A Customized Convolutional Neural Network for Dental Bitewing Images Segmentation

W. A. Nassan, T. Bonny, K. Obaideen, A. Hammal
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引用次数: 7

Abstract

Bitewing images are useful for recognizing the most common dental diseases, like tooth decay and periodontal bone loss. Besides providing important details like the condition of fillings and the presence of calculus or tartar. Due to the wide variety of topologies, the complexity of medical structures, and the poor image quality caused by problems like low contrast, noise, irregularities, and fuzzy edges borders, segmentation of dental images is difficult and often unsuccessful. Recent advances in deep learning models improve the performance of analyzing dental images. In this study, we build a customized Convolutional neural network (CNN) to segment the bitewing image. The bitewing radiographs, which will be used as input to the CNN model, are imported into MATLAB where the image is first enhanced before being segmented to create a binary mask image that excludes the background from the original images. Those masks are used as a target for the deep learning model. By training the proposed system with 456 bitewing images, the best accuracy we achieved on unseen images is 97.3% of accuracy, 88.27% of Fl-score.
牙咬翼图像分割的自定义卷积神经网络
咬痕图像对识别最常见的牙齿疾病很有用,比如蛀牙和牙周骨质流失。除了提供重要的细节,如填充物的状况和结石或牙垢的存在。由于各种各样的拓扑结构,医疗结构的复杂性,以及低对比度,噪声,不规则和模糊边缘边界等问题引起的图像质量差,牙科图像的分割是困难的,往往是不成功的。深度学习模型的最新进展提高了牙齿图像分析的性能。在这项研究中,我们建立了一个定制的卷积神经网络(CNN)来分割咬翼图像。将作为CNN模型输入的咬翼x线照片导入MATLAB,首先对图像进行增强,然后对图像进行分割,以创建一个将背景从原始图像中排除的二值掩模图像。这些掩码被用作深度学习模型的目标。通过对456张咬翼图像的训练,我们对未见图像的最佳准确率为97.3%,为Fl-score的88.27%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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