颅面锥束CT图像中前部组织的分割

Dharitri Misra, Michael Gill, Janice S. Lee, Sameer Kiran Antani
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引用次数: 1

摘要

锥束计算机断层扫描(CBCT)图像用于颅面研究,诊断牙面畸形,骨骼错颌严重程度,并协助虚拟手术计划。在预测哪些区域最可能从手术干预中受益时,需要自动引导。作为进行此类实验的一部分,最好在CBCT图像中去除颅面区域的软组织。然而,这一前端“数据准备”步骤对于CBCT图像来说并不简单,因为在图像采集过程中,锥束x射线的光子散射会引起组织和骨骼强度的固有波动。在本文中,我们描述了我们的自动分割方法,通过将一组选定的2D图像处理技术与某些面部生物特征参数相结合,对600多张3D CBCT图像中的前部组织进行分割,并取得了良好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Segmentation of Anterior Tissues in Craniofacial Cone-Beam CT Images
Cone-beam computed tomography (CBCT) images are used in craniofacial research for diagnosing dentofacial deformities, skeletal malocclusion severity and to assist in virtual surgical planning. There is a need for automated guidance in predicting regions that could most benefit from surgical intervention. As a part of the effort to conduct such experiments, it is preferable to remove soft tissues in the craniofacial region in CBCT images. However, this front end "data preparation" step is non-trivial for CBCT images due to the inherent fluctuations in the intensity of tissues and bones caused by photon scattering of cone beam shaped X-rays during image acquisition. In this paper, we describe our automated segmentation approach for segmenting anterior tissues in more than 600 3D CBCT images with good result, by combining a selected set of 2D image processing techniques in conjunction with certain facial biometric parameters.
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