4.6 Article

Automated Prediction of Extraction Difficulty and Inferior Alveolar Nerve Injury for Mandibular Third Molar Using a Deep Neural Network

期刊

APPLIED SCIENCES-BASEL
卷 12, 期 1, 页码 -

出版社

MDPI
DOI: 10.3390/app12010475

关键词

mandibular third molar; extraction difficulty; inferior alveolar nerve (IAN) injury; deep neural network; panoramic radiographic image

资金

  1. Institute of Information & communications Technology Planning & Evaluation (IITP) - Korea government(MSIT) [2020-0-00857]

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This study proposes a method for automatically detecting mandibular third molars in panoramic radiographic images and predicting the difficulty of extraction and likelihood of inferior alveolar nerve injury. The dataset consists of 4903 panoramic radiographic images, and deep learning models achieved high accuracy in detecting the third molars and predicting extraction difficulty and nerve injury likelihood.
Extraction of mandibular third molars is a common procedure in oral and maxillofacial surgery. There are studies that simultaneously predict the extraction difficulty of mandibular third molar and the complications that may occur. Thus, we propose a method of automatically detecting mandibular third molars in the panoramic radiographic images and predicting the extraction difficulty and likelihood of inferior alveolar nerve (IAN) injury. Our dataset consists of 4903 panoramic radiographic images acquired from various dental hospitals. Seven dentists annotated detection and classification labels. The detection model determines the mandibular third molar in the panoramic radiographic image. The region of interest (ROI) includes the detected mandibular third molar, adjacent teeth, and IAN, which is cropped in the panoramic radiographic image. The classification models use ROI as input to predict the extraction difficulty and likelihood of IAN injury. The achieved detection performance was 99.0% mAP over the intersection of union (IOU) 0.5. In addition, we achieved an 83.5% accuracy for the prediction of extraction difficulty and an 81.1% accuracy for the prediction of the likelihood of IAN injury. We demonstrated that a deep learning method can support the diagnosis for extracting the mandibular third molar.

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