Technology in Cancer Research & Treatment (Nov 2022)

Artificial Intelligence in the Era of Precision Oncological Imaging

  • Michaela Cellina MD,
  • Maurizio Cè MD,
  • Natallia Khenkina MD,
  • Polina Sinichich MD,
  • Marco Cervelli MD,
  • Vittoria Poggi MD,
  • Sara Boemi MD,
  • Anna Maria Ierardi MD,
  • Gianpaolo Carrafiello MD

DOI
https://doi.org/10.1177/15330338221141793
Journal volume & issue
Vol. 21

Abstract

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Rapid-paced development and adaptability of artificial intelligence algorithms have secured their almost ubiquitous presence in the field of oncological imaging. Artificial intelligence models have been created for a variety of tasks, including risk stratification, automated detection and segmentation of lesions, characterization, grading and staging, prediction of prognosis, and treatment response. Soon, artificial intelligence could become an essential part of every step of oncological workup and patient management. Integration of neural networks and deep learning into radiological artificial intelligence algorithms allow for extrapolating imaging features otherwise inaccessible to human operators and pave the way to truly personalized management of oncological patients. Although a significant proportion of currently available artificial intelligence solutions belong to basic and translational cancer imaging research, their progressive transfer to clinical routine is imminent, contributing to the development of a personalized approach in oncology. We thereby review the main applications of artificial intelligence in oncological imaging, describe the example of their successful integration into research and clinical practice, and highlight the challenges and future perspectives that will shape the field of oncological radiology.