Cartilage estimation in noncontrast thoracic CT

Qian Zhao, Nabile M. Safdar, Glenna Yu, Emmarie Myers, A. Koroulakis, C. Duan, A. Sandler, M. Linguraru
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引用次数: 1

Abstract

Pectus excavatum (PE) is the most common major congenital deformity that involves the lower sternum and cartilages. Noncontrast CT is useful to assess the deformity of the bones and guide minimally invasive surgery. However, it has very poor visibility of cartilages even for the experienced clinicians who need to assess the 3D geometry of cartilages. In this study, we propose a novel method to estimate cartilages in noncontrast CT scans. The ribs and sternum are first segmented using region growing. The skeleton of the ribs is extracted and modeled by cosine series expansion. Then a statistical shape model is built with the cosine coefficients to estimate the cartilages as curves that connect the ribs and sternum. The results are refined by the cartilage surface that is approximated by contracting the skin surface to the bones. Leave-one-out validation was performed on 12 CT scans from healthy and PE subjects. The average distance between the estimated cartilages and ground truth is 1.53 mm. The promising results indicate that our method could estimate the costal cartilages in noncontrast CT effectively and assist to develop an image-based surgical planning system for PE correction.
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胸部非对比CT对软骨的估计
漏斗胸(PE)是最常见的主要先天性畸形,累及胸骨下部和软骨。非对比CT可用于评估骨畸形和指导微创手术。然而,即使对于需要评估软骨三维几何形状的经验丰富的临床医生来说,它对软骨的可见性也很差。在这项研究中,我们提出了一种在非对比CT扫描中估计软骨的新方法。肋骨和胸骨首先用区域生长进行分割。利用余弦级数展开法提取肋骨骨架并建立模型。然后用余弦系数建立一个统计形状模型来估计连接肋骨和胸骨的软骨曲线。通过将皮肤表面收缩到骨骼,可以近似地得到软骨表面的结果。对来自健康和体育受试者的12个CT扫描进行留一验证。估计的软骨与地面真实值之间的平均距离为1.53毫米。结果表明,该方法可以有效地估计肋软骨在非对比CT上的位置,并有助于建立基于图像的PE矫正手术计划系统。
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