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Multimodal non-rigid warping for correction of distortions in functional MRI,” in Medical Image Computing and Computer-Assisted (0)

by P Hellier, C Barillot
Venue:Lecture Notes in Computer Science
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Mutual-information-based registration of medical images: a survey

by Josien P. W. Pluim, J. B. Antoine Maintz, Max A. Viergever - IEEE Transcations on Medical Imaging , 2003
"... Abstract—An overview is presented of the medical image processing literature on mutual-information-based registration. The aim of the survey is threefold: an introduction for those new to the field, an overview for those working in the field, and a reference for those searching for literature on a s ..."
Abstract - Cited by 109 (0 self) - Add to MetaCart
Abstract—An overview is presented of the medical image processing literature on mutual-information-based registration. The aim of the survey is threefold: an introduction for those new to the field, an overview for those working in the field, and a reference for those searching for literature on a specific application. Methods are classified according to the different aspects of mutual-information-based registration. The main division is in aspects of the methodology and of the application. The part on methodology describes choices made on facets such as preprocessing of images, gray value interpolation, optimization, adaptations to the mutual information measure, and different types of geometrical transformations. The part on applications is a reference of the literature available on different modalities, on interpatient registration and on different anatomical objects. Comparison studies including mutual information are also considered. The paper starts with a description of entropy and mutual information and it closes with a discussion on past achievements and some future challenges. Index Terms—Image registration, literature survey, matching, mutual information. I.

Distortion Correction and Robust Tensor Estimation for MR diffusion imaging

by Jean-Francois Mangin, J. -f. Mangin, Chris Clark, Cyril Poupon, Isabelle Bloch, C. Clark, Denis Le Bihan, I. Bloch - Medical Image Analysis , 2002
"... This paper presents a new procedure to estimate the diffusion tensor from a sequence of diffusion-weighted images. The first step of this procedure consists of the correction of the distortions usually induced by eddy-current related to the large diffusion-sensitizing gradients. This correction algo ..."
Abstract - Cited by 13 (0 self) - Add to MetaCart
This paper presents a new procedure to estimate the diffusion tensor from a sequence of diffusion-weighted images. The first step of this procedure consists of the correction of the distortions usually induced by eddy-current related to the large diffusion-sensitizing gradients. This correction algorithm relies on the maximization of mutual information to estimate the three parameters of a geometric distortion model inferred from the acquisition principle. The second step of the procedure amounts to replacing the standard least squares based approach by the Geman-McLure M-estimator, in order to reduce outlier related artefacts. Several experiments prove that the whole procedure highly improves the quality of the final diffusion maps.

Eddy-Current Distortion Correction and Robust Tensor Estimation for MR Diffusion Imaging

by JF Mangin, J. -f. Mangin, C Poupon, C Clark, D. Lebihan, I Bloch - in Medical Image Computing and Computer-Assisted Intervention - MICCAI ’01 , 2001
"... This paper presents a new procedure to estimate the diffusion tensor from a sequence of diffusion-weighted images. The first step of this procedure consists of the correction of the distortions usually induced by eddy-current related to the large diffusion-sensitizing gradients. ..."
Abstract - Cited by 6 (1 self) - Add to MetaCart
This paper presents a new procedure to estimate the diffusion tensor from a sequence of diffusion-weighted images. The first step of this procedure consists of the correction of the distortions usually induced by eddy-current related to the large diffusion-sensitizing gradients.

A Variational PDE Based Level Set Method for a Simultaneous Segmentation and Non-rigid Registration

by Jung-ha An, Yunmei Chen, Feng Huang, David Wilson
"... Abstract. A new variational PDE based level set method for a simultaneous image segmentation and non-rigid registration using prior shape and intensity information is presented. The segmentation is obtained by finding a non-rigid registration to the prior shape. The non-rigid registration consists o ..."
Abstract - Cited by 3 (0 self) - Add to MetaCart
Abstract. A new variational PDE based level set method for a simultaneous image segmentation and non-rigid registration using prior shape and intensity information is presented. The segmentation is obtained by finding a non-rigid registration to the prior shape. The non-rigid registration consists of both a global rigid transformation and a local non-rigid deformation. In this model, a prior shape is used as an initial contour which leads to decrease the numerical calculation time. The model is tested against two chamber end systolic ultrasound images from thirteen human patients. The experimental results provide preliminary evidence of the effectiveness of the model in detecting the boundaries of the incompletely resolved objects which were plagued by noise, dropout, and artifact. 1

A Variational Image-Based Approach to the Correction of Susceptibility Artifacts in the Alignment of Diffusion Weighted and Structural MRI

by Ran Tao, P. Thomas Fletcher, Samuel Gerber, Ross T. Whitaker
"... Abstract. This paper presents a method for correcting the geometric and greyscale distortions in diffusion-weighted MRI that result from inhomogeneities in the static magnetic field. These inhomogeneities may due to imperfections in the magnet or to spatial variations in the magnetic susceptibility ..."
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Abstract. This paper presents a method for correcting the geometric and greyscale distortions in diffusion-weighted MRI that result from inhomogeneities in the static magnetic field. These inhomogeneities may due to imperfections in the magnet or to spatial variations in the magnetic susceptibility of the object being imaged—so called susceptibility artifacts. Echo-planar imaging (EPI), used in virtually all diffusion weighted acquisition protocols, assumes a homogeneous static field, which generally does not hold for head MRI. The resulting distortions are significant, sometimes more than ten millimeters. These artifacts impede accurate alignment of diffusion images with structural MRI, and are generally considered an obstacle to the joint analysis of connectivity and structure in head MRI. In principle, susceptibility artifacts can be corrected by acquiring (and applying) a field map. However, as shown in the literature and demonstrated in this paper, field map corrections of susceptibility artifacts are not entirely accurate and reliable, and thus field maps do not produce reliable alignment of EPIs with corresponding structural images. This paper presents a new, image-based method for correcting susceptibility artifacts. The method relies on a variational formulation of the match between an EPI baseline image and a corresponding T2-weighted structural image but also specifically accounts for the physics of susceptibility artifacts. We derive a set of partial differential equations associated with the optimization, describe the numerical methods for solving these equations, and present results that demonstrate the effectiveness of the proposed method compared with field-map correction. 1

Correction of Susceptibility . . .

by D. Merhof , G. Soza , A. Stadlbauer , G. Greiner , C. Nimsky , 2007
"... ..."
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