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Teeth Detection and Dental Problem Classification in Panoramic X-Ray Images using Deep Learning and Image Processing Techniques

机译:使用深度学习和图像处理技术的全景X射线图像中的牙齿检测和牙齿问题分类

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Deep convolutional neural networks, have gained a lot popularity in medical research due to their impressive results in detection, prediction and classification. Analysis of panoramic dental radiographies help specialists observe problems in poor visibility areas, inside the buccal cavity or in hard to reach areas. However, poor image quality or fatigue can cause the diagnosis to vary, which can ultimately hinder the treatment. In this paper we propose a novel approach of automatic teeth detection and dental problem classification using panoramic X-Ray images which can aid the medical staff in making decisions regarding the correct diagnosis. For this endeavor panoramic radiographies were collected from three dental clinics and annotated, highlighting 14 different dental issues that can appear. A CNN was trained using the annotated data for obtaining semantic segmentation information. Next, multiple image processing operations were performed for segmenting and refining the bounding boxes corresponding to the teeth detections. Finally, each tooth instance was labeled and the problem affecting it was identified using a histogram-based majority voting within the detected region of interest. The implemented solution was evaluated with respect to several metrics like intersection over union for the semantic segmentation and accuracy, precision, recall and F1-score for the generated bounding box detections. The results were compared qualitatively with the data obtained from other approaches illustrating the superiority of the proposed solution.
机译:深度卷积神经网络因其在检测,预测和分类方面的出色成果而在医学研究中广受欢迎。全景牙科X射线照片的分析可帮助专家观察能见度差的区域,颊腔内部或难以触及的区域中的问题。但是,较差的图像质量或疲劳会导致诊断发生变化,最终可能会阻碍治疗。在本文中,我们提出了一种使用全景X射线图像的自动牙齿检测和牙齿问题分类的新方法,该方法可以帮助医务人员做出有关正确诊断的决策。为此,从3个牙科诊所收集了全景X光片并进行了注释,突出显示了可能出现的14种不同的牙科问题。使用带注释的数据对CNN进行了训练,以获取语义分割信息。接下来,执行多个图像处理操作以分割和细化与牙齿检测相对应的包围盒。最后,对每个牙齿实例进行标记,并在检测到的关注区域内使用基于直方图的多数表决来识别影响牙齿的问题。已针对几种度量标准评估了已实现的解决方案,例如用于语义分割的联合交叉和用于生成的边界框检测的准确性,准确性,召回率和F1得分。将结果与从其他方法获得的数据进行了定性比较,这些数据说明了所提出解决方案的优越性。

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