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The Current Landscape of Artificial Intelligence in Positron Emission Tomography (PET) Imaging Across the Cancer Continuum

  • Wut Yee The Zar
  • , Mi Rim Kim
  • , Aruni Ghose
  • , Sola Adeleke
  • , Manoj Gupta
  • , Partha S. Choudhary
  • , Anirudh Shankar
  • , Srishti Mohapatra
  • , Stergios Boussios
  • , Akash Maniam
    • Portsmouth Hospitals University NHS Trust
    • Velindre University NHS Trust
    • King’s College London
    • Rajiv Gandhi Cancer Institute and Research Centre
    • CanPrecise AI
    • Department of Research and Innovation
    • Medway NHS Foundation Trust
    • Department of Medical Oncology
    • Ioannina University Hospital
    • School of Health Sciences
    • University of Ioannina
    • AELIA Organisation
    • School of Cancer and Pharmaceutical Sciences
    • Faculty of Life Sciences and Medicine

    Research output: Contribution to journalArticlepeer-review

    Abstract

    PET scans have long been used in oncology imaging to provide molecular and metabolic information about diseases. The use of artificial intelligence (AI) in PET scans in oncology theranostics has the potential to optimise PET modality and overcome the constraints that PET scans have, such as semi-quantitative metrics, reader subjectivity, and variability across scanners/institutions. Advances in AI and radiomics are overcoming those limitations by deep learning lesion detection, enhancing image reconstruction, and improving noise resolution, which allows ultra-low dose acquisitions, while physics-informed models integrate with PET systems to strengthen interpretability and quantitative accuracy. There are also predictive AI frameworks that link PET imaging biomarkers to therapy response and outcomes, create individualised care and are even able to simulate treatment response and help with treatment planning. However, challenges do exist. Most AI PET studies are retrospective, single-centre, and underpowered (small sample), with limited external validation and inconsistent standardisation (in acquisition, segmentation, and extraction), leading to poor reproducibility and higher performance estimates. Furthermore, ethical considerations, including data protection and transparency, need to be considered before implementation. Federated learning, physics-informed frameworks, and adherence to standardised protocols offer steps towards regulated AI systems. In summary, PET is evolving from an imaging modality to a platform with the integration of deep learning, radiomics and reconstruction capable of predicting treatment response and guiding treatment. With rigorous prospective validation, cross-institutional collaboration, and regulatory standardisation, AI in PET would create an advancement in nuclear medicine imaging in oncology.
    Original languageEnglish
    Article number2446
    Pages (from-to)2446
    Number of pages1
    JournalJournal of Clinical Medicine
    Volume15
    Issue number6
    Early online date23 Mar 2026
    DOIs
    Publication statusPublished - 23 Mar 2026

    UN SDGs

    This output contributes to the following UN Sustainable Development Goals (SDGs)

    1. SDG 3 - Good Health and Well-being
      SDG 3 Good Health and Well-being

    Keywords

    • Artificial intelligence
    • PET
    • Oncology
    • Diagnosis
    • Theranostics
    • Federated learning
    • Machine learning
    • Physics-informed AI
    • Hybrid models
    • Image reconstruction

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