Nagarajan Mahesh B, Coan Paola, Huber Markus B, Diemoz Paul C, Glaser Christian, Wismüller Axel
Departments of Biomedical Engineering & Imaging Sciences, University of Rochester, New York, United States.
Faculty of Medicine & Institute of Clinical Radiology, Ludwig Maximilians University, Munich Germany.
Proc SPIE Int Soc Opt Eng. 2013;8672. doi: 10.1117/12.2006255. Epub 2013 Mar 29.
The current approach to evaluating cartilage degeneration at the knee joint requires visualization of the joint space on radiographic images where indirect cues such as joint space narrowing serve as markers for osteoarthritis. A recent novel approach to visualizing the knee cartilage matrix using phase contrast imaging (PCI) with computed tomography (CT) was shown to allow direct examination of chondrocyte patterns and their subsequent correlation to osteoarthritis. This study aims to characterize chondrocyte cell patterns in the radial zone of the knee cartilage matrix in the presence and absence of osteoarthritic damage through texture analysis. Statistical features derived from gray-level co-occurrence matrices (GLCM) and geometric features derived from the Scaling Index Method (SIM) were extracted from 404 regions of interest (ROI) annotated on PCI images of healthy and osteoarthritic specimens of knee cartilage. These texture features were then used in a machine learning task to classify ROIs as healthy or osteoarthritic. A fuzzy k-nearest neighbor classifier was used and its performance was evaluated using the area under the Receiver Operating Characteristic (ROC) curve (AUC). The best classification performance was observed with high-dimensional geometrical feature vectors derived from SIM and GLCM correlation features. With the experimental conditions used in this study, both SIM and GLCM achieved a high classification performance (AUC value of 0.98) in the task of distinguishing between healthy and osteoarthritic ROIs. These results show that such quantitative analysis of chondrocyte patterns in the knee cartilage matrix can distinguish between healthy and osteoarthritic tissue with high accuracy.
目前评估膝关节软骨退变的方法需要在X线影像上观察关节间隙,其中诸如关节间隙变窄等间接线索可作为骨关节炎的标志物。最近一种使用计算机断层扫描(CT)的相衬成像(PCI)来可视化膝关节软骨基质的新方法,被证明可以直接检查软骨细胞模式及其与骨关节炎的后续关联。本研究旨在通过纹理分析来表征在存在和不存在骨关节炎损伤的情况下膝关节软骨基质径向区域中的软骨细胞模式。从标注在健康和骨关节炎膝关节软骨标本的PCI图像上的404个感兴趣区域(ROI)中提取源自灰度共生矩阵(GLCM)的统计特征和源自缩放指数法(SIM)的几何特征。然后将这些纹理特征用于机器学习任务,以将ROI分类为健康或骨关节炎。使用了模糊k近邻分类器,并使用受试者操作特征(ROC)曲线下的面积(AUC)来评估其性能。观察到源自SIM和GLCM相关特征的高维几何特征向量具有最佳分类性能。在本研究使用的实验条件下,SIM和GLCM在区分健康和骨关节炎ROI的任务中均实现了高分类性能(AUC值为0.98)。这些结果表明,对膝关节软骨基质中软骨细胞模式的这种定量分析可以高精度地区分健康组织和骨关节炎组织。