Improving Segmentation of the Inferior Alveolar Nerve through Deep Label Propagation

Marco Cipriano, Stefano Allegretti, Federico Bolelli, F. Pollastri, C. Grana
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引用次数: 11

Abstract

Many recent works in dentistry and maxillofacial imagery focused on the Inferior Alveolar Nerve (IAN) canal detection. Unfortunately, the small extent of available 3D maxillofacial datasets has strongly limited the performance of deep learning-based techniques. On the other hand, a huge amount of sparsely annotated data is produced every day from the regular procedures in the maxillofacial practice. Despite the amount of sparsely labeled images being significant, the adoption of those data still raises an open problem. Indeed, the deep learning approach frames the presence of dense annotations as a crucial factor. Recent efforts in literature have hence focused on developing label propagation techniques to expand sparse annotations into dense labels. However, the proposed methods proved only marginally effective for the purpose of segmenting the alveolar nerve in CBCT scans. This paper exploits and publicly releases a new 3D densely annotated dataset, through which we are able to train a deep label propagation model which obtains better results than those available in literature. By combining a segmentation model trained on the 3D annotated data and label propagation, we significantly improve the state of the art in the Inferior Alveolar Nerve segmentation.
通过深标签传播改善下牙槽神经的分割
最近在牙科和颌面影像学方面的许多工作都集中在下牙槽神经(IAN)管的检测上。不幸的是,可用的3D颌面数据集的范围很小,严重限制了基于深度学习的技术的性能。另一方面,颌面部日常诊疗过程中每天都会产生大量稀疏标注的数据。尽管稀疏标记图像的数量很重要,但这些数据的采用仍然提出了一个悬而未决的问题。事实上,深度学习方法将密集注释的存在作为一个关键因素。因此,最近的文献研究主要集中在开发标签传播技术,将稀疏注释扩展为密集标签。然而,所提出的方法被证明在CBCT扫描中对肺泡神经的分割只有微弱的效果。本文利用并公开发布了一个新的三维密集标注数据集,通过该数据集我们可以训练一个深度标签传播模型,该模型获得了比现有文献更好的结果。通过将三维标注数据训练的分割模型与标签传播相结合,我们显著提高了下牙槽神经的分割水平。
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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