Automated external cervical resorption segmentation in cone-beam CT using local texture features
Journal:
arXiv
Published Date:
Jan 9, 2025
Abstract
External cervical resorption (ECR) is a resorptive process affecting teeth.
While in some patients, active resorption ceases and gets replaced by osseous
tissue, in other cases, the resorption progresses and ultimately results in
tooth loss. For proper ECR assessment, cone-beam computed tomography (CBCT) is
the recommended imaging modality, enabling a 3-D characterization of these
lesions. While it is possible to manually identify and measure ECR resorption
in CBCT scans, this process can be time intensive and highly subject to human
error. Therefore, there is an urgent need to develop an automated method to
identify and quantify the severity of ECR resorption using CBCT. Here, we
present a method for ECR lesion segmentation that is based on automatic, binary
classification of locally extracted voxel-wise texture features. We evaluate
our method on 6 longitudinal CBCT datasets and show that certain
texture-features can be used to accurately detect subtle CBCT signal changes
due to ECR. We also present preliminary analyses clustering texture features
within a lesion to stratify the defects and identify patterns indicative of
calcification. These methods are important steps in developing prognostic
biomarkers to predict whether ECR will continue to progress or cease,
ultimately informing treatment decisions.