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Joint segmentation and classification of hepatic lesions in ultrasound images using deep learning

Authors
Ryu, HwaseongShin, Seung YeonLee, Jae YoungLee, Kyoung MuKang, Hyo-jinYi, Jonghyon
Issue Date
Nov-2021
Publisher
Springer Verlag
Keywords
Deep learning; Liver; Ultrasonography
Citation
European Radiology, v.31, no.11, pp 8733 - 8742
Pages
10
Indexed
SCIE
SCOPUS
Journal Title
European Radiology
Volume
31
Number
11
Start Page
8733
End Page
8742
URI
https://scholarworks.bwise.kr/erica/handle/2021.sw.erica/115213
DOI
10.1007/s00330-021-07850-9
ISSN
0938-7994
1432-1084
Abstract
Objectives: To develop a convolutional neural network system to jointly segment and classify a hepatic lesion selected by user clicks in ultrasound images. Methods: In total, 4309 anonymized ultrasound images of 3873 patients with hepatic cyst (n = 1214), hemangioma (n = 1220), metastasis (n = 1001), or hepatocellular carcinoma (HCC) (n = 874) were collected and annotated. The images were divided into 3909 training and 400 test images. Our network is composed of one shared encoder and two inference branches used for segmentation and classification and takes the concatenation of an input image and two Euclidean distance maps of foreground and background clicks provided by a user as input. The performance of hepatic lesion segmentation was evaluated based on the Jaccard index (JI), and the performance of classification was based on accuracy, sensitivity, specificity, and the area under the receiver operating characteristic curve (AUROC). Results: We achieved performance improvements by jointly conducting segmentation and classification. In the segmentation only system, the mean JI was 68.5%. In the classification only system, the accuracy of classifying four types of hepatic lesions was 79.8%. The mean JI and classification accuracy were 68.5% and 82.2%, respectively, for the proposed joint system. The optimal sensitivity and specificity and the AUROC of classifying benign and malignant hepatic lesions of the joint system were 95.0%, 86.0%, and 0.970, respectively. The respective sensitivity, specificity, and the AUROC for classifying four hepatic lesions of the joint system were 86.7%, 89.7%, and 0.947. Conclusions: The proposed joint system exhibited fair performance compared to segmentation only and classification only systems. Key Points: • The joint segmentation and classification system using deep learning accurately segmented and classified hepatic lesions selected by user clicks in US examination. • The joint segmentation and classification system for hepatic lesions in US images exhibited higher performance than segmentation only and classification only systems. • The joint segmentation and classification system could assist radiologists with minimal experience in US imaging by characterizing hepatic lesions. © 2021, The Author(s).
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ERICA 공학대학 (SCHOOL OF ELECTRICAL ENGINEERING)
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