemporal images},
Author = {B. Avants and C. L. Epstein and J. C. Gee},
Booktitle = {ICCV Workshop on Variational and Level Set Methods},
Year = {2005},
Pages = {247-258}
}
@Unpublished{Avants2004,
Title = {A method for conformally mapping simply connected domains to the unit disc},
Author = {B. Avants and C. L. Epstein and J. C. Gee},
Note = {in preparation},
Year = {2004}
}
@Article{Avants2004a,
Title = {Geodesic estimation for large deformation anatomical shape and intensity averaging},
Author = {B. Avants and J.C. Gee},
Journal = {Neuroimage},
Year = {2004},
Pages = {S139-150},
Volume = {Suppl. 1}
}
@Article{Avants2004b,
Title = {Geodesic estimation for large deformation anatomical shape and intensity averaging},
Author = {B. Avants and J.C. Gee},
Journal = {Neuroimage},
Year = {2004},
Pages = {S139-150},
Volume = {Suppl. 1}
}
@InProceedings{Avants2003,
Title = {Continuous Curve Matching with Scale-Space Curvature and Extrema-Based Scale Selection},
Author = {B. Avants and J.C. Gee},
Booktitle = {Scale-Space Theories in Computer Vision},
Year = {2003},
Note = {L. Griffin editor, Heidelberg:Springer-Verlag, LNCS},
Pages = {798-813}
}
@Article{Avants2003a,
Title = {The shape operator for differential analysis of images.},
Author = {Brian Avants and James Gee},
Journal = {Inf Process Med Imaging},
Year = {2003},
Month = {Jul},
Pages = {101--113},
Volume = {18},
Abstract = {This work provides a new technique for surface oriented volumetric image analysis. The method makes no assumptions about topology, instead constructing a local neighborhood from image information, such as a segmentation or edge map, to define a surface patch. Neighborhood constructions using extrinsic and intrinsic distances are given. This representation allows one to estimate differential properties directly from the image's Gauss map. We develop a novel technique for this purpose which estimates the shape operator and yields both principal directions and curvatures. Only first derivatives need be estimated, making the method numerically stable. We show the use of these measures for multi-scale classification of image structure by the mean and Gaussian curvatures. Finally, we propose to register image volumes by surface curvature. This is particularly useful when geometry is the only variable. To illustrate this, we register binary segmented data by surface curvature, both rigidly and non-rigidly. A novel variant of Demons registration, extensible for use with differentiable similarity metrics, is also applied for deformable curvature-driven registration of medical images.},
Institution = {University of Pennsylvania, Philadelphia, PA 19104-6389, USA. avants@grasp.cis.upenn.edu},
Keywords = {Algorithms; Animals; Brain; Computer Simulation; Humans; Image Enhancement; Image Interpretation, Computer-Assisted; Imaging, Three-Dimensional; Magnetic Resonance Imaging; Models, Biological; Models, Statistical; Pan troglodytes; Pattern Recognition, Automated; Subtraction Technique},
Owner = {stnava},
Pmid = {15344450},
Timestamp = {2008.05.29}
}
@Article{Avants2002,
Title = {Morphometry of Brain Curve Anatomy from Similarity Invariant Parametric Matching Incorporating Global Topology},
Author = {B. Avants and J.C. Gee},
Journal = {ISMRM 10th Scientific Meeting and Exhibition},
Year = {2002}
}
@Article{Avants2004d,
Title = {Validation of Plaster Endocast Morphology through {3D CT} Image Analysis},
Author = {B. Avants and J. Gee and P. T. Schoenemann and R. L. Holloway and J. E. Lewis and J. Monge},
Journal = {American Journal of Physical Anthropology},
Year = {2004},
Pages = {Suppl. 38:56},
Volume = {123}
}
@InProceedings{Avants2002a,
Title = {Soft parametric curve matching in scale space},
Author = {B. Avants and J. C. Gee},
Booktitle = {Proc. SPIE Medical Imaging 2002: Image Processing},
Year = {2002},
Address = {Bellingham, WA},
Editor = {M. Fitzpatrick and M. Sonka},
Organization = {SPIE},
Pages = {1139-1150}
}
@InCollection{Avants2003b,
Title = {Formulation and evaluation of variational curve matching with prior constraints},
Author = {B. Avants and J. C. Gee},
Booktitle = {Biomedical Image Registration},
Publisher = {Springer-Verlag},
Year = {2003},
Address = {Heidelberg},
Editor = {J. C. Gee and J. B. A. Maintz and M. W. Vannier},
Pages = {21-30}
}
@Article{Avants2004g,
Title = {Geodesic estimation for large deformation anatomical shape averaging and interpolation.},
Author = {Brian Avants and James C Gee},
Journal = {Neuroimage},
Year = {2004},
Pages = {S139--S150},
Volume = {23 Suppl 1},
Abstract = {The goal of this research is to promote variational methods for anatomical averaging that operate within the space of the underlying image registration problem. This approach is effective when using the large deformation viscous framework, where linear averaging is not valid, or in the elastic case. The theory behind this novel atlas building algorithm is similar to the traditional pairwise registration problem, but with single image forces replaced by average forces. These group forces drive an average transport ordinary differential equation allowing one to estimate the geodesic that moves an image toward the mean shape configuration. This model gives large deformation atlases that are optimal with respect to the shape manifold as defined by the data and the image registration assumptions. We use the techniques in the large deformation context here, but they also pertain to small deformation atlas construction. Furthermore, a natural, inherently inverse consistent image registration is gained for free, as is a tool for constant arc length geodesic shape interpolation. The geodesic atlas creation algorithm is quantitatively compared to the Euclidean anatomical average to elucidate the need for optimized atlases. The procedures generate improved average representations of highly variable anatomy from distinct populations.},
Bdsk-url-1 = {http://dx.doi.org/10.1016/j.neuroimage.2004.07.010},
Doi = {10.1016/j.neuroimage.2004.07.010},
Institution = {University of Pennsylvania, Philadelphia, PA 19104, USA. avants@grasp.cis.upenn.edu},
Keywords = {Algorithms; Animals; Brain; Brain Mapping; Databases, Factual; Humans; Linear Models; Magnetic Resonance Imaging; Models, Anatomic; Models, Statistical; Pan troglodytes; Population},
Owner = {stnava},
Pii = {S1053-8119(04)00375-1},
Pmid = {15501083},
Timestamp = {2008.05.29},
Url = {http://dx.doi.org/10.1016/j.neuroimage.2004.07.010}
}
@InProceedings{Avants2002b,
Title = {Robust rotations between anatomical curves},
Author = {B. Avants and J. C. Gee},
Booktitle = {IEEE International Symposium on Biomedical Imaging},
Year = {2002},
Address = {Piscataway, NJ},
Pages = {337-340},
Publisher = {IEEE Press}
}
@InProceedings{Avants2006a,
Title = {Brain imaging: Brain Imaging: Structural differences between adolescent subjects with gestational cocaine exposure (COC) and controls (CON)},
Author = {B. Avants and J. C. Gee and J. Giannetta and D. Shera and H. Hurt},
Booktitle = {Poster Symposium Presentation. San Francisco, CA, April 30, 2006; 3870.6, Pediatr Res.},
Year = {2006}
}
@Article{Avants2007e,
Title = {Symmetric Diffeomorphic Image Registration: Evaluating Automated Labeling of Elderly and Neurodegenerative Cortex},
