Healthcare Technology Letters (Oct 2018)

Experience-based SEEG planning: from retrospective data to automated electrode trajectories suggestions

  • Davide Scorza,
  • Gaetano Amoroso,
  • Gaetano Amoroso,
  • Camilo Cortés,
  • Arkaitz Artetxe,
  • Álvaro Bertelsen,
  • Michele Rizzi,
  • Laura Castana,
  • Elena De Momi,
  • Francesco Cardinale,
  • Luis Kabongo

DOI
https://doi.org/10.1049/htl.2018.5075

Abstract

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StereoElectroEncephaloGraphy (SEEG) is a minimally invasive technique that consists of the insertion of multiple intracranial electrodes to precisely identify the epileptogenic focus. The planning of electrode trajectories is a cumbersome and time-consuming task. Current approaches to support the planning focus on electrode trajectory optimisation based on geometrical constraints but are not helpful to produce an initial electrode set to begin with the planning procedure. In this work, the authors propose a methodology that analyses retrospective planning data and builds a set of average trajectories, representing the practice of a clinical centre, which can be mapped to a new patient to initialise planning procedure. They collected and analysed the data from 75 anonymised patients, obtaining 30 exploratory patterns and 61 mean trajectories in an average brain space. A preliminary validation on a test set showed that they were able to correctly map 90% of those trajectories and, after optimisation, they have comparable or better values than manual trajectories in terms of distance from vessels and insertion angle. Finally, by detecting and analysing similar plans, they were able to identify eight planning strategies, which represent the main tailored sets of trajectories that neurosurgeons used to deal with the different patient cases.

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