Enhanced artificial intelligence-based diagnosis using CBCT with internal denoising: Clinical validation for discrimination of fungal ball, sinusitis, and normal cases in the maxillary sinus
Kyungsu Kim, Chae Yeon Lim, Joong Bo Shin, Myung Jin Chung, Yong Gi, Jung

TL;DR
This study introduces an AI-based CBCT diagnosis method with a denoising module that reconstructs full-dose images, significantly enhancing accuracy and clinical utility in distinguishing sinus diseases.
Contribution
It presents a novel denoising approach integrated into AI diagnosis for CBCT, addressing noise issues and improving diagnostic performance in sinus disease detection.
Findings
Improved AUC and accuracy metrics by over 7% and 9% respectively.
Enhanced human diagnosis accuracy by 11%.
Demonstrated clinical effectiveness of denoising in CBCT AI diagnosis.
Abstract
The cone-beam computed tomography (CBCT) provides 3D volumetric imaging of a target with low radiation dose and cost compared with conventional computed tomography, and it is widely used in the detection of paranasal sinus disease. However, it lacks the sensitivity to detect soft tissue lesions owing to reconstruction constraints. Consequently, only physicians with expertise in CBCT reading can distinguish between inherent artifacts or noise and diseases, restricting the use of this imaging modality. The development of artificial intelligence (AI)-based computer-aided diagnosis methods for CBCT to overcome the shortage of experienced physicians has attracted substantial attention. However, advanced AI-based diagnosis addressing intrinsic noise in CBCT has not been devised, discouraging the practical use of AI solutions for CBCT. To address this issue, we propose an AI-based…
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Taxonomy
TopicsSinusitis and nasal conditions · Dental Radiography and Imaging · Oral and Maxillofacial Pathology