Author = {B. Avants and M. Grossman and J. C. Gee},
Journal = {Medical Image Analysis},
Year = {2007},
Note = {in press},
Optpages = {in press}
}
@Article{Avants2006b,
Title = {Symmetric Diffeomorphic Image Registration: Evaluating Automated Labeling of Elderly and Neurodegenerative Cortex and Frontal Lobe},
Author = {B. Avants and M. Grossman and J. C. Gee},
Journal = {WBIR},
Year = {2006},
Pages = {50-57}
}
@Article{Avants2005d,
Title = {The correlation of cognitive decline with frontotemporal dementia induced annualized gray matter loss using diffeomorphic morphometry.},
Author = {Brian Avants and Murray Grossman and James C Gee},
Journal = {Alzheimer Dis Assoc Disord},
Year = {2005},
Pages = {S25--S28},
Volume = {19 Suppl 1},
Abstract = {This study uses large deformation medical image registration to analyze, in a disease-specific normalized space, the annual rate of gray matter atrophy caused by frontotemporal dementia (FTD) and its correlation with cognitive decline. The analysis consists of three parts. First, a labeled structural MRI atlas is deformed into the shape of an average FTD brain. Second, annualized FTD-related atrophy of gray matter structures is estimated for each patient in the database. Third, the group-wise annualized atrophy rate caused by FTD is correlated, for each gray matter voxel, with declining performance on cognitive tests. This study gives insight into the relationship between FTD-related progressive cortical atrophy and loss in cognitive function.},
Institution = {University of Pennsylvania School of Medicine, Philadelphia, 19104-6389, USA. avants@grasp.cis.upenn.edu},
Keywords = {Aged; Atrophy; Cerebral Cortex; Cognition Disorders; Disease Progression; Humans; Image Processing, Computer-Assisted; Longitudinal Studies; Magnetic Resonance Imaging; Middle Aged; Pick Disease of the Brain},
Owner = {stnava},
Pii = {00002093-200510001-00006},
Pmid = {16317254},
Timestamp = {2008.03.22}
}
@Article{Avants2009,
Title = {Longitudinal cortical atrophy in amyotrophic lateral sclerosis with frontotemporal dementia.},
Author = {Brian Avants and Alea Khan and Leo McCluskey and Lauren Elman and Murray Grossman},
Journal = {Arch Neurol},
Year = {2009},
Month = {Jan},
Number = {1},
Pages = {138--139},
Volume = {66},
Bdsk-url-1 = {http://dx.doi.org/10.1001/archneurol.2008.542},
Doi = {10.1001/archneurol.2008.542},
Owner = {stnava},
Pii = {66/1/138},
Pmid = {19139315},
Timestamp = {2009.02.14},
Url = {http://dx.doi.org/10.1001/archneurol.2008.542}
}
@InCollection{Avants2001,
Title = {Computing match functions for curves in R2 and R3 by refining polyline approximations},
Author = {Avants, B. and Siquiera, M. and Gee, J. C.},
Booktitle = {Medical Image Computing and Computer-Assisted Intervention},
Publisher = {Springer-Verlag},
Year = {2001},
Address = {Heidelberg},
Editor = {Niessen, W. and Viergever, M.},
Pages = {1178-1179}
}
@Article{Avants1999,
Title = {Measuring the electrical conductivity of the earth},
Author = {B. Avants and D. Soodak and G. Ruppeiner},
Journal = {American Journal of Physics},
Year = {1999},
Number = {7},
Pages = {593-598},
Volume = {67}
}
@Article{Avants2000,
Title = {An adaptive minimal path generation technique for vessel tracking in CTA/CE-MRA volume images},
Author = {B. Avants and J. Williams},
Journal = {Medical Image Computing and Computer Assisted Intervention 2000},
Year = {2000},
Note = {S. Delp and A. DiGioia and B. Jaramaz, eds., Heidelberg:Springer-Verlag, LNCS 1935, {\em {\bf 2004}expanded as a chapter in {\bf Quantitative Vessel Analysis} book available from CRC press}},
Pages = {707-716}
}
@Article{Avants2007g,
Title = {Optimal Template Creation with Symmetric Diffeomorphisms: Evaluation of the Template Effect},
Author = {B. Avants and P. Yushkevich and S. Awate and J. C. Gee and J. Detra and M. Korczykowski},
Journal = {Medical Image Analysis},
Year = {2007},
Pages = {sumbitted},
Owner = {stnava},
Timestamp = {2007.10.19}
}
@Article{Avants2009c,
Title = {The optimal template effect in studies of hippocampus in diseased populations},
Author = {B. Avants and P. Yushkevich and J. Pluta and J. C. Gee},
Journal = {Neuroimage},
Year = {2009},
Pages = {in press}
}
@Article{Avants2007h,
Title = {Multivariate normalization with symmetric diffeomorphisms for multivariate studies.},
Author = {B. B. Avants and J. T. Duda and H. Zhang and J. C. Gee},
Journal = {Med Image Comput Comput Assist Interv Int Conf Med Image Comput Comput Assist Interv},
Year = {2007},
Number = {Pt 1},
Pages = {359--366},
Volume = {10},
Abstract = {Current clinical and research neuroimaging protocols acquire images using multiple modalities, for instance, T1, T2, diffusion tensor and cerebral blood flow magnetic resonance images (MRI). These multivariate datasets provide unique and often complementary anatomical and physiological information about the subject of interest. We present a method that uses fused multiple modality (scalar and tensor) datasets to perform intersubject spatial normalization. Our multivariate approach has the potential to eliminate inconsistencies that occur when normalization is performed on each modality separately. Furthermore, the multivariate approach uses a much richer anatomical and physiological image signature to infer image correspondences and perform multivariate statistical tests. In this initial study, we develop the theory for Multivariate Symmetric Normalization (MVSyN), establish its feasibility and discuss preliminary results on a multivariate statistical study of 22q deletion syndrome.},
Institution = {Penn Image Computing and Science Laboratory, University of Pennsylvania, Philadelphia, PA 19104-6389, USA. avants@grasp.cis.upenn.edu},
Keywords = {Adult; Algorithms; Artificial Intelligence; Brain; Demyelinating Diseases; DiGeorge Syndrome; Diffusion Magnetic Resonance Imaging; Humans; Image Enhancement; Image Interpretation, Computer-Assisted; Imaging, Three-Dimensional; Multivariate Analysis; Pattern Recognition, Automated; Reproducibility of Results; Sensitivity and Specificity; Subtraction Technique},
Owner = {stnava},
Pmid = {18051079},
Timestamp = {2008.02.25}
}
@Article{Avants2008a,
Title = {Symmetric diffeomorphic image registration with cross-correlation: Evaluating automated labeling of elderly and neurodegenerative brain.},
Author = {B. B. Avants and C. L. Epstein and M. Grossman and J. C. Gee},
Journal = {Med Image Anal},
Year = {2008},
Month = {Feb},
Number = {1},
Pages = {26--41},
Volume = {12},
