Classifying Craniosynostosis with a 3D Projection-Based Feature Extraction System.

Irma Lam, Michael Cunningham, Matthew Speltz, Linda Shapiro
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Abstract

Craniosynostosis, a disorder in which one or more fibrous joints of the skull fuse prematurely, causes skull deformity and is associated with increased intracranial pressure and developmental delays. Although clinicians can easily diagnose craniosynostosis and can classify its type, being able to quantify the condition is an important problem in craniofacial research. While several papers have attempted this quantification through statistical models, the methods have not been intuitive to biomedical researchers and clinicians who want to use them. The goal of this work was to develop a general platform upon which new quantification measures could be developed and tested. The features reported in this paper were developed as basic shape measures, both single-valued and vector-valued, that are extracted from a single plane projection of the 3D skull. This technique allows us to process images that would otherwise be eliminated in previous systems due to poor resolution, noise or imperfections on their CT scans. We test our new features on classification tasks and also compare their performance to previous research. In spite of its simplicity, the classification accuracy of our new features is significantly higher than previous results on head CT scan data from the same research studies.

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利用基于三维投影的特征提取系统对颅畸形进行分类。
颅骨融合症是一种颅骨的一个或多个纤维关节过早融合的疾病,会导致颅骨畸形,并与颅内压增高和发育迟缓有关。虽然临床医生可以很容易地诊断出颅骨融合症并对其类型进行分类,但如何量化这种疾病是颅面研究中的一个重要问题。虽然已有多篇论文尝试通过统计模型进行量化,但这些方法对于想要使用它们的生物医学研究人员和临床医生来说并不直观。这项工作的目标是开发一个通用平台,在此基础上开发和测试新的量化方法。本文报告的特征是作为基本形状测量方法开发的,包括单值和向量值,均从三维头骨的单一平面投影中提取。这项技术使我们能够处理那些在以前的系统中由于分辨率低、噪声或 CT 扫描不完美而被剔除的图像。我们在分类任务中测试了我们的新特征,并将其性能与之前的研究进行了比较。尽管我们的新特征非常简单,但其分类准确率却明显高于之前在相同研究的头部 CT 扫描数据上的结果。
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