Radical gastrectomy for gastric cancer demands meticulous pre-operative staging and real-time intra-operative guidance to optimise oncologic margins and minimize complications. Recent advances in artificial-intelligence algorithms reliably integrate multimodal clinical, imaging and pathological data, producing highly reproducible tumour-staging and risk-stratification models that inform personalised operative strategies. Concurrently, navigation platforms that fuse computed-tomography, magnetic-resonance, ultrasound and fluorescence datasets generate patient-specific three-dimensional reconstructions with sub-millimeter registration accuracy, enabling dynamic margin delineation and reducing inadvertent tissue injury. Predictive analytics that assimilate intra-operative metrics with early postoperative information can forecast survival and complication profiles, thereby supporting tailored follow-up protocols. Remaining barriers include safeguarding data privacy, accelerating image-registration and inference speeds, meeting high computational-resource demands and offsetting the substantial capital and maintenance costs of these systems. Nevertheless, the convergent evolution of artificial intelligence and real-time imaging navigation is poised to transform radical gastrectomy by elevating surgical precision, enhancing patient safety and improving long-term outcomes; realizing this promise will require algorithmic refinement, multicenter validation, robust ethical frameworks and cost-effective implementation models.
Keywords: Artificial intelligence; Clinical translation; Precision medicine; Radical gastrectomy; Real-time imaging navigation.
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