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基于全景X线片的人工智能模型检测下颌第三磨牙与下牙槽神经的实际接触关系

Artificial Intelligence Model to Detect Real Contact Relationship between Mandibular Third Molars and Inferior Alveolar Nerve Based on Panoramic Radiographs.

作者信息

Zhu Tianer, Chen Daqian, Wu Fuli, Zhu Fudong, Zhu Haihua

机构信息

Stomatology Hospital, School of Stomatology, Zhejiang University School of Medicine, Clinical Research Center for Oral Disease of Zhejiang Province, Key Laboratory of Oral Biomedical Research of Zhejiang Province, Cancer Center of Zhejiang University, Hangzhou 310006, China.

School of Computer Science and Technology, Zhejiang University of Technology, Hangzhou 310006, China.

出版信息

Diagnostics (Basel). 2021 Sep 11;11(9):1664. doi: 10.3390/diagnostics11091664.

Abstract

This study aimed to develop a novel detection model for automatically assessing the real contact relationship between mandibular third molars (MM3s) and the inferior alveolar nerve (IAN) based on panoramic radiographs processed with deep learning networks, minimizing pseudo-contact interference and reducing the frequency of cone beam computed tomography (CBCT) use. A deep-learning network approach based on YOLOv4, named as MM3-IANnet, was applied to oral panoramic radiographs for the first time. The relationship between MM3s and the IAN in CBCT was considered the real contact relationship. Accuracy metrics were calculated to evaluate and compare the performance of the MM3-IANnet, dentists and a cooperative approach with dentists and the MM3-IANnet. Our results showed that in comparison with detection by dentists (AP = 76.45%) or the MM3-IANnet (AP = 83.02%), the cooperative dentist-MM3-IANnet approach yielded the highest average precision (AP = 88.06%). In conclusion, the MM3-IANnet detection model is an encouraging artificial intelligence approach that might assist dentists in detecting the real contact relationship between MM3s and IANs based on panoramic radiographs.

摘要

本研究旨在开发一种新型检测模型,基于经深度学习网络处理的全景X线片,自动评估下颌第三磨牙(MM3)与下牙槽神经(IAN)之间的实际接触关系,最大限度减少假接触干扰,并降低锥束计算机断层扫描(CBCT)的使用频率。一种基于YOLOv4的深度学习网络方法,命名为MM3 - IANnet,首次应用于口腔全景X线片。CBCT中MM3与IAN之间的关系被视为实际接触关系。计算准确性指标以评估和比较MM3 - IANnet、牙医以及牙医与MM3 - IANnet的协作方法的性能。我们的结果表明,与牙医检测(平均精度[AP]=76.45%)或MM3 - IANnet检测(AP = 83.02%)相比,牙医 - MM3 - IANnet协作方法产生了最高的平均精度(AP = 88.06%)。总之,MM3 - IANnet检测模型是一种令人鼓舞的人工智能方法,可能有助于牙医基于全景X线片检测MM3与IAN之间的实际接触关系。

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