Abstract = {One of the most challenging problems in modern neuroimaging is detailed characterization of neurodegeneration. Quantifying spatial and longitudinal atrophy patterns is an important component of this process. These spatiotemporal signals will aid in discriminating between related diseases, such as frontotemporal dementia (FTD) and Alzheimer's disease (AD), which manifest themselves in the same at-risk population. Here, we develop a novel symmetric image normalization method (SyN) for maximizing the cross-correlation within the space of diffeomorphic maps and provide the Euler-Lagrange equations necessary for this optimization. We then turn to a careful evaluation of our method. Our evaluation uses gold standard, human cortical segmentation to contrast SyN's performance with a related elastic method and with the standard ITK implementation of Thirion's Demons algorithm. The new method compares favorably with both approaches, in particular when the distance between the template brain and the target brain is large. We then report the correlation of volumes gained by algorithmic cortical labelings of FTD and control subjects with those gained by the manual rater. This comparison shows that, of the three methods tested, SyN's volume measurements are the most strongly correlated with volume measurements gained by expert labeling. This study indicates that SyN, with cross-correlation, is a reliable method for normalizing and making anatomical measurements in volumetric MRI of patients and at-risk elderly individuals.},
Bdsk-url-1 = {http://dx.doi.org//j.media.2007.06.004},
Bdsk-url-2 = {http://dx.doi.org/2007.06.004},
Doi = {/j.media.2007.06.004},
Institution = {Department of Radiology, University of Pennsylvania, 3600 Market Street, Philadelphia, PA 19104, United States.},
Owner = {stnava},
Pii = {S1361-8415(07)00060-6},
Pmid = {17659998},
Timestamp = {2008.02.25},
Url = {http://dx.doi.org//j.media.2007.06.004}
}
@Article{Avants2008b,
Title = {Symmetric diffeomorphic image registration with cross-correlation: Evaluating automated labeling of elderly and neurodegenerative brain.},
Author = {B. B. Avants and C. L. Epstein and M. Grossman and J. C. Gee},
Journal = {Med Image Anal},
Year = {2008},
Month = {Feb},
Number = {1},
Pages = {26--41},
Volume = {12},
Abstract = {One of the most challenging problems in modern neuroimaging is detailed characterization of neurodegeneration. Quantifying spatial and longitudinal atrophy patterns is an important component of this process. These spatiotemporal signals will aid in discriminating between related diseases, such as frontotemporal dementia (FTD) and Alzheimer's disease (AD), which manifest themselves in the same at-risk population. Here, we develop a novel symmetric image normalization method (SyN) for maximizing the cross-correlation within the space of diffeomorphic maps and provide the Euler-Lagrange equations necessary for this optimization. We then turn to a careful evaluation of our method. Our evaluation uses gold standard, human cortical segmentation to contrast SyN's performance with a related elastic method and with the standard ITK implementation of Thirion's Demons algorithm. The new method compares favorably with both approaches, in particular when the distance between the template brain and the target brain is large. We then report the correlation of volumes gained by algorithmic cortical labelings of FTD and control subjects with those gained by the manual rater. This comparison shows that, of the three methods tested, SyN's volume measurements are the most strongly correlated with volume measurements gained by expert labeling. This study indicates that SyN, with cross-correlation, is a reliable method for normalizing and making anatomical measurements in volumetric MRI of patients and at-risk elderly individuals.},
Bdsk-url-1 = {http://dx.doi.org//j.media.2007.06.004},
Bdsk-url-2 = {http://dx.doi.org/2007.06.004},
Doi = {/j.media.2007.06.004},
Institution = {Department of Radiology, University of Pennsylvania, 3600 Market Street, Philadelphia, PA 19104, United States.},
Owner = {stnava},
Pii = {S1361-8415(07)00060-6},
Pmid = {17659998},
Timestamp = {2008.02.25},
Url = {http://dx.doi.org//j.media.2007.06.004}
}
@InProceedings{Avants2006c,
Title = {Analyzing Long Term Effects of Cocaine Exposure on Adolescent Brain Structure with Symmetric Diffeomorphisms},
Author = {B. B. Avants and J. Giannetta and J. C. Gee and H. Hurt and J. Wang},
Booktitle = {Mathematical Methods in Biomedical Image Analysis, New York City, NY},
Year = {2006}
}
@Article{Avants2007i,
Title = {Effects of heavy in utero cocaine exposure on adolescent caudate morphology.},
Author = {Brian B Avants and Hallam Hurt and Joan M Giannetta and Charles L Epstein and David M Shera and Hengyi Rao and Jiongjiong Wang and James C Gee},
Journal = {Pediatr Neurol},
Year = {2007},
Month = {Oct},
Number = {4},
Pages = {275--279},
Volume = {37},
Abstract = {We assess the effects of in utero cocaine and polysubstance exposure on the adolescent caudate nucleus through high-resolution magnetic resonance imaging. Cocaine exposure may compromise the developing brain through disruption of neural ontogeny in dopaminergic systems, effects secondary to fetal hypoxemia, or altered cerebrovascular reactivity. Cocaine exposure may also lead to neonatal lesions in the caudate. However, long-term or latent effects of intrauterine cocaine exposure are rarely found. We use T(1)-weighted magnetic resonance imaging to quantify caudate nucleus morphology in matched control and exposed groups. The literature suggests that in utero cocaine exposure consequences in adolescents may be subtle, or masked by other variables. Our comparison focuses on contrasting the control group with high-exposure subjects (mothers who reported 2 median of 117 days of cocaine use during pregnancy; 82\% tested positive for cocaine use at term). We use advanced image registration and segmentation tools to quantify left and right caudate morphology. Our results indicate that the caudate is significantly larger in controls versus subjects (P < 0.0025), implying cocaine exposure-related detriments to the dopaminergic system. The right (P < 0.025) and left (P < 0.035) caudate, studied independently, show the same significant trend. Permutation testing and the false discovery rate were used to assess significance.},
Bdsk-url-1 = {http://dx.doi.org/10.1016/j.pediatrneurol.2007.06.012},
Doi = {10.1016/j.pediatrneurol.2007.06.012},
Institution = {Department of Radiology, University of Pennsylvania, Philadelphia, Pennsylvania 19104, USA. avants@grasp.cis.upenn.edu},
Keywords = {Adolescent; Caudate Nucleus; Cocaine; Cohort Studies; Dopamine Uptake Inhibitors; Dose-Response Relationship, Drug; Female; Humans; Magnetic Resonance Imaging; Male; Pregnancy; Prenatal Exposure Delayed Effects},
Owner = {stnava},
Pii = {S0887-8994(07)00328-1},
Pmid = {17903672},
Timestamp = {2008.02.25},
Url = {http://dx.doi.org/10.1016/j.pediatrneurol.2007.06.012}
}
@Article{Avants2006d,
Title = {Lagrangian frame diffeomorphic image registration: Morphometric comparison of human and chimpanzee cortex.},
Author = {Brian B Avants and P. Thomas Schoenemann and James C Gee},
Journal = {Med Image Anal},
Year = {2006},
Month = {Jun},
Number = {3},
Pages = {397--412},
Volume = {10},
Abstract = {We develop a novel Lagrangian reference frame diffeomorphic image and landmark registration method. The algorithm uses the fixed Langrangian reference frame to define the map between coordinate systems, but also generates and stores the inverse map from the Eulerian to the Lagrangian frame. Computing both maps allows facile computation of both Eulerian and Langrangian quantities. We apply this algorithm to estimating a putative evolutionary change of coordinates between a population of chimpanzee and human cortices. Inter-species functional homologues fix the map explicitly, where they are known, while image similarities guide the alignment elsewhere. This map allows detailed study of the volumetric change between chimp and human cortex. Instead of basing the inter-species study on a single species atlas, we diffeomorphically connect the mean shape and intensity templates for each group. The human statistics then map diffeomorphically into the space of the chimpanzee cortex providing a comparison between species. The population statistics show a significant doubling of the relative prefrontal lobe size in humans, as compared to chimpanzees.},
