TL;DR
This paper introduces a novel negative volume segmentation method for 3D medical images, automating the process of analyzing the space around anatomical structures to assess joint health efficiently.
Contribution
It proposes an end-to-end pipeline using a V-Net and volume inflation to segment negative space, addressing challenges in complex joint segmentation tasks.
Findings
Validated on 50 patient CT scans with expert annotations
Quantitative comparison of asymmetry in negative volumes
Automated framework suitable for clinical use
Abstract
Clinical examination of three-dimensional image data of compound anatomical objects, such as complex joints, remains a tedious process, demanding the time and the expertise of physicians. For instance, automation of the segmentation task of the TMJ (temporomandibular joint) has been hindered by its compound three-dimensional shape, multiple overlaid textures, an abundance of surrounding irregularities in the skull, and a virtually omnidirectional range of the jaw's motion - all of which extend the manual annotation process to more than an hour per patient. To address the challenge, we invent a new angle to the 3D segmentation task: namely, we propose to segment empty spaces between all the tissues surrounding the object - the so-called negative volume segmentation. Our approach is an end-to-end pipeline that comprises a V-Net for bone segmentation, a 3D volume construction by inflation…
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