A Learning-based Method for Online Adjustment of C-arm Cone-Beam CT Source Trajectories for Artifact Avoidance
Mareike Thies, Jan-Nico Z\"ach, Cong Gao, Russell Taylor, Nassir, Navab, Andreas Maier, Mathias Unberath

TL;DR
This paper introduces a learning-based method that dynamically adjusts C-arm CBCT source trajectories during scans to reduce metal artifacts and improve image quality for screw placement verification.
Contribution
It proposes a neural network-driven approach for real-time, scene-specific trajectory optimization to enhance CBCT reconstruction quality in the presence of metal artifacts.
Findings
Neural networks can predict quality metrics for view selection.
Scene-specific trajectories improve image quality and reduce artifacts.
Method works on both simulated and real CBCT data.
Abstract
During spinal fusion surgery, screws are placed close to critical nerves suggesting the need for highly accurate screw placement. Verifying screw placement on high-quality tomographic imaging is essential. C-arm Cone-beam CT (CBCT) provides intraoperative 3D tomographic imaging which would allow for immediate verification and, if needed, revision. However, the reconstruction quality attainable with commercial CBCT devices is insufficient, predominantly due to severe metal artifacts in the presence of pedicle screws. These artifacts arise from a mismatch between the true physics of image formation and an idealized model thereof assumed during reconstruction. Prospectively acquiring views onto anatomy that are least affected by this mismatch can, therefore, improve reconstruction quality. We propose to adjust the C-arm CBCT source trajectory during the scan to optimize reconstruction…
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