State Key Laboratory of Oral Diseases, National Center of Stomatology, West China Hospital of Stomatology, National Clinical Research Center for Oral Diseases, Sichuan University, 14#, 3rd Section, Renmin South Road, Chengdu, 610041, China.
Chongqing University Three Gorges Hospital, Chongqing, 404031, China.
BMC Oral Health. 2023 May 25;23(1):327. doi: 10.1186/s12903-023-03033-8.
Sexual dimorphism is obvious not only in the overall architecture of human body, but also in intraoral details. Many studies have found a correlation between gender and morphometric features of teeth, such as mesio-distal diameter, buccal-lingual diameter and height. However, it's still difficult to detect gender through the observation of intraoral photographs, with accuracy around 50%. The purpose of this study was to explore the possibility of automatically telling gender from intraoral photographs by deep neural network, and to provide a novel angle for individual oral treatment.
A deep learning model based on R-net was proposed, using the largest dataset (10,000 intraoral images) to support the automatic detection of gender. In order to reverse analyze the classification basis of neural network, Gradient-weighted Class Activation Mapping (Grad-CAM) was used in the second step, exploring anatomical factors associated with gender recognizability. The simulated modification of images based on features suggested was then conducted to verify the importance of characteristics between two genders. Precision (specificity), recall (sensitivity) and receiver operating characteristic (ROC) curves were used to evaluate the performance of our network. Chi-square test was used to evaluate intergroup difference. A value of p < 0.05 was considered statistically significant.
The deep learning model showed a strong ability to learn features from intraoral images compared with human experts, with an accuracy of 86.5% and 82.5% in uncropped image data group and cropped image data group respectively. Compared with hard tissue exposed in the mouth, gender difference in areas covered by soft tissue was easier to identify, and more significant in mandibular region than in maxillary region. For photographs with simulated removal of lips and basal bone along with overlapping gingiva, mandibular anterior teeth had similar importance for sex determination as maxillary anterior teeth.
Deep learning method could detect gender from intraoral photographs with high efficiency and accuracy. With assistance of Grad-CAM, the classification basis of neural network was deciphered, which provided a more precise entry point for individualization of prosthodontic, periodontal and orthodontic treatments.
性二态性不仅表现在人体整体结构上,也表现在口腔内部细节上。许多研究发现,性别与牙齿的形态特征之间存在相关性,如近远中径、颊舌径和高度。然而,通过观察口腔内照片来检测性别仍然很困难,准确率约为 50%。本研究旨在探讨通过深度神经网络自动从口腔内照片中判断性别的可能性,并为个体口腔治疗提供新的视角。
提出了一种基于 R-net 的深度学习模型,使用最大的数据集(10000 张口腔内图像)支持性别自动检测。为了反向分析神经网络的分类依据,第二步使用了梯度加权类激活映射(Grad-CAM),探索与性别可识别性相关的解剖因素。然后根据特征建议对图像进行模拟修改,以验证两性特征的重要性。使用精度(特异性)、召回率(敏感性)和接收器工作特征(ROC)曲线来评估我们网络的性能。卡方检验用于评估组间差异。p 值<0.05 被认为具有统计学意义。
与人类专家相比,深度学习模型从口腔内图像中学习特征的能力更强,在未裁剪图像数据组和裁剪图像数据组中的准确率分别为 86.5%和 82.5%。与暴露在口腔内的硬组织相比,软组织覆盖区域的性别差异更容易识别,下颌区域比上颌区域更明显。对于模拟去除嘴唇和基底骨以及重叠牙龈的照片,下颌前牙对性别确定的重要性与上颌前牙相似。
深度学习方法可以从口腔内照片中高效、准确地检测性别。借助 Grad-CAM 对神经网络的分类依据进行了破译,为个性化修复、牙周和正畸治疗提供了更精确的切入点。