Hybrid model-based and deep learning-based metal artifact reduction method in dental cone-beam computed tomography

To present a hybrid approach that incorporates a constrained beam-hardening estimator (CBHE) and deep learning (DL)-based post-refinement for metal artifact reduction in dental cone-beam computed tomography (CBCT). Constrained beam-hardening estimator (CBHE) is derived from a polychromatic X-ray att...

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Veröffentlicht in:Nuclear engineering and technology 2023, 55(8), , pp.2854-2863
Hauptverfasser: Hur, Jin, Shin, Yeong-Gil, Lee, Ho
Format: Artikel
Sprache:eng
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Zusammenfassung:To present a hybrid approach that incorporates a constrained beam-hardening estimator (CBHE) and deep learning (DL)-based post-refinement for metal artifact reduction in dental cone-beam computed tomography (CBCT). Constrained beam-hardening estimator (CBHE) is derived from a polychromatic X-ray attenuation model with respect to X-ray transmission length, which calculates associated parameters numerically. Deep-learning-based post-refinement with an artifact disentanglement network (ADN) is performed to mitigate the remaining dark shading regions around a metal. Artifact disentanglement network (ADN) supports an unsupervised learning approach, in which no paired CBCT images are required. The network consists of an encoder that separates artifacts and content and a decoder for the content. Additionally, ADN with data normalization replaces metal regions with values from bone or soft tissue regions. Finally, the metal regions obtained from the CBHE are blended into reconstructed images. The proposed approach is systematically assessed using a dental phantom with two types of metal objects for qualitative and quantitative comparisons. The proposed hybrid scheme provides improved image quality in areas surrounding the metal while preserving native structures. This study may significantly improve the detection of areas of interest in many dentomaxillofacial applications.
ISSN:1738-5733
2234-358X
DOI:10.1016/j.net.2023.05.016