The Barcelona Classification of Liver Cancer (BCLC) guides treatment based on tumor characteristics and liver function. However, current diagnostic methods, like AFP testing and ultrasound, often miss HCC until later stages, limiting treatment options and survival rates.
Recent advancements in AI, particularly deep learning (DL) and neural networks, offer significant potential for improving HCC diagnosis. AI models can analyze large amounts of imaging data, identify subtle patterns missed by human eyes, and provide objective, consistent results. This can potentially reduce diagnostic variability, optimize data analysis and reallocate healthcare resources.
Early detection of HCC is crucial, as curative treatments like surgery and liver transplant are only possible in the early stages. AI-powered diagnosis can significantly improve early detection rates, leading to more patients receiving treatment, improved patient survival rates and reduced healthcare costs.
Researchers are actively exploring the potential of AI in various aspects of HCC diagnosis. This includes the development of AI-powered tools for personalized medicine, integrating AI with imaging technologies, and utilizing AI for monitoring treatment response.
AI holds the potential to revolutionize HCC diagnosis, leading to earlier detection, better treatment options, and improved patient outcomes. Continued research and clinical implementation of AI models are essential to fully realize this potential and make a significant impact on the lives of people living with HCC.
Koh B, Danpanichkul P, Wang M, et al.
Application of artificial intelligence in the diagnosis of hepatocellular carcinoma.
eGastroenterology 2023;1:e100002. doi: 10.1136/egastro-2023-100002