Common Pitfalls and Recommendations for Grand Challenges in Medical Artificial Intelligence.

Journal: European urology focus
Published Date:

Abstract

With the impact of artificial intelligence (AI) algorithms on medical research on the rise, the importance of competitions for comparative validation of algorithms, so-called challenges, has been steadily increasing, to a point at which challenges can be considered major drivers of research, particularly in the biomedical image analysis domain. Given their importance, high quality, transparency, and interpretability of challenges is essential for good scientific practice and meaningful validation of AI algorithms, for instance towards clinical translation. This mini-review presents several issues related to the design, execution, and interpretation of challenges in the biomedical domain and provides best-practice recommendations. PATIENT SUMMARY: This paper presents recommendations on how to reliably compare the usefulness of new artificial intelligence methods for analysis of medical images.

Authors

  • Annika Reinke
    German Cancer Research Center DKFZ, Division of Computer Assisted Medical Interventions, Heidelberg, Germany. Electronic address: a.reinke@dkfz.de.
  • Minu D Tizabi
    Division of Computer Assisted Medical Interventions, German Cancer Research Center, Heidelberg, Germany; HIP Helmholtz Imaging Platform, German Cancer Research Center, Heidelberg, Germany.
  • Matthias Eisenmann
    German Cancer Research Center (DKFZ), Computer Assisted Medical Interventions, Heidelberg, Germany.
  • Lena Maier-Hein
    German Cancer Research Center (DKFZ), Computer Assisted Medical Interventions, Heidelberg, Germany.