Youssef Doaa, El-Ghandoor Hatem, Kandel Hamed, El-Azab Jala, Hassab-Elnaby Salah
Department of Engineering Applications of Laser, National Institute of Laser Enhanced Sciences (NILES), Cairo University, Giza Governorate 12613, Egypt.
Department of Physics, Faculty of Science, Ain-Shams University, Cairo Governorate 11566, Egypt.
Materials (Basel). 2017 Jun 28;10(7):714. doi: 10.3390/ma10070714.
The application of He-Ne laser technologies for description of articular cartilage degeneration, one of the most common diseases worldwide, is an innovative usage of these technologies used primarily in material engineering. Plain radiography and magnetic resonance imaging are insufficient to allow the early assessment of the disease. As surface roughness of articular cartilage is an important indicator of articular cartilage degeneration progress, a safe and noncontact technique based on laser speckle image to estimate the surface roughness is provided. This speckle image from the articular cartilage surface, when illuminated by laser beam, gives very important information about the physical properties of the surface. An experimental setup using a low power He-Ne laser and a high-resolution digital camera was implemented to obtain speckle images of ten bovine articular cartilage specimens prepared for different average roughness values. Texture analysis method based on gray-level co-occurrence matrix (GLCM) analyzed on the captured speckle images is used to characterize the surface roughness of the specimens depending on the computation of Haralick's texture features. In conclusion, this promising method can accurately estimate the surface roughness of articular cartilage even for early signs of degeneration. The method is effective for estimation of average surface roughness values ranging from 0.09 µm to 2.51 µm with an accuracy of 0.03 µm.
氦氖激光技术应用于描述关节软骨退变(全球最常见疾病之一),是这些主要用于材料工程的技术的创新性用途。普通X线摄影和磁共振成像不足以对该疾病进行早期评估。由于关节软骨的表面粗糙度是关节软骨退变进展的重要指标,因此提供了一种基于激光散斑图像的安全非接触技术来估计表面粗糙度。当关节软骨表面被激光束照射时,其散斑图像会给出有关该表面物理特性的非常重要的信息。采用低功率氦氖激光和高分辨率数码相机搭建了实验装置,以获取为不同平均粗糙度值制备的10个牛关节软骨标本的散斑图像。基于灰度共生矩阵(GLCM)对采集到的散斑图像进行纹理分析的方法,通过计算哈拉里克纹理特征来表征标本的表面粗糙度。总之,这种有前景的方法即使对于退变的早期迹象也能准确估计关节软骨的表面粗糙度。该方法能有效估计平均表面粗糙度值在0.09 µm至2.51 µm之间,精度为0.03 µm。