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A Brain Network Construction Method Fused with Image Voxels and Prior Brain Atlas Partitioning

A technology that integrates images and network construction. It is applied in the field of brain network construction and can solve problems such as affecting the accuracy of network models, rough node segmentation, and difficult to determine boundaries.

Inactive Publication Date: 2015-09-30
XIDIAN UNIV
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Problems solved by technology

However, the boundary between brain regions obtained according to the anatomical structure is not easy to determine, and the number of image voxels contained in each brain region can range from a dozen to several thousand, which leads to the number of nodes in the network The segmentation method is relatively rough, and brain regions containing more voxel nodes are more likely to generate edge connections, which affects the accuracy of the final network model

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  • A Brain Network Construction Method Fused with Image Voxels and Prior Brain Atlas Partitioning
  • A Brain Network Construction Method Fused with Image Voxels and Prior Brain Atlas Partitioning
  • A Brain Network Construction Method Fused with Image Voxels and Prior Brain Atlas Partitioning

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Embodiment Construction

[0047] The present invention will be further described below in conjunction with accompanying drawing and concrete example, the experiment of the present embodiment has chosen a group of normal people as tested object, to each tested object in this group of normal people according to figure 1 As shown in the flow chart, do the following:

[0048] Step 1: Using magnetic resonance imaging to obtain brain function data and preprocessing the obtained data. Use SPM5 statistical parameter map analysis software to preprocess the data, including:

[0049] (1.1) The least square method is used to correct the head movement of the collected brain signal data.

[0050] (1.2) Use affine transformation to register the average image to the standard template for the corrected data, and recut the voxels. In this experiment, the MNI (Montreal Neurological Institute) standard template is used, and the voxel size of the recut When the voxel size is 6mm x6mm x6mm, or the voxel size of recutting ...

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Abstract

The invention provides an image voxel and priori brain atlas division fused brain network construction method to overcome defects of node selection methods in the conventional brain network construction method. The method comprises the following steps: preprocessing functional magnetic resonance imaging data; constructing an initial brain network based on image voxels; and constructing a final brain network based on a priori brain atlas on the basis of the initial brain network. Two node selection methods in the prior art are fused, nodes with high degree values are searched on the basis of the image voxel, the nodes are screened by a Talairach encephalic region locating software on the basis of the priori brain atlas, the screened node is taken as a center of a circle to draw a sphere with the radius of 6 millimeters, the sphere is taken as a core node of the brain network, and the final brain network is determined according to the core node and sides of the obtained brain network. By the method, a brain functional network can be comprehensively and delicately described, the core node of the network is visualized in a brain space, and a function of observing a connecting mode between encephalic regions clearly is realized.

Description

technical field [0001] The invention relates to the field of brain functional imaging and the field of brain network construction, specifically a brain network construction method that combines image voxels and prior brain atlas divisions to construct a human brain network, in order to recognize the internal working mechanism of the brain and study the brain Internal neural activity rules and major neuroscience issues provide a basis for topological images. Background technique [0002] The human brain can be regarded as a highly complex network composed of multiple neurons, neuron clusters or multiple brain regions connected to each other. This large and complex network is the physiological basis for information processing and cognitive expression in the brain. After some neuroscientists fully realized the importance of constructing the human brain network, they proposed the concept of human connectome. The human brain connectome tries to comprehensively and finely describ...

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G06F19/00
Inventor 刘继欣秦伟李静李国英熊诗威南姣芬田捷
Owner XIDIAN UNIV
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