OrthoFusion: A Super-Resolution Algorithm to Fuse Orthogonal CT Volumes
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Ellingson, Arin M
ellin224@umn.edu
ellin224@umn.edu
Abstract
OrthoFusion, an intuitive super-resolution algorithm, is presented in this study to enhance the spatial resolution of clinical CT volumes. The efficacy of OrthoFusion is evaluated, relative to high-resolution CT volumes (ground truth), by assessing image volume and derived bone morphological similarity, as well as its performance in specific applications in 2D-3D registration tasks. Results demonstrate that OrthoFusion significantly reduced segmentation time, while improving structural similarity of bone images and relative accuracy of derived bone model geometries. Moreover, it proved beneficial in the context of biplane videoradiography, enhancing the similarity of digitally reconstructed radiographs to radiographic images and improving the accuracy of relative bony kinematics. OrthoFusion's simplicity, ease of implementation, and generalizability make it a valuable tool for researchers and clinicians seeking high spatial resolution from existing clinical CT data. This study opens new avenues for retrospectively utilizing clinical images for research and advanced clinical purposes, while reducing the need for additional scans, mitigating associated costs and radiation exposure.
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This work was funded by the following NIH grants: R03HD09771, TL1R002493, UL1TR002494, and F32AR082276. Additionally, this work was supported by the Minnesota Partnership for Biotechnology and Medical Genomics (MHP IF #14.02).
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Ellingson, Arin M. (2024). OrthoFusion: A Super-Resolution Algorithm to Fuse Orthogonal CT Volumes. Retrieved from the Data Repository for the University of Minnesota (DRUM), https://hdl.handle.net/11299/266459.
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