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GCT-UNET: U-Net image segmentation model for a small sample of adherent bone marrow cells based on a gated channel transform module

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posted on 2022-11-16, 10:43 authored by Jing Qin, Tong Liu, Zumin Wang, Lu Liu, Hui FangHui Fang
Pathological diagnosis is considered to be declarative and authoritative. However, reading pathology slides is a challenging task. Different parts of the section are taken and read for different purposes and with different focuses, which further adds difficulty to the pathologist’s diagnosis. In recent years, the deep neural network has made great progress in the direction of computer vision and the main approach to image segmentation is the use of convolutional neural networks, through which the spatial properties of the data are captured. Among a wide variety of different network structures, one of the more representative ones is UNET with encoder and decoder structures. The biggest advantage of traditional UNET is that it can still perform well with a small number of samples, but because the information in the feature map is lost in the downsampling process of UNET, and a large amount of spatially accurate detailed information is lost in the decoding part. This makes it difficult to complete accurate segmentation of cell images with dense numbers and high adhesion. For this reason, we propose a new network structure based on UNET, which can be used to segment cell images by aggregating the global contextual information between different channels and assigning different weights to the corresponding channels through the gated adaptive mechanism, we improve the performance of UNET in the cell segmentation task and consider the use of unsupervised segmentation methods for secondary segmentation of the predicted results of our model, and the final results obtained are tested to meet the needs of the readers.

Funding

Youth Fund Project of the National Nature Fund of China under Grant 62002038

Hexi University scientific research innovation and application Xiaozhang Fund key projects XZZD2019006

History

School

  • Science

Department

  • Computer Science

Published in

Electronics

Volume

11

Issue

22

Publisher

MDPI AG

Version

  • VoR (Version of Record)

Rights holder

© The Authors

Publisher statement

This is an Open Access Article. It is published by MDPI under the Creative Commons Attribution 4.0 International Licence (CC BY). Full details of this licence are available at: https://creativecommons.org/licenses/by/4.0/

Acceptance date

2022-11-14

Publication date

2022-11-16

Copyright date

2022

eISSN

2079-9292

Language

  • en

Depositor

Dr Hui Fang. Deposit date: 16 November 2022

Article number

3755

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