Cervix uteri OCT image classification method and system based on two-way attention convolutional neural network

A convolutional neural network and attention technology, applied in the field of medical image analysis and computer-aided diagnosis, can solve problems such as poor classification effect, and achieve the effect of improving classification effect and solving poor classification effect.

Inactive Publication Date: 2020-06-30
WUHAN UNIV
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Problems solved by technology

[0009] Aiming at the problem of poor classification effect in the prior art, the present invention provides a cervical OCT image classification method based on a two-way attention convolutional neural network

Method used

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  • Cervix uteri OCT image classification method and system based on two-way attention convolutional neural network
  • Cervix uteri OCT image classification method and system based on two-way attention convolutional neural network
  • Cervix uteri OCT image classification method and system based on two-way attention convolutional neural network

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Embodiment 1

[0068] This embodiment provides a cervical OCT image classification method based on a two-way attention convolutional neural network, please refer to figure 1 , the method includes:

[0069] S1: Divide the acquired 3D OCT images of cervical tissue into a training set and a test set, wherein the 3D OCT images of cervical tissue are divided into different groups according to the objects they belong to, each group of 3D OCT images belongs to the same object, and each group of 3D OCT images has Corresponding 2D OCT images, and all 2D OCT images in the same group of 3D OCT images only exist in the training set or test set;

[0070] Specifically, all 2D OCT images in the same group of 3D OCT images only exist in the training set or the test set, which means that the 3D OCT images of the same object are either only used as the training set or only as the test set. In the specific implementation process, the 2D OCT image used is in the tag image file format (TIFF) format, which confo...

Embodiment 2

[0139] Based on the same inventive concept, this embodiment provides a cervical OCT image classification system based on a two-way attention convolutional neural network, please refer to Figure 7 , the system consists of:

[0140] The data set division module 201 is used to divide the obtained cervical tissue 3D OCT images into a training set and a test set, wherein the cervical tissue 3D OCT images are divided into different groups according to the objects to which they belong, and each group of 3D OCT images belongs to the same object, Each group of 3D OCT images has a corresponding 2D OCT image, and all 2D OCT images in the same group of 3D OCT images only exist in the training set or test set;

[0141] The classification model construction module 202 is used to construct the OCT image classification model based on the two-way attention mechanism convolutional neural network. The OCT image classification model includes a backbone network, a channel attention module, a spat...

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Abstract

The invention discloses a cervical OCT image classification method based on a double-channel attention convolutional neural network. On the basis of a convolutional neural network architecture, two attention mechanisms are added and realized, so that the incidence relation between features with relatively long distances on image pixels can be better captured, the weights of different high-dimensional features are learned, and accurate classification of the cervical 3D OCT images is realized. The method comprises the following steps: 1) introducing two attention mechanisms into a convolutionalneural network; 2) introducing a channel attention mechanism, preferentially using global average pooling to extract channel features of the 2D OCT image, and then using a multi-layer perceptron to learn weights of channels; 3) introducing a spatial attention mechanism, referring to a self-attention mechanism, and calculating the similarity between each feature in the feature map and other features to realize similarity calculation of non-adjacent image regions; 4) performing downsampling on the features by using global average pooling, then adding two full connection layers, and finally performing classification by using a softmax function.

Description

technical field [0001] The invention provides a cervical OCT image classification method based on a two-way attention convolutional neural network, which belongs to the fields of medical image analysis and computer-aided diagnosis. Background technique [0002] Cervical cancer is one of the most common malignancies in women worldwide. In 2018, there were about 569,000 new cases of cervical cancer worldwide, and about 311,000 deaths. In the past two decades, with the widespread application of cervical liquid-based thin-layer cytology test (thinprepcytologic test, TCT) and human papillomavirus (human papillomavirus, HPV) test, cervical cancer can be effectively prevented in the early stage, so in developed countries Significantly reduced morbidity and mortality. However, in poor and developing countries, cervical cancer remains associated with high morbidity and mortality due to limited access to cervical cancer screening services and lack of HPV vaccination. For example, i...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06K9/62G06N3/04
CPCG06V2201/03G06N3/045G06F18/24G06F18/214
Inventor 马于涛孙浩
Owner WUHAN UNIV
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