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Bridging the Skill Gap in Clinical CBCT Interpretation with CBCTRepD

arXiv cs.CV / 3/12/2026

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Key Points

  • CBCTRepD is introduced as a bilingual CBCT report-generation system designed for integration into radiologist-AI co-authoring workflows.
  • The authors curated a large paired CBCT-report dataset (~7,408 studies across 55 oral disease entities and diverse acquisition settings) to train and validate the system.
  • They establish a multi-level evaluation framework combining automatic metrics with radiologist- and clinician-centered assessments, showing AI drafts comparable in quality to intermediate radiologists.
  • In radiologist-AI collaboration, CBCTRepD demonstrably aids novices toward intermediate performance, helps intermediates approach senior-level reporting, and reduces omission-related errors for senior radiologists, improving report structure and lesion-completion across anatomical regions.

Abstract

Generative AI has advanced rapidly in medical report generation; however, its application to oral and maxillofacial CBCT reporting remains limited, largely because of the scarcity of high-quality paired CBCT-report data and the intrinsic complexity of volumetric CBCT interpretation. To address this, we introduce CBCTRepD, a bilingual oral and maxillofacial CBCT report-generation system designed for integration into routine radiologist-AI co-authoring workflows. We curated a large-scale, high-quality paired CBCT-report dataset comprising approximately 7,408 studies, covering 55 oral disease entities across diverse acquisition settings, and used it to develop the system. We further established a clinically grounded, multi-level evaluation framework that assesses both direct AI-generated drafts and radiologist-edited collaboration reports using automatic metrics together with radiologist- and clinician-centered evaluation. Using this framework, we show that CBCTRepD achieves superior report-generation performance and produces drafts with writing quality and standardization comparable to those of intermediate radiologists. More importantly, in radiologist-AI collaboration, CBCTRepD provides consistent and clinically meaningful benefits across experience levels: it helps novice radiologists improve toward intermediate-level reporting, enables intermediate radiologists to approach senior-level performance, and even assists senior radiologists by reducing omission-related errors, including clinically important missed lesions. By improving report structure, reducing omissions, and promoting attention to co-existing lesions across anatomical regions, CBCTRepD shows strong and reliable potential as a practical assistant for real-world CBCT reporting across multi-level care settings.