Bdsk-url-1 = {http://dx.doi.org/10.1016/j.media.2005.03.005},
Doi = {10.1016/j.media.2005.03.005},
Institution = {Department of Bioengineering, University of Pennsylvania, Philadelphia, PA 19104-6389, USA. avants@grasp.cis.upenn.edu},
Keywords = {Algorithms; Animals; Anthropometry; Cerebral Cortex; Humans; Image Enhancement; Image Interpretation, Computer-Assisted; Imaging, Three-Dimensional; Information Storage and Retrieval; Magnetic Resonance Imaging; Organ Size; Pan troglodytes; Reproducibility of Results; Sensitivity and Specificity; Species Specificity; Subtraction Technique},
Owner = {stnava},
Pii = {S1361-8415(05)00041-1},
Pmid = {15948659},
Timestamp = {2008.05.29},
Url = {http://dx.doi.org/10.1016/j.media.2005.03.005}
}
@Article{AvantsITK,
Title = {The ITK Image Registration Framework},
Author = {Avants, Brian B. and Tustison, Nicholas J.},
Journal = {Front Neuroinform},
Year = {2014},
Pages = {39},
Volume = {7},
Abstract = {Diffeomorphic mappings are central to image registration due largely to their topological properties and success in providing biologically plausible solutions to deformation and morphological estimation problems. Popular diffeomorphic image registration algorithms include those characterized by time-varying and constant velocity fields, and symmetrical considerations. Prior information in the form of regularization is used to enforce transform plausibility taking the form of physics-based constraints or through some approximation thereof, e.g., Gaussian smoothing of the vector fields [a la Thirion's Demons (Thirion, 1998)]. In the context of the original Demons' framework, the so-called directly manipulated free-form deformation (DMFFD) (Tustison et al., 2009) can be viewed as a smoothing alternative in which explicit regularization is achieved through fast B-spline approximation. This characterization can be used to provide B-spline "flavored" diffeomorphic image registration solutions with several advantages. Implementation is open source and available through the Insight Toolkit and our Advanced Normalization Tools (ANTs) repository. A thorough comparative evaluation with the well-known SyN algorithm (Avants et al., 2008), implemented within the same framework, and its B-spline analog is performed using open labeled brain data and open source evaluation tools.},
Bdsk-url-1 = {http://dx.doi.org/10.3389/fninf.2013.00039},
Doi = {10.3389/fninf.2013.00039},
Institution = {Penn Image Computing and Science Laboratory, Department of Radiology, University of Pennsylvania Philadelphia, PA, USA.},
Language = {eng},
Medline-pst = {epublish},
Owner = {stnava},
Pmid = {24409140},
Timestamp = {2014.04.29},
Url = {http://dx.doi.org/10.3389/fninf.2013.00039}
}
@Article{Avants2011a,
Title = {A reproducible evaluation of ANTs similarity metric performance in brain image registration.},
Author = {Avants, Brian B. and Tustison, Nicholas J. and Song, Gang and Cook, Philip A. and Klein, Arno and Gee, James C.},
Journal = {Neuroimage},
Year = {2011},
Month = {Feb},
Number = {3},
Pages = {2033--2044},
Volume = {54},
Abstract = {The United States National Institutes of Health (NIH) commit significant support to open-source data and software resources in order to foment reproducibility in the biomedical imaging sciences. Here, we report and evaluate a recent product of this commitment: Advanced Neuroimaging Tools (ANTs), which is approaching its 2.0 release. The ANTs open source software library consists of a suite of state-of-the-art image registration, segmentation and template building tools for quantitative morphometric analysis. In this work, we use ANTs to quantify, for the first time, the impact of similarity metrics on the affine and deformable components of a template-based normalization study. We detail the ANTs implementation of three similarity metrics: squared intensity difference, a new and faster cross-correlation, and voxel-wise mutual information. We then use two-fold cross-validation to compare their performance on openly available, manually labeled, T1-weighted MRI brain image data of 40 subjects (UCLA's LPBA40 dataset). We report evaluation results on cortical and whole brain labels for both the affine and deformable components of the registration. Results indicate that the best ANTs methods are competitive with existing brain extraction results (Jaccard=0.958) and cortical labeling approaches. Mutual information affine mapping combined with cross-correlation diffeomorphic mapping gave the best cortical labeling results (Jaccard=0.669$\pm$0.022). Furthermore, our two-fold cross-validation allows us to quantify the similarity of templates derived from different subgroups. Our open code, data and evaluation scripts set performance benchmark parameters for this state-of-the-art toolkit. This is the first study to use a consistent transformation framework to provide a reproducible evaluation of the isolated effect of the similarity metric on optimal template construction and brain labeling.},
Bdsk-url-1 = {http://dx.doi.org/10.1016/j.neuroimage.2010.09.025},
Doi = {10.1016/j.neuroimage.2010.09.025},
Institution = {Penn Image Computing and Science Laboratory, University of Pennsylvania, Philadelphia, PA 19104, USA. avants@grasp.cis.upenn.edu},
Keywords = {Algorithms; Brain, anatomy /&/ histology; Databases, Factual; Diagnostic Imaging, methods; Head, anatomy /&/ histology; Humans; Image Processing, Computer-Assisted, methods; Linear Models; Models, Anatomic; Models, Neurological; Population; Reproducibility of Results; Software},
Language = {eng},
Medline-pst = {ppublish},
Owner = {stnava},
Pii = {S1053-8119(10)01206-1},
Pmid = {20851191},
Timestamp = {2014.04.29},
Url = {http://dx.doi.org/10.1016/j.neuroimage.2010.09.025}
}
@Article{Avants2014,
Title = {The Insight ToolKit image registration framework.},
Author = {Avants, Brian B. and Tustison, Nicholas J. and Stauffer, Michael and Song, Gang and Wu, Baohua and Gee, James C.},
Journal = {Front Neuroinform},
Year = {2014},
Pages = {44},
Volume = {8},
