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211


Fast motion tracking of tagged MRI using angle-preserving meshless registration

Chen, Ting; Wang, Xiaoxu; Metaxas, Dimitris; Axel, Leon
Fast tracking of motion is the key step towards tagged MRI-based quantitative cardiac analysis. Existing motion tracking approaches, including the widely used HARP method, are either time consuming or qualitatively inconsistent, or both. We present in this paper a new fast motion tracking method based on a meshless kernel. For MR image sequences containing multiple image frames, tag intersections are automatically detected in all frames and indexed in the first frame. Then a thin plate spline approach is used to establish a point-to-point correspondence between tag intersections in the initial and the current frame. Lastly, we use a meshless registration kernel to generate a dense displacement map that minimizes the residual of sparse motion at intersections. To further improve the motion tracking, we develop a special technique to preserve tangential angles of tags at tag intersections. We tested our new method on both numerical phantoms and in vivo heart data. The motion tracking results are evaluated against the ground truth and manually drawn tags. Clinical application potential is demonstrated by cardiac strain analysis based on the proposed methodology
PMID: 18982620
ISSN: 0302-9743
CID: 91456

Tag separation in cardiac tagged MRI

Huang, Junzhou; Qian, Zhen; Huang, Xiaolei; Metaxas, Dimitris; Axel, Leon
In this paper we introduce a tag separation method for better cardiac boundary segmentation and tag tracking. Our approach is based on two observations in the cardiac tagged MR images: 1) the tag patterns have a regular texture; 2) the cardiac images without tag patterns are piecewise smooth with sparse gradients. These observations motivate us to use two dictionaries, one based on the Discrete Cosine Transform for representing tag patterns and the other based on the Wavelet Transform for representing the underlying cardiac image without tag patterns. The two dictionaries are built such that they can lead to sparse representations of the tag patterns and of the piece-wise smooth regions without tag patterns. With the two dictionaries, a new tag separation approach is proposed to simultaneously optimize w.r.t. the two sparse representations, where optimization is directed by the Total Variation regularization scheme. While previous methods have focused on tag removal, our approach to acquiring both optimally-decomposed tag-only image and the cardiac image without tags simultaneously can be used for better tag tracking and cardiac boundary segmentation. We demonstrate the superior performance of the proposed approach through extensive experiments on large sets of cardiac tagged MR images
PMID: 18982617
ISSN: 0302-9743
CID: 93966

11th International Conference, New York, NY, USA, September 6-10, 2008. Proceedings, Part II. Preface

Metaxas, Dimitris; Axel, Leon; Fichtinger, Gabor; Szekely, Gabor
PMID: 18982582
ISSN: 0302-9743
CID: 93967

Identifying regional cardiac abnormalities from myocardial strains using spatio-temporal tensor analysis

Qian, Zhen; Liu, Qingshan; Metaxas, Dimitris N; Axel, Leon
Myocardial deformation is a critical indicator of many cardiac diseases and dysfunctions. The goal of this paper is to use myocardial deformation patterns to identify and localize regional abnormal cardiac function in human subjects. We have developed a novel tensor-based classification framework that better conserves the spatio-temporal structure of the myocardial deformation pattern than conventional vector-based algorithms. In addition, the tensor-based projection function keeps more of the information of the original feature space, so that abnormal tensors in the subspace can be back-projected to reveal the regional cardiac abnormality in a more physically meaningful way. We have tested our novel method on 41 human image sequences, and achieved a classification rate of 87.80%. The recovered regional abnormalities from our algorithm agree well with the patient's pathology and doctor's diagnosis and provide a promising avenue for regional cardiac function analysis
PMID: 18979818
ISSN: 0302-9743
CID: 93968

LV motion and strain computation from tMRI based on meshless deformable models

Wang, Xiaoxu; Chen, Ting; Zhang, Shaoting; Metaxas, Dimitris; Axel, Leon
We propose a novel meshless deformable model for in vivo Left Ventricle (LV) 3D motion estimation and analysis based on tagged MRI (tMRI). The meshless deformable model can capture global deformations such as contraction and torsion with a few parameters, while track local deformations with Laplacian representation. In particular, the model performs well even when the control points (tag intersections) are relatively sparse. We test the performance of the meshless model on a numeric phantom, as well as in vivo heart data of healthy subjects and patients. The experimental results show that the meshless deformable model can fully recover the myocardial motion and strain in 3D
PMID: 18979800
ISSN: 0302-9743
CID: 93969

Active volume models with probabilistic object boundary prediction module

Shen, Tian; Zhu, Yaoyao; Huang, Xiaolei; Huang, Junzhou; Metaxas, Dimitris; Axel, Leon
We propose a novel Active Volume Model (AVM) which deforms in a free-form manner to minimize energy. Unlike Snakes and level-set active contours which only consider curves or surfaces, the AVM is a deforming object model that has both boundary and an interior area. When applied to object segmentation and tracking, the model alternates between two basic operations: deform according to current object prediction, and predict according to current appearance statistics of the model. The probabilistic object prediction module relies on the Bayesian Decision Rule to separate foreground (i.e., object represented by the model) and background. Optimization of the model is a natural extension of the Snakes model so that region information becomes part of the external forces. The AVM thus has the efficiency of Snakes while having adaptive region-based constraints. Segmentation results, validation, and comparison with GVF Snakes and level set methods are presented for experiments on noisy 2D/3D medical images
PMID: 18979764
ISSN: 0302-9743
CID: 93970

Medical image computing and computer-assisted intervention--MICCAI2008. Preface

Metaxas, Dimitris; Axel, Leon; Fichtinger, Gabor; Szekely, Gabor
PMID: 18979724
ISSN: 0302-9743
CID: 93971

2081 Characterization of dysfunction in LVH with tagged MRI [Meeting Abstract]

Axel, Leon; Babb, James; Chen, Ting; Chung, Sohae; Guillaume, Melissa; Srichai, Monvadi B
ORIGINAL:0012462
ISSN: 1097-6647
CID: 2932352

Is subendocardial ischaemia present in patients with chest pain and normal coronary angiograms? A cardiovascular MR study [Letter]

Axel, Leon
PMID: 17928637
ISSN: 0195-668x
CID: 93978

Reconstruction of detailed left ventricle motion from tMRI using deformable models

Chapter by: Wang, Xiaoxu; Schaerer, Joel; Huh, Suejung; Qian, Zhen; Metaxas, Dimitis; Chen, Ting; Axel, Leon
in: FUNCTIONAL IMAGING AND MODELING OF THE HEART, PROCEEDINGS by ; Sachse, FB; Seemann, G
BERLIN : SPRINGER-VERLAG BERLIN, 2007
pp. 60-?
ISBN: 978-3-540-72906-8
CID: 2932162