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基于阈值连通分量分析的牙片图像分割。

Dental Images' Segmentation Using Threshold Connected Component Analysis.

机构信息

School of Mathematics, Statistics and Computer Science, University of KwaZulu-Natal, Durban 4000, South Africa.

出版信息

Comput Intell Neurosci. 2021 Dec 14;2021:2921508. doi: 10.1155/2021/2921508. eCollection 2021.

Abstract

Recent advances in medical imaging analysis, especially the use of deep learning, are helping to identify, detect, classify, and quantify patterns in radiographs. At the center of these advances is the ability to explore hierarchical feature representations learned from data. Deep learning is invaluably becoming the most sought out technique, leading to enhanced performance in analysis of medical applications and systems. Deep learning techniques have achieved great performance results in dental image segmentation. Segmentation of dental radiographs is a crucial step that helps the dentist to diagnose dental caries. The performance of these deep networks is however restrained by various challenging features of dental carious lesions. Segmentation of dental images becomes difficult due to a vast variety in topologies, intricacies of medical structures, and poor image qualities caused by conditions such as low contrast, noise, irregular, and fuzzy edges borders, which result in unsuccessful segmentation. The dental segmentation method used is based on thresholding and connected component analysis. Images are preprocessed using the Gaussian blur filter to remove noise and corrupted pixels. Images are then enhanced using erosion and dilation morphology operations. Finally, segmentation is done through thresholding, and connected components are identified to extract the Region of Interest (ROI) of the teeth. The method was evaluated on an augmented dataset of 11,114 dental images. It was trained with 10 090 training set images and tested on 1024 testing set images. The proposed method gave results of 93% for both precision and recall values, respectively.

摘要

医学成像分析的最新进展,特别是深度学习的应用,有助于识别、检测、分类和量化 X 光片中的模式。这些进展的核心是从数据中探索分层特征表示的能力。深度学习正变得越来越有价值,它提高了医学应用和系统的分析性能。深度学习技术在牙齿图像分割方面取得了优异的性能。X 光片的分割是帮助牙医诊断龋齿的关键步骤。然而,这些深度网络的性能受到龋齿病变各种挑战性特征的限制。由于拓扑结构的多样性、医学结构的复杂性以及对比度低、噪声、不规则和模糊边缘边界等条件导致的图像质量差,牙齿图像的分割变得困难,从而导致分割失败。所使用的牙齿分割方法基于阈值处理和连通分量分析。使用高斯模糊滤波器对图像进行预处理,以去除噪声和损坏的像素。然后使用腐蚀和膨胀形态学操作对图像进行增强。最后,通过阈值处理进行分割,并识别连通分量以提取牙齿的感兴趣区域(ROI)。该方法在一个扩充的 11114 张牙科图像数据集上进行了评估。它使用 10090 张训练集图像进行训练,并使用 1024 张测试集图像进行测试。该方法的准确率和召回率分别达到了 93%。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5b84/8691977/c9d921c39930/CIN2021-2921508.001.jpg

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