Artificial Intelligence vs. LIRADS in Diagnosing HCC on CT
HCC, Liver Cancer
About this trial
This is an interventional diagnostic trial for HCC focused on measuring HCC, liver cancer, AI, deep learning, CT, imaging
Eligibility Criteria
Inclusion Criteria:
1. Age >=18 years. 2. Defined as the at-risk population requiring regular liver ultrasonography surveillance. These include:
- Cirrhotic patients of any disease etiology,
Chronic hepatitis B patients of age ≥40 years for men, age ≥50 years for women or with a family history of HCC.
3. At least one new-onset focal liver nodule detected on liver ultrasonography.
Exclusion Criteria:
- Liver nodules of <1 cm. Currently such nodules are not reported using LI-RADS criteria but are recommended for a repeat scan in 3-6 months. In patients with multiple liver nodules, the largest nodule will be assessed.
- Patients with contraindications for contrast CT imaging, including a history of contrast anaphylaxis and impaired renal function (glomerular filtration rate <30 ml/min).
- Patients with prior transarterial chemoembolization or other interventional procedures with intrahepatic injection of lipiodol. Lipiodol is extremely hyperdense on computed tomography and will preclude objective interpretation. Such patients were also excluded in the development of our prototype AI algorithm.
Sites / Locations
- Department of Medicine, The University of Hong Kong, Queen Mary HospitalRecruiting
Arms of the Study
Arm 1
Arm 2
Active Comparator
Placebo Comparator
Prototype AI algorithm
LI_RADS interpretation
In-house prototype deep learning artificial intelligence algorithm
LI-RADS criteria will be assessed independently by two specified abdominal radiologists with at least 10 years of experience in cross-sectional abdominal imaging