协同CBCT图像分割和地标检测的多阶段CNN框架。

Qin Liu, Han Deng, Chunfeng Lian, Xiaoyang Chen, Deqiang Xiao, Lei Ma, Xu Chen, Tianshu Kuang, Jaime Gateno, Pew-Thian Yap, James J Xia
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引用次数: 15

摘要

在颅颌面畸形患者的计算机辅助手术计划中,准确的骨分割和地标检测是必不可少的准备工作。外科医生通常必须手动完成这两项任务,每组CBCT花费约12小时,CT花费约5小时。为了解决这些问题,我们提出了一种基于cnn的多阶段粗到细框架SkullEngine,通过协作、集成和可扩展的JSD模型以及三种分割和地标检测细化模型,实现高分辨率分割和大规模地标检测。我们在一个临床数据集上评估了我们的框架,该数据集由170个CBCT/CT图像组成,用于分割2块骨骼(中脸和下颌骨),并检测175个临床常见的骨骼、牙齿和软组织地标。实验结果表明,SkullEngine显著提高了分割质量,特别是在骨较薄的区域。此外,SkullEngine还可以高效准确地检测所有175个地标。无论是CBCT还是高分割质量CT,两项任务均在3分钟内同时完成。目前,SkullEngine已被整合到临床工作流程中,以进一步评估其临床效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

SkullEngine: A Multi-Stage CNN Framework for Collaborative CBCT Image Segmentation and Landmark Detection.

SkullEngine: A Multi-Stage CNN Framework for Collaborative CBCT Image Segmentation and Landmark Detection.

SkullEngine: A Multi-Stage CNN Framework for Collaborative CBCT Image Segmentation and Landmark Detection.

Accurate bone segmentation and landmark detection are two essential preparation tasks in computer-aided surgical planning for patients with craniomaxillofacial (CMF) deformities. Surgeons typically have to complete the two tasks manually, spending ~12 hours for each set of CBCT or ~5 hours for CT. To tackle these problems, we propose a multi-stage coarse-to-fine CNN-based framework, called SkullEngine, for high-resolution segmentation and large-scale landmark detection through a collaborative, integrated, and scalable JSD model and three segmentation and landmark detection refinement models. We evaluated our framework on a clinical dataset consisting of 170 CBCT/CT images for the task of segmenting 2 bones (midface and mandible) and detecting 175 clinically common landmarks on bones, teeth, and soft tissues. Experimental results show that SkullEngine significantly improves segmentation quality, especially in regions where the bone is thin. In addition, SkullEngine also efficiently and accurately detect all of the 175 landmarks. Both tasks were completed simultaneously within 3 minutes regardless of CBCT or CT with high segmentation quality. Currently, SkullEngine has been integrated into a clinical workflow to further evaluate its clinical efficiency.

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