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A visual saliency-based method for automatic lung regions extraction in chest radiographs

机译:基于视觉显着性的胸部X光片中肺区域自动提取方法

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Extracting lung regions accurately from a chest X-ray is an important procedure in computer-aided lung disease diagnosis. The shape and size of lungs may hold clues to serious diseases such as pneumothorax, pneumoconiosis and even emphysema. However, the precise extraction of lungs from a X-ray is still very difficult at the moment. In this paper, we propose a novel method of detecting the lung regions in chest radiographs. It is based on the observation that the lung fields in X-ray images well stand out against the background which makes them salient regions. According to our method, a X-ray image of lung is firstly segmented into several small sub-regions through graph-based segmentation. Then we detect the salient value of each sub-region using a global contrast function. The lung region can be estimated based on the salient values of each sub-region. Finally, cubic spline interpolation is used to obtain smoother boundaries by refining the results. In the experiment, we built a Lung Region Location model including 147 randomly selected chest X-ray images from the JSRT dataset and used the remaining 100 images in it to test our method. The results demonstrate that our method achieved state-of-the-art performance.
机译:从胸部X射线准确地提取肺区域是计算机辅助肺部疾病诊断中的重要过程。肺部的形状和大小可能为一些严重疾病(例如气胸,尘肺,甚至肺气肿)提供了线索。但是,目前从X射线精确提取肺部仍然非常困难。在本文中,我们提出了一种检测胸部X光片中肺部区域的新方法。基于观察,X射线图像中的肺野在背景下非常突出,这使它们成为显着区域。根据我们的方法,首先通过基于图的分割将肺部的X射线图像分割为几个小的子区域。然后,我们使用全局对比函数检测每个子区域的显着值。可以基于每个子区域的显着值来估计肺区域。最后,三次样条插值用于优化结果,从而获得更平滑的边界。在实验中,我们建立了一个包括JSRT数据集中的147张随机选择的胸部X射线图像的肺区域定位模型,并使用其中的其余100张图像来测试我们的方法。结果表明,我们的方法达到了最先进的性能。

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