Improved Detection of Small (<2 cm) Hepatocellular Carcinoma via Deep Learning-Based Synthetic CT Hepatic Arteriography: A Multi-Center External Validation Study
Jung Won Kwak, Sung Bum Cho, Ki Choon Sim, Jeong Woo Kim, In Young Choi, Yongwon Cho

TL;DR
A deep learning model improves detection of small liver cancers in CT scans, offering a non-invasive alternative with high accuracy.
Contribution
A deep learning model generates synthetic CTHA images from LDCT, improving detection of small HCCs with multi-center validation.
Findings
Synthetic CTHA detected 69.6% of sub-centimeter HCCs versus 47.8% with LDCT in internal validation.
External validation confirmed improved detection of small HCCs with synthetic CTHA over LDCT.
Synthetic CTHA showed high structural fidelity with good similarity and signal-to-noise metrics.
Abstract
Background/Objectives: Early detection of hepatocellular carcinoma (HCC), particularly small lesions (<2 cm), which is crucial for curative treatment, remains challenging with conventional liver dynamic computed tomography (LDCT). We aimed to develop a deep learning algorithm to generate synthetic CT during hepatic arteriography (CTHA) from non-invasive LDCT and evaluate its lesion detection performance. Methods: A cycle-consistent generative adversarial network with an attention module [Unsupervised Generative Attentional Networks with Adaptive Layer-Instance Normalization (U-GAT-IT)] was trained using paired LDCT and CTHA images from 277 patients. The model was validated using internal (68 patients, 139 lesions) and external sets from two independent centers (87 patients, 117 lesions). Two radiologists assessed detection performance using a 5-point scale and the detection rate.…
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Taxonomy
TopicsHepatocellular Carcinoma Treatment and Prognosis · Advanced X-ray and CT Imaging · Radiomics and Machine Learning in Medical Imaging
