Department of Biomedical Sciences for Health, Università degli Studi di Milano, 20133, Milano, MI, Italy.
CIMeC, Università degli Studi di Trento, 38068, Rovereto, TN, Italy.
Int J Comput Assist Radiol Surg. 2017 Jan;12(1):113-121. doi: 10.1007/s11548-016-1453-9. Epub 2016 Jun 29.
Nowadays, with the increased diffusion of Cone Beam Computerized Tomography (CBCT) scanners in dental and maxillo-facial practice, 3D cephalometric analysis is emerging. Maxillofacial surgeons and dentists make wide use of cephalometric analysis in diagnosis, surgery and treatment planning. Accuracy and repeatability of the manual approach, the most common approach in clinical practice, are limited by intra- and inter-subject variability in landmark identification. So, we propose a computer-aided landmark annotation approach that estimates the three-dimensional (3D) positions of 21 selected landmarks.
The procedure involves an adaptive cluster-based segmentation of bone tissues followed by an intensity-based registration of an annotated reference volume onto a patient Cone Beam CT (CBCT) head volume. The outcomes of the annotation process are presented to the clinician as a 3D surface of the patient skull with the estimate landmark displayed on it. Moreover, each landmark is centered into a spherical confidence region that can help the clinician in a subsequent manual refinement of the annotation. The algorithm was validated onto 18 CBCT images.
Automatic segmentation shows a high accuracy level with no significant difference between automatically and manually determined threshold values. The overall median value of the localization error was equal to 1.99 mm with an interquartile range (IQR) of 1.22-2.89 mm.
The obtained results are promising, segmentation was proved to be very robust and the achieved accuracy level in landmark annotation was acceptable for most of landmarks and comparable with other available methods.
如今,随着锥形束计算机断层扫描(CBCT)扫描仪在口腔颌面医学领域的广泛应用,三维头影测量分析逐渐兴起。颌面外科医生和牙医在诊断、手术和治疗计划中广泛应用头影测量分析。在临床实践中,手动方法的准确性和可重复性受到标志点识别的个体内和个体间变异性的限制。因此,我们提出了一种计算机辅助标志点标注方法,该方法估计 21 个选定标志点的三维(3D)位置。
该过程包括基于自适应聚类的骨组织分割,然后基于强度将标注的参考体积配准到患者的锥形束 CT(CBCT)头部体积上。标注过程的结果以患者颅骨的 3D 表面呈现,并显示估计的标志点。此外,每个标志点都集中在一个球形置信区域内,这有助于临床医生在后续的手动标注细化过程中使用。该算法在 18 个 CBCT 图像上进行了验证。
自动分割具有很高的准确性水平,自动和手动确定的阈值之间没有显著差异。定位误差的总体中位数为 1.99 毫米,四分位距(IQR)为 1.22-2.89 毫米。
获得的结果很有前途,分割非常稳健,标志点标注的精度水平在大多数标志点上是可以接受的,与其他可用方法相当。