Abstract = {Publicly available scientific resources help establish evaluation standards, provide a platform for teaching and improve reproducibility. Version 4 of the Insight ToolKit (ITK(4)) seeks to establish new standards in publicly available image registration methodology. ITK(4) makes several advances in comparison to previous versions of ITK. ITK(4) supports both multivariate images and objective functions; it also unifies high-dimensional (deformation field) and low-dimensional (affine) transformations with metrics that are reusable across transform types and with composite transforms that allow arbitrary series of geometric mappings to be chained together seamlessly. Metrics and optimizers take advantage of multi-core resources, when available. Furthermore, ITK(4) reduces the parameter optimization burden via principled heuristics that automatically set scaling across disparate parameter types (rotations vs. translations). A related approach also constrains steps sizes for gradient-based optimizers. The result is that tuning for different metrics and/or image pairs is rarely necessary allowing the researcher to more easily focus on design/comparison of registration strategies. In total, the ITK(4) contribution is intended as a structure to support reproducible research practices, will provide a more extensive foundation against which to evaluate new work in image registration and also enable application level programmers a broad suite of tools on which to build. Finally, we contextualize this work with a reference registration evaluation study with application to pediatric brain labeling.},
Doi = {10.3389/fninf.2014.00044},
Institution = {Penn Image Computing and Science Laboratory, Department of Radiology, University of Pennsylvania Philadelphia, PA, USA.},
Language = {eng},
Medline-pst = {epublish},
Owner = {stnava},
Pmid = {24817849},
Timestamp = {2014.08.07},
Url = {http://dx.doi.org/10.3389/fninf.2014.00044}
}
@Article{Avants2011,
Title = {An open source multivariate framework for n-tissue segmentation with evaluation on public data.},
Author = {Avants, Brian B. and Tustison, Nicholas J. and Wu, Jue and Cook, Philip A. and Gee, James C.},
Journal = {Neuroinformatics},
Year = {2011},
Month = {Dec},
Number = {4},
Pages = {381--400},
Volume = {9},
Abstract = {We introduce Atropos, an ITK-based multivariate n-class open source segmentation algorithm distributed with ANTs ( http://www.picsl.upenn.edu/ANTs). The Bayesian formulation of the segmentation problem is solved using the Expectation Maximization (EM) algorithm with the modeling of the class intensities based on either parametric or non-parametric finite mixtures. Atropos is capable of incorporating spatial prior probability maps (sparse), prior label maps and/or Markov Random Field (MRF) modeling. Atropos has also been efficiently implemented to handle large quantities of possible labelings (in the experimental section, we use up to 69 classes) with a minimal memory footprint. This work describes the technical and implementation aspects of Atropos and evaluates its performance on two different ground-truth datasets. First, we use the BrainWeb dataset from Montreal Neurological Institute to evaluate three-tissue segmentation performance via (1) K-means segmentation without use of template data; (2) MRF segmentation with initialization by prior probability maps derived from a group template; (3) Prior-based segmentation with use of spatial prior probability maps derived from a group template. We also evaluate Atropos performance by using spatial priors to drive a 69-class EM segmentation problem derived from the Hammers atlas from University College London. These evaluation studies, combined with illustrative examples that exercise Atropos options, demonstrate both performance and wide applicability of this new platform-independent open source segmentation tool.},
Bdsk-url-1 = {http://dx.doi.org/10.1007/s12021-011-9109-y},
Doi = {10.1007/s12021-011-9109-y},
Institution = {Penn Image Computing and Science Laboratory, University of Pennsylvania, 3600 Market Street, Suite 370, Philadelphia, PA 19104, USA. stnava@gmail.com},
Keywords = {Access to Information; Algorithms; Bayes Theorem; Databases, Factual, standards; Humans; Image Processing, Computer-Assisted, methods; Internet, standards; Magnetic Resonance Imaging, methods; Models, Statistical; Pattern Recognition, Automated, methods; Software, standards},
Language = {eng},
Medline-pst = {ppublish},
Owner = {stnava},
Pmid = {21373993},
Timestamp = {2014.04.29},
Url = {http://dx.doi.org/10.1007/s12021-011-9109-y}
}
@Article{Cook2005,
Title = {An automated approach to connectivity-based partitioning of brain structures.},
Author = {P. A. Cook and H. Zhang and B. B. Avants and P. Yushkevich and D. C. Alexander and J. C. Gee and O. Ciccarelli and A. J. Thompson},
Journal = {Med Image Comput Comput Assist Interv Int Conf Med Image Comput Comput Assist Interv},
Year = {2005},
Number = {Pt 1},
Pages = {164--171},
Volume = {8},
Abstract = {We present an automated approach to the problem of connectivity-based partitioning of brain structures using diffusion imaging. White-matter fibres connect different areas of the brain, allowing them to interact with each other. Diffusion-tensor MRI measures the orientation of white-matter fibres in vivo, allowing us to perform connectivity-based partitioning non-invasively. Our new approach leverages atlas-based segmentation to automate anatomical labeling of the cortex. White-matter connectivities are inferred using a probabilistic tractography algorithm that models crossing pathways explicitly. The method is demonstrated with the partitioning of the corpus callosum of eight healthy subjects.},
Institution = {Centre for Medical Image Computing, Department of Computer Science, University College London, UK.},
Keywords = {Algorithms; Artificial Intelligence; Corpus Callosum; Diffusion Magnetic Resonance Imaging; Humans; Image Enhancement; Image Interpretation, Computer-Assisted; Imaging, Three-Dimensional; Nerve Fibers, Myelinated; Pattern Recognition, Automated; Reproducibility of Results; Sensitivity and Specificity},
Owner = {stnava},
Pmid = {16685842},
Timestamp = {2008.03.22}
}
@Conference{Das2007,
Title = {Longitudinal Study of Gray Matter Thickness Using Topologically Consistent Cortical Models},
Author = {S. Das and B. Avants and C. Anderson and M. Grossman},
Booktitle = {Human Brain Mapping},
Year = {2007},
Owner = {stnava},
Timestamp = {2007.02.23}
}
@InProceedings{Das2007a,
Title = {Measuring Cortical Thickness Using Image Domain Local Surface Models: Application to Longitudinal Study of Atrophy in FTD Spectrum Disorders},
Author = {S. Das and B. Avants and M. Grossman and J. C. Gee},
Booktitle = {submitted, Medical Image Computing and Computer Aided Intervention},
Year = {2007}
}
@Conference{Das2007b,
Title = {Measuring Cortical Thickness Using An Image Domain Local Surface Model And Topology Preserving Segmentation},
Author = {S. Das and B. Avants and M. Grossman and J. C. Gee},
Booktitle = {MMBIA 2007},
Year = {2007},
Owner = {stnava},
Timestamp = {2007.10.19}
}
@Article{Das2009,
Title = {Registration based cortical thickness measurement.},
Author = {Sandhitsu R Das and Brian B Avants and Murray Grossman and James C Gee},
Journal = {Neuroimage},
Year = {2009},
Month = {Apr},
Number = {3},
Pages = {867--879},
Volume = {45},
Abstract = {Cortical thickness is an important biomarker for image-based studies of the brain. A diffeomorphic registration based cortical thickness (DiReCT) measure is introduced where a continuous one-to-one correspondence between the gray matter-white matter interface and the estimated gray matter-cerebrospinal fluid interface is given by a diffeomorphic mapping in the image space. Thickness is then defined in terms of a distance measure between the interfaces of this sheet like structure. This technique also provides a natural way to compute continuous estimates of thickness within buried sulci by preventing opposing gray matter banks from intersecting. In addition, the proposed method incorporates neuroanatomical constraints on thickness values as part of the mapping process. Evaluation of this method is presented on synthetic images. As an application to brain images, a longitudinal study of thickness change in frontotemporal dementia (FTD) spectrum disorder is reported.},
