Cephalogram Synthesis and Landmark Detection in Dental Cone-Beam CT Systems
Yixing Huang, Fuxin Fan, Christopher Syben, Philipp Roser, Leonid, Mill, Andreas Maier

TL;DR
This paper introduces advanced deep learning techniques to synthesize high-quality 2D cephalograms from 3D CBCT data, enhancing image contrast, resolution, and landmark detection accuracy for dental analysis.
Contribution
It proposes a novel sigmoid-based intensity transform, super resolution methods, and a pix2pixGAN for low-dose cephalogram synthesis, along with an effective landmark detection approach.
Findings
Pix2pixGAN achieves PSNR of 33.8 for cephalogram synthesis.
Super resolution with pix2pixGAN achieves PSNR of 32.5.
Landmark detection success rate reaches 86.7% within 2mm range.
Abstract
Due to the lack of standardized 3D cephalometric analytic methodology, 2D cephalograms synthesized from 3D cone-beam computed tomography (CBCT) volumes are widely used for cephalometric analysis in dental CBCT systems. However, compared with conventional X-ray film based cephalograms, such synthetic cephalograms lack image contrast and resolution. In addition, the radiation dose during the scan for 3D reconstruction causes potential health risks. In this work, we propose a sigmoid-based intensity transform that uses the nonlinear optical property of X-ray films to increase image contrast of synthetic cephalograms. To improve image resolution, super resolution deep learning techniques are investigated. For low dose purpose, the pixel-to-pixel generative adversarial network (pix2pixGAN) is proposed for 2D cephalogram synthesis directly from two CBCT projections. For landmark detection in…
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