首页> 外文会议>IEEE International Symposium on Biomedical Imaging >LEARNING BASED AUTOMATIC DETECTION OF MYONUCLEI IN ISOLATED SINGLE SKELETAL MUSCLE FIBERS USING MULTI-FOCUS IMAGE FUSION
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LEARNING BASED AUTOMATIC DETECTION OF MYONUCLEI IN ISOLATED SINGLE SKELETAL MUSCLE FIBERS USING MULTI-FOCUS IMAGE FUSION

机译:基于多焦图像融合的分离单骨骼肌纤维中肌瘤自动检测

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Accurate and robust detection of myonuclei in single muscle fiber is required to calculate myonuclear domain size. However, this task is challenging because: 1) The myonuclei have a variety of sizes and shapes. 2) Imaging techniques exhibit myonuclei that are often overlapping. 3) Inhomogeneous intensity due to DAPI concentration in heterochromatin, abundant in mouse nuclei, results in a speckled appearance inside each myonucleus. In this paper, we propose a novel automatic approach to robustly detect the myonuclei in isolated single skeletal muscle fibers. The original z-stack images are first fused into one all-in-focus image. A sufficient number of ellipse fitting hypotheses are then generated using the myonuclei contour segments. A set of morphological features are calculated from the ellipses and utilized to train a support vector machine (SVM) classifier to choose the best candidates. A modified inner geodesic distance based clustering algorithm is used to produce the final results. The proposed method was extensively tested using 42 sets of z-stack images containing about 1500 myonuclei. The method demonstrates excellent results outperforming current state-of-the-arts.
机译:需要在单肌纤维中进行准确和稳健地检测单肌纤维中的肌核,以计算肌核结构域尺寸。但是,这项任务是具有挑战性的,因为:1)肌核具有各种尺寸和形状。 2)成像技术表现出通常重叠的肌核。 3)非均匀强度由于异铬胺中的DAPI浓度,小鼠核中丰富,导致每种肌核内部的斑点外观。在本文中,我们提出了一种新的自动方法来稳健地检测分离的单一骨骼肌纤维中的肌核。原始Z堆叠图像首先融合到一个全焦点图像中。然后使用肌核心轮廓段生成足够数量的椭圆拟合假设。从椭圆上计算一组形态特征,并利用用于训练支持向量机(SVM)分类器以选择最佳候选者。修改后的内部测地距离基于群集的聚类算法用于产生最终结果。使用约1500 myoncucyi的42组Z堆叠图像进行广泛测试所提出的方法。该方法演示了优异的结果,优异的优异结果优于现有的最先进。

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