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A global unimodal thresholding based on probabilistic reference maps for the segmentation of muscle images

机译:基于概率参考图的全局单峰阈值用于肌肉图像分割

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摘要

A global probabilistic maps thresholding (PMT) method was applied to characterise intramuscular connective tissue (IMCT) distribution on images of muscle histological sections exhibiting unimodal histograms. Probabilistic reference maps were defined and then used to set-up thresholding rules, derived from linear combinations of parameters calculated from the intensity histogram of the images. This PMT method was objectively compared to Rosin's unimodal thresholding algorithm (RT) and validated by a histochemical quantification of IMCT collagen. Morphometrical parameters of the IMCT (area, length and thickness of the extracted network) were determined for different muscles and used to quantify IMCT distribution differences.
机译:应用全局概率图阈值化(PMT)方法来表征显示单峰直方图的肌肉组织学切片图像上的肌内结缔组织(IMCT)分布。定义了概率参考图,然后将其用于设置阈值规则,该阈值规则是根据图像强度直方图计算出的参数的线性组合得出的。将该PMT方法与Rosin的单峰阈值算法(RT)进行了客观比较,并通过IMCT胶原的组织化学定量验证。确定了IMCT的形态参数(面积,长度和提取网络的厚度),用于不同的肌肉,并用于量化IMCT分布差异。

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