Bdsk-url-1 = {http://dx.doi.org/10.1016/j.neuroimage.2008.12.016},
Doi = {10.1016/j.neuroimage.2008.12.016},
Institution = {Department of Radiology, University of Pennsylvania School of Medicine, Philadelphia, PA, USA. sudas@seas.upenn.edu},
Owner = {stnava},
Pii = {S1053-8119(08)01278-0},
Pmid = {19150502},
Timestamp = {2009.04.02},
Url = {http://dx.doi.org/10.1016/j.neuroimage.2008.12.016}
}
@InProceedings{Dubb2002,
Title = {Shape characterization of the corpus callosum in {S}chizophrenia using template deformation},
Author = {A. Dubb and B. Avants and R. Gur and J. C. Gee},
Booktitle = {Medical Image Computing and Computer-Assisted Intervention},
Year = {2002},
Address = {Heidelberg},
Editor = {R. Kikinis},
Pages = {381-388},
Publisher = {Springer-Verlag}
}
@Article{Dubb2003,
Title = {Characterization of sexual dimorphism in the human corpus callosum.},
Author = {Abraham Dubb and Ruben Gur and Brian Avants and James Gee},
Journal = {Neuroimage},
Year = {2003},
Month = {Sep},
Number = {1},
Pages = {512--519},
Volume = {20},
Abstract = {Despite decades of research, there is still no agreement over the presence of gender-based morphologic differences in the human corpus callosum. We approached the problem using a highly precise computational technique for shape comparison. Starting with a prospectively acquired sample of cranial MRIs of healthy volunteers (age ranges 18-84), the variations of individual callosa are quantified with respect to a reference callosum shape in the form of Jacobian determinant maps derived from the geometric transformations that map the reference callosum into anatomic alignment with the subject callosa. Voxelwise t tests performed over the determinant values demonstrated that females had a larger splenium than males (P < 0.001 uncorrected for multiple comparisons) while males possessed a larger genu (P < 0.001). In addition, pointwise Pearson plots using age as a correlate showed a different pattern of age-related changes in male and female callosa, with female splenia tending to expand more with age, while the male genu tended to contract. Our results demonstrate significant morphologic differences in the corpus callosum between genders and a possible sex difference in the neuro-developmental cycle.},
Institution = {Department of Bioengineering, Psychiatry, and Radiology, University of Pennsylvania, Philadelphia, PA 19104-6389, USA. adubb@grasp.cis.upenn.edu},
Keywords = {Adolescent; Adult; Algorithms; Cluster Analysis; Corpus Callosum; Female; Humans; Magnetic Resonance Imaging; Male; Prospective Studies; Schizophrenia; Sex Characteristics},
Owner = {stnava},
Pii = {S1053811903003136},
Pmid = {14527611},
Timestamp = {2008.05.29}
}
@InProceedings{duda08miccai,
Title = {A Fiber Tractography Based Examination of Neurodegeneration on Language-Network Neuroanatomy},
Author = {Jeffrey T Duda and Brian B Avants and Jane C Asmuth and Hui Zhang and Murray Grossman and James C Gee},
Booktitle = {Workshop on Computational Diffusion MRI, Medical Image Computing and Computer-Assisted Intervention},
Year = {2008},
Month = {Sep},
Pages = {191-198},
File = {full proceedings:http\://www.picsl.upenn.edu/cdmri08/proceedings.pdf:PDF},
Location = {New York, NY},
Owner = {jeff}
}
@InProceedings{duda08cvpr,
Title = {Multivariate Analysis of Thalamo-Cortical Connectivity Loss in {TBI}},
Author = {Jeffrey T Duda and Brian B Avants and Junghoon Kim and Hui Zhang and S Patel and John Whyte and James C Gee},
Booktitle = {Computer Vision and Pattern Recognition},
Year = {2008},
Address = {Los Alamitos},
Month = {June},
Pages = {1-8},
Publisher = {IEEE Computer Society},
Bdsk-url-1 = {http://dx.doi.org/10.1109/CVPRW.2008.4562992},
Doi = {10.1109/CVPRW.2008.4562992},
Location = {Anchorage, AK},
Owner = {stnava},
Timestamp = {2009.07.02}
}
@Article{Fan2007,
Title = {Multivariate examination of brain abnormality using both structural and functional MRI.},
Author = {Yong Fan and Hengyi Rao and Hallam Hurt and Joan Giannetta and Marc Korczykowski and David Shera and Brian B Avants and James C Gee and Jiongjiong Wang and Dinggang Shen},
Journal = {Neuroimage},
Year = {2007},
Month = {Jul},
Number = {4},
Pages = {1189--1199},
Volume = {36},
Abstract = {A multivariate classification approach has been presented to examine the brain abnormalities, i.e., due to prenatal cocaine exposure, using both structural and functional brain images. First, a regional statistical feature extraction scheme was adopted to capture discriminative features from voxel-wise morphometric and functional representations of brain images, in order to reduce the dimensionality of the features used for classification, as well as to achieve the robustness to registration error and inter-subject variations. Then, this feature extraction method was used in conjunction with a hybrid feature selection method and a nonlinear support vector machine for the classification of brain abnormalities. This brain classification approach has been applied to detecting the brain abnormality associated with prenatal cocaine exposure in adolescents. A promising classification performance was achieved on a data set of 49 subjects (24 normal and 25 prenatally cocaine-exposed teenagers), with a leave-one-out cross-validation. Experimental results demonstrated the efficacy of our method, as well as the importance of incorporating both structural and functional images for brain classification. Moreover, spatial patterns of group difference derived from the constructed classifier were mostly consistent with the results of the conventional statistical analysis method. Therefore, the proposed approach provided not only a multivariate classification method for detecting brain abnormalities, but also an alternative way for group analysis of multimodality images.},
Bdsk-url-1 = {http://dx.doi.org/10.1016/j.neuroimage.2007.04.009},
Doi = {10.1016/j.neuroimage.2007.04.009},
Institution = {Department of Radiology, University of Pennsylvania, PA 19104, USA. yong.fan@uphs.upenn.edu},
Keywords = {Adolescent; Algorithms; Artificial Intelligence; Brain; Cocaine; Female; Humans; Image Enhancement; Image Processing, Computer-Assisted; Magnetic Resonance Imaging; Multivariate Analysis; Nonlinear Dynamics; Pregnancy; Prenatal Exposure Delayed Effects; Sensitivity and Specificity; Software; Street Drugs},
Owner = {stnava},
Pii = {S1053-8119(07)00327-8},
Pmid = {17512218},
Timestamp = {2008.03.22},
Url = {http://dx.doi.org/10.1016/j.neuroimage.2007.04.009}
}
@Article{Fischl2012,
Title = {FreeSurfer.},
Author = {Fischl, Bruce},
Journal = {Neuroimage},
Year = {2012},
Month = {Aug},
Number = {2},
Pages = {774--781},
Volume = {62},
