De Tobel J, Radesh P, Vandermeulen D, Thevissen P W
Department of Oral Health Sciences - Forensic Dentistry, KU Leuven and Department of Dentistry - University Hospitals Leuven, Belgium.
Department of Electrical Engineering - ESAT/PSI, KU Leuven, Belgium.
J Forensic Odontostomatol. 2017 Dec 1;35(2):42-54.
Automated methods to evaluate growth of hand and wrist bones on radiographs and magnetic resonance imaging have been developed. They can be applied to estimate age in children and subadults. Automated methods require the software to (1) recognise the region of interest in the image(s), (2) evaluate the degree of development and (3) correlate this to the age of the subject based on a reference population. For age estimation based on third molars an automated method for step (1) has been presented for 3D magnetic resonance imaging and is currently being optimised (Unterpirker et al. 2015).
To develop an automated method for step (2) based on lower third molars on panoramic radiographs.
A modified Demirjian staging technique including ten developmental stages was developed. Twenty panoramic radiographs per stage per gender were retrospectively selected for FDI element 38. Two observers decided in consensus about the stages. When necessary, a third observer acted as a referee to establish the reference stage for the considered third molar. This set of radiographs was used as training data for machine learning algorithms for automated staging. First, image contrast settings were optimised to evaluate the third molar of interest and a rectangular bounding box was placed around it in a standardised way using Adobe Photoshop CC 2017 software. This bounding box indicated the region of interest for the next step. Second, several machine learning algorithms available in MATLAB R2017a software were applied for automated stage recognition. Third, the classification performance was evaluated in a 5-fold cross-validation scenario, using different validation metrics (accuracy, Rank-N recognition rate, mean absolute difference, linear kappa coefficient).
Transfer Learning as a type of Deep Learning Convolutional Neural Network approach outperformed all other tested approaches. Mean accuracy equalled 0.51, mean absolute difference was 0.6 stages and mean linearly weighted kappa was 0.82.
The overall performance of the presented automated pilot technique to stage lower third molar development on panoramic radiographs was similar to staging by human observers. It will be further optimised in future research, since it represents a necessary step to achieve a fully automated dental age estimation method, which to date is not available.
已经开发出用于评估手部和腕部骨骼在X线片和磁共振成像上生长情况的自动化方法。这些方法可用于估计儿童和青少年的年龄。自动化方法要求软件能够(1)识别图像中的感兴趣区域,(2)评估发育程度,以及(3)根据参考人群将其与受试者的年龄相关联。对于基于第三磨牙的年龄估计,已经提出了一种用于步骤(1)的3D磁共振成像自动化方法,目前正在进行优化(Unterpirker等人,2015年)。
基于全景X线片上的下颌第三磨牙开发一种用于步骤(2)的自动化方法。
开发了一种改良的Demirjian分期技术,包括十个发育阶段。针对FDI牙位38,按性别和阶段回顾性地选择每个阶段20张全景X线片。两名观察者就阶段达成共识。必要时,第三名观察者担任裁判,确定所考虑的第三磨牙的参考阶段。这组X线片用作机器学习算法进行自动分期的训练数据。首先,优化图像对比度设置以评估感兴趣的第三磨牙,并使用Adobe Photoshop CC 2017软件以标准化方式在其周围放置一个矩形边界框。该边界框指示下一步的感兴趣区域。其次,应用MATLAB R2017a软件中可用的几种机器学习算法进行自动阶段识别。第三,在5折交叉验证场景中使用不同的验证指标(准确率、排名-N识别率、平均绝对差、线性kappa系数)评估分类性能。
作为一种深度学习卷积神经网络方法的迁移学习优于所有其他测试方法。平均准确率为0.51,平均绝对差为0.6个阶段,平均线性加权kappa为0.82。
所提出的用于在全景X线片上对下颌第三磨牙发育进行分期的自动化试点技术的整体性能与人类观察者分期相似。由于它是实现全自动牙齿年龄估计方法(目前尚不存在)的必要步骤,因此将在未来的研究中进一步优化。