On Segmentation of Maxillary Sinus Membrane using Automatic Vertex Screening

K. Li, Tai-Chiu Hsung, A. Yeung, M. Bornstein
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引用次数: 1

Abstract

The purpose of this study is to develop an automatic technique to segment the membrane of the maxillary sinus with morphological changes (e.g. thickened membrane and cysts) for the detection of abnormalities. The first step is to segment the sinus bone cavity in the CBCT image using fuzzy C-mean algorithm. Then, the vertices of inner bone walls of sinus in the mesh model are screened with vertex normal direction and angular based mean-distance filtering. The resulted vertices are then used to generate the bony sinus cavity mesh model by using Poisson surface reconstruction. Finally, the sinus membrane morphological changes are segmented by subtracting the air sinus segmentation from the reconstructed bony sinus cavity. The proposed method has been applied on 5 maxillary sinuses with mucosal thickening and has demonstrated that it can segment thin membrane thickening (< 2 mm) successfully within 4.1% and 3.5% error in volume and surface area respectively. Existing methods have issues of leakages at openings and thin bones, and inaccuracy with irregular contours commonly seen in maxillary sinus. The current method overcomes these shortcomings.
基于自动顶点筛选的上颌窦膜分割
本研究的目的是开发一种自动分割上颌窦膜的形态学改变(如增厚的膜和囊肿),以检测异常的技术。第一步是利用模糊c均值算法在CBCT图像中分割窦性骨腔。然后,利用顶点法向和基于角度的平均距离滤波对网格模型中窦骨内壁的顶点进行筛选。得到的顶点通过泊松曲面重建生成骨窦腔网格模型。最后,通过从重建的骨窦腔中减去气窦分割,对窦膜形态学变化进行分割。将该方法应用于5个粘膜增厚的上颌窦,结果表明,该方法可以成功分割薄膜增厚(< 2 mm),体积和表面积误差分别为4.1%和3.5%。现有方法存在开口渗漏、骨薄、上颌窦轮廓不规则等问题。目前的方法克服了这些缺点。
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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