Su Hai, Xing Fuyong, Lee Jonah D, Peterson Charlotte A, Yang Lin
IEEE/ACM Trans Comput Biol Bioinform. 2014 Jul-Aug;11(4):714-26. doi: 10.1109/TCBB.2013.151.
Accurate and robust detection of myonuclei in isolated single muscle fibers is required to calculate myonuclear domain size. However, this task is challenging because: 1) shape and size variations of the nuclei, 2) overlapping nuclear clumps, and 3) multiple z-stack images with out-of-focus regions. In this paper, we have proposed a novel automatic detection algorithm to robustly quantify myonuclei in isolated single skeletal muscle fibers. The original z-stack images are first converted into one all-in-focus image using multi-focus image fusion. A sufficient number of ellipse fitting hypotheses are then generated from the myonuclei contour segments using heteroscedastic errors-in-variables (HEIV) regression. A set of representative training samples and a set of discriminative features are selected by a two-stage sparse model. The selected samples with representative features are utilized to train a classifier to select the best candidates. A modified inner geodesic distance based mean-shift clustering algorithm is used to produce the final nuclei detection results. The proposed method was extensively tested using 42 sets of z-stack images containing over 1,500 myonuclei. The method demonstrates excellent results that are better than current state-of-the-art approaches.
为了计算肌核域大小,需要在分离的单根肌纤维中准确且稳健地检测肌核。然而,这项任务具有挑战性,原因如下:1)细胞核的形状和大小变化;2)核团重叠;3)具有失焦区域的多个z-stack图像。在本文中,我们提出了一种新颖的自动检测算法,以稳健地量化分离的单根骨骼肌纤维中的肌核。首先使用多焦点图像融合将原始的z-stack图像转换为一个全聚焦图像。然后,使用异方差变量误差(HEIV)回归从肌核轮廓段生成足够数量的椭圆拟合假设。通过两阶段稀疏模型选择一组代表性训练样本和一组判别特征。利用具有代表性特征的所选样本训练分类器,以选择最佳候选对象。使用基于改进的内测地距离的均值漂移聚类算法来产生最终的细胞核检测结果。所提出的方法使用包含1500多个肌核的42组z-stack图像进行了广泛测试。该方法展示了优于当前最先进方法的出色结果。