Department of Mechanical Engineering, Faculty of Engineering, Ege University, Bornova, Izmir, Turkey.
Ege University, Graduate School of Natural and Applied Science, Bornova, Izmir, Turkey.
Dentomaxillofac Radiol. 2023 Apr;52(4):20220390. doi: 10.1259/dmfr.20220390. Epub 2023 Apr 13.
This study aimed to develop an algorithm to distinguish the patients with bisphosphonate-related osteonecrosis of the jaws (BRONJ) from healthy controls using CBCT images by evaluating both trabecular and cortical bone changes through the whole body of the mandibular bone.
Patient data set was created from axial CBCT images of 7 BRONJ patients (28 slices) and 8 healthy controls (27 slices). The healthy bone of healthy controls, bone sclerosis of BRONJ patients, bone necrosis of BRONJ patients, and normal appearing bone of BRONJ patients (NBP) were labeled on CBCT images by three maxillofacial radiologists. Proposed algorithm had preparation and background cancellation, mandibular bone segmentation and centerline determination, spatial transformation of gray values, and classification steps.
Significant differences between the statistical moments (mean, variance, skewness, kurtosis, standard error, median, mode and coefficient of variance) of healthy and diseased (bone sclerosis and necrosis) groups were observed ( = 0.000, < 0.05). Also, variations were noted between healthy controls and NBP of BRONJ patients ( = 0.000, < 0.05).The statistical moments were utilized to develop the algorithm which has resulted with accuracy of 0.999, sensitivity of 0.998, specificity of 0.998, precision of 1, recall of 0.998, AUC of 1, and F1 score of 0.999 in identification of BRONJ patients from healthy ones.
The proposed algorithm differentiated the mandibular bones of the healthy and the BRONJ patients with high accuracy in the present test sample.
本研究旨在通过评估下颌骨整体的骨小梁和皮质骨变化,开发一种使用 CBCT 图像区分双膦酸盐相关性颌骨骨坏死(BRONJ)患者与健康对照者的算法。
从 7 例 BRONJ 患者(28 个切片)和 8 例健康对照者(27 个切片)的轴向 CBCT 图像中创建患者数据集。由三位颌面放射科医生对健康对照者的健康骨、BRONJ 患者的骨硬化、BRONJ 患者的骨坏死和 BRONJ 患者的正常外观骨(NBP)进行 CBCT 图像上的标记。所提出的算法具有准备和背景消除、下颌骨分割和中心线确定、灰度值的空间变换以及分类步骤。
观察到健康组和患病组(骨硬化和坏死)之间的统计矩(均值、方差、偏度、峰度、标准误差、中位数、众数和变异系数)存在显著差异( = 0.000, < 0.05)。此外,还注意到健康对照组和 BRONJ 患者的 NBP 之间存在差异( = 0.000, < 0.05)。利用统计矩开发了该算法,其在识别 BRONJ 患者与健康患者方面的准确率为 0.999、灵敏度为 0.998、特异性为 0.998、精确率为 1、召回率为 0.998、AUC 为 1 和 F1 得分为 0.999。
在本测试样本中,所提出的算法以高精度区分了健康和 BRONJ 患者的下颌骨。