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Computer-assisted quantification of the skull deformity for craniosynostosis from 3D head CT images using morphological descriptor and hierarchical classification

机译:使用形态学描述符和层次分类法从3D头部CT图像中计算机辅助量化颅骨狭窄的颅骨畸形

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This paper proposes morphological descriptors representing the degree of skull deformity for craniosynostosis in head CT images and a hierarchical classifier model distinguishing among normal and different types of craniosynostosis. First, to compare deformity surface model with mean normal surface model, mean normal surface models are generated for each age range and the mean normal surface model is deformed to the deformity surface model via multi-level three-stage registration. Second, four shape features including local distance and area ratio indices are extracted in each five cranial bone. Finally, hierarchical SVM classifier is proposed to distinguish between the normal and deformity. As a result, the proposed method showed improved classification results compared to traditional cranial index. Our method can be used for the early diagnosis, surgical planning and postsurgical assessment of craniosynostosis as well as quantitative analysis of skull deformity.
机译:本文提出了头部CT图像中代表颅骨融合症颅骨畸形程度的形态学描述子,以及区分正常和不同类型颅骨融合症的分级分类器模型。首先,为了将变形表面模型与平均法线表面模型进行比较,针对每个年龄范围生成平均法线表面模型,并通过多级三阶段配准将平均法线表面模型变形为变形法表面模型。其次,在每五个颅骨中提取四个形状特征,包括局部距离和面积比指数。最后,提出了分层支持向量机分类器,以区分法向和变形。结果,与传统的颅骨指数相比,该方法显示出更好的分类结果。我们的方法可用于颅前突的早期诊断,手术计划和术后评估以及颅骨畸形的定量分析。

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