Center of Excellence in Signal and Image Processing, Dept. of Electronics & Telecomm Engineering, SGGS Institute of Engineering & Technology, Nanded, M.S., India; Centre for Intelligent Signal and Imaging Research, Dept. of Electrical and Electronics Engineering, Universiti Teknologi Petronas, Malaysia.
Center of Excellence in Signal and Image Processing, Dept. of Electronics & Telecomm Engineering, SGGS Institute of Engineering & Technology, Nanded, M.S., India.
Comput Biol Med. 2017 Sep 1;88:110-125. doi: 10.1016/j.compbiomed.2017.07.008. Epub 2017 Jul 8.
Knee osteoarthritis (OA) progression can be monitored by measuring changes in the subchondral bone structure such as area and shape from MR images as an imaging biomarker. However, measurements of these minute changes are highly dependent on the accurate segmentation of bone tissue from MR images and it is challenging task due to the complex tissue structure and inadequate image contrast/brightness. In this paper, a fully automated method for segmenting subchondral bone from knee MR images is proposed. Here, the contrast of knee MR images is enhanced using a gray-level S-curve transformation followed by automatic seed point detection using a three-dimensional multi-edge overlapping technique. Successively, bone regions are initially extracted using distance-regularized level-set evolution followed by identification and correction of leakages along the bone boundary regions using a boundary displacement technique. The performance of the developed technique is evaluated against ground truths by measuring sensitivity, specificity, dice similarity coefficient (DSC), average surface distance (AvgD) and root mean square surface distance (RMSD). An average sensitivity (91.14%), specificity (99.12%) and DSC (90.28%) with 95% confidence interval (CI) in the range 89.74-92.54%, 98.93-99.31% and 88.68-91.88% respectively is achieved for the femur bone segmentation in 8 datasets. For tibia bone, average sensitivity (90.69%), specificity (99.65%) and DSC (91.35%) with 95% CI in the range 88.59-92.79%, 99.50-99.80% and 88.68-91.88% respectively is achieved. AvgD and RMSD values for femur are 1.43 ± 0.23 (mm) and 2.10 ± 0.35 (mm) respectively while for tibia, the values are 0.95 ± 0.28 (mm) and 1.30 ± 0.42 (mm) respectively that demonstrates acceptable error between proposed method and ground truths. In conclusion, results obtained in this work demonstrate substantially significant performance with consistency and robustness that led the proposed method to be applicable for large scale and longitudinal knee OA studies in clinical settings.
膝关节骨关节炎 (OA) 的进展可以通过测量 MR 图像中软骨下骨结构的变化(如面积和形状)来监测,作为一种成像生物标志物。然而,这些微小变化的测量高度依赖于 MR 图像中骨组织的准确分割,由于组织结构复杂且图像对比度/亮度不足,这是一项具有挑战性的任务。在本文中,提出了一种全自动的膝关节 MR 图像软骨下骨分割方法。在这里,使用灰度 S 曲线变换增强膝关节 MR 图像的对比度,然后使用三维多边缘重叠技术自动检测种子点。接着,使用距离正则化水平集演化初始提取骨区域,然后使用边界位移技术识别和纠正骨边界区域的泄漏。通过测量灵敏度、特异性、骰子相似系数 (DSC)、平均表面距离 (AvgD) 和均方根表面距离 (RMSD),根据地面真实值评估所开发技术的性能。在 8 个数据集的股骨分割中,平均灵敏度 (91.14%)、特异性 (99.12%) 和 DSC (90.28%) 分别具有 95%置信区间 (CI) 为 89.74-92.54%、98.93-99.31% 和 88.68-91.88%,平均灵敏度 (90.69%)、特异性 (99.65%) 和 DSC (91.35%) 分别具有 95%CI 为 88.59-92.79%、99.50-99.80% 和 88.68-91.88%,在胫骨中分别实现。股骨的 AvgD 和 RMSD 值分别为 1.43±0.23(mm) 和 2.10±0.35(mm),而胫骨的 AvgD 和 RMSD 值分别为 0.95±0.28(mm) 和 1.30±0.42(mm),表明与地面真实值之间存在可接受的误差。总之,本工作中获得的结果具有一致性和稳健性,性能显著,这使得所提出的方法适用于临床环境中大样本量和纵向膝关节 OA 研究。