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Alzheimer's disease classification method based on improved 3D CNN network

A technology of Alzheimer's disease and classification method, which is applied in the field of Alzheimer's disease classification, can solve the problems affecting model accuracy and difficulty in model training, and achieve the effects of improving accuracy, easy training, and solving model degradation problems

Active Publication Date: 2020-10-02
WENZHOU UNIVERSITY
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Problems solved by technology

Although it has been verified that this method can effectively avoid the high similarity between classes and overfitting problems, it is still affected by the size of the feature scale extracted by 3D CNN
In order to prevent the problem of model degradation caused by deep convolutional neural networks, Karasawa H et al. (Karasawa H, LiuCL, Ohwada H. Deep 3d convolutional neural network architectures for alzheimer's disease diagnosis[C] / / Asian Conference on Intelligent Information and Database Systems. Springer , Cham, 2018: 287-296.) A 3DCNN framework similar to the ResNet structure was designed for Alzheimer's disease classification, in which the convolutional layer has as many as 35 layers, which may make the model more difficult to train, thus affecting the accuracy of the model

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Embodiment

[0071] The constructed model structure and parameters are shown in Table 1. Except for the first module, other backbone structures maintain the original structure of VGG, that is, the convolution kernel size is 3×3×3, the step size is 1, and the edge is zero-filled to Leave the output size unchanged. Divide VGG into a MaxPooling layer of 6 modules (Block), whose kernel size is set to 2×2×2, and the step size is 2 to realize the downsampling operation. When the value is too large or too small, the derivatives of activation functions such as Sigmoid and Tanh are close to 0, while ReLU is an unsaturated activation function, which does not exist, and its derivation is easier to calculate, making network training faster, so it is very The linear activation layer uses the ReLU activation function. The detailed parameters of the six VGG modules divided by Max-Pooling are shown in Table 1, where 3DConvolution includes Conv3d layer, BatchNorm3d layer, ReLU layer, Skip Connection inclu...

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Abstract

The invention discloses an Alzheimer's disease classification method based on an improved 3D CNN network, and the method carries out the training based on 3D nuclear magnetic resonance data, and achieves the precise brain disease classification. The method mainly comprises the following steps: 1) modeling by using a 3D CNN: replacing a 2D CNN part in a VGG network by using the 3D CNN; 2) optimizing a model structure: firstly adding a batch normalization layer in the model, and then introducing jump connection; 3) experimental data processing: preprocessing experimental data, and dividing a training set and a verification set; 4) model training: inputting the data into a model, training network parameters, and reserving an optimal model. According to the method, multiple jump connections are introduced into the 3DVGG model for Alzheimer's disease diagnosis for the first time, the performance of the method is superior to that of an existing method, and the method has the advantages of being high in universality, high in robustness and the like.

Description

technical field [0001] The invention relates to the field of computer medical image analysis, in particular to an improved 3D CNN network-based classification method for Alzheimer's disease. Background technique [0002] Alzheimer's disease (AD) is a temporarily incurable neurodegenerative disease. It is the most common case of Alzheimer's disease. Its pre-state is mild cognitive impairment (MCI). human memory and cognition. Mild cognitive impairment (MCI) is an intermediate state between normal aging and dementia, and is a syndrome of cognitive impairment. As early as in the 2011 AD diagnostic criteria and guidelines, MCI cases were considered as the early stage of AD. In recent years, neuroimaging has been widely used as an important biomarker for AD diagnosis. Among them, magnetic resonance imaging is a non-invasive, low-cost imaging technique that can clearly describe the three-dimensional anatomical structure of the human brain. Therefore, using the characteristics ...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06K9/62G06N3/04G16H50/20A61B5/00A61B5/055
CPCG16H50/20A61B5/055A61B5/4088A61B5/7267G06N3/045G06F18/241G06F18/214
Inventor 胡众义吴奇肖磊胡明哲
Owner WENZHOU UNIVERSITY
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