IVCVROJul 7, 2023

Thoracic Cartilage Ultrasound-CT Registration using Dense Skeleton Graph

arXiv:2307.03800v19 citationsh-index: 18Has Code
Originality Incremental advance
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This work addresses the problem of inter-operator variations in autonomous ultrasound imaging for thoracic procedures, offering an incremental improvement by focusing on bone features instead of skin.

The paper tackles the challenge of accurately mapping planned ultrasound paths from an atlas to individual patients for thoracic applications by proposing a graph-based non-rigid registration method that uses subcutaneous bone surface features, achieving a Hausdorff distance of 9.48±0.27 mm and a path transferring error of 2.21±1.11 mm.

Autonomous ultrasound (US) imaging has gained increased interest recently, and it has been seen as a potential solution to overcome the limitations of free-hand US examinations, such as inter-operator variations. However, it is still challenging to accurately map planned paths from a generic atlas to individual patients, particularly for thoracic applications with high acoustic-impedance bone structures under the skin. To address this challenge, a graph-based non-rigid registration is proposed to enable transferring planned paths from the atlas to the current setup by explicitly considering subcutaneous bone surface features instead of the skin surface. To this end, the sternum and cartilage branches are segmented using a template matching to assist coarse alignment of US and CT point clouds. Afterward, a directed graph is generated based on the CT template. Then, the self-organizing map using geographical distance is successively performed twice to extract the optimal graph representations for CT and US point clouds, individually. To evaluate the proposed approach, five cartilage point clouds from distinct patients are employed. The results demonstrate that the proposed graph-based registration can effectively map trajectories from CT to the current setup for displaying US views through limited intercostal space. The non-rigid registration results in terms of Hausdorff distance (Mean$\pm$SD) is 9.48$\pm$0.27 mm and the path transferring error in terms of Euclidean distance is 2.21$\pm$1.11 mm.

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