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Quantitative evaluation of local head malformations from three-dimensional photography: application to craniosynostosis

机译:三维摄影局部头部畸形的定量评估:对抗性的应用

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The evaluation of head malformations plays an essential role in the early diagnosis, the decision to perform surgery and the assessment of the surgical outcome of patients with craniosynostosis. Clinicians rely on two metrics to evaluate the head shape: head circumference (HC) and cephalic index (CI). However, they present a high inter-observer variability and they do not take into account the location of the head abnormalities. In this study, we present an automated framework to objectively quantify the head malformations, HC, and CI from three-dimensional (3D) photography, a radiation-free, fast and non-invasive imaging modality. Our method automatically extracts the head shape using a set of landmarks identified by registering the head surface of a patient to a reference template in which the position of the landmarks is known. Then, we quantify head malformations as the local distances between the patient's head and its closest normal from a normative statistical head shape multi-atlas. We calculated cranial malformations, HC, and CI for 28 patients with craniosynostosis, and we compared them with those computed from the normative population. Malformation differences between the two populations were statistically significant (p<0.05) at the head regions with abnormal development due to suture fusion. We also trained a support vector machine classifier using the malformations calculated and we obtained an improved accuracy of 91.03% in the detection of craniosynostosis, compared to 78.21% obtained with HC or CI. This method has the potential to assist in the longitudinal evaluation of cranial malformations after surgical treatment of craniosynostosis.
机译:头部畸形的评估在早期诊断中起重要作用,决定进行手术和对颅骨患者患者的手术结果进行评估。临床医生依靠两项指标来评估头部形状:头围(HC)和头部指数(CI)。然而,它们呈现出高的观察者间变异性,并且他们不会考虑头部异常的位置。在这项研究中,我们提出了一种自动框架,客观地量化来自三维(3D)摄影的头部畸形,HC和CI,无辐射,快速和非侵入性成像模态。我们的方法使用通过将患者的头表面注册到参考模板的一组地标自动提取头部形状,其中已知地标的位置。然后,我们将头部畸形量化为患者头部之间的局部距离及其从规范性统计头部形状多标志的最接近的正常情况。我们计算了颅骨畸形,HC和CI的28例颅骨,我们将它们与来自规范人群计算的那些进行比较。由于缝合融合,两种群体之间的畸形差异在具有异常发育的头部区域的头部区域具有统计学意义(P <0.05)。我们还使用计算的畸形训练支持向量机分类器,并且在颅骨的检测中获得了91.03%的提高准确度,而78.21%与HC或CI获得。该方法有可能协助纵向评估颅骨治疗后颅骨畸形后的颅骨畸形。

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