Multi-stages attention Breast cancer classification based on nonlinear
spiking neural P neurons with autapses
- URL: http://arxiv.org/abs/2312.12804v2
- Date: Thu, 4 Jan 2024 09:28:50 GMT
- Title: Multi-stages attention Breast cancer classification based on nonlinear
spiking neural P neurons with autapses
- Authors: Bo Yang, Hong Peng, Xiaohui Luo, Jun Wang
- Abstract summary: Downsampling in deep networks may lead to loss of information.
We propose a multi-stages attention architecture based on NSNP neurons with autapses.
It achieves a classification accuracy of 96.32% at all magnification cases, outperforming state-of-the-art methods.
- Score: 10.16176106140093
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Breast cancer(BC) is a prevalent type of malignant tumor in women. Early
diagnosis and treatment are vital for enhancing the patients' survival rate.
Downsampling in deep networks may lead to loss of information, so for
compensating the detail and edge information and allowing convolutional neural
networks to pay more attention to seek the lesion region, we propose a
multi-stages attention architecture based on NSNP neurons with autapses. First,
unlike the single-scale attention acquisition methods of existing methods, we
set up spatial attention acquisition at each feature map scale of the
convolutional network to obtain an fusion global information on attention
guidance. Then we introduce a new type of NSNP variants called NSNP neurons
with autapses. Specifically, NSNP systems are modularized as feature encoders,
recoding the features extracted from convolutional neural network as well as
the fusion of attention information and preserve the key characteristic
elements in feature maps. This ensures the retention of valuable data while
gradually transforming high-dimensional complicated info into low-dimensional
ones. The proposed method is evaluated on the public dataset BreakHis at
various magnifications and classification tasks. It achieves a classification
accuracy of 96.32% at all magnification cases, outperforming state-of-the-art
methods. Ablation studies are also performed, verifying the proposed model's
efficacy. The source code is available at
XhuBobYoung/Breast-cancer-Classification.
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