학술논문

Extraction of Cervical Lymph Nodes using Improved U-Net++
Document Type
Conference
Source
제어로봇시스템학회 국제학술대회 논문집. 2022-11 2022(11):562-565
Subject
Computer Aided Diagnosis
Cervical Lymph Node
Segmentation
Convolutional Neural Network
U-Net++
Language
Korean
ISSN
2005-4750
Abstract
Early detection and treatment of the lymph node are important since swelling of the neck is a likely factor in systemic metastasis of cancer. One of the diagnoses of cervical swelling is a CT scan, which has a beneficial influence on the diagnosis of the disease. However, the reading of CT images is burdened by the large number of images, which increases the physician"s workload. In addition, since it is based on the subjective judgment of the physician, there may be discrepancies in diagnostic results and undetected cases due to differences in experience. A means of solving these problems requires a CAD system that provides a second opinion to the physician. Therefore, this paper proposes a segmentation method of cervical lymph node region for the purpose of developing a CAD system for the diagnosis of cervical lymphadenopathy from CT images. The proposal method is a CNN model with U-Net++ as the backbone, introducing CBAM (convolution block attention module) and dual-branch multi-scale attention module. The proposed method was applied to CT images of 11 cases, yielding IoU of 62.29, confirming its validity.

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