Department of Clinical Sciences, Cornell University College of Veterinary Medicine, Ithaca, New York, United States of America.
PLoS One. 2020 Dec 23;15(12):e0243163. doi: 10.1371/journal.pone.0243163. eCollection 2020.
Currently available software tools for automated segmentation and analysis of muscle cross-section images often perform poorly in cases of weak or non-uniform staining conditions. To address these issues, our group has developed the MyoSAT (Myofiber Segmentation and Analysis Tool) image-processing pipeline. MyoSAT combines several unconventional approaches including advanced background leveling, Perona-Malik anisotropic diffusion filtering, and Steger's line detection algorithm to aid in pre-processing and enhancement of the muscle image. Final segmentation is based upon marker-based watershed segmentation. Validation tests using collagen V labeled murine and canine muscle tissue demonstrate that MyoSAT can determine mean muscle fiber diameter with an average accuracy of ~92.4%. The software has been tested to work on full muscle cross-sections and works well even under non-optimal staining conditions. The MyoSAT software tool has been implemented as a macro for the freely available ImageJ software platform. This new segmentation tool allows scientists to efficiently analyze large muscle cross-sections for use in research studies and diagnostics.
目前用于肌肉横截面积图像自动分割和分析的软件工具在弱染色或非均匀染色条件下往往效果不佳。为了解决这些问题,我们小组开发了 MyoSAT(肌纤维分割和分析工具)图像处理流水线。MyoSAT 结合了几种非传统的方法,包括先进的背景水平调整、Perona-Malik 各向异性扩散滤波和 Steger 的线检测算法,以辅助肌肉图像的预处理和增强。最终的分割基于基于标记的分水岭分割。使用胶原 V 标记的鼠和犬肌肉组织进行的验证测试表明,MyoSAT 可以以平均约 92.4%的准确率确定平均肌纤维直径。该软件已被测试用于全肌肉横截面积,即使在非最佳染色条件下也能很好地工作。MyoSAT 软件工具已作为一个宏实现到免费的 ImageJ 软件平台上。这个新的分割工具允许科学家们高效地分析大型肌肉横截面积,用于研究和诊断。