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Learning to Avoid Poor Images: Towards Task-aware C-arm Cone-beam CT Trajectories (1909.08868v1)

Published 19 Sep 2019 in eess.IV, cs.CV, and cs.LG

Abstract: Metal artifacts in computed tomography (CT) arise from a mismatch between physics of image formation and idealized assumptions during tomographic reconstruction. These artifacts are particularly strong around metal implants, inhibiting widespread adoption of 3D cone-beam CT (CBCT) despite clear opportunity for intra-operative verification of implant positioning, e.g. in spinal fusion surgery. On synthetic and real data, we demonstrate that much of the artifact can be avoided by acquiring better data for reconstruction in a task-aware and patient-specific manner, and describe the first step towards the envisioned task-aware CBCT protocol. The traditional short-scan CBCT trajectory is planar, with little room for scene-specific adjustment. We extend this trajectory by autonomously adjusting out-of-plane angulation. This enables C-arm source trajectories that are scene-specific in that they avoid acquiring "poor images", characterized by beam hardening, photon starvation, and noise. The recommendation of ideal out-of-plane angulation is performed on-the-fly using a deep convolutional neural network that regresses a detectability-rank derived from imaging physics.

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Authors (7)
  1. Jan-Nico Zaech (18 papers)
  2. Cong Gao (12 papers)
  3. Bastian Bier (5 papers)
  4. Russell Taylor (20 papers)
  5. Andreas Maier (394 papers)
  6. Nassir Navab (459 papers)
  7. Mathias Unberath (99 papers)
Citations (6)

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