Osteoporosis prescreening using dental panoramic radiographs feature analysis

Chunjuan Bo, Xin Liang, Peng Chu, Jonathan Xu, D. Wang, Jie Yang, V. Megalooikonomou, H. Ling
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引用次数: 13

Abstract

A panoramic radiography image provides not only details of teeth but also rich information about trabecular bone. Recent studies have addressed the correlation between trabecular bone structure and osteoporosis. In this paper, we collect a dataset containing 40 images from 40 different subjects, and construct a new methodology based on a two-stage classification framework that combines multiple trabecular bone regions of interest (ROIs) for osteoporosis prescreening. In the first stage, different support vector machines (SVMs) are adopted to describe different information of different ROIs. In the second stage, the output probabilities of the first stage are effectively combined by using an additional linear SVM model to make a final prediction. Based on our two stage model, we test the performance of different image features by using leave-one-out cross-valuation and analysis of variance rules. The results suggest that the proposed method with the HOG (histogram of oriented gradients) feature achieves the best overall accuracy.
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骨质疏松症的牙科全景x线片预筛特征分析
全景x线摄影图像不仅提供牙齿的细节,而且提供有关小梁骨的丰富信息。近年来的研究已经探讨了骨小梁结构与骨质疏松症的关系。在本文中,我们收集了一个包含40个不同受试者的40张图像的数据集,并构建了一种基于两阶段分类框架的新方法,该框架结合了多个感兴趣的骨小梁区域(roi),用于骨质疏松症的预筛查。第一阶段采用不同的支持向量机(svm)来描述不同roi的不同信息。在第二阶段,通过使用附加的线性支持向量机模型有效地组合第一阶段的输出概率,进行最终预测。在两阶段模型的基础上,利用留一交叉评价和方差规则分析对不同图像特征的性能进行了测试。结果表明,采用HOG (histogram of oriented gradients)特征的方法获得了最好的整体精度。
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