Machine learning methods for tracer kinetic modelling.

Journal: Nuklearmedizin. Nuclear medicine
Published Date:

Abstract

Tracer kinetic modelling based on dynamic PET is an important field of Nuclear Medicine for quantitative functional imaging. Yet, its implementation in clinical routine has been constrained by its complexity and computational costs. Machine learning poses an opportunity to improve modelling processes in terms of arterial input function prediction, the prediction of kinetic modelling parameters and model selection in both clinical and preclinical studies while reducing processing time. Moreover, it can help improving kinetic modelling data used in downstream tasks such as tumor detection. In this review, we introduce the basics of tracer kinetic modelling and present a literature review of original works and conference papers using machine learning methods in this field.

Authors

  • Isabelle Miederer
    Department of Nuclear Medicine, University Medical Center of the Johannes Gutenberg University Mainz, Mainz, Germany.
  • Kuangyu Shi
    Universitätsklinik für Nuklearmedizin, Inselspital University Hospital Bern, University of Bern, Bern, Switzerland.
  • Thomas Wendler
    Technische Universität München, Computer Aided Medical Procedures, Institut für Informatik, I16, Boltzmannstr. 3, Garching bei München 85748, GermanyeSurgicEye GmbH, Friedenstraße 18A, München 81671, Germany.