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Application of a deep learning algorithm for the diagnosis of HCC

Authors :
Philip Leung Ho Yu
Keith Wan-Hang Chiu
Jianliang Lu
Gilbert C.S. Lui
Jian Zhou
Ho-Ming Cheng
Xianhua Mao
Juan Wu
Xin-Ping Shen
King Ming Kwok
Wai Kuen Kan
Y.C. Ho
Hung Tat Chan
Peng Xiao
Lung-Yi Mak
Vivien W.M. Tsui
Cynthia Hui
Pui Mei Lam
Zijie Deng
Jiaqi Guo
Li Ni
Jinhua Huang
Sarah Yu
Chengzhi Peng
Wai Keung Li
Man-Fung Yuen
Wai-Kay Seto
Source :
JHEP Reports, Vol 7, Iss 1, Pp 101219- (2025)
Publication Year :
2025
Publisher :
Elsevier, 2025.

Abstract

Background & Aims: Hepatocellular carcinoma (HCC) is characterized by a high mortality rate. The Liver Imaging Reporting and Data System (LI-RADS) results in a considerable number of indeterminate observations, rendering an accurate diagnosis difficult. Methods: We developed four deep learning models for diagnosing HCC on computed tomography (CT) via a training–validation–testing approach. Thin-slice triphasic CT liver images and relevant clinical information were collected and processed for deep learning. HCC was diagnosed and verified via a 12-month clinical composite reference standard. CT observations among at-risk patients were annotated using LI-RADS. Diagnostic performance was assessed by internal validation and independent external testing. We conducted sensitivity analyses of different subgroups, deep learning explainability evaluation, and misclassification analysis. Results: From 2,832 patients and 4,305 CT observations, the best-performing model was Spatio-Temporal 3D Convolution Network (ST3DCN), achieving area under receiver-operating-characteristic curves (AUCs) of 0.919 (95% CI, 0.903–0.935) and 0.901 (95% CI, 0.879–0.924) at the observation (n = 1,077) and patient (n = 685) levels, respectively during internal validation, compared with 0.839 (95% CI, 0.814–0.864) and 0.822 (95% CI, 0.790–0.853), respectively for standard of care radiological interpretation. The negative predictive values of ST3DCN were 0.966 (95% CI, 0.954–0.979) and 0.951 (95% CI, 0.931–0.971), respectively. The observation-level AUCs among at-risk patients, 2–5-cm observations, and singular portovenous phase analysis of ST3DCN were 0.899 (95% CI, 0.874–0.924), 0.872 (95% CI, 0.838–0.909) and 0.912 (95% CI, 0.895–0.929), respectively. In external testing (551/717 patients/observations), the AUC of ST3DCN was 0.901 (95% CI, 0.877–0.924), which was non-inferior to radiological interpretation (AUC 0.900; 95% CI, 0.877–-923). Conclusions: ST3DCN achieved strong, robust performance for accurate HCC diagnosis on CT. Thus, deep learning can expedite and improve the process of diagnosing HCC. Impact and implications:: The clinical applicability of deep learning in HCC diagnosis is potentially huge, especially considering the expected increase in the incidence and mortality of HCC worldwide. Early diagnosis through deep learning can lead to earlier definitive management, particularly for at-risk patients. The model can be broadly deployed for patients undergoing a triphasic contrast CT scan of the liver to reduce the currently high mortality rate of HCC.

Details

Language :
English
ISSN :
25895559
Volume :
7
Issue :
1
Database :
Directory of Open Access Journals
Journal :
JHEP Reports
Publication Type :
Academic Journal
Accession number :
edsdoj.310a2c520834a86801fd57090659381
Document Type :
article
Full Text :
https://doi.org/10.1016/j.jhepr.2024.101219