Gaussian Processes for real-time 3D motion and uncertainty estimation during MR-guided radiotherapy

Niek R.F. Huttinga*, Tom Bruijnen, Cornelis A.T. van den Berg, Alessandro Sbrizzi

*Corresponding author for this work

Research output: Contribution to journalArticleAcademicpeer-review

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Abstract

Respiratory motion during radiotherapy causes uncertainty in the tumor's location, which is typically addressed by an increased radiation area and a decreased dose. As a result, the treatments’ efficacy is reduced. The recently proposed hybrid MR-linac scanner holds the promise to efficiently deal with such respiratory motion through real-time adaptive MR-guided radiotherapy (MRgRT). For MRgRT, motion-fields should be estimated from MR-data and the radiotherapy plan should be adapted in real-time according to the estimated motion-fields. All of this should be performed with a total latency of maximally 200 ms, including data acquisition and reconstruction. A measure of confidence in such estimated motion-fields is highly desirable, for instance to ensure the patient's safety in case of unexpected and undesirable motion. In this work, we propose a framework based on Gaussian Processes to infer 3D motion-fields and uncertainty maps in real-time from only three readouts of MR-data. We demonstrated an inference frame rate up to 69 Hz including data acquisition and reconstruction, thereby exploiting the limited amount of required MR-data. Additionally, we designed a rejection criterion based on the motion-field uncertainty maps to demonstrate the framework's potential for quality assurance. The framework was validated in silico and in vivo on healthy volunteer data (n=5) acquired using an MR-linac, thereby taking into account different breathing patterns and controlled bulk motion. Results indicate end-point-errors with a 75th percentile below 1 mm in silico, and a correct detection of erroneous motion estimates with the rejection criterion. Altogether, the results show the potential of the framework for application in real-time MR-guided radiotherapy with an MR-linac.

Original languageEnglish
Article number102843
Number of pages14
JournalMedical Image Analysis
Volume88
Early online date18 May 2023
DOIs
Publication statusPublished - Aug 2023

Keywords

  • Gaussian Processes
  • Motion estimation
  • MR-guided radiotherapy
  • MR-linac
  • Real-time
  • Respiratory motion
  • Uncertainty estimation

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