Ding Wanghui, Jiang Yindi, Pang Gaozhi, Liu Ziang, Wu Yuefan, Li Jianhua, Wu Fuli
Stomatology Hospital, School of Stomatology, Zhejiang University School of Medicine, Zhejiang Provincial Clinical Research Center for Oral Diseases, Key Laboratory of Oral Biomedical Research of Zhejiang Province, Cancer Center of Zhejiang University, Hangzhou, China.
Hangzhou Linping Traditional Chinese Medicine Hospital, China.
Heliyon. 2024 May 10;10(10):e31052. doi: 10.1016/j.heliyon.2024.e31052. eCollection 2024 May 30.
To establish a novel deep learning networks (MSF-MPTnet) based on panoramic radiographs (PRs) for automatic assessment of relationship between maxillary sinus floor (MSF) and maxillary posterior teeth (MPT), and to compare accuracy of MSF-MPTnet, dentists and radiologists identifying contact relationship.
A total of 1035 PRs and 1035 Cone-beam computed tomographys (CBCT)images were collected from January 2018 to April 2022. The relationships were classified into class I and II by CBCT. Class I represents non-contact group, and class II represents contact group. 350 PRs were randomly selected as test dataset and accuracy of MSF-MPTnet, dentists, and radiologists was compared.
The intraclass correlation coefficient of dentists was 0.460-0.690 and it was 0.453-0.664 for radiologists. Sensitivity and accuracy of MSF-MPTnet were 0.682-0.852and 0.890-0.951, indicating that the output performance of MSF-MPTnet was reliable. Accuracy of maxillary premolars and molars were 79.7%-90.3 %, 76.2%-89.2 % and 72.9%-88.3 % in MSF-MPTnet model, dentists and radiologists. Accuracy of class I relationship in the MSF-MPTnet model (67.7%-94.6 %) was higher than that of dentists (56.5%-84.6 %) in maxillary first premolars and right second premolar, and accuracy of class I relationship in the MSF-MPTnet model is also higher than radiologists (40.0%-78.1 %) in all teeth positions ( < 0.05).
MSF-MPTnet model could increase detecting accuracy of the relationship between MSF and MPT, minimize pseudo contact relationship and reduce frequency of CBCT use.
建立一种基于全景X线片(PR)的新型深度学习网络(MSF-MPTnet),用于自动评估上颌窦底(MSF)与上颌后牙(MPT)之间的关系,并比较MSF-MPTnet、牙医和放射科医生识别接触关系的准确性。
收集2018年1月至2022年4月期间的1035张PR和1035张锥形束计算机断层扫描(CBCT)图像。通过CBCT将关系分为I类和II类。I类代表非接触组,II类代表接触组。随机选择350张PR作为测试数据集,比较MSF-MPTnet、牙医和放射科医生的准确性。
牙医的组内相关系数为0.460 - 0.690,放射科医生的组内相关系数为0.453 - 0.664。MSF-MPTnet的敏感性和准确性分别为0.682 - 0.852和0.890 - 0.951,表明MSF-MPTnet的输出性能可靠。在MSF-MPTnet模型、牙医和放射科医生中,上颌前磨牙和磨牙的准确率分别为79.7% - 90.3%、76.2% - 89.2%和72.9% - 88.3%。在MSF-MPTnet模型中,上颌第一前磨牙和右第二前磨牙I类关系的准确率(67.7% - 94.6%)高于牙医(56.5% - 84.6%),并且在所有牙位中,MSF-MPTnet模型中I类关系的准确率也高于放射科医生(40.0% - 78.1%)(P < 0.05)。
MSF-MPTnet模型可提高MSF与MPT关系的检测准确性,减少假接触关系,降低CBCT的使用频率。