Data-Informed Intuition in Hepatology: Integrating Evidence, Context, and Clinical Reasoning.
Journal:
Gut and liver
Published Date:
Jun 10, 2026
Abstract
Artificial intelligence and data-driven models are changing hepatology, but expert clinical judgment remains essential. Liver diseases are complex and evolve over time, requiring reasoning that links numerical data with clinical context. We propose data-informed intuition (DII), a conceptual framework bridging evidence-based medicine with clinical experience and reflective reasoning. Instead of presenting a validated prediction model, it proposes DII as an integrative scaffold for clinical reasoning that can be examined and revised. DII is viewed as a trainable skill that improves with data feedback, not mere guesswork. Clinicians continually calibrate their judgment as patient information accumulates. In hepatology, DII helps interpret disease trajectories, adapt predictive scores to context, and handle uncertainty in liver transplantation, hepatocellular carcinoma, acute liver failure, and related conditions. The DII framework describes eight axes (time, rate, magnitude, pattern, context, causality, integration, and uncertainty) that make visible how data and intuition interact in clinical reasoning. Integrating DII into fellowship training and artificial intelligence-assisted systems could nurture clinicians who combine algorithmic precision with human insight. This perspective summarizes the conceptual basis, clinical uses, and educational value of DII, and outlines both a research agenda for its empirical testing and a path toward data-informed professionalism in hepatology.
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