Clinical finding summaries from an orthopantomogram, or a dental panoramic radiograph, have significant potential to improve patient communication and speed up clinical judgments. While orthopantomogram is a first-line tool for dental examinations, no existing work has explored the summarization of findings from it. A finding summary has to find teeth in the imaging study and label the teeth with several types of past treatments. To tackle the problem, we developDeepOPG that breaks the summarization process into functional segmentation and tooth localization, the latter of which is further refined by a novel dental coherence module. We also leverage weak supervision labels to improve detection results in a reinforcement learning scenario. Experiments show high efficacy of DeepOPG on finding summarization, achieving an overall AUC of 88.2% in detecting six types of findings. The proposed dental coherence and weak supervision both are shown to improve DeepOPG by adding 5.9% and 0.4% to AP@IoU=0.5.
翻译:通过矫形剖面图或牙科全射线图获得临床发现摘要,在改善病人沟通和加快临床判断方面有很大潜力。虽然矫形剖面图是牙科检查的第一线工具,但现有工作尚未对结果的总结进行探讨。发现摘要必须在成像研究中找到牙齿,用过去几种治疗方法标出牙齿标签。为了解决这个问题,我们开发了DepOPG,将综合过程打破功能分割和牙齿定位,后者通过一个新的牙科一致性模块进一步完善。我们还利用薄弱的监督标签来改进强化学习情景中的检测结果。实验显示,深海观察组在寻找总结结果方面效率很高,在发现六类发现结果方面达到88.2%的整体ACU。拟议的牙科一致性和薄弱监督都通过在AP@IoU=0.5中增加5.9%和0.4%来改进深层观察组。