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102 results about "Diffusivity tensor" patented technology

Diffusion tensor imaging (DTI) is a type of magnetic resonance imaging ( MRI) which uses the rate at which water diffuses between cells to gather information about the internal structures of the body. The diffusion rate varies around barriers between different structures in the body, and this trait can be used to create a complex and detailed map of internal structures with the assistance of DTI.

Correction of the effect of spatial gradient field distortions in diffusion-weighted imaging

A general mathematical framework is formulated to characterize the contribution of gradient non-uniformities to diffusion tensor imaging in MRI. Based on a model expansion, the actual gradient field is approximated and employed, after elimination of geometric distortions, for predicting and correcting the errors in diffusion encoding. Prior to corrections, experiments clearly reveal marked deviations of the calculated diffusivity for fields of view generally used in diffusion experiments. These deviations are most significant with greater distance from the magnet's isocenter. For a FOV of 25 cm the resultant errors in absolute diffusivity can range from approximately −10 to +20 percent. Within the same field of view, the diffusion-encoding direction and the orientation of the calculated eigenvectors can be significantly altered if the perturbations by the gradient non-uniformities are not considered. With the proposed correction scheme most of the errors introduced by gradient non-uniformities can be removed.
Owner:THE BOARD OF TRUSTEES OF THE LELAND STANFORD JUNIOR UNIV

Diffusion tensor imaging white matter fiber clustering method

The invention provides a diffusion tensor imaging white matter fiber clustering method. The method includes the steps of pre-processing original rsf magnetic resonance imaging (MRI) data and the original diffusion tensor imaging (DTI) data, registering the pre-processed rsf MRI data into a DTI space, respectively conducting fiber tracking and brain tissue segmentation on the pre-processed DTI data, conducting fiber projection on white matter fiber which can not reach grey matter or exceed a grey matter surface in a white matter fiber obtained by DTI, then calculating functional similarities among the white matter fiber, obtaining a matrix of the similarities and clustering by adopting an affine spread clustering algorithm. Fiber bundle has functional independence, accuracy without need to relay on of a genetic linkage map and require complicated registration.
Owner:NORTHWESTERN POLYTECHNICAL UNIV

Earthquake image structure guiding noise reduction method based on regularization mixed norm filtering

The invention discloses an earthquake image structure guiding noise reduction method based on regularization mixed norm filtering. The earthquake image structure guiding noise reduction method includes the following steps that a gradient structure tensor is solved for an input three-dimensional earthquake image; regularization mixed norm filtering is conducted on the gradient structure tensor; a diffusion tensor is designed according to the eigenvalue and eigenvector of the filtered gradient structure tensor; continuity factors are calculated, the continuity factors at the position of a boundary fault feather edge and the like are close to zero, and the maintain performance of the structure is achieved; a sobel operator serves as a derivation operator so that divergence can be calculated. By means of the earthquake image structure guiding noise reduction method based on regularization mixed norm filtering, the textured edge information of earthquake-related data can be reserved, Gaussian noise, ultra Gaussian noise and sub Gaussian noise can be effectively suppressed, and therefore an efficient noise reduction method is achieved.
Owner:OPTICAL SCI & TECH (CHENGDU) LTD

Multi-scale anisotropic diffusion filtering method based on pre-stack CRP trace sets

The invention relates to a multi-scale anisotropic diffusion filtering method based on pre-stack CRP trace sets. The method includes the steps that firstly, the input pre-stack CRP trace sets are regularized; secondly, multi-scale decomposition is conducted through a two-dimensional Mallat algorithm, and each decomposed sub section is initialized; thirdly, a diffusion threshold value is obtained through a diffusion coefficient method, and the sixth step is executed; after diffusion tensor parameters are obtained based on anisotropic diffusion of a diffusion tensor method, the parameters are substituted into a nonlinear anisotropic equation so as to conduct anisotropic diffusion filtering, and the fourth step is executed; fourthly, the SNR, the MSE and the PSNR of the sub sections obtained after each iteration are calculated, and then the optimal earthquake sub section is optimized; fifthly, processing of the fourth step is executed on all the sub sections obtained after anisotropic diffusion filtering, and the sixth step is executed; sixthly, pre-stack CRP trace set nondestructive reconstruction is conducted on information of all the iterated sub sections through a two-dimensional Mallat reconstruction algorithm, and then the optimal pre-stack CRP trace set is output after reconstruction. The multi-scale anisotropic diffusion filtering method can be widely applied to the processing process of various oil exploration earthquake data.
Owner:CHINA NAT OFFSHORE OIL CORP +1

Fractional anisotropy microstructure characteristic extraction method based on kurtosis tensor and apparatus thereof

The invention relates to the image processing and medical instrument technology field and provides a burgeoning parameter extraction method of biological tissue anisotropy detection, wherein the method is used for clinic application. An analysis method of reconstructing and quantizing a clear, refine and highly-stable biological-tissue microcosmic anisotropy characteristic and a correlation apparatus are obtained. In a technical scheme used in the invention, based on the kurtosis-tensor fractional anisotropy microstructure characteristic extraction method, a subject collects multiple b value diffusion weight images of tissues along a plurality of diffusion sensitivity gradient directions on a magnetic resonance scanner; after the diffusion weight images are preprocessed, in an individual space, a second-order diffusion tensor and a fourth-order kurtosis tensor matrix reflecting a water molecule diffusion distribution probability density function characteristic in the tissues are acquired through fitting; through matrix operation, the corresponding fractional anisotropy FA and kurtosis tensor fractional anisotropy KTFA are acquired; and combining a characteristic parameter, a nerve fiber microstructure characteristic is acquired. The method and the apparatus are mainly used in medical equipment designing and manufacturing.
Owner:TIANJIN UNIV

Magnetic resonance diffusion imaging method for integration and reconstruction based on Gaussian model acting as instance

The invention discloses a magnetic resonance diffusion imaging method for integration and reconstruction based on a Gaussian diffusion model acting as an instance. The method comprises the steps that signal acquisition is performed on a tested target based on multilayer simultaneously excited preset sequences; phase estimation is performed on the acquired under-sampled signals through a parallel imaging technology; the Gaussian diffusion model is established through the estimated phase, the acquired under-sampled signals and a reference image without diffusion weight; the under-sampled signals of all the directions are integrated according to the Gaussian diffusion model, and a target equation is established; the target equation is iteratively solved by using a nonlinear conjugate gradient algorithm so as to obtain a diffusion tensor parameter; and a diffusion coefficient and a diffusion weight image are calculated according to the diffusion tensor parameter. Therefore, high acceleration acquisition of magnetic resonance diffusion tensor imaging can be realized so that the acquisition time can be effectively reduced, the diffusion tensor parameter can be accurately estimated to obtain the diffusion image of high signal-to-noise ratio and high resolution, and the requirement of clinical application can be met.
Owner:TSINGHUA UNIV
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