Department of Oral and Craniofacial Sciences, University of Missouri-Kansas City, USA.
Department of Computer Science, University of Missouri-Kansas City, USA; Department of Computing and Informatics, Saudi Electronic University, Saudi Arabia.
J Dent. 2024 Jan;140:104779. doi: 10.1016/j.jdent.2023.104779. Epub 2023 Nov 24.
It is critical for dentists to identify and differentiate primary and permanent teeth, fillings, dental restorations and areas with pathological findings when reviewing dental radiographs to ensure that an accurate diagnosis is made and the optimal treatment can be planned. Unfortunately, dental radiographs are sometimes read incorrectly due to human error or low-quality images. While secondary or group review can help catch errors, many dentists work in practice alone and/or do not have time to review all of their patients' radiographs with another dentist. Artificial intelligence may facilitate the accurate interpretation of radiographs. To help support the review of panoramic radiographs, we developed a novel collaborative learning model that simultaneously identifies and differentiates primary and permanent teeth and detects fillings.
We used publicly accessible dental panoramic radiographic images and images obtained from the University of Missouri-Kansas City, School of Dentistry to develop and optimize two high-performance classifiers: (1) a system for tooth segmentation that can differentiate primary and permanent teeth and (2) a system to detect dental fillings.
By utilizing these high-performance classifiers, we created models that can identify primary and permanent teeth (mean average precision [mAP] 95.32 % and performance [F-1] 92.50 %), as well as their associated dental fillings (mAP 91.53 % and F-1 91.00 %). We also designed a novel method for collaborative learning that utilizes these two classifiers to enhance recognition performance (mAP 94.09 % and F-1 93.41 %).
Our model improves upon the existing machine learning models to simultaneously identify and differentiate primary and permanent teeth, and to identify any associated fillings.
Human error can lead to incorrect readings of panoramic radiographs. By developing artificial intelligence and machine learning methods to analyze panoramic radiographs, dentists can use this information to support their radiograph interpretations, help communicate the information to patients, and assist dental students learning to read radiographs.
牙医在审查牙科射线照片时,必须识别和区分乳牙和恒牙、填充物、牙修复体和有病理发现的区域,以确保做出准确的诊断,并能规划最佳的治疗方案。不幸的是,由于人为错误或图像质量低,牙科射线照片有时会被错误解读。虽然二次或小组审查可以帮助发现错误,但许多牙医独自在实践中工作,或者没有时间与另一位牙医一起审查所有患者的射线照片。人工智能可能有助于准确解读射线照片。为了帮助支持全景射线照片的审查,我们开发了一种新的协同学习模型,该模型可同时识别和区分乳牙和恒牙,并检测填充物。
我们使用了公开获取的牙科全景射线照片和来自密苏里堪萨斯城大学牙科学院的图像,开发并优化了两个高性能分类器:(1)一个可以区分乳牙和恒牙的牙齿分割系统,(2)一个检测牙填充物的系统。
通过使用这些高性能分类器,我们创建了可以识别乳牙和恒牙的模型(平均精度 [mAP] 95.32%,性能 [F-1] 92.50%),以及它们相关的牙填充物(mAP 91.53%,F-1 91.00%)。我们还设计了一种新的协同学习方法,利用这两个分类器来提高识别性能(mAP 94.09%,F-1 93.41%)。
我们的模型改进了现有的机器学习模型,以同时识别和区分乳牙和恒牙,并识别任何相关的填充物。
人为错误可能导致全景射线照片的读数不正确。通过开发人工智能和机器学习方法来分析全景射线照片,牙医可以使用这些信息来支持他们的射线照片解读,帮助向患者传达信息,并协助学习阅读射线照片的牙科学生。