Clinical and Translational Radiation Oncology (Mar 2023)

Artificial intelligence to predict outcomes of head and neck radiotherapy

  • Chulmin Bang,
  • Galaad Bernard,
  • William T. Le,
  • Arthur Lalonde,
  • Samuel Kadoury,
  • Houda Bahig

Journal volume & issue
Vol. 39
p. 100590

Abstract

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Head and neck radiotherapy induces important toxicity, and its efficacy and tolerance vary widely across patients. Advancements in radiotherapy delivery techniques, along with the increased quality and frequency of image guidance, offer a unique opportunity to individualize radiotherapy based on imaging biomarkers, with the aim of improving radiation efficacy while reducing its toxicity. Various artificial intelligence models integrating clinical data and radiomics have shown encouraging results for toxicity and cancer control outcomes prediction in head and neck cancer radiotherapy. Clinical implementation of these models could lead to individualized risk-based therapeutic decision making, but the reliability of the current studies is limited. Understanding, validating and expanding these models to larger multi-institutional data sets and testing them in the context of clinical trials is needed to ensure safe clinical implementation. This review summarizes the current state of the art of machine learning models for prediction of head and neck cancer radiotherapy outcomes.

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