Magnetic resonance image feature extraction and classification method based on deep learning

A technology of feature extraction and classification method, applied in the field of medical data processing, can solve the problem of low classification accuracy

Inactive Publication Date: 2016-11-09
WEST CHINA HOSPITAL SICHUAN UNIV
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AI Technical Summary

Problems solved by technology

[0005] In view of the above problems, the present invention aims to provide a deep learning-based magnetic resonance image feature extraction and classification method, which effectively solves the problem of low classification accuracy due to the need for manual selection of feature input in the traditi

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  • Magnetic resonance image feature extraction and classification method based on deep learning
  • Magnetic resonance image feature extraction and classification method based on deep learning
  • Magnetic resonance image feature extraction and classification method based on deep learning

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[0051] figure 1 The schematic flow chart of the method for feature extraction and classification of magnetic resonance images based on deep learning provided by the present invention, as can be seen from the figure, the method for feature extraction and classification of magnetic resonance images includes: S1 incorporating magnetic resonance images and pre-processing them Processing operations and feature mapping operations; S2 constructs a multi-layer convolutional neural network including an input layer, multiple convolutional layers, at least one pooling layer / downsampling layer, and a fully connected layer, wherein the convolutional layer and the pooling layer The / down-sampling layer is alternately set between the input layer and the fully connected layer, and the number of convolutional layers is 1 more than the number of pooling layers / down-sampling layers; S3 uses the multi-layer convolutional neural network constructed in step S2 to step In S1, feature extraction is p...

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Abstract

The invention provides a magnetic resonance image feature extraction and classification method based on deep learning, comprising: S1, taking a magnetic resonance image, and performing pretreatment operation and feature mapping operation on the magnetic resonance image; S2, constructing a multilayer convolutional neural network including an input layer, a plurality of convolutional layers, at least one pooling layer/lower sampling layer and a fully connected layer, wherein the convolutional layers and the pooling layer/lower sampling layer are successively alternatively arranged between the input layer and the fully connected layer, and the convolutional layers are one more than the pooling layer/lower sampling layer; S3, employing the multilayer convolutional neural network constructed in Step 2 to extract features of the magnetic resonance image; and S4, inputting feature vectors outputted in Step 3 into a Softmax classifier, and determining the disease attribute of the magnetic resonance image. The magnetic resonance image feature extraction and classification method can automatically obtain highly distinguishable features/feature combinations based on the nonlinear mapping of the multilayer convolutional neural network, and continuously optimize a network structure to obtain better classification effects.

Description

technical field [0001] The invention relates to the technical field of medical data processing, in particular to a magnetic resonance image feature extraction and classification method. Background technique [0002] Magnetic resonance imaging is a medical imaging technique with high resolution, no damage, and clear anatomical structures. Therefore, magnetic resonance imaging plays an important role in the medical diagnosis process, especially in the diagnosis and research of brain tissue-related diseases. a wide range of applications. In the past decade, Magnetic Resonance Imaging (MRI, Magnetic Resonance Imaging), as an important brain imaging method in neuroimaging, has been widely used in the diagnosis of neurological and mental diseases without brain tissue / structural damage. in the study of neuroscience and brain disorders. [0003] Machine learning algorithms such as MVPA (Multi-voxel Pattern Analysis) are often used to identify spatial patterns in human brain magnet...

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Application Information

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IPC IPC(8): G06K9/46G06K9/62
CPCG06V10/40G06F18/2415
Inventor 龚启勇张俊然黄晓琦吕粟贾志云
Owner WEST CHINA HOSPITAL SICHUAN UNIV
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