China Journal of Oral and Maxillofacial Surgery ›› 2025, Vol. 23 ›› Issue (2): 122-128.doi: 10.19438/j.cjoms.2025.02.004

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Preliminary application of artificial intelligence in the pathological diagnosis of ameloblastoma

QIAO Xin-wei, LI Mao, SHEN Ze-liang, ZHANG Lin-han, ZHENG Zhi-jian, TANG Ya-ling   

  1. State Key Laboratory of Oral Diseases & National Clinical Research Center for Oral Diseases; Department of Pathology, West China Stomatology Hospital, Sichuan University. Chengdu 610041, Sichuan Province, China
  • Received:2024-08-05 Revised:2024-09-07 Online:2025-03-20 Published:2025-04-06

Abstract: PURPOSE: To investigate the effect of artificial intelligence in the pathological diagnosis of ameloblastoma, and to preliminarily explore the value of artificial intelligence in the field of oral pathology. METHODS: The pathological images of 90 cases of ameloblastoma were used as the research objects, and the U-net-like structure neural network was constructed. The 90 H-E images of ameloblastoma were divided into a training set (72 images), a validation set (9 images) and a test set (9 images) for training and testing the model respectively. The mIoU and ROC curve were used to evaluate the ability of the U-net network model in the identification of ameloblastoma epithelium. RESULTS: The mIoU of negative area segmented by U-net model was 0.818 and the positive area was 0.846. The area under the ROC curve was 0.92. CONCLUSIONS: The U-net network model has a good segmentation for the positive and negative regions of ameloblastoma, and can distinguish between negative and positive sections. It can be preliminarily applied to the pathological diagnosis of ameloblastoma, and is expected to be gradually popularized in clinical practice after further validation with large samples.

Key words: Ameloblastoma, Pathological diagnosis, Artificial intelligence, Oral pathology, U-net network, mIoU, ROC curve

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