基于李群的统计形状模型在锥形束CT图像中全自动检测下颌管

F. Abdolali, R. Zoroofi, A. Biniaz
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引用次数: 2

摘要

在锥形束CT数据中自动检测下颌管是规划和指导种植手术的重要步骤。本文提出了一种基于统计形状模型和李群相结合的检测方法。建议的方法包括三个步骤。首先,采用基于多尺度低秩矩阵分解的方法对图像进行去噪和增强;随后,构建基于李群的统计形状模型来表示形状变化,并采用快速行进的方法更准确地定位下颌管的位置。定量结果表明,准确、全自动的下颌管检测是可行的。此外,基于李群统计形状模型的方法优于文献中基于统计形状模型的两种方法,即常规统计形状模型和条件统计形状模型。Dice相似指数和对称距离的平均值分别为0.92和1.02 mm。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fully automated detection of the mandibular canal in cone beam CT images using Lie group based statistical shape models
Automatic detection of mandibular canal in cone beam CT data is an essential step for planning and guiding implant surgery. In this work, we present a new detection method based on combining statistical shape models and Lie group. The proposed methodology consists of three steps. Firstly, a method based on multi-scale low rank matrix decomposition is used for noise removal and image enhancement. Subsequently, a Lie group based statistical shape model is constructed to represent shape variation and fast marching is employed to localize the location of the mandibular canal more accurately. Quantitative results show that accurate and fully automatic detection of mandibular canal is feasible. Moreover, the proposed method based on Lie group based statistical shape model outperforms two previous methods based on statistical shape model in the literature, i.e. conventional and conditional statistical shape models. The average value of Dice similarity index and symmetric distance are 0.92 and 1.02 mm, respectively.
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