Multi-modal brain image registration method based on GAN

An image registration and brain technology, applied in the field of medical image processing, can solve problems affecting the accuracy of feature points, small calculation speed, lack of automation, etc., to achieve fast brain image registration and strong generalization capabilities Effect

Pending Publication Date: 2021-12-03
HENAN UNIVERSITY OF TECHNOLOGY
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  • Claims
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AI Technical Summary

Problems solved by technology

Feature-based non-rigid medical image registration has a small amount of calculation and a fast calculation speed, but usually the feature point selection process is cumbersome and requires manual operations that lack automation, and the difference in operator level directly affects the accuracy of feature point selection

Method used

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  • Multi-modal brain image registration method based on GAN
  • Multi-modal brain image registration method based on GAN
  • Multi-modal brain image registration method based on GAN

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Embodiment Construction

[0020] In order to verify the performance of the present invention in GAN-based brain image registration, we selected ABIDE, OASIS, and ADHD200 data sets for training, verification and testing.

[0021] Step 1: Preprocessing the brain image data, using Pycharm software, using image rotation, translation transformation for image enhancement, image denoising, skull stripping and resampling, and contrast enhancement methods for image normalization.

[0022] Step 2: Train the GAN network in Pycharm software, batch_size is 1, learning_rate is 2e-4, Adama optimizer is used, kinetic energy is 0.5 for optimization, training iterations are 20,000 times, the training set and verification set are divided by 11:1, intermittent Train the above two processes, adjust the network parameters until the network converges, and the training ends.

[0023] Step 3: Use the test set of ABIDE, OASIS, and ADHD200 data sets to test the GAN network, and the experimental results are evaluated by the coinc...

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Abstract

With the development of the imaging technology, the appearance of various imaging devices makes a great contribution to the progress of modern medicine, but due to the limitation of the imaging principle, the single-mode imaging technology generally can only provide single and limited information, and therefore, in order to improve the accuracy of diagnosis and the effectiveness of treatment, doctors often need to fuse information of images of different modalities to know comprehensive information of diseased tissues or organs. The invention provides a registration method based on a generative adversarial network in order to realize efficient and rapid registration of brain images and facilitate treatment of doctors. A U-Net encoder-decoder structure is adopted in a generator, an encoder obtains transformation parameters from a floating image to a fixed image, a decoder recovers the size of a feature map, medical image registration based on normalized mutual information is used in similarity measurement, a gradient descent method is used as an optimization algorithm of image registration, and tests are respectively performed in CT single-mode and CT-MRI multi-mode sequence images, and registration results obtained by using an original normalized mutual information calculation method and an improved normalized mutual information method are compared. According to the disclosed method, the generalization ability of the model can be enhanced by automatically learning the mapping relation between the same data set. According to the invention, accurate and rapid registration can be realized.

Description

technical field [0001] The invention belongs to the technical field of medical image processing, and in particular relates to a method for brain image registration. Background technique [0002] As a visual representation of the internal structure and internal functions of anatomical regions, medical images convey vital information to people and are an important basis for doctors to observe, diagnose and treat diseases. However, different imaging devices have different advantages and disadvantages. For example, ultrasound imaging is low-cost and fast-acting. It is currently the main method for some disease screening and fetal examination for pregnant women. However, the ultrasound image is noisy, and the imaging site and depth have great limitations. ;MRI is very sensitive to the change of water content in human tissue, and has a good imaging effect on human soft tissue, but it is easily affected by metal, and the scanning time is long, and there are many artifacts; CT is go...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06T7/00G06T7/10G06T7/33G06T5/00G06T3/60G06N3/04G06N3/08
CPCG06T7/0012G06T7/10G06T7/33G06T5/002G06T5/007G06T3/60G06N3/08G06T2207/10088G06T2207/20081G06T2207/20084G06T2207/20132G06T2207/30016G06N3/045
Inventor 张鑫赵祥杨铁军李冰洁
Owner HENAN UNIVERSITY OF TECHNOLOGY
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