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QSM deep brain nucleus automatic segmentation method based on deep learning

A deep learning and automatic segmentation technology, applied in the field of neuroimaging, can solve the problems of high computational cost, not fully automatic, and time-consuming

Pending Publication Date: 2021-11-02
ZHEJIANG UNIV
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Problems solved by technology

But graph-based methods require a series of difficult operations that are computationally expensive and time-consuming
In addition, atlas-based segmentation methods are highly dependent on the stability of atlases and registration algorithms, data changes between atlases or individual images (such as contrast changes or scanner parameter settings) can easily affect performance, and the necessary manual correction is inevitable
In the field of deep learning, some scholars have proposed to use a two-dimensional fully convolutional neural network to segment DGM structures in QSM, but two-dimensional networks cannot capture the spatial information between slices, which is crucial in pixel-level volumetric image segmentation
In addition, it only uses manually selected slices containing DGM structures during training and testing, thus, this segmentation method is not fully automatic

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  • QSM deep brain nucleus automatic segmentation method based on deep learning
  • QSM deep brain nucleus automatic segmentation method based on deep learning
  • QSM deep brain nucleus automatic segmentation method based on deep learning

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Embodiment Construction

[0033] An automatic segmentation method of QSM deep brain nuclei based on deep learning in the present invention is implemented based on a rapid segmentation tool for deep subcortical gray matter nuclei of QSM, named DeepQSMSeg. The segmentation subject of the present invention is a single-stage 3D encoder-decoder fully convolutional network (FCN). The network subject consists of an encoder (left part) and a decoder (right part). The encoder consists of an input module and four The feature extraction module is composed; the decoder is composed of four feature reconstruction modules and an output module, which is symmetrical to the encoder. We manually annotated 5 pairs of DGM structures of deep subcortical gray matter nuclei. All these target structures are very small, so the foreground and background voxel numbers are quite unbalanced. Therefore, we adopt the attention module, and use dice loss and focal loss to jointly supervise the training process. Combining experience f...

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Abstract

The invention discloses a QSM deep brain nucleus automatic segmentation method based on deep learning, and the method is realized based on a quick segmentation tool for a QSM deep brain grey matter nucleus structure, and is named as DeepQSMSeg. Based on an end-to-end model DeepQSMSeg of deep learning, five pairs of ROI (Region of Interest) structures (caudal nuclei CN, shell nuclei PUT, pale globe GP, nigra SN and red nuclei RN in left and right hemispheres) of a deep grey matter nucleus can be accurately, stably and quickly segmented by utilizing a QSM technology. The deep grey matter nuclei are accurately segmented, which is beneficial to the development of brain-iron related researches, especially nervous system degenerative diseases closely related to the deep brain nuclei, such as Parkinson's disease.

Description

technical field [0001] The invention belongs to the technical field of neuroimaging, and in particular relates to an automatic segmentation method of QSM brain deep nuclei based on deep learning. Background technique [0002] Magnetic resonance imaging (MRI) technology provides a non-invasive and highly reproducible method for quantifying tissue magnetic susceptibility, especially important tissue components of brain tissue, including brain iron and myelin. In recent years, with the continuous replacement of MRI technology, quantitative susceptibility mapping (QSM) has become the gold standard for quantitative tissue susceptibility of MRI due to its high magnetic susceptibility contrast and tissue quantitative characteristics. It is worth mentioning that iron is distributed in various regions of the brain, most notably in the subcortical deep gray matter (DGM), and many studies have confirmed that it is closely related to human learning, planning and cognition. On the contr...

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Application Information

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IPC IPC(8): G06T7/00G06T7/12G06K9/32G06N3/04G06N3/08
CPCG06T7/0012G06T7/12G06N3/08G06T2207/10088G06T2207/20104G06T2207/20081G06T2207/30016G06N3/045
Inventor 管晓军张敏鸣徐晓俊张玉瑶郭涛吴晶晶
Owner ZHEJIANG UNIV
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