Miazaki Mauro, Viana Matheus P, Yang Zhong, Comin Cesar H, Wang Yaming, da F Costa Luciano, Xu Xiaoyin
Institute of Physics at Sao Carlos, University of Sao Paulo, Sao Carlos, SP, Brazil; Department of Computer Science, Midwestern State University, Guarapuava, PR, Brazil.
Institute of Physics at Sao Carlos, University of Sao Paulo, Sao Carlos, SP, Brazil.
Comput Biol Med. 2015 Aug;63:28-35. doi: 10.1016/j.compbiomed.2015.04.020. Epub 2015 Apr 23.
In the search for a cure for many muscular disorders it is often necessary to analyze muscle fibers under a microscope. For this morphological analysis, we developed an image processing approach to automatically analyze and quantify muscle fiber images so as to replace today's less accurate and time-consuming manual method. Muscular disorders, that include cardiomyopathy, muscular dystrophies, and diseases of nerves that affect muscles such as neuropathy and myasthenia gravis, affect a large percentage of the population and, therefore, are an area of active research for new treatments. In research, the morphological features of muscle fibers play an important role as they are often used as biomarkers to evaluate the progress of underlying diseases and the effects of potential treatments. Such analysis involves assessing histopathological changes of muscle fibers as indicators for disease severity and also as a criterion in evaluating whether or not potential treatments work. However, quantifying morphological features is time-consuming, as it is usually performed manually, and error-prone. To replace this standard method, we developed an image processing approach to automatically detect and measure the cross-sections of muscle fibers observed under microscopy that produces faster and more objective results. As such, it is well-suited to processing the large number of muscle fiber images acquired in typical experiments, such as those from studies with pre-clinical models that often create many images. Tests on real images showed that the approach can segment and detect muscle fiber membranes and extract morphological features from highly complex images to generate quantitative results that are readily available for statistical analysis.
在寻找许多肌肉疾病的治疗方法时,通常需要在显微镜下分析肌肉纤维。对于这种形态学分析,我们开发了一种图像处理方法,以自动分析和量化肌肉纤维图像,从而取代当今不太准确且耗时的手动方法。肌肉疾病包括心肌病、肌肉萎缩症以及影响肌肉的神经疾病,如神经病和重症肌无力,影响着很大一部分人口,因此是新治疗方法的活跃研究领域。在研究中,肌肉纤维的形态特征起着重要作用,因为它们经常被用作生物标志物来评估潜在疾病的进展和潜在治疗的效果。这种分析包括评估肌肉纤维的组织病理学变化,作为疾病严重程度的指标,也作为评估潜在治疗是否有效的标准。然而,量化形态特征既耗时(因为通常是手动进行)又容易出错。为了取代这种标准方法,我们开发了一种图像处理方法,以自动检测和测量在显微镜下观察到的肌肉纤维的横截面,从而产生更快、更客观的结果。因此,它非常适合处理在典型实验中获取的大量肌肉纤维图像,例如来自临床前模型研究的图像,这些研究通常会产生许多图像。对真实图像的测试表明,该方法可以分割和检测肌肉纤维膜,并从高度复杂的图像中提取形态特征,以生成易于进行统计分析的定量结果。