| Literature DB >> 35186603 |
Vo Tan Duc1, Phan Cong Chien1, Le Duy Mai Huyen1, Tran Le Minh Chau1, Nguyen Do Trung Chanh2, Duong Thi Minh Soan3, Hoang Cao Huyen3, Huynh Minh Thanh4, Le Nguyen Gia Hy5, Nguyen Hoang Nam5, Mai Thi Tu Uyen6, Le Huu Hanh Nhi7, Le Huu Nhat Minh8.
Abstract
Introduction Hepatocellular carcinoma (HCC) is one of the most common malignancies in the world. Early detection and accurate diagnosis of HCC play an important role in patient management. This study aimed to develop a convolutional neural network-based model to identify and segment HCC lesions utilizing dynamic contrast agent-enhanced computed tomography (CT). Methods This retrospective study used CT image sets of histopathology-confirmed hepatocellular carcinoma over three phases (arterial, venous, and delayed). The proposed convolutional neural network (CNN) segmentation method was based on the U-Net architecture and trained using the domain adaptation technique. The proposed method was evaluated using 115 liver masses of 110 patients (87 men and 23 women; mean age, 56.9 years ± 11.9 (SD); mean mass size, 6.0 cm ± 3.6). The sensitivity for identifying HCC of the model and Dice score for segmentation of liver masses between radiologists and the CNN model were calculated for the test set. Results The sensitivity for HCC identification of the model was 100%. The median Dice score for HCC segmenting between radiologists and the CNN model was 0.81 for the test set. Conclusion Deep learning with CNN had high performance in the identification and segmentation of HCC on dynamic CT.Entities:
Keywords: computed tomography; convolutional neural network; deep learning; dice score; hepatocellular carcinoma
Year: 2022 PMID: 35186603 PMCID: PMC8849436 DOI: 10.7759/cureus.21347
Source DB: PubMed Journal: Cureus ISSN: 2168-8184