A method and system for reconstructing magnetic resonance imaging parameters of incoherent motion within a voxel

A kind of magnetic resonance imaging and magnetic resonance technology, applied in image data processing, image enhancement, image analysis and other directions, can solve the problem of parametric map graininess, a lot of time, affecting clinical diagnosis, etc., to achieve better images, better reconstruction results, better images smooth effect

Active Publication Date: 2021-04-06
XIAMEN UNIV
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Problems solved by technology

[0004] Although the IVIM model has successfully solved the limitations of the traditional single-exponential model, the model has a high degree of freedom and requires point-by-point nonlinear fitting for each pixel of the entire set of images, which makes the reconstruction of the D and f parameter maps It takes a lot of time, and the reconstructed parameter map will show obvious graininess, which will affect clinical diagnosis
At the same time, in the traditional point-by-point nonlinear fitting method, in order to alleviate the problem of high degrees of freedom in the double-exponential model of incoherent motion within the voxel, only large b values ​​(b≥200) are used for fitting the D and f parameter maps The original data (b represents the gradient factor), ignoring the impact of the small b value (b<200) data, resulting in the result cannot fully match the double exponential model, which may affect the diagnosis result

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  • A method and system for reconstructing magnetic resonance imaging parameters of incoherent motion within a voxel
  • A method and system for reconstructing magnetic resonance imaging parameters of incoherent motion within a voxel
  • A method and system for reconstructing magnetic resonance imaging parameters of incoherent motion within a voxel

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[0060]figure 1 A flow chart of the reconstruction method of an inner disconnective motion magnetic resonance imaging parameter in the present invention. Such asfigure 1 As shown, a method of reconstructing a voxel in which the invention is provided in the present invention, including:

[0061]Step 101: Get an analog area.

[0062]Step 102: Randomly generate a geometry in the analog area, geometric graphics for simulating the shape of imaging objects.

[0063]Step 103: Set the D parameter in the IVIM dual index model in the geometry to get the geometric graphic containing the D parameter, set the F parameter in the IVIM dual index model in the geometry to get the geometry containing the F parameter, set in the geometry The D * parameter in the IVIM dual-index model gets the geometric graphic containing the D * parameter, setting the S (0) parameter in the IVIM dual index model in the geometry to obtain a geometry containing the S (0) parameter. Where all the geometric patterns mentioned in st...

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Abstract

The invention discloses a method and system for reconstructing magnetic resonance imaging parameters of incoherent motion within a voxel. The method includes: setting D parameter, f parameter, D* parameter and S(0) parameter in the geometric figure generated in the simulation area, and judging whether the total area of ​​all geometric figures covers the simulation area; if covered, generating D parameter map, f Parameter map, D* parameter map and S(0) parameter map; generate a magnetic resonance diffusion weighted image corresponding to each b value, train the neural network model, and obtain a trained neural network model; perform Fu on the k-space data Liye transformation and normalization processing, input the normalized MR diffusion weighted image into the trained neural network model, and obtain the reconstructed IVIM parameter image. By adopting the method and system of the present invention, the problem of graininess in the reconstruction result caused by point-by-point fitting is solved, the image is smoother, and the influence of small b value on the IVIM double-exponential model is taken into account, thereby improving the reconstruction effect.

Description

Technical field[0001]The present invention relates to the field of magnetic resonance imaging, and in particular, in particular, an in-voxel intangible motion magnetic resonance imaging parameter reconstruction method and system.Background technique[0002]Magnetic Resonance Imaging, MRI) is widely used in clinical diagnosis due to its advantages such as high resolution, no electric radiation and multi-orientation, multi-parameter imaging. Magnetic resonance diffusion, DWI, mainly depends on the sport of water molecules rather than the organizational spin proton density, T1Value or T2Value, therefore it is possible to detect the molecular diffusion movement of the living tissue. Commonly used diffusion weighted imaging sequences are EPI-DWI sequences that mainly add a diffusion gradient based on the echo plane imaging (EPI) sequence, and the diffusion gradient speeds up the speed of proton scattering, so that the collected image is diffused in molecules. The weaker area shows a high s...

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G06T17/00G06N3/04
CPCG06T17/00G06T2207/10088G06N3/045
Inventor 蔡淑惠练旭东蔡聪波吴健
Owner XIAMEN UNIV
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