Literature DB >> 35372025

Kidney Tumor Segmentation Based on FR2PAttU-Net Model.

Peng Sun1, Zengnan Mo2, Fangrong Hu1, Fang Liu3, Taiping Mo1, Yewei Zhang4, Zhencheng Chen1.   

Abstract

The incidence rate of kidney tumors increases year by year, especially for some incidental small tumors. It is challenging for doctors to segment kidney tumors from kidney CT images. Therefore, this paper proposes a deep learning model based on FR2PAttU-Net to help doctors process many CT images quickly and efficiently and save medical resources. FR2PAttU-Net is not a new CNN structure but focuses on improving the segmentation effect of kidney tumors, even when the kidney tumors are not clear. Firstly, we use the R2Att network in the "U" structure of the original U-Net, add parallel convolution, and construct FR2PAttU-Net model, to increase the width of the model, improve the adaptability of the model to the features of different scales of the image, and avoid the failure of network deepening to learn valuable features. Then, we use the fuzzy set enhancement algorithm to enhance the input image and construct the FR2PAttU-Net model to make the image obtain more prominent features to adapt to the model. Finally, we used the KiTS19 data set and took the size of the kidney tumor as the category judgment standard to enhance the small sample data set to balance the sample data set. We tested the segmentation effect of the model at different convolution and depths, and we got scored a 0.948 kidney Dice and a 0.911 tumor Dice results in a 0.930 composite score, showing a good segmentation effect.
Copyright © 2022 Sun, Mo, Hu, Liu, Mo, Zhang and Chen.

Entities:  

Keywords:  CT; FR2PAttU-Net; KiTS19; data augmentation; kidney tumor segmentation

Year:  2022        PMID: 35372025      PMCID: PMC8968695          DOI: 10.3389/fonc.2022.853281

Source DB:  PubMed          Journal:  Front Oncol        ISSN: 2234-943X            Impact factor:   6.244


  13 in total

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