Abstract = {FreeSurfer is a suite of tools for the analysis of neuroimaging data that provides an array of algorithms to quantify the functional, connectional and structural properties of the human brain. It has evolved from a package primarily aimed at generating surface representations of the cerebral cortex into one that automatically creates models of most macroscopically visible structures in the human brain given any reasonable T1-weighted input image. It is freely available, runs on a wide variety of hardware and software platforms, and is open source.},
Doi = {10.1016/j.neuroimage.2012.01.021},
Institution = {Athinoula A Martinos Center, Dept. of Radiology, MGH, Harvard Medical School, MA fischl@nmr.mgh.harvard.edu, USA. fischl@nmr.mgh.harvard.edu},
Keywords = {Algorithms; Brain Mapping, history/methods; Brain, anatomy /&/ histology; History, 20th Century; History, 21st Century; Humans; Image Processing, Computer-Assisted, history/methods; Magnetic Resonance Imaging, history/methods; Software, history},
Language = {eng},
Medline-pst = {ppublish},
Owner = {stnava},
Pii = {S1053-8119(12)00038-9},
Pmid = {22248573},
Timestamp = {2014.08.26},
Url = {http://dx.doi.org/10.1016/j.neuroimage.2012.01.021}
}
@InCollection{Gee2005,
Title = {Anatomy-based visualizations of diffusion tensor images of brain white matter},
Author = {Gee, J.C. and Zhang, H. and Dubb, A. and Avants, B. and Yushkevich, P. and Duda, J.T.},
Booktitle = {Visualization and Image Processing of Tensor Fields},
Publisher = {Springer},
Year = {2005},
Address = {Berlin},
Editor = {Weickert, J. and Hagan, H.}
}
@Article{Gee1993,
Title = {Elastically deforming 3D atlas to match anatomical brain images.},
Author = {Gee, J. C. and Reivich, M. and Bajcsy, R.},
Journal = {J Comput Assist Tomogr},
Year = {1993},
Number = {2},
Pages = {225--236},
Volume = {17},
Abstract = {To evaluate our system for elastically deforming a three-dimensional atlas to match anatomical brain images, six deformed versions of an atlas were generated. The deformed atlases were created by elastically mapping an anatomical brain atlas onto different MR brain image volumes. The mapping matches the edges of the ventricles and the surface of the brain; the resultant deformations are propagated through the atlas volume, deforming the remainder of the structures in the process. The atlas was then elastically matched to its deformed versions. The accuracy of the resultant matches was evaluated by determining the correspondence of 32 cortical and subcortical structures. The system on average matched the centroid of a structure to within 1 mm of its true position and fit a structure to within 11\% of its true volume. The overlap between the matched and true structures, defined by the ratio between the volume of their intersection and the volume of their union, averaged 66\%. When the gray-white interface was included for matching, the mean overlap improved to 78\%; each structure was matched to within 0.6 mm of its true position and fit to within 6\% of its true volume. Preliminary studies were also made to determine the effect of the compliance of the atlas on the resultant match.},
Institution = {Department of Computer and Information Science, University of Pennsylvania, Philadelphia 19104.},
Keywords = {Anatomy, Artistic; Brain, anatomy /&/ histology; Caudate Nucleus, anatomy /&/ histology; Cerebral Ventricles, anatomy /&/ histology; Female; Frontal Lobe, anatomy /&/ histology; Humans; Image Enhancement; Image Processing, Computer-Assisted; Magnetic Resonance Imaging, methods; Male; Medical Illustration; Medulla Oblongata, anatomy /&/ histology; Mesencephalon, anatomy /&/ histology; Pons, anatomy /&/ histology; Sensitivity and Specificity; Temporal Lobe, anatomy /&/ histology; Thalamus, anatomy /&/ histology},
Language = {eng},
Medline-pst = {ppublish},
Owner = {stnava},
Pmid = {8454749},
Timestamp = {2014.08.26}
}
@Book{Grenander1993,
Title = {General pattern theory-A mathematical study of regular structures},
Author = {Grenander, Ulf},
Publisher = {Clarendon Press},
Year = {1993},
Owner = {stnava},
Timestamp = {2014.08.26}
}
@Article{Grossman2008,
Title = {Impaired action knowledge in amyotrophic lateral sclerosis.},
Author = {M. Grossman and C. Anderson and A. Khan and B. Avants and L. Elman and L. McCluskey},
Journal = {Neurology},
Year = {2008},
Month = {Oct},
Number = {18},
Pages = {1396--1401},
Volume = {71},
Abstract = {BACKGROUND: Amyotrophic lateral sclerosis (ALS) is a neurodegenerative condition affecting the motor system, but recent work also shows more widespread cognitive impairment. This study examined performance on measures requiring knowledge of actions, and related performance to MRI cortical atrophy in ALS. METHODS: A total of 34 patients with ALS performed measures requiring word-description matching and associativity judgments with actions and objects. Voxel-based morphometry was used to relate these measures to cortical atrophy using high resolution structural MRI. RESULTS: Patients with ALS were significantly more impaired on measures requiring knowledge of actions than measures requiring knowledge of objects. Difficulty on measures requiring action knowledge correlated with cortical atrophy in motor cortex, implicating degraded knowledge of action features represented in motor cortex of patients with ALS. Performance on measures requiring object knowledge did not correlate with motor cortex atrophy. Several areas correlated with difficulty for both actions and objects, implicating these brain areas in components of semantic memory that are not dedicated to a specific category of knowledge. CONCLUSION: Patients with amyotrophic lateral sclerosis are impaired on measures involving action knowledge, and this appears to be due to at least two sources of impairment: degradation of knowledge about action features represented in motor cortex and impairment on multicategory cognitive components contributing more generally to semantic memory.},
Bdsk-url-1 = {http://dx.doi.org/10.1212/01.wnl.0000319701.50168.8c},
Doi = {10.1212/01.wnl.0000319701.50168.8c},
Institution = {Department of Neurology-2 Gibson, Hospital of the University of Pennsylvania, 3400 Spruce Street, Philadelphia, PA 19104-4283, USA. mgrossma@mail.med.upenn.edu},
Keywords = {Aged; Amyotrophic Lateral Sclerosis; Brain; Case-Control Studies; Cognition Disorder; Fema; Humans; Judgment; Knowledge; Magnetic Resonance Imaging; Male; Middle Aged; Motor Activity; Neuropsychological Tests; Pick Disease of the Brain; le; s},
Owner = {stnava},
Pii = {01.wnl.0000319701.50168.8c},
Pmid = {18784377},
Timestamp = {2009.06.30},
Url = {http://dx.doi.org/10.1212/01.wnl.0000319701.50168.8c}
}
@Article{M.Grossman10282008,
Title = {{Impaired action knowledge in amyotrophic lateral sclerosis}},
Author = {Grossman, M. and Anderson, C. and Khan, A. and Avants, B. and Elman, L. and McCluskey, L.},
Journal = {Neurology},
Year = {2008},
Number = {18},
Pages = {1396-1401},
Volume = {71},
Abstract = {Background: Amyotrophic lateral sclerosis (ALS) is a neurodegenerative condition affecting the motor system, but recent work also shows more widespread cognitive impairment. This study examined performance on measures requiring knowledge of actions, and related performance to MRI cortical atrophy in ALS. Methods: A total of 34 patients with ALS performed measures requiring word-description matching and associativity judgments with actions and objects. Voxel-based morphometry was used to relate these measures to cortical atrophy using high resolution structural MRI. Results: Patients with ALS were significantly more impaired on measures requiring knowledge of actions than measures requiring knowledge of objects. Difficulty on measures requiring action knowledge correlated with cortical atrophy in motor cortex, implicating degraded knowledge of action features represented in motor cortex of patients with ALS. Performance on measures requiring object knowledge did not correlate with motor cortex atrophy. Several areas correlated with difficulty for both actions and objects, implicating these brain areas in components of semantic memory that are not dedicated to a specific category of knowledge. Conclusion: Patients with amyotrophic lateral sclerosis are impaired on measures involving action knowledge, and this appears to be due to at least two sources of impairment: degradation of knowledge about action features represented in motor cortex and impairment on multicategory cognitive components contributing more generally to semantic memory.},
Bdsk-url-1 = {http://www.neurology.org/cgi/content/abstract/71/18/1396},
Bdsk-url-2 = {http://dx.doi.org/10.1212/01.wnl.0000319701.50168.8c},
Doi = {10.1212/01.wnl.0000319701.50168.8c},
Eprint = {http://www.neurology.org/cgi/reprint/71/18/1396.pdf},
Url = {http://www.neurology.org/cgi/content/abstract/71/18/1396}
}
@Article{Hopkins2013,
Title = {Regional and hemispheric variation in cortical thickness in chimpanzees (Pan troglodytes).},
Author = {Hopkins, William D. and Avants, Brian B.},
Journal = {J Neurosci},
Year = {2013},
Month = {Mar},
Number = {12},
Pages = {5241--5248},
Volume = {33},
Abstract = {Recent advances in structural magnetic resonance imaging technology and analysis now allows for accurate in vivo measurement of cortical thickness, an important aspect of cortical organization that has historically only been conducted on postmortem brains. In this study, for the first time, we examined regional and lateralized cortical thickness in a sample of 71 chimpanzees for comparison with previously reported findings in humans. We also measured gray and white matter volumes for each subject. The results indicated that chimpanzees showed significant regional variation in cortical thickness with lower values in primary motor and sensory cortex compared with association cortex. Furthermore, chimpanzees showed significant rightward asymmetries in cortical thickness for a number of regions of interest throughout the cortex and leftward asymmetries in white but not gray matter volume. We also found that total and region-specific cortical thickness was significantly negatively correlated with white matter volume. Thus, chimpanzees with greater white matter volumes had thinner cortical thickness. The collective findings are discussed within the context of previous findings in humans and theories on the evolution of cortical organization and lateralization in primates.},
Bdsk-url-1 = {http://dx.doi.org/10.1523/JNEUROSCI.2996-12.2013},
Doi = {10.1523/JNEUROSCI.2996-12.2013},
Institution = {Division on of Developmental and Cognitive Neuroscience, Yerkes National Primate Research Center, Atlanta, GA 30322, USA. whopkins4@gsu.edu},
Keywords = {Animals; Cerebral Cortex, anatomy /&/ histology; Female; Functional Laterality; Humans; Magnetic Resonance Imaging; Male; Organ Size; Pan troglodytes, anatomy /&/ histology; Parietal Lobe, anatomy /&/ histology; Prefrontal Cortex, anatomy /&/ histology; Temporal Lobe, anatomy /&/ histology},
Language = {eng},
Medline-pst = {ppublish},
Owner = {stnava},
Pii = {33/12/5241},
Pmid = {23516289},
Timestamp = {2014.04.29},
Url = {http://dx.doi.org/10.1523/JNEUROSCI.2996-12.2013}
}
@InProceedings{Horn1981,
Title = {Determining optical flow},
Author = {Horn, Berthold K and Schunck, Brian G},
Booktitle = {1981 Technical Symposium East},
Year = {1981},
Organization = {International Society for Optics and Photonics},
Pages = {319--331},
Owner = {stnava},
Timestamp = {2014.08.26},
Url = {http://proceedings.spiedigitallibrary.org/proceeding.aspx?articleid=1231385}
}
@Article{Kim2008,
Title = {Structural consequences of diffuse traumatic brain injury: A large deformation tensor-based morphometry study.},
Author = {Junghoon Kim and Brian Avants and Sunil Patel and John Whyte and Branch H Coslett and John Pluta and John A Detre and James C Gee},
Journal = {Neuroimage},
Year = {2008},
Month = {Feb},
Number = {3},
Pages = {1014--1026},
Volume = {39},
Abstract = {Traumatic brain injury (TBI) is one of the most common causes of long-term disability. Despite the importance of identifying neuropathology in individuals with chronic TBI, methodological challenges posed at the stage of inter-subject image registration have hampered previous voxel-based MRI studies from providing a clear pattern of structural atrophy after TBI. We used a novel symmetric diffeomorphic image normalization method to conduct a tensor-based morphometry (TBM) study of TBI. The key advantage of this method is that it simultaneously estimates an optimal template brain and topology preserving deformations between this template and individual subject brains. Detailed patterns of atrophies are then revealed by statistically contrasting control and subject deformations to the template space. Participants were 29 survivors of TBI and 20 control subjects who were matched in terms of age, gender, education, and ethnicity. Localized volume losses were found most prominently in white matter regions and the subcortical nuclei including the thalamus, the midbrain, the corpus callosum, the mid- and posterior cingulate cortices, and the caudate. Significant voxel-wise volume loss clusters were also detected in the cerebellum and the frontal/temporal neocortices. Volume enlargements were identified largely in ventricular regions. A similar pattern of results was observed in a subgroup analysis where we restricted our analysis to the 17 TBI participants who had no macroscopic focal lesions (total lesion volume >1.5 cm(3)). The current study confirms, extends, and partly challenges previous structural MRI studies in chronic TBI. By demonstrating that a large deformation image registration technique can be successfully combined with TBM to identify TBI-induced diffuse structural changes with greater precision, our approach is expected to increase the sensitivity of future studies examining brain-behavior relationships in the TBI population.},
Bdsk-url-1 = {http://dx.doi.org/05},
Doi = {05},
Institution = {Moss Rehabilitation Research Institute, Albert Einstein Healthcare Network, Philadelphia, PA, USA.},
Owner = {stnava},
Pii = {S1053-8119(07)00901-9},
Pmid = {17999940},
Timestamp = {2008.02.25},
Url = {http://dx.doi.org/05}
}
@Article{Kim2008a,
Title = {Structural consequences of diffuse traumatic brain injury: A large deformation tensor-based morphometry study.},
Author = {Junghoon Kim and Brian Avants and Sunil Patel and John Whyte and Branch H Coslett and John Pluta and John A Detre and James C Gee},
Journal = {Neuroimage},
Year = {2008},
Month = {Feb},
Number = {3},
Pages = {1014--1026},
Volume = {39},