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Toward Digital Twins for Optimal Radioembolization.

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PET clinics 2026 Vol.21(1) p. 153-167
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Panneerselvam NK, Mummaneni G, Roncali E

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Radioembolization is a liver cancer treatment delivering radioactive microspheres (20-60 μm) to tumors via a catheter in the hepatic arterial tree.

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APA Panneerselvam NK, Mummaneni G, Roncali E (2026). Toward Digital Twins for Optimal Radioembolization.. PET clinics, 21(1), 153-167. https://doi.org/10.1016/j.cpet.2025.09.001
MLA Panneerselvam NK, et al.. "Toward Digital Twins for Optimal Radioembolization.." PET clinics, vol. 21, no. 1, 2026, pp. 153-167.
PMID 41093713

Abstract

Radioembolization is a liver cancer treatment delivering radioactive microspheres (20-60 μm) to tumors via a catheter in the hepatic arterial tree. Treatment response depends on multiple factors including the complex hepatic artery anatomy, variable blood flow, and microsphere transport. Patient-specific digital twins powered by computational fluid dynamics (CFD) and physics-informed artificial intelligence (AI) methods offer a promising solution to optimize planning. This review discusses core principles of CFD and generative AI applied to radioembolization, emphasizing physics-informed networks and their role in translating digital twins into clinical practice for enhanced personalization and precision in treatment delivery.

MeSH Terms

Humans; Liver Neoplasms; Embolization, Therapeutic; Artificial Intelligence; Microspheres; Hydrodynamics; Radiotherapy Planning, Computer-Assisted