口腔医学 ›› 2026, Vol. 46 ›› Issue (2): 106-111.doi: 10.13591/j.cnki.kqyx.2026.02.004

• 基础与临床研究 • 上一篇    下一篇

基于融合注意力机制的深度学习网络在上颌前牙阻生预测中的研究

牛娜君1,2,3, 李欣瑶4, 李俊诚4, 王华1,2,3()   

  1. 1 南京医科大学附属口腔医院正畸科, 江苏南京 (210029)
    2 口腔疾病研究与防治国家级重点实验室培育建设点(南京医科大学), 江苏南京 (210029)
    3 江苏省口腔转化医学工程研究中心, 江苏南京 (210029)
    4 上海大学通信与信息工程学院, 上海 (201900)
  • 收稿日期:2025-06-02 出版日期:2026-02-28 发布日期:2026-03-09
  • 通讯作者: 王 华 E-mail:huawang@njmu.edu.cn
  • 基金资助:
    国家自然科学基金(81500815);国家自然科学基金(62301306);江苏省科教能力提升工程——江苏省研究型医院(YJXYYJSDW4);江苏省医学创新中心(CXZX202227)

Automatic prediction of maxillary anterior impacted teeth using a deep learning network based on fusion attention mechanism

NIU Najun1,2,3, LI Xinyao4, LI Juncheng4, WANG Hua1,2,3()   

  1. Department of Orthodontics, The Affiliated Stomatological Hospital of Nanjing Medical University, Nanjing 210029, China
  • Received:2025-06-02 Online:2026-02-28 Published:2026-03-09

摘要:

目的 构建端到端的轻量级深度学习网络,利用全景X光片实现儿童上颌前牙区阻生牙的自动预测。方法 收集216例5~12岁患者的全景X光片,选取上颌的6颗前牙,共1 296颗牙齿样本作为研究对象。通过构建基于融合注意力机制的轻量化深度网络模型(FA-UNet),以全景X光片为输入,以临床医生的诊断为金标准,学习影像特征与临床诊断结果间的潜在映射关系,实现儿童上颌前牙区阻生牙的自动预测与分割。FA-UNet的性能评估基于像素级(准确率、灵敏度、特异度、阳性预测值、平均交并比、F1分数)和牙齿级分类准确率。结果 以人工诊断为标准,FA-UNet在儿童上颌前牙区阻生牙像素级预测上获得结果的准确率为0.866,灵敏度为0.551,特异度为0.995,阳性预测值为0.977,平均交并比为0.544,F1分数为0.705,牙齿级分类准确率为87.5%。结论 FA-UNet模型有效提升了儿童上颌前牙区阻生牙的预测准确率。

关键词: 阻生牙预测, 上颌前牙, 全景X光片, 融合注意力机制, Mamba

Abstract:

Objective To develop an end-to-end lightweight deep learning network to automatically predict impacted maxillary anterior teeth in young children using panoramic X-rays. Methods Panoramic X-rays of 216 patients aged 5-12 years were collected, and 6 anterior teeth of each sample were selected, with a total of 1 296 tooth samples as the research objects. By constructing a lightweight deep network model(FA-UNet) based on the fusion attention mechanism, taking panoramic X-rays as input and the clinician’s diagnosis as the gold standard, the potential mapping relationship between image features and clinical diagnosis results was learned to achieve automatic prediction and segmentation of impacted teeth in the maxillary anterior teeth of young children. The performance was evaluated using both pixel-level metrics (accuracy, sensitivity, specificity, PPV, mIoU, F1-score) and tooth-level classification accuracy. Results Taking manual diagnosis as the standard, FA-UNet model demonstrated the following performance metrics for pixel-level prediction of maxillary anterior impacted teeth in pediatric patients: accuracy of 0.866, sensitivity of 0.551, specificity of 0.995, PPV of 0.977, mIoU of 0.544, and F1-score of 0.705. Additionally, it attained a tooth-level classification accuracy of 87.5%. Conclusion FA-UNet model effectively improves the prediction accuracy of impacted teeth in the maxillary anterior teeth of children.

Key words: impacted tooth prediction, maxillary anterior teeth, panoramic X-ray, fusion attention mechanism, Mamba

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