The evolution and revolution of artificial intelligence in hepatology: From current applications to future paradigms
- PMID: 39006141
- PMCID: PMC11237248
- DOI: 10.14744/hf.2024.2024.ed0001
The evolution and revolution of artificial intelligence in hepatology: From current applications to future paradigms
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