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基于全景片的自动深度学习对根尖病变的分割:一项人工智能研究。

Segmentation of periapical lesions with automatic deep learning on panoramic radiographs: an artificial intelligence study.

机构信息

Faculty of Dentistry, Department of Dentomaxillofacial Surgery, Cyprus International University, Nicosia, Cyprus.

Faculty of Dentistry, Department of Dentomaxillofacial Radiology, Cyprus International University, Nicosia, Cyprus.

出版信息

BMC Oral Health. 2024 Nov 1;24(1):1332. doi: 10.1186/s12903-024-05126-4.

Abstract

Periapical periodontitis may manifest as a radiographic lesion radiographically. Periapical lesions are amongst the most common dental pathologies that present as periapical radiolucencies on panoramic radiographs. The objective of this research is to assess the diagnostic accuracy of an artificial intelligence (AI) model based on U²-Net architecture in the detection of periapical lesions on dental panoramic radiographs and to determine whether they can be useful in aiding clinicians with diagnosis of periapical lesions and improving their clinical workflow. 400 panoramic radiographs that included at least one periapical radiolucency were selected retrospectively. 780 periapical radiolucencies in these anonymized radiographs were manually labeled by two independent examiners. These radiographs were later used to train the AI model based on U²-Net architecture trained using a deep supervision algorithm. An AI model based on the U²-Net architecture was implemented. The model achieved a dice score of 0.8 on the validation set and precision, recall, and F1-score of 0.82, 0.77, and 0.8 respectively on the test set. This study has shown that an AI model based on U²-Net architecture can accurately diagnose periapical lesions on panoramic radiographs. The research provides evidence that AI-based models have promising applications as adjunct tools for dentists in diagnosing periapical radiolucencies and procedure planning. Further studies with larger data sets would be required to improve the diagnostic accuracy of AI-based detection models.

摘要

根尖周炎可能表现为影像学病变。根尖病变是最常见的牙科病理学之一,在全景放射片中表现为根尖透亮区。本研究旨在评估基于 U²-Net 架构的人工智能 (AI) 模型在检测牙全景放射片中根尖病变的诊断准确性,并确定它们是否有助于临床医生诊断根尖病变并改善其临床工作流程。本研究回顾性选择了 400 张至少包含一个根尖透亮区的全景放射片。这 780 个根尖透亮区在这些匿名放射片中由两名独立的检查者手动标记。这些放射片后来被用于训练基于 U²-Net 架构的 AI 模型,该模型使用深度监督算法进行训练。实施了基于 U²-Net 架构的 AI 模型。该模型在验证集上的骰子得分达到 0.8,在测试集上的精度、召回率和 F1 分数分别为 0.82、0.77 和 0.8。本研究表明,基于 U²-Net 架构的 AI 模型可以准确诊断全景放射片中的根尖病变。该研究为 AI 模型作为牙医诊断根尖透亮区和手术计划的辅助工具提供了有前途的应用证据。需要进一步的研究,以提高基于人工智能的检测模型的诊断准确性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5bf4/11529158/e43446b1eb8b/12903_2024_5126_Fig1_HTML.jpg

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