论文标题

WSC-Trans:用于颞骨CT自动多结构分割的3D网络模型

WSC-Trans: A 3D network model for automatic multi-structural segmentation of temporal bone CT

论文作者

Hua, Xin, Du, Zhijiang, Yu, Hongjian, Ma, Jixin, Zheng, Fanjun, Zhang, Cheng, Lu, Qiaohui, Zhao, Hui

论文摘要

人工耳蜗植入目前是严重耳聋患者的最有效治疗方法,但是掌握人工耳蜗植入极具挑战性,因为颞骨具有极其复杂且小的三维解剖结构,并且在进行手术时损害相应的结构很重要。需要在手术之前使用CT确定相关解剖组织的空间位置。考虑到目标结构太小且复杂,手动分割所需的时间太长了,要快速,准确地将颞骨及其附近的颞骨及其附近的解剖结构进行分割非常具有挑战性。为了克服这一难度,我们提出了一种基于深度学习的算法,这是一种3D网络模型,用于自动分割颞骨CT中多结构目标,可以自动分割耳蜗,面神经,听觉结节,前庭,前庭和半圆形管。 The algorithm combines CNN and Transformer for feature extraction and takes advantage of spatial attention and channel attention mechanisms to further improve the segmentation effect, the experimental results comparing with the results of various existing segmentation algorithms show that the dice similarity scores, Jaccard coefficients of all targets anatomical structures are significantly higher while HD95 and ASSD scores are lower, effectively proving that our method outperforms other高级方法。

Cochlear implantation is currently the most effective treatment for patients with severe deafness, but mastering cochlear implantation is extremely challenging because the temporal bone has extremely complex and small three-dimensional anatomical structures, and it is important to avoid damaging the corresponding structures when performing surgery. The spatial location of the relevant anatomical tissues within the target area needs to be determined using CT prior to the procedure. Considering that the target structures are too small and complex, the time required for manual segmentation is too long, and it is extremely challenging to segment the temporal bone and its nearby anatomical structures quickly and accurately. To overcome this difficulty, we propose a deep learning-based algorithm, a 3D network model for automatic segmentation of multi-structural targets in temporal bone CT that can automatically segment the cochlea, facial nerve, auditory tubercle, vestibule and semicircular canal. The algorithm combines CNN and Transformer for feature extraction and takes advantage of spatial attention and channel attention mechanisms to further improve the segmentation effect, the experimental results comparing with the results of various existing segmentation algorithms show that the dice similarity scores, Jaccard coefficients of all targets anatomical structures are significantly higher while HD95 and ASSD scores are lower, effectively proving that our method outperforms other advanced methods.

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