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Using Octuplet Siamese Network For Osteoporosis Analysis On Dental Panoramic Radiographs

机译:使用八连体连体网络对牙科全景X线片进行骨质疏松分析

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Dental Panoramic radiography (DPR) image provides a potentially inexpensive source to evaluate bone density change through visual clue analysis on trabecular bone structure. However, dense overlapping of bone structures in DPR image and scarcity of labeled samples make learning of accurate mapping from DPR patches to osteoporosis condition challenging. In this paper, we propose a deep Octuplet Siamese Network (OSN) to learn and fuse discriminative features for osteoporosis condition prediction using multiple DRP patches. By exploring common features, OSN uses patches of eight locations together to train the shared feature extractor. Feature fusion for different location adopts both accumulation and concatenation with fully considering of patches' spatial symmetry. In our dedicated two-stage fine-tuning scheme, an augmented texture analysis dataset is employed to prevent overfitting in transferring weights learned on ImageNet to DPR dataset when using merely 108 samples. Leave-one-out test shows that our proposed OSN outperforms all other state of the art methods in osteoporosis category classification task.
机译:牙科全景X射线照相(DPR)图像提供了潜在的廉价来源,可通过对小梁骨结构进行视觉线索分析来评估骨密度变化。然而,DPR图像中骨结构的密集重叠和标记样品的稀缺性使学习从DPR斑块到骨质疏松症状况的精确映射变得困难。在本文中,我们提出了一个深八度连体网络(OSN),以学习和融合使用多个DRP补丁预测骨质疏松状况的判别特征。通过探索共同的特征,OSN一起使用八个位置的补丁来训练共享特征提取器。充分考虑补丁的空间对称性,针对不同位置的特征融合既进行累加又进行级联。在我们专用的两阶段微调方案中,当仅使用108个样本时,采用了增强的纹理分析数据集,以防止过度拟合将ImageNet上学习的权重传递给DPR数据集。留一法测试表明,我们提出的OSN在骨质疏松症类别分类任务中的表现优于所有其他现有技术。

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