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논문 리스트

2022
CNN 기반 전이학습을 이용한 뼈 전이가 존재하는 뼈 스캔 영상 분류 Classification of Whole Body Bone Scan Image with Bone Metastasis using CNN-based Transfer Learning
한국멀티미디어학회
양형정, 김수형, 민정준 외 6명
논문정보
Publisher
멀티미디어학회논문지
Issue Date
2022-08-31
Keywords
-
Citation
-
Source
-
Journal Title
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Volume
25
Number
8
Start Page
1224
End Page
1232
DOI
ISSN
12297771
Abstract
Whole body bone scan is the most frequently performed nuclear medicine imaging to evaluate bone metastasis in cancer patients. We evaluated the performance of a VGG16-based transfer learning classifier for bone scan images in which metastatic bone lesion was present. A total of 1,000 bone scans in 1,000 cancer patients (500 patients with bone metastasis, 500 patients without bone metastasis) were evaluated. Bone scans were labeled with abnormal/normal for bone metastasis using medical reports and image review. Subsequently, gradient-weighted class activation maps (Grad-CAMs) were generated for explainable AI. The proposed model showed AUROC 0.96 and F1-Score 0.90, indicating that it outperforms to VGG16, ResNet50, Xception, DenseNet121 and InceptionV3. Grad-CAM visualized that the proposed model focuses on hot uptakes, which are indicating active bone lesions, for classification of whole body bone scan images with bone metastases.

저자 정보

이름 소속
양형정 인공지능융합학과
김수형 인공지능학부
민정준 의학과