Journal of Mathematics in Industry (Sep 2024)

Ensemble Kalman inversion for image guided guide wire navigation in vascular systems

  • Matei Hanu,
  • Jürgen Hesser,
  • Guido Kanschat,
  • Javier Moviglia,
  • Claudia Schillings,
  • Jan Stallkamp

DOI
https://doi.org/10.1186/s13362-024-00159-4
Journal volume & issue
Vol. 14, no. 1
pp. 1 – 21

Abstract

Read online

Abstract This paper addresses the challenging task of guide wire navigation in cardiovascular interventions, focusing on the parameter estimation of a guide wire system using Ensemble Kalman Inversion (EKI) with a subsampling technique. The EKI uses an ensemble of particles to estimate the unknown quantities. However, since the data misfit has to be computed for each particle in each iteration, the EKI may become computationally infeasible in the case of high-dimensional data, e.g. high-resolution images. This issue can been addressed by randomised algorithms that utilize only a random subset of the data in each iteration. We introduce and analyse a subsampling technique for the EKI, which is based on a continuous-time representation of stochastic gradient methods and apply it to on the parameter estimation of our guide wire system. Numerical experiments with real data from a simplified test setting demonstrate the potential of the method.